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Article

Spatial Connectivity Analysis of Korea’s Non-Motorized Mobility Network: A GIS-Based Framework for Sustainable Tourism Planning Integrating Walking, Cycling, and Water Routes

by
Dongmin Lee
1,
Ha Cheong Chu
2,
Yewon Syn
1,
Deul Kim
1 and
Chul Jeong
1,*
1
Department of Tourism, Hanyang University, 222 Wangsimni-ro, Seongdong-gu, Seoul 04763, Republic of Korea
2
Department of Tourism, Halla University, 28, Halladae-gil, Heungeop-myeon, Wonju-si 26306, Gangwon-do, Republic of Korea
*
Author to whom correspondence should be addressed.
Systems 2026, 14(4), 359; https://doi.org/10.3390/systems14040359
Submission received: 19 February 2026 / Revised: 20 March 2026 / Accepted: 23 March 2026 / Published: 27 March 2026
(This article belongs to the Section Systems Practice in Social Science)

Abstract

Non-motorized mobility networks increasingly serve as critical infrastructure for sustainable regional development that integrates recreational, environmental, and transportation functions across diverse geographical contexts. To enhance the spatial planning efficiency and support evidence-based policy development, this study develops a Geographic Information Systems (GIS)-based analytical framework to evaluate the connectivity and accessibility of Korea’s integrated non-motorized mobility system. The model systematically maps 606 walking courses, 60 cycling routes, and 66 water activity sites nationwide, and examines their spatial relationships with major transportation hubs, including Korea Train e-Xpress (KTX) stations and airports within 20–30 km buffer zones. Using proximity analysis, connectivity mapping, and origin–destination (OD) cost matrix modeling, the framework identifies intermodal distance structures and spatial integration patterns. The analysis reveals a hybrid network configuration characterized by localized multimodal clustering alongside regional accessibility gaps, with urban–coastal regions demonstrating stronger connectivity than inland–rural areas. This study proposes a data-driven Korean mobility network framework that integrates walking, cycling, and water routes with the existing transportation infrastructure. These findings demonstrate how GIS-based tools can support evidence-based sustainable mobility policies and regional tourism planning on a national scale.

1. Introduction

Tourism is fundamentally an experiential industry involving people’s movements. UN Tourism identifies “movement of people” as a core element of tourism, defining it as a “social, cultural and economic phenomenon” [1,2]. While this industry generates substantial revenue for local economies (global tourism’s GDP contribution in 2024 is USD 10.9 trillion), it also produces negative environmental impacts, including carbon emissions from travel, traffic congestion, and natural degradation [3,4]. The tourism sector accounts for 8–9% of global carbon emissions [5,6], most of which is associated with tourist mobility. Tourism transport alone is projected to increase carbon emissions by 25% by 2030 compared to 2016 [1,2].
The dominance of aviation- and automobile-centered transport in tourism mobility poses urgent sustainability challenges, demanding fundamental transitions toward low-carbon alternatives [7]. Non-motorized mobility, which includes walking, cycling, and water-based activities, emerged as a critical component of sustainable tourism development. However, despite the growing recognition of its potential, non-motorized mobility infrastructure in many countries remains fragmented and disconnected. Walking trails, bicycle routes, and waterway networks are often developed as isolated facilities by different government agencies and lack systematic integration with broader transportation networks.
The effectiveness of non-motorized mobility systems depends on multiple factors, including the quality and continuity of physical infrastructure, integration with public transportation and land use, and contextual conditions such as topography, climate, and culture [8]. Among these, network structure and spatial connectivity play a particularly foundational role, as discontinuous or poorly integrated networks constrain accessibility regardless of individual facility quality [9]. Discontinuous networks are associated with lower utilization rates and reduced accessibility [9], while well-connected systems exhibit higher usage and broader practical accessibility [10]. These results highlight an important policy gap: most countries have non-motorized infrastructure through sectoral initiatives, resulting in administrative fragmentation and lost opportunities for synergistic integration [11].
International benchmarks demonstrate that coordinated national frameworks can generate substantial benefits. Switzerland’s integrated mobility system includes more than 20,000 km of signposted routes developed at the national, regional, and local levels [12]. The network incorporates over 65,000 km of bike trails and connects multiple recreational modes, including walking, cycling, mountain biking, inline skating, canoeing, and kayaking. Nationwide accessibility is supported by free digital platforms that operate in real time and are linked to public transportation systems [12]. Recent policy developments reflect the growing recognition that non-motorized mobility should be treated as essential infrastructure for sustainable development. The European Union in 2024 included active modes of transport (walking, cycling, etc.) as core objectives of the Trans-European Transport Network (TEN-T) for the first time [13]. In the tourism sector, the European Union and UN Tourism established a voluntary commitment framework through the Glasgow Declaration on Climate Action in Tourism, announced at COP26, to reduce tourism-sector carbon emissions by half by 2030, setting low-carbon mobility-based tourism product development as a priority task [14].
However, existing research focuses primarily on urban contexts and regional-scale interventions [9,10]. Questions about how dispersed facilities can collectively function as a coherent system at broader spatial scales remain largely unexplored amid the challenges in integrating fragmented policies. Few studies offer comprehensive frameworks for integrating non-motorized infrastructure on a national scale. Empirical research examining how network structure, spatial connectivity, and accessibility to major transportation nodes collectively shape the functionality of national non-motorized mobility systems remains limited.
Korea provides a relevant case because national and regional governments have actively developed walking trails, bicycle routes, and water-based recreational infrastructure over the past decade through tourism development and outdoor recreation initiatives. Examples include the Korea Dulle-gil walking trail system and the national cycling route network supported by the Ministry of Culture, Sports and Tourism and the Korea Tourism Organization. Despite these developments, systematic evaluations of how these resources function as an integrated national mobility network remain limited.
To address this gap, this study investigates the spatial connectivity of Korea’s non-motorized mobility infrastructure by examining how walking, cycling, and water-based resources function collectively as an integrated spatial network. Using GIS-based spatial network analysis, the study evaluates how the structural configuration of this network influences regional accessibility patterns and multimodal mobility integration.
To guide the analysis, the study addresses two research questions:
RQ1. How are walking, cycling, and water-based mobility resources spatially connected within Korea’s non-motorized mobility network?
RQ2. How does the spatial configuration of this network influence regional accessibility patterns?
Addressing these questions provides a system-level evaluation of national non-motorized mobility infrastructure. By conceptualizing infrastructure as an interconnected spatial network, this study links sustainability discourse with measurable geospatial analysis and establishes a foundation for evidence-based integrated mobility planning. The findings contribute theoretically, methodologically, and practically by demonstrating how connectivity and accessibility outcomes emerge from relational network configurations rather than from the mere presence of isolated facilities.

