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Keywords = heritage building-informed generative design

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33 pages, 55619 KB  
Article
GSWOA-BP-Based Intelligent Generation of Historic Architectural Patterns for Urban Renewal and Heritage Building-Informed Regeneration
by Yupeng Cao, Heng Liu and Xueyan Li
Sustainability 2026, 18(10), 4961; https://doi.org/10.3390/su18104961 - 14 May 2026
Viewed by 353
Abstract
Based on the UN SDGs global agenda and China’s national urban renewal strategy, this study highlights the key role of historic architectural decorative patterns in supporting cultural continuity in urban renewal and facilitating heritage building-informed regeneration. Focusing on the sustainable development of urban [...] Read more.
Based on the UN SDGs global agenda and China’s national urban renewal strategy, this study highlights the key role of historic architectural decorative patterns in supporting cultural continuity in urban renewal and facilitating heritage building-informed regeneration. Focusing on the sustainable development of urban renewal and heritage building-informed design and regeneration of historic buildings, this study explores the quantification of the cultural memory value of decorative patterns. It integrates a quantitative indicator system into the Gaussian Strategy Enhanced Whale Optimization Algorithm-Back Propagation Neural Network (GSWOA-BP) to enable intelligent pattern generation. First, cultural genes are extracted from architectural heritage, followed by digital quantification and analysis, to generate context-appropriate pattern designs. These are then applied to urban renewal scenarios, ultimately promoting the transmission and revitalization of architectural heritage through digital means. This study provides theoretical support and a technical pathway for the intelligent design of historic architectural decorative patterns, facilitates cultural continuity in heritage building-informed design for urban renewal, and presents a heritage building-informed generative design framework. Full article
(This article belongs to the Special Issue Sustainable Development of Construction Engineering—2nd Edition)
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24 pages, 27840 KB  
Article
Decoding Public Perception of Brownfield-Transformed Urban Parks: An Interpretable Machine Learning Framework Integrating XGBoost–SHAP
by Xiaomin Wang, Xiangru Chen, Chao Yang, Zhongyuan Zhao and Xinling Chen
Buildings 2026, 16(8), 1632; https://doi.org/10.3390/buildings16081632 - 21 Apr 2026
Viewed by 405
Abstract
Brownfield-transformed urban parks, particularly those derived from industrial heritage, play a critical role in both cultural preservation and public-space provision. However, existing studies often rely on linear models and general urban contexts, limiting their ability to capture nonlinear, interaction-driven perception and translate analytical [...] Read more.
Brownfield-transformed urban parks, particularly those derived from industrial heritage, play a critical role in both cultural preservation and public-space provision. However, existing studies often rely on linear models and general urban contexts, limiting their ability to capture nonlinear, interaction-driven perception and translate analytical results into design-oriented insights. To address this gap, this study develops an interpretable data-driven framework integrating NLP (natural language processing) with explainable machine learning. Using social media reviews from Shougang Park in Beijing, built environmental elements are identified and structured into four dimensions—Accessibility, Safety, Comfort, and Enjoyment. An XGBoost model combined with SHAP analysis is employed to examine variable importance, nonlinear relationships, and interaction effects. The results reveal that visitor satisfaction is governed by heterogeneous and nonlinear relationships rather than independent additive effects. Several variables exhibit threshold-like, diminishing, and inverted-U-shaped patterns, indicating sensitivity to intensity ranges. More importantly, spatial perception emerges from the nonlinear coupling of multiple elements, forming four representative interaction types: compensatory, inverted-U-shaped, context-dependent, and threshold-like relationships. Key interactions are concentrated around industrial landscape, leisure activities, and supporting facilities. Building on these findings, the study translates interactions into design-oriented strategies, emphasizing synergistic configuration, functional balance, moderated development intensity, and context- sensitive programming. By linking interpretable machine learning with spatial design, this research advances an interaction-oriented paradigm and provides a transferable framework for satisfaction-informed evaluation and optimization of brownfields. Full article
(This article belongs to the Section Architectural Design, Urban Science, and Real Estate)
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21 pages, 15260 KB  
Article
Intelligent HBIM Framework for Group-Oriented Preventive Protection: A Case Study of the Suopo Ancient Watchtower Complex in Danba
by Li Zhang, Chen Tang, Yaofan Ye, Jinzi Yang and Feng Xu
Buildings 2026, 16(5), 995; https://doi.org/10.3390/buildings16050995 - 3 Mar 2026
Viewed by 373
Abstract
Heritage Building Information Modeling (HBIM) is accelerating the transition from reactive restoration to preventive conservation in architectural heritage management. Nevertheless, research at the heritage-cluster scale remains limited, particularly in terms of multi-source data integration, dynamic value–risk coupling, and lifecycle-oriented decision support. This study [...] Read more.