2. Literature Review

2.1. Non-Motorized Mobility and Spatial Connectivity

Non-motorized mobility is increasingly seen as a set of alternative transport modes and a broader spatial arrangement that shapes how people access places and experience environments [15,16]. This perspective is consistent with developments in the new mobilities paradigm, which conceptualizes movement as socially and spatially embedded rather than a purely functional activity [17]. From this standpoint, practices such as walking and cycling can be understood as part of wider infrastructural arrangements that influence how landscapes are encountered, destinations are connected, and tourism experiences are distributed across space [18]. In a related discussion, [19] conceptualize tourism itself as intertwined with infrastructure, suggesting that tourism, mobility, and infrastructure operate together as interconnected systems that shape the circulation of people, materials, meanings, and value.
Empirical research on mobility environments suggests that individual facilities alone do not explain the effectiveness of non-motorized mobility systems [19]. In their systematic review of sustainable mobility strategies for cultural routes, they identify accessibility as a central concern in effective mobility planning and emphasize the importance of coordinated rather than fragmented interventions. Related studies demonstrate that fragmented and discontinuous networks are associated with lower usability, reduced participation, and higher perceived risk, highlighting the importance of connectivity in effective cycling environments [8]. By contrast, environments characterized by continuity and coherence are commonly associated with smoother movement and broader practical accessibility. Together, these findings suggest that non-motorized mobility functions most effectively when considered as an integrated spatial environment rather than a collection of isolated elements [20].
This evolving understanding also influences the assessments of mobile environments. Recent work increasingly highlights the structural properties of spatial environments, including aspects related to connectivity and overall configuration [21,22]. Reviews further indicate that examining the network structure and connectivity provides more meaningful insights than focusing solely on the quality of individual facilities [23].
Much of the existing literature remains concentrated on localized cases such as individual cities, specific corridors, or single infrastructure types. This limits our understanding of whether dispersed facilities collectively function as coherent systems on broader spatial scales. Reviews of land use and transport integration similarly note that many analytical frameworks and applications are confined to local and metropolitan contexts, with limited attention being paid to regional and cross-jurisdictional scales [11]. From a tourism perspective, this limitation raises important concerns. When mobility systems remain spatially disconnected, access to destinations may remain constrained even when individual facilities are present. This is because effective accessibility is shaped by network connectivity and spatial structure, rather than the presence of isolated infrastructure elements [24]. These limitations point to the need to examine non-motorized mobility at the spatial system level to assess its function as a tourism infrastructure rather than treating it solely as a recreational provision [25].
From a systems perspective, this shift implies the need to conceptualize non-motorized mobility not as a collection of recreational assets but as a structured spatial system whose performance emerges from a relational configuration. In this study, performance is operationally defined as the degree to which the network enables spatial accessibility and intermodal connectivity across regions—outcomes that are directly relevant to tourism planners, regional policymakers, and infrastructure managers [10,24]. Evaluating such systems requires analytical frameworks capable of capturing emergent connectivity patterns and intermodal coherence at territorial scales.
To ensure analytical clarity, these concepts are consistently operationalized in the empirical analysis. In this study, performance is assessed through spatial accessibility and intermodal connectivity indicators, and the structured spatial system is examined using GIS-based network configuration and OD distance analysis.

2.2. Spatial Network Structure and Accessibility

Network structure and accessibility are central analytical perspectives in contemporary transport studies, urban planning, and spatial analyses [26]. A network perspective focuses on the relationships among elements and examines how patterns of connectivity shape the overall system performance [21]. In this view, outcomes emerge from the structural configuration rather than from the simple aggregation of isolated facilities. This understanding aligns with contemporary network theory, which conceptualizes systems as sets of interconnected nodes and relationships whose properties arise from the overall structure rather than from individual components [27]. Therefore, examining the overall network configuration provides a useful lens for understanding how spatial systems are organized and function [28].
In spatial infrastructure research, networks are commonly represented by nodes and links, which enable the application of network concepts to the analysis of street and route systems [29]. Structural indicators, such as density, centrality, connectivity, and network integration, are commonly used to describe the functionality of spatial systems and evaluate how well different parts of a network are connected [30]. These indicators support the interpretation of mobility infrastructure as a structured spatial system that integrates diverse mobility elements, rather than as a collection of independent systems [31]. In this study, this system is operationalized as a network of nodes and links representing walking trails, cycling routes, and water-based activity sites, analyzed using GIS-based network modeling.
Within this framework, accessibility provides a conceptual link between spatial structure and the opportunities available to users. Contemporary scholarship increasingly treats accessibility as a multidimensional concept shaped by the interaction between land-use patterns, transport provision, temporal conditions, and individual capabilities, rather than as a function of distance or travel time alone [2,32]. This perspective also posits accessibility as a concept connected to broader concerns, such as social inclusion, opportunity, and quality of life [2,32,33]. Further, it shows that accessibility can be operationalized through different analytical approaches depending on the research purpose, a framework that remains influential in contemporary accessibility research [2].
Building on these theoretical foundations, recent empirical research increasingly applies network-oriented approaches to examine walking and cycling environments [34]. Methodological reviews document the growing use of connectivity-oriented indicators to evaluate cycling environments and their relationships with participation and usability [8]. Empirical studies further demonstrate that bicycle use and route choice are associated with measurable networks [14]. Similarly, research on pedestrian environments shows that the differences between potential and practical accessibility can be identified through network-based measures of connectivity and configuration, even within the same urban context [35]. Additionally, higher street network connectivity is associated with higher pedestrian volume, suggesting that better-connected spatial networks support higher levels of movement [10].
While prior studies demonstrate that connectivity and accessibility are central to walking and cycling performance, few studies examine how different non-motorized mobility modes interact within a shared spatial system. Intermodal relationships, distance structures, and cross-network integration remain underexplored, particularly on the national scale. Consequently, studies frequently assess non-motorized mobility through isolated infrastructure indicators rather than system-level spatial relationships, which limits our understanding of how multimodal networks function as coherent territorial systems.
Addressing this gap requires an analytical framework that interprets mobility infrastructure as an interconnected spatial system in which mobility outcomes emerge from relational network structures. A system-oriented perspective, therefore, provides the conceptual basis for evaluating national-scale non-motorized mobility beyond facility-level assessments. In this study, network performance is operationally defined as the degree to which spatial configuration enables connectivity among mobility resources and accessibility to mobility opportunities across regions. It is measured using accessibility ratio (AR), connectivity density, and the multimodal integration index (MII) derived from GIS-based spatial analysis. Building on this definition, the following section introduces a GIS-based analytical framework that operationalizes this system-level perspective.

3. Materials and Methods

3.1. Study Area and Data Collection

This study includes the entire territory of South Korea, covering all metropolitan cities and provinces. The analysis focuses on three primary categories of non-motorized mobility resources: walking trails, bicycle routes, and water-based activity sites. Data was collected in early 2025.
GIS is an effective tool for analyzing the spatial relationships and accessibility of tourism and transportation infrastructure [36,37]. Building on this methodological foundation, this study employs GIS-based spatial analysis to empirically examine the connectivity among non-motorized mobility resources and their accessibility to major transportation hubs.
Figure 1 provides an overview of the analytical design by illustrating the GIS-based workflow and conceptual structure of the Korea Mobility Network (KMN) model, which integrates data collection, preprocessing, spatial analysis, and model development. From a systems modeling perspective, the national non-motorized mobility environment is treated as a spatial system composed of heterogeneous nodes and relational links. Walking trails, cycling routes, and water-based activity sites represent the system components, whereas intermodal distances define structural relationships. Therefore, the analytical framework operationalizes mobility infrastructure as a measurable network system, rather than as isolated geographic features.

3.1.1. Korea Walking Trail Data

Walking trail data were collected from “Durunubi” (https://www.durunubi.kr), an official walking travel information service managed by the Korea Tourism Organization and the Ministry of Culture, Sports, and Tourism. The dataset provides comprehensive information on trial starting and ending points, total distance in kilometers, difficulty levels, estimated walking times, and major waypoints.
A total of 606 Korea Dulle-gil walking courses were identified and classified into three categories based on their geographic and thematic characteristics.
  • Marine-type (M) trails: 263 courses (43.4%), located along coastal areas, beaches, and sea cliffs.
  • Historic-type (H) trails 106 courses (17.5%), following culturally significant routes and heritage sites.
  • Regional-type (R) trails: 237 courses (39.1%) showcasing local landscapes, rural environments, and regional cultural assets.
Among the 606 courses, 30 trails spanned multiple administrative regions, reflecting the cross-regional nature of long-distance walking routes. Each trail course was geocoded using the starting point coordinates. The starting points were used as standardized representative coordinates to ensure consistency across the datasets.

3.1.2. National Bicycle Route Data

Bicycle route data were collected from the “60 Best Free Cycling Tour Courses” program developed by the Ministry of Culture, Sports and Tourism and the Korea Tourism Organization (KTO) and provided through the Visit Korea tourism information platform. Sixty officially designated bicycle routes were identified and classified into three types based on their thematic characteristics.
  • Scenic-type (S) routes: 39 courses (65.0%) emphasizing scenic quality and natural landscapes.
  • Historic-type (H) routes: 9 courses (15.0%) connecting cultural heritage sites.
  • Leisure-type (L) routes: 12 courses (20.0%) designed for leisure cycling and urban connectivity.
For each route, spatial attributes including route coordinates, total distance, elevation profile, and road surface conditions were collected and compiled into a GIS database for subsequent spatial network analysis.

3.1.3. Water-Based Activity Site Data

Water-based activity sites include locations suitable for canoeing, kayaking, and other non-motorized-mobility water sports. Data were collected from multiple sources, including the Ministry of Environment, Korea Water Resources Corporation, and regional tourism agencies. Unlike walking trail data, which are centrally managed through the official Durunubi platform, no equivalent integrated public database exists for water-based activity sites in Korea. In the absence of a unified official source, site information was compiled by the research team through a systematic review of publicly available online materials, including user-generated reviews and operator promotional content. For example, sites such as the Chuncheon Jungdo Mullegil were identified and verified through this process. This data collection approach reflects a current gap in national-level infrastructure documentation for water-based non-motorized mobility resources. A total of 66 sites were identified and classified as follows:
  • Inland (I) sites: river and reservoir-based locations.
  • Marine (M) sites: coastal and ocean-based activity areas.
  • Ecological/Estuarine (E) sites: wetland and estuarine environments.

3.1.4. Transportation Hub Data

Transportation hub data includes the coordinates of all KTX (Korea Train e-Xpress) stations and domestic airports. KTX station data were collected from the Korea Railroad Corporation (KORAIL) and airport location data were obtained from the Korea Airports Corporation. These transportation hubs are critical nodes for analyzing the accessibility of non-motorized mobility resources to high-speed rail and air transportation networks, which is essential for evaluating integrated tourism potential [38,39].

3.2. GIS-Based Spatial Analysis Framework

The mobility system was operationalized by modeling it through spatial analysis using the ArcGIS Online platform (Esri, Redlands, CA, USA; accessed 2025), which provides cloud-based GIS capabilities for large-scale spatial data processing and visualization. The analytical framework consists of four main components: data preprocessing, proximity analysis, network connectivity assessment, and accessibility evaluation. This approach aligns with established methodologies for analyzing spatial relationships in tourism and transportation research [40,41].

3.2.1. Data Preprocessing and Standardization

All the spatial datasets were preprocessed to ensure compatibility and consistency. Coordinate systems were standardized to WGS84 (EPSG:4326) for initial data collection and then transformed into the Korea Geodetic Datum 2000 (EPSG:5179) to ensure metric accuracy in the distance calculations. Duplicate records and incomplete entries were removed, and the attribute fields were standardized using consistent naming conventions and classification schemes.
The Topographic basemap from ArcGIS Pro was used as a background layer to provide a geographic context reflecting the terrain characteristics. Point features representing walking trails, bicycle routes, and water activity sites were color-coded for visual distinction as follows: walking trails in orange, bicycle routes in green, water sites in purple, KTX stations in blue, and airports in black.

3.2.2. Proximity Analysis and Network Connectivity

A proximity analysis was performed using the Find Nearest tool within the Use Proximity toolset of ArcGIS Pro. For each walking trail point, the analysis identified the five nearest bicycle routes and five nearest water activity sites within a 30 km straight-line distance threshold. Previous studies indicate that most everyday cycling trips occur within relatively short distances, typically within approximately 10–15 km, depending on travel purpose [42]. In contrast, research on cycle tourism and recreational cycling suggests that travel segments along long-distance cycling routes commonly range between 20 and 30 km [43]. Based on this evidence, a 30 km threshold was adopted as a conservative upper bound to identify feasible intermodal recreational connections in the national-scale spatial analysis. To assess the robustness of this assumption, sensitivity tests using alternative thresholds of 20 km and 40 km were conducted, and the resulting spatial patterns remained consistent, confirming the stability of the analytical results.
Straight-line (Euclidean) distances were calculated using the Line Distance function, and the spatial relationships between different mobility modes were visualized using connection lines. These visualizations enabled the identification of spatial interaction structures between leisure activity hubs and walking trails. Network connectivity density was calculated for each metropolitan city and province as the number of connections per unit area, expressed as connections per 100 km2.
Connectivity analysis between bicycle routes, water activity sites, and walking trails can reveal areas with high integration potential as well as areas characterized by isolated infrastructure. This multilayered connectivity network supports an intuitive interpretation of the spatial relationships among transportation resources, leisure activity hubs, and tourism assets.

3.2.3. Transportation Hub Accessibility Assessment

Accessibility to major transportation hubs was assessed using buffer analysis, which is widely applied in transportation accessibility research [44,45,46]. Circular buffers with a 20 km radius were generated around each KTX station and airport. This threshold represents approximately 20–30 min of driving time or a reasonable public transit access range and is consistent with accessibility criteria adopted in prior studies [39,47,48].
Walking trails, bicycle routes, and water-based activity sites located within these buffer zones were identified and quantified. Based on this spatial framework, the following indicators were calculated for each metropolitan city and province.
Accessibility Ratio (AR): The accessibility ratio represents the proportion of mobility points located within transportation hub buffer zones. It was calculated using the cumulative opportunity approach, which counts accessible opportunities within a defined spatial threshold [49,50,51]. This approach is widely used in transportation planning due to its interpretability and policy relevance [24,52].
The AR is defined as
A R = ( N _ i n / N _ t o t a l ) × 100
where N _ i n denotes the number of mobility points located within the buffer, and N _ t o t a l represents the total number of mobility points in the region. This formulation follows the standard cumulative opportunity framework in accessibility research [32,53].
Mean Distance to Nearest Hub (MDNH): MDNH measures the average distance from each mobility point to its nearest transportation hub, capturing distance-based accessibility characteristics [43,47,54].
The MDNH is defined as
M D N H = ( 1 / N )   _ { i = 1 } ^ { N }   d _ i
where d _ i denotes the distance from mobility point i to the nearest transportation hub, and N represents the total number of mobility points. Lower MDNH values indicate higher accessibility.
Multimodal integration index (MII): The multimodal integration index is a composite indicator developed to assess the overall level of multimodal connectivity by integrating multiple spatial metrics [55,56,57]. Composite indicators are commonly used for regional comparison and policy evaluation [58]. The weights were derived using the Analytic Hierarchy Process (AHP) [59] based on expert consultation. The final weights were set to 0.40 for accessibility ratio, 0.35 for connectivity density, and 0.25 for site density. These weights reflect the relative importance of accessibility and network connectivity in evaluating the functional integration of non-motorized mobility systems.
The MII is defined as
M I I = w 1 · A R + w 2 · C D + w 3 · S D
where A R , C D , and S D denote the normalized values of accessibility ratio, connectivity density, and site density, respectively, and w 1 , w 2 , and w 3 represent their corresponding weights (0.40, 0.35, and 0.25), as determined using the Analytic Hierarchy Process (AHP) [59].
Normalization was performed using min–max scaling:
X _ i =   ( X _ i     X _ m i n ) / ( X _ m a x     X _ m i n )
where X _ i denotes the original value for region i , and X _ m i n and X _ m a x represent the minimum and maximum values across all regions. This transformation rescales values to a standardized range between 0 and 1 while preserving the relative differences.