Heritage Building Information Modeling (HBIM) is accelerating the transition from reactive restoration to preventive conservation in architectural heritage management. Nevertheless, research at the heritage-cluster scale remains limited, particularly in terms of multi-source data integration, dynamic value–risk coupling, and lifecycle-oriented decision support. This study proposes an intelligent HBIM-based framework designed to support integrated data processing, automated value–risk assessment, and preventive intervention planning for masonry heritage clusters. The framework is validated through its application to the Suopo Ancient Watchtower Complex in Danba, Sichuan, consisting of 84 polygonal stepped-in stone towers. By integrating 3D laser scanning, unmanned aerial vehicle (UAV) oblique photogrammetry, and historical archival data, a closed-loop workflow is established, spanning data acquisition, parametric semantic modeling, and intervention prioritization. A dedicated parametric component library and hierarchical semantic database tailored to irregular polygonal masonry significantly enhance modeling consistency, semantic coherence, and cross-building reusability. Leveraging the Revit Application Programming Interface (API) and Dynamo, the framework embeds a value–risk model (P = V × R), enabling automated component-level evaluation, real-time visualization of conservation priorities, and one-click generation of intervention lists. Results demonstrate improved modeling accuracy, efficiency, and decision reliability compared with conventional manual workflows. The framework offers a scalable and replicable pathway for sustainable conservation of masonry heritage clusters in high-seismic regions and provides a foundation for future integration with IoT-enabled digital twin systems. Full article
(This article belongs to the Special Issue Artificial Intelligence in Architecture and Interior Design)
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27 pages, 6717 KB  
Article
AI Implementation Roadmap for Automated HBIM: Toward Standardised Digital Workflows for UK Cultural Heritage
by Aleksander Gil and Yusuf Arayici
Buildings 2026, 16(5), 921; https://doi.org/10.3390/buildings16050921 - 26 Feb 2026
Viewed by 618
Abstract
Despite significant advances in digital surveying technologies, Heritage Building Information Modelling (HBIM) remains constrained by labour-intensive processing, fragmented classification systems, and limited standardised pathways for integrating Artificial Intelligence (AI). The absence of a systematic and standardised roadmap for AI adoption has limited both [...] Read more.
Despite significant advances in digital surveying technologies, Heritage Building Information Modelling (HBIM) remains constrained by labour-intensive processing, fragmented classification systems, and limited standardised pathways for integrating Artificial Intelligence (AI). The absence of a systematic and standardised roadmap for AI adoption has limited both academic progress and industrial implementation. This paper proposes a comprehensive AI implementation roadmap for automated HBIM, developed through iterative research and empirical experimentation on UK heritage case studies. Building upon Design Science Research (DSR) principles, the roadmap delineates the critical dependencies among classification systems, data acquisition, algorithmic segmentation, and geometry generation, while embedding the Five HBIM Motivations, revival, restoration, restitution, retrofit, and resilience, as the primary structuring device for project intent. The study synthesises experimental findings into a practical, ISO 19650-aligned framework capable of guiding AI integration at both strategic and operational levels. An AI-enabled HBIM Execution Plan is presented as an implementation mechanism, enabling project teams to align digital workflows with heritage objectives, classification structures, and computational capacities. Evaluation through expert interviews confirms the roadmap’s feasibility, adaptability, and potential to enhance documentation efficiency, semantic richness, and interdisciplinary collaboration. The paper contributes a robust, scalable, and standards-compliant methodology for embedding AI in HBIM, offering a pivotal reference for the UK cultural heritage sector and a template for international replication. Full article
(This article belongs to the Section Construction Management, and Computers & Digitization)
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34 pages, 7022 KB  
Article
Quantitative Perceptual Analysis of Feature-Space Scenarios in Network Media Evaluation Using Transformer-Based Deep Learning: A Case Study of Fuwen Township Primary School in China
by Yixin Liu, Zhimin Li, Lin Luo, Simin Wang, Ruqin Wang, Ruonan Wu, Dingchang Xia, Sirui Cheng, Zejing Zou, Xuanlin Li, Yujia Liu and Yingtao Qi
Buildings 2026, 16(4), 714; https://doi.org/10.3390/buildings16040714 - 9 Feb 2026
Cited by 1 | Viewed by 684
Abstract
Against the dual backdrop of the rural revitalization strategy and the pursuit of high-quality, balanced urban–rural education, optimizing rural campus spaces has emerged as an important lever for addressing educational resource disparities and improving pedagogical quality. However, conventional evaluation of campus space optimization [...] Read more.