3.3. Statistical Analysis and Visualization

Descriptive statistics, including frequency distributions, means, and standard deviations, were calculated for key spatial variables. Regional disparities were assessed using the coefficient of variation (CV) analysis to identify provinces with high variability in the accessibility measures. Pearson’s correlation analysis was used to examine the relationships among population density, urbanization level, and non-motorized mobility infrastructure distribution.
The visualization output included thematic maps showing point distributions, connectivity networks, and accessibility patterns. Heat maps display spatial density and concentration areas, whereas network diagrams illustrate intermodal connections. All visualizations were exported in a high-resolution format for publication and policy communication purposes.

3.4. Origin–Destination (OD) Cost Matrix Analysis of Intermodal Network Structure

To evaluate non-motorized mobility as an integrated spatial system, it is necessary to move beyond hub-oriented accessibility and examine the internal structural relationships among resources. Intermodal distance patterns determine whether walking-, cycling-, and water-based infrastructure function as coherent networks or as isolated elements. OD-based analysis provides a formal framework for measuring relational structures. By capturing the minimum network distances among resource nodes, the method reveals the clustering, separation, and hybrid configurations of the national mobility system.

3.4.1. Analytical Rationale

The previous sections assessed the accessibility of non-motorized mobility resources in relation to major transportation hubs. While hub-oriented accessibility captures external access to resources, it does not indicate whether the resources themselves are spatially connected or capable of functioning as an integrated mobility network. To address this limitation, this study introduces an origin–destination (OD) cost matrix analysis to examine the internal structural connectivity among non-motorized mobility resources.
Many studies in transport geography and spatial network analysis employ OD-based approaches to represent relational distances within networks [28,53]. Unlike demand-oriented OD models that estimate traffic volumes or travel demand, this study exclusively employs an OD cost matrix to characterize structural connectivity based on network configuration. Therefore, the analysis focuses on potential connectivity embedded in the spatial structure rather than on observed travel behavior or traffic flows, consistent with structural approaches in spatial network research [29,30].

3.4.2. Network Representation and Node Definition

The non-motorized mobility system is represented as the spatial network
G = ( N , L )
where N denotes the set of mobility resource nodes, and L denotes the set of links representing the pedestrian and road networks.
Each node corresponds to a non-motorized mobility resource, including walking trail starting points, bicycle route representative points, and water-based activity sites. Treating all nodes as both origins and destinations follows the standard practice in network-based accessibility analysis when the objective is to analyze structural connectivity rather than directional flow [28].

3.4.3. Definition of Network Cost

Each link was assigned a distance-based weight proportional to its physical length. This cost represents the spatial resistance embedded in the network rather than travel time, congestion, or user-specific effort. Such distance-based cost definitions are common in structural spatial network analysis [31].
For any path p _ { i j } connecting nodes i to j , the total path cost is
C ( p _ { i j } ) = _ { l     p _ { i j } }   c _ l
where c _ l denotes the cost associated with link l along the path p _ { i j } . This formulation operationalizes the cost as a cumulative network distance and enables the evaluation of spatial connectivity independent of behavioral assumptions.

3.4.4. OD Cost Matrix Formulation

Let o and d denote origin and destination nodes, respectively, with o ,   d     N .
Let P _ { ( o , d ) } denote the set of all feasible paths connecting node o to node d .
The origin–destination cost is the minimum network distance between nodes o and d :
D ( o , d )   =   m i n _ { p     P _ { ( o , d ) } }   C ( p )
The OD cost matrix D , where D _ { i j } represents the cost between nodes i and j , is defined as
D = [ D _ { i j } ] _ { i ,   j = 1 ,   ,   N }
The diagonal elements equal zero and represent self-pairs; these were excluded from the subsequent analysis. All OD costs were computed using the OD Cost Matrix tool in ArcGIS Network Analyst, based on pedestrian and road network datasets.

3.4.5. Aggregation by Mobility Type

To facilitate the interpretation of large OD matrices and compare connectivity patterns across mobility categories, OD costs were aggregated by resource type.
Let T a denote the subset of nodes belonging to mobility type a , where T a N .
The average OD cost between mobility types a and b is defined as
D _ { ( a , b ) } = ( 1 / ( | T _ a | | T _ b | ) )   _ { i     T _ a }   _ { j     T b }   D _ { i j }
For intra-type comparisons ( a = b ), self-pairs ( i = j ) were excluded from the summation to avoid bias from zero-distance diagonal elements.
Here, | T _ a | and | T _ b | denote the number of nodes in mobility types a and b , respectively. This formulation represents the mean pairwise OD distance between all nodes belonging to types a and b . This aggregation enabled systematic comparisons of intra- and inter-type connectivity. It supports the evaluation of whether non-motorized mobility resources operate as an integrated network or as a spatially fragmented infrastructure. This typological aggregation is consistent with established approaches in network research [30].

3.4.6. Analytical Scope

The OD cost matrix in this study does not include estimates for travel demand, traffic volume, or route choices. Instead, it provides a structural measure of the spatial connectivity embedded in the network configuration. By focusing on the minimum network distance, the analysis captures potential inter-resource movements while remaining independent of temporal, behavioral, or individual-level assumptions. This approach aligns with the structural interpretation of accessibility [53].

4. Results

Figure 2 presents the complete GIS-based analytical workflow applied in this study, integrating the data collection, preprocessing, spatial analysis procedures, and key quantitative outputs that structure the results reported below.

4.1. Intermodal Network Distance Structure

To evaluate whether Korea’s non-motorized mobility resources operate as a structurally coherent system, intermodal network distances were examined using the OD cost matrix framework. The analysis focuses on the relational distance patterns between the walking trails and other mobility modes. These intermodal distances provide a structural indicator of whether facilities function as isolated assets or an integrated network and reveal whether multimodal recreational mobility is supported by spatial proximity or constrained by territorial discontinuities.

4.1.1. Walking–Cycling Network Structure

Table 1 summarizes the structural distance characteristics derived from the OD cost matrix of walking trails and cycling routes. The mean inter-resource distance was 10.55 km, indicating that the two mobility systems operate within comparable spatial scales. This distance range suggests that transitions between walking and cycling are frequently feasible in recreational travel contexts, supporting the potential of layered multimodal experiences.
The minimum distances approach zero, reflecting localized clustering in which walking and cycling nodes coexist within minimal network distance. These clusters are multimodal anchors that increase the functional density of recreational spaces and strengthen intermodal continuity. In contrast, the maximum distances approach the 30 km analytical threshold, revealing extended regional gaps. The coexistence of clustering and separation indicates uneven spatial integration across territories.
The network contains 2010 walking–cycling OD links within the defined 30 km spatial threshold, indicating a high number of potential spatial interactions among mobility nodes. In this study, network density refers to the number of potential spatial connections identified through the OD network distance matrix within the defined proximity threshold rather than traffic flow or actual usage intensity. This configuration can therefore be interpreted as a “dense relational structure,” in which numerous mobility nodes are connected within feasible distance ranges. Here, it is operationalized as the number of OD-based intermodal connections identified within the defined spatial threshold. From a systems perspective, this density implies latent integration capacity embedded within the national configuration. Even when direct physical continuity is incomplete, the spatial arrangement suggests the potential for targeted corridor linking rather than large-scale infrastructure reconstruction.
Table 1 summarizes the statistical characteristics, while Figure 3 provides a spatial illustration. The map reveals dense multimodal clustering in the metropolitan regions, particularly around Seoul and the southern coastal corridor, where walking and cycling nodes overlap within transportation accessibility buffers. These areas are integration anchors supporting continuous recreational movements. In contrast, inland regions exhibited more dispersed spatial patterns, indicating structural discontinuities in intermodal connectivity.
Taken together, the walking–cycling system has partial structural coherence, characterized by strong localized clusters coexisting alongside measurable regional gaps. In this study, the term hybrid network structure refers to the coexistence of high-density intermodal clusters and extended low-density spatial segments, identified through a bimodal distribution of inter-resource distances in which localized proximity peaks coexist with long-distance gaps across the national system. The presence of simultaneous clustering and fragmentation suggests that the system performance is shaped more by spatial arrangement than by infrastructure quantity alone.

4.1.2. Walking–Canoe Network Structure

Table 2 presents the intermodal distance structure between walking trails and canoe activity sites. The mean inter-resource distance of 10.89 km is comparable to the walking–cycling system, indicating that land–water mobility operates within a similar spatial envelope. This proximity suggests that walking routes are frequently located within feasible transitional distances from canoeing facilities, supporting the possibility of combined terrestrial and aquatic recreational experiences.
The minimum distances again approach zero, revealing that land–water integration hubs are concentrated in coastal regions. These hubs enable immediate transitions between land-based and water-based activities, enhancing experiential diversity and strengthening the functional density of the tourism environment. In contrast, the maximum distances near the analytical threshold indicate selective integration, with inland walking routes frequently lacking nearby canoe facilities.
The network includes 1948 walking–canoe OD links, indicating dense relational connectivity despite regional discontinuities. From a systems perspective, this density implies a latent integration potential embedded within the spatial configuration. Even in regions with limited direct proximity, the underlying network structure suggests expansion strategies capable of improving connectivity without requiring large-scale infrastructure investment.
Table 2 reports the statistical characteristics, and Figure 4 depicts them spatially. The map reveals a strong coastal concentration of land–water integration, particularly along the southern and eastern shorelines, where walking routes and canoe sites form continuous recreational corridors. These coastal clusters function as integration zones that support combined terrestrial and aquatic mobility. By contrast, inland walking routes frequently lack nearby canoe facilities, revealing selective rather than uniform intermodal integration.
Taken together, the walking–canoe system has a spatial configuration comparable to that observed in the walking–cycling network. Dense coastal integration hubs coexist with inland accessibility gaps, indicating that environmental geography plays a significant role in shaping multimodal connectivity. This contrast highlights the importance of spatial configuration in land–water mobility planning and suggests opportunities for targeted interventions to reduce regional disparities.

4.1.3. Comparative Intermodal Network Statistics

Table 3 summarizes the network distance statistics for the walking–cycling and walking–canoe OD links to provide a direct comparison. The mean distances are similar (10.55 km and 10.89 km), indicating that both intermodal connections operate within a comparable spatial envelope. The comparable medians further suggest that typical intermodal proximity is consistent across mobility modes.
The similar standard deviations indicate that the same national-scale clustering and gap structure drive dispersion patterns, rather than by mode-specific infrastructure layouts. That is, intermodal accessibility is shaped by the territorial organization embedded within the broader mobility network, rather than by individual facility characteristics.
These comparative patterns support the interpretation that the observed hybrid configuration reflects a systemic spatial organization. Both networks show simultaneous clustering and separation, confirming that Korea’s non-motorized mobility facilities operate as a partially integrated system structured by geography and infrastructure distribution.

4.2. Hierarchical Accessibility Structure of Bicycle Facilities

Table 4 presents the rank-based accessibility structure of bicycling facilities derived from the proximity analysis. For each origin node, the five nearest bicycle facilities were identified and ranked by walking distance and estimated travel time. Negative routing artifacts were truncated to zero before statistical summarization to ensure physically meaningful accessibility estimates. This ranking framework allows us to examine how accessibility declines across successive facility tiers rather than treating proximity as a single-point estimate.
The first-ranked facilities have a mean walking time of 16.28 min and a mean distance of 1.39 km. These averages indicate that many origin locations lie within the practical range of at least one bicycle facility. However, the large standard deviations reflect strong spatial heterogeneity rather than statistical anomalies. Accessibility is concentrated in localized proximity clusters, whereas peripheral areas remain structurally distant. Some locations benefit from near-adjacent facilities, whereas others experience substantially greater travel requirements even at the nearest rank.
Accessibility declines sharply between the first and second rankings. The mean walking time and distance increase to 97.66 min and 8.14 km, respectively, revealing a pronounced accessibility gradient. This discontinuity indicates that the nearest bicycle facility functions as the dominant access anchor. Once the immediate proximity zone is exceeded, alternative facilities require disproportionately greater travel effort. Therefore, accessibility appears structured around localized cores rather than being smoothly distributed across space.
Subsequent ranks show progressive increases in both distance and travel time. The walking time estimates assume an average pedestrian speed of 5 km/h, a common benchmark in accessibility modeling [10,24]. In the accessibility analysis, walking speed was assumed at 5 km/h—a standard benchmark widely used in pedestrian accessibility research [10,24]. The first-rank proximity threshold of approximately 1 h (representing ~5 km at this speed) reflects the practical upper limit of spontaneous walking access and is consistent with established thresholds in active travel accessibility studies. Third-ranked facilities average 11.77 km, fourth-ranked facilities at 14.59 km, and fifth-ranked facilities at 16.88 km. The relatively regular expansion across higher ranks suggests that beyond immediate proximity zones, facilities follow a broader regional distribution, rather than forming dense secondary clusters. Accessibility moves from local concentration to regional dispersion.
The strong correlation between walking time and distance confirms the internal consistency of the routing model and indicates that the observed hierarchy reflects a genuine spatial structure. From a systems perspective, the bicycle network exhibits a dual configuration composed of localized high-accessibility cores surrounded by wider low-density peripheries. This pattern is consistent with the intermodal structure identified in the OD analysis in which clustered hubs coexist with measurable territorial gaps.
These findings highlight the functional importance of first-rank proximity in shaping accessibility. Although the national inventory includes numerous bicycle facilities, effective accessibility depends largely on the spatial distribution of first-rank proximity clusters rather than on total facility count. Infrastructure performance is therefore governed more by spatial configuration than facility quantity. The targeted placement of additional nodes near accessibility gaps suggests potential improvements in network usability without requiring large-scale system expansion.

4.3. Hierarchical Accessibility Structure of Canoe Facilities

Table 5 presents the rank-based accessibility structure of the canoe facilities derived from the proximity analysis. For each origin node, the five nearest canoe activity sites were identified and ranked by walking distance and estimated travel time. Negative routing artifacts were truncated to zero before statistical summarization to ensure physically meaningful accessibility estimates. This ranking framework reveals how accessibility declines across successive facility ranks rather than assuming uniform access within the network.
The first-ranked facilities have a mean walking time and distance of 11.63 min and 0.97 km, respectively. These values indicate that many locations of origin lie within close, practical reach of at least one canoe facility. However, relatively large standard deviations reflect strong spatial heterogeneity rather than a statistical anomaly. Accessibility is concentrated in shoreline clusters, whereas inland areas are structurally distant from each other. Some locations benefit from immediate proximity to water-based recreation, whereas others require substantially longer travel times, even at the nearest site.
Accessibility declines sharply between the first and second rankings. The mean walking time and distance increase to 95.19 min and 7.93 km, respectively, revealing a pronounced accessibility gradient. This discontinuity indicates that the nearest canoe facility functions as the dominant access anchor. Once the immediate proximity zone is exceeded, alternative options require disproportionately greater travel effort. This gradient is steeper than that of the bicycle network, suggesting that the canoeing facilities are spatially more dispersed and less redundant.
Subsequent ranks show progressive increases in both distance and travel time. Third-ranked facilities average 11.62 km, fourth-ranked facilities at 14.59 km, and fifth-ranked facilities at 17.07 km. This gradual expansion suggests that beyond immediate proximity zones, canoe facilities follow a regional distribution pattern shaped by environmental constraints, rather than dense clustering. Therefore, accessibility transitions from localized concentrations to geographically constrained regional dispersion.
The strong correlation between walking time and distance confirms the internal consistency of the routing model and indicates that the observed hierarchy reflects a genuine spatial structure. From a systems perspective, the canoe network has a spatial contrast between high-accessibility shoreline cores and inland gaps. This pattern mirrors the hybrid structure identified in the intermodal OD analysis, in which strong coastal integration coexists with selective territorial exclusion.
These findings highlight the functional importance of first-rank proximity in water-based recreation. Although the national inventory includes numerous canoe sites, effective accessibility depends heavily on whether origin locations fall within immediate land–water interface zones. Therefore, infrastructure performance is governed more by spatial configuration than facility count. Targeted expansion of inland transition corridors suggests potential improvements in accessibility without requiring large-scale system reconstruction.

4.4. Integrated National Non-Motorized Mobility Structure

Figure 5 presents the fully integrated spatial configuration of Korea’s non-motorized mobility system, which combines walking trails, cycling routes, canoe activity sites, and major transportation hubs into a unified spatial network. In the visualization, walking trails are shown in yellow, cycling routes in green, canoe activity sites in pink, and KTX transportation hubs are represented as blue nodes within the national network layer. The underlying lines indicate the spatial mobility network structure derived from GIS-based analysis. This integrated representation synthesizes the intermodal patterns identified above and reveals the emergent structural organization of the national mobility system.
The integrated map highlights the formation of multimodal clusters in metropolitan regions and along coastal corridors where walking, cycling, and water-based facilities converge within transportation accessibility zones. These areas are system anchors that support continuous recreational flow across mobility modes. Their spatial concentration indicates that the existing infrastructure already contains partially integrated cores capable of sustaining layered tourism experiences without requiring entirely new infrastructure systems.
The national configuration simultaneously exhibits extended peripheral segments, where multimodal overlap is limited. Certain inland regions and remote coastal zones appear weakly connected to the broader network, revealing structural discontinuities in intermodal accessibility. Importantly, these gaps do not reflect a complete absence of infrastructure. Rather, they indicate insufficient relational linkages between existing resources. Therefore, the issue is not a scarcity of facilities, but the fragmentation of spatial connections.
From a systems perspective, the integrated structure demonstrates that Korea’s non-motorized mobility network operates as a partially coherent spatial system characterized by strong regional hubs coexisting with uneven connectivity gradients. The coexistence of clustered anchors and dispersed segments reveals the latent integration capacity embedded in the current configuration. Targeted corridor linking, intermodal node enhancement, and strategic bridging of inland gaps suggest the potential to improve the national network performance without requiring large-scale infrastructure expansion.
Overall, Figure 5 confirms that the national mobility system has a hybrid spatial structure shaped by geography, urban concentration, and infrastructure distribution. Accessibility hierarchies and intermodal distance structures are not independent phenomena but mutually reinforcing components of the same system. This finding underscores the importance of system-level planning that prioritizes network coherence and relational connectivity over the development of isolated infrastructure. The results suggest that non-motorized mobility is a structured territorial system whose performance is associated with spatial configuration rather than facility quantity.

5. Discussion

5.1. Summary

The findings provide a system-level interpretation of Korea’s non-motorized mobility infrastructure by examining how walking trails, cycling routes, and water-based activity sites are spatially organized and interconnected across the national territory. By applying a GIS-based OD network framework and proximity analysis, the study evaluates both the structural connectivity among mobility resources and their accessibility in relation to transportation infrastructure.
First, the results demonstrate that Korea’s non-motorized mobility infrastructure forms a partially integrated spatial network linking walking, cycling, and water-based resources (RQ1). The OD cost matrix analysis reveals moderate intermodal distances and a large number of potential spatial connections within feasible transition ranges. In this study, network density refers to the number of potential spatial connections identified through the OD distance matrix within the defined proximity threshold rather than actual travel flows. The analysis shows that many mobility resources occur within transition distances that enable multimodal recreational mobility. However, the spatial structure is uneven. Metropolitan areas and coastal corridors exhibit stronger multimodal clustering, whereas inland regions display greater separation between mobility resources. This pattern indicates a hybrid network configuration, characterized by the coexistence of high-density intermodal clusters and extended low-density spatial segments.
Second, the results show that the spatial configuration of the network generates uneven regional accessibility patterns (RQ2). Proximity analysis reveals a hierarchical accessibility structure in which effective access is largely determined by the nearest mobility resource. Accessibility declines sharply beyond the first proximity tier, indicating that localized proximity anchors play a decisive role in shaping practical mobility opportunities. This finding suggests that accessibility within the national mobility network is influenced more strongly by spatial configuration than by the simple presence or quantity of infrastructure facilities.
Taken together, the findings indicate that the effectiveness of non-motorized mobility infrastructure depends primarily on the relational structure of the network rather than on infrastructure quantity alone. Even when facilities are widely distributed, weak spatial linkages may limit functional accessibility and reduce the potential for integrated tourism mobility.
Methodologically, this study contributes by introducing a GIS-based OD network analytical framework for evaluating national-scale non-motorized mobility systems. While previous research has frequently examined walking or cycling infrastructure separately and primarily at local scales, this study integrates multiple mobility modes within a unified spatial network model. This framework enables a system-level evaluation of spatial connectivity and accessibility across an entire national territory and provides a replicable analytical approach for evaluating integrated mobility systems in tourism and regional planning contexts.

5.2. Theoretical Implications

Beyond its practical relevance, this study contributes theoretically by reframing non-motorized mobility infrastructure as a relational spatial system whose performance emerges from the configuration of network relationships rather than from isolated infrastructure assets. By empirically demonstrating how structural connectivity influences accessibility outcomes, the findings reinforce network-theoretical perspectives that emphasize relational structure as a fundamental determinant of spatial performance [27,30]. In this sense, tourism mobility systems should therefore be interpreted as interconnected spatial networks whose functionality depends on the strength and distribution of linkages among nodes.
The findings also extend accessibility theory within tourism and spatial planning research. Previous studies have primarily conceptualized accessibility in terms of distance, travel cost, or proximity to specific facilities. While these approaches provide valuable insights into localized access conditions, they often overlook the structural relationships that shape broader spatial opportunities. By integrating accessibility analysis with network-based spatial metrics, this study situates tourism mobility within broader debates on spatial opportunity structures and network organization [32,53]. The results demonstrate that accessibility outcomes are strongly conditioned by the configuration of mobility networks, suggesting that tourism accessibility should be interpreted as a systemic property of spatial networks rather than solely as a function of individual locations.
A further theoretical contribution lies in expanding the scale of network-based accessibility analysis. Much of the existing literature focuses on urban environments or corridor-level mobility systems [23,34]. In contrast, the present study demonstrates how structural connectivity analysis can be applied at a national territorial scale to evaluate the integration of multiple mobility infrastructures. This multiscalar perspective reveals that accessibility inequalities are not merely local phenomena but reflect broader spatial organization patterns across regions. The findings, therefore, highlight the importance of system-level analytical frameworks in understanding tourism mobility systems.
Finally, by integrating walking trails, cycling routes, and water-based recreational resources into a unified analytical framework, this research contributes to emerging scholarship that conceptualizes tourism infrastructure as a multimodal experiential ecosystem. The results suggest that tourism accessibility should be understood not only as physical reachability but also as the structural capacity of spatial networks to support interconnected and layered recreational experiences. By linking insights from transport geography, tourism systems research, and spatial network theory, this study provides a conceptual foundation for future interdisciplinary research on tourism mobility systems and spatial connectivity.

5.3. Policy and Practical Implications

The findings suggest that non-motorized mobility infrastructure should be planned as a cohesive network rather than as isolated recreational projects. Regions with high connectivity demonstrate how integrated walking, cycling, and water-based resources form multimodal tourism corridors that generate layered recreational opportunities and enhance regional attractiveness. Conversely, areas characterized by low connectivity represent priority zones for targeted infrastructure investments. The strategic linking of existing assets in these regions can significantly enhance accessibility without requiring large-scale new development.
From a planning perspective, the Korea Mobility Network (KMN) framework is a practical tool for identifying spatial gaps and guiding evidence-based resource allocation. Composite accessibility indicators enable planners to move beyond descriptive inventories for the structural evaluation of network performance. Embedding GIS-driven analytics into policy processes supports more transparent and data-informed decision-making in line with contemporary approaches to spatial governance and sustainable mobility planning. Such tools allow national and local authorities to prioritize interventions that strengthen network cohesion, reduce regional inequalities, and promote environmentally responsible tourism systems.
The results highlight the importance of cross-sector coordination in tourism development. Non-motorized mobility infrastructure intersects transportation planning, environmental management, and regional tourism policies. Considering these domains as interconnected systems can foster more resilient and adaptive planning strategies. By leveraging structural connectivity insights, policymakers can design tourism environments that encourage low-impact travel, diversify regional experiences, and support long-term sustainability.
From a practical perspective, the findings provide useful insights for several stakeholder groups involved in tourism and infrastructure planning. Tourism planners can use the connectivity analysis to identify regions where integrated walking, cycling, and water-based tourism experiences can be developed. Regional policymakers may apply the framework to prioritize infrastructure investments that improve spatial accessibility and reduce regional disparities. Infrastructure managers and destination developers can also use the analysis to identify potential intermodal corridors and strengthen connections between existing recreational assets.

5.4. Limitations

This study had several limitations to acknowledge when interpreting the findings. First, the OD cost matrix analysis captures structural connectivity based on the minimum network distance rather than the observed travel behavior. Although this approach is appropriate for evaluating potential spatial integration, it does not consider actual user preferences, temporal constraints, or travel demand patterns. Future research should incorporate behavioral data, such as visitor flows, GPS tracking, or mobility surveys, to examine how structural connectivity translates into real-world usage.
Second, accessibility was assessed using fixed spatial thresholds and Euclidean buffer assumptions around the transportation hubs. Although these measures are common in accessibility research, they simplify the complexity of multimodal travel conditions, including travel time variability, public transit availability, and terrain constraints. More advanced modeling approaches that incorporate time-based accessibility and route-choice simulations would provide a more nuanced understanding of experiential access.
Third, this study provides a cross-sectional snapshot of mobility networks. Infrastructure systems evolve over time, and future longitudinal analyses would be valuable for examining how policy interventions, infrastructure expansion, and regional development reshape the network structure. Expanding the analytical framework to comparative international contexts would also increase the generalizability of the findings.
Despite these limitations, this study establishes a replicable GIS-based framework for evaluating non-motorized mobility systems at the national scale and provides a methodological foundation for future interdisciplinary research on sustainable tourism mobility.

6. Conclusions

This study evaluated Korea’s non-motorized mobility infrastructure as a national-scale spatial system using a GIS-based OD network framework. The findings identify a partially integrated network of walking, cycling, and water-based mobility resources characterized by localized multimodal clusters and regional discontinuities. While many resources operate within feasible intermodal distance ranges, structural gaps persist between coastal and urban hubs and inland–rural areas. These patterns indicate that network configuration, rather than infrastructure quantity, determines national accessibility performance.
By extending network-based accessibility analysis to a multimodal tourism context, this study demonstrates how GIS-driven system evaluations can inform evidence-based mobility planning. Conceptualizing non-motorized mobility infrastructure as a relational spatial system enables policymakers and planners to identify latent integration potential and prioritize strategic corridor development across regions.
Despite its limitations, the proposed analytical framework provides a replicable foundation for evaluating non-motorized mobility infrastructure on the national scale. Future research should incorporate behavioral data and longitudinal perspectives to examine how structural connectivity translates into actual mobility practices. Expanding this analytical framework to comparative international contexts would further strengthen the understanding of sustainable tourism mobility systems and spatial integration processes.
The findings provide clear answers to the research questions. First, the analysis indicates that Korea’s non-motorized mobility infrastructure forms a partially integrated national network linking walking, cycling, and water-based mobility resources (RQ1). Second, the spatial analysis reveals that the configuration of this network generates uneven regional accessibility patterns, with stronger multimodal clusters in metropolitan and coastal regions and more pronounced spatial gaps in inland areas (RQ2). These results highlight the importance of coordinated spatial planning to strengthen intermodal connectivity and support the development of integrated national non-motorized mobility systems.

Author Contributions

Conceptualization, D.L. and H.C.C.; Methodology, D.L. and H.C.C.; Software, D.K.; Validation, H.C.C. and C.J.; Formal Analysis, D.K.; Investigation, D.L., H.C.C., Y.S. and D.K.; Resources, D.L., H.C.C. and Y.S.; Data Curation, D.K.; Writing—Original Draft Preparation, D.L., H.C.C. and Y.S.; Writing—Review & Editing, H.C.C. and C.J.; Visualization, Y.S. and D.K.; Supervision, C.J.; Project Administration, H.C.C. and C.J. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The spatial datasets used in this study were obtained from publicly available government tourism and transportation databases. The processed GIS layers and analytical scripts are available from the corresponding author on request.

Acknowledgments

We are grateful to the anonymous reviewers for their thorough and insightful comments.

Conflicts of Interest

The authors declare no conflicts of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

Abbreviations

The following abbreviations are used in this manuscript:
AHPAnalytic Hierarchy Process
ARAccessibility Ratio
CVCoefficient of Variation
GISGeographic Information System
KMNKorea Mobility Network
KNMIKorea National Mobility Index
KORAILKorea Railroad Corporation
KTXKorea Train e-Xpress
MDNHMean Distance to Nearest Hub
MIIMultimodal Integration Index
ODOrigin–Destination
RQResearch Question
TEN-TTrans-European Transport Network

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Figure 1. Data preparation and network dataset construction. The figure illustrates the data collection and preprocessing steps used to construct the national non-motorized mobility network dataset.
Figure 1. Data preparation and network dataset construction. The figure illustrates the data collection and preprocessing steps used to construct the national non-motorized mobility network dataset.
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Figure 2. GIS-based spatial network analysis workflow. The figure presents the analytical procedures used in the study, including OD cost matrix analysis, proximity analysis, accessibility evaluation, and multimodal integration index calculation.
Figure 2. GIS-based spatial network analysis workflow. The figure presents the analytical procedures used in the study, including OD cost matrix analysis, proximity analysis, accessibility evaluation, and multimodal integration index calculation.
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Figure 3. Spatial connectivity between walking trails and cycling routes. Orange nodes represent walking trails and green nodes represent cycling routes. Connecting lines indicate spatial proximity relationships identified within the 30 km distance threshold.
Figure 3. Spatial connectivity between walking trails and cycling routes. Orange nodes represent walking trails and green nodes represent cycling routes. Connecting lines indicate spatial proximity relationships identified within the 30 km distance threshold.
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Figure 4. Spatial integration between walking trails and canoe activity sites. Orange nodes represent walking trails, and purple nodes represent water-based activity sites. Connecting lines indicate spatial proximity relationships identified within the 30 km distance threshold.
Figure 4. Spatial integration between walking trails and canoe activity sites. Orange nodes represent walking trails, and purple nodes represent water-based activity sites. Connecting lines indicate spatial proximity relationships identified within the 30 km distance threshold.
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Figure 5. Integrated national non-motorized mobility network. Yellow nodes represent walking trails, green nodes represent cycling routes, and pink nodes represent canoe activity sites. Blue nodes represent major KTX transportation hubs.
Figure 5. Integrated national non-motorized mobility network. Yellow nodes represent walking trails, green nodes represent cycling routes, and pink nodes represent canoe activity sites. Blue nodes represent major KTX transportation hubs.
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Table 1. Structural distance characteristics of the walking–cycling OD network.
Table 1. Structural distance characteristics of the walking–cycling OD network.
IndicatorValueInterpretation
Mean intermodal distance (km)10.55Typical transition distance between walking and cycling nodes
Minimum distance (km)~0Presence of spatial clustering and overlapping hubs
Maximum distance (km)29.97Existence of extended spatial gaps
Number of OD links2010A high density of potential interconnections
Network structureHybridCoexistence of clustered hubs and dispersed segments
Table 2. Structural distance characteristics of the walking–canoe OD network.
Table 2. Structural distance characteristics of the walking–canoe OD network.
IndicatorValueInterpretation
Mean intermodal distance (km)10.89Typical transition distance between walking and canoe nodes
Minimum distance (km)~0Presence of land–water spatial clustering
Maximum distance (km)29.95Existence of extended intermodal gaps
Number of OD links1948Dense relational connectivity between walking and canoe facilities
Network structureHybridCoexistence of integration hubs and spatial discontinuities
Table 3. Network distance statistics comparison.
Table 3. Network distance statistics comparison.
Network TypeTotal OD LinksMean (km)Std Dev (km)Min (km)Max (km)Median (km)
Walking–Cycling201010.557.410.0029.979.60
Walking–Canoe194810.897.580.0029.929.78
Note: OD = Origin–Destination. Distances represent the minimum network paths between mobility nodes.
Table 4. Descriptive statistics of bicycle route analysis by facility rank.
Table 4. Descriptive statistics of bicycle route analysis by facility rank.
RankWalk Time (min)
Mean ± SD
Walk Time (min) RangeDistance (km) Mean ± SDDistance (km) RangeN
116.28 ± 56.490–72.771.39 ± 4.710–6.10274
297.66 ± 65.4432.22–163.108.14 ± 5.452.69–13.59271
3141.24 ± 58.8382.41–200.0711.77 ± 4.906.87–16.67270
4175.04 ± 61.45113.59–236.4914.59 ± 5.129.47–19.71266
5202.60 ± 64.57138.03–267.1716.88 ± 5.3811.50–22.26259
Note: Walk time is measured in minutes and distance in kilometers. N indicates the number of origin locations included in the proximity analysis for each facility rank.
Table 5. Descriptive statistics of the canoe route analysis.
Table 5. Descriptive statistics of the canoe route analysis.
RankWalk Time (min)
Mean ± SD
Walk Time (min) RangeDistance (km) Mean ± SDDistance (km) RangeN
111.63 ± 44.450–56.080.97 ± 3.700–4.67260
295.19 ± 57.4337.76–152.627.93 ± 4.793.14–12.72258
3139.43 ± 51.9887.45–191.4111.62 ± 4.337.29–15.95257
4175.10 ± 59.46115.64–234.5614.59 ± 4.959.64–19.54256
5204.83 ± 64.68140.15–269.5117.07 ± 5.3911.68–22.46253
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MDPI and ACS Style

Lee, D.; Chu, H.C.; Syn, Y.; Kim, D.; Jeong, C. Spatial Connectivity Analysis of Korea’s Non-Motorized Mobility Network: A GIS-Based Framework for Sustainable Tourism Planning Integrating Walking, Cycling, and Water Routes. Systems 2026, 14, 359. https://doi.org/10.3390/systems14040359

AMA Style

Lee D, Chu HC, Syn Y, Kim D, Jeong C. Spatial Connectivity Analysis of Korea’s Non-Motorized Mobility Network: A GIS-Based Framework for Sustainable Tourism Planning Integrating Walking, Cycling, and Water Routes. Systems. 2026; 14(4):359. https://doi.org/10.3390/systems14040359

Chicago/Turabian Style

Lee, Dongmin, Ha Cheong Chu, Yewon Syn, Deul Kim, and Chul Jeong. 2026. "Spatial Connectivity Analysis of Korea’s Non-Motorized Mobility Network: A GIS-Based Framework for Sustainable Tourism Planning Integrating Walking, Cycling, and Water Routes" Systems 14, no. 4: 359. https://doi.org/10.3390/systems14040359

APA Style

Lee, D., Chu, H. C., Syn, Y., Kim, D., & Jeong, C. (2026). Spatial Connectivity Analysis of Korea’s Non-Motorized Mobility Network: A GIS-Based Framework for Sustainable Tourism Planning Integrating Walking, Cycling, and Water Routes. Systems, 14(4), 359. https://doi.org/10.3390/systems14040359

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