Against the dual backdrop of the rural revitalization strategy and the pursuit of high-quality, balanced urban–rural education, optimizing rural campus spaces has emerged as an important lever for addressing educational resource disparities and improving pedagogical quality. However, conventional evaluation of campus space optimization faces two systemic dilemmas. First, top-down decision-making often neglects the authentic needs of diverse stakeholders and place-based knowledge, resulting in spatial interventions that lose regional distinctiveness. Second, routine public participation is constrained by geographical barriers, time costs, and sample-size limitations, which can amplify professional cognitive bias and impede comprehensive feedback formation. The compounded effect of these challenges contributes to a disconnect between spatial optimization outcomes and perceived needs, thereby constraining the distinctive development of rural educational spaces. To address these constraints, this study proposes a novel method that integrates regional spatial feature recognition with digital media-based public perception assessment. At the data collection and ethical governance level, the study strictly adheres to platform compliance and academic ethics. A total of 12,800 preliminary comments were scraped from major social media platforms (e.g., Douyin, Dianping, and Xiaohongshu) and processed through a three-stage screening workflow—keyword screening–rule-based filtering–manual verification—to yield 8616 valid records covering diverse public groups across China. All user-identifying information was fully anonymized to ensure lawful use and privacy protection. At the analytical modeling level, we develop a Transformer-based deep learning system that leverages multi-head attention mechanisms to capture implicit spatial-sentiment features and metaphorical expressions embedded in review texts. Evaluation on an independent test set indicates a classification accuracy of 89.2%, aligning with balanced and stable scoring performance. Robustness is further strengthened by introducing an equal-weight alternative strategy and conducting stability checks to indicate the consistency of model outputs across weighting assumptions. At the scenario interpretation level, we combine grounded-theory coding with semantic network analysis to establish a three-tier spatial analysis framework—macro (landscape pattern/hydro-topological patterns), meso (architectural interface), and micro (teaching scenes/pedagogical scenarios)—and incorporate an interpretive stakeholder typology (tourists, residents, parents, and professional groups) to systematically identify and quantify key features shaping public spatial perception. Findings show that, at the macro level, naturally integrated scenarios—such as “campus–farmland integration” and “mountain–water embeddedness”—exhibit high affective association, aligning with the “mountain-water-field-village” spatial sequence logic and suggesting broad public endorsement of ecological campus concepts, whereas vernacular settlement-pattern scenarios receive relatively low attention due to cognitive discontinuities. At the meso level, innovative corridor strategies (e.g., framed vistas and expanded corridor spaces) strengthen the building–nature interaction and suggest latent value in stimulating exploratory spatial experience. At the micro level, place-based practice-oriented teaching scenes (e.g., intangible cultural heritage handcraft and creative workshops) achieve higher scores, aligning with the compatibility of vernacular education’s “differential esthetics,” while urban convergence-oriented interdisciplinary curriculum scenes suggest an interpretive gap relative to public expectations. These results indicate an embedded relationship between public perception and regional spatial features, which is further shaped by a multi-actor governance process—characterized by “Government + Influencers + Field Study”—that mediates how rural educational spaces are produced, communicated, and interpreted in digital environments. The study’s innovative value lies in integrating sociological theories (e.g., embeddedness) with deep learning techniques to fill the regional and multi-actor perspective gap in rural campus POE and to promote a methodological shift from “experience-based induction” toward a “data-theory” dual-drive model. The findings provide inferential evidence for rural campus renewal and optimization; the methodological pipeline is transferable to small-scale rural primary schools with media exposure and salient regional ecological characteristics, and it offers a new pathway for incorporating digital media-driven public perception feedback into planning and design practice. The research methodology of this study consists of four sequential stages, which are implemented in a systematic and progressive manner: First, data collection was conducted: Python and the Octopus Collector were used to crawl online comment data related to Fuwen Township Central Primary School, strictly complying with the user agreements of the Douyin, Dianping, and Xiaohongshu platforms. Second, semantic preprocessing was performed: The evaluation content was segmented to generate word frequency statistics and semantic networks; qualitative analysis was conducted using Origin software, and quantitative translation was realized via Sankey diagrams. Third, spatial scene coding was carried out: Combined with a spatial characteristic identification system, a macro–meso–micro three-tier classification system for spatial scene characteristics was constructed to encode and quantitatively express the textual content. Finally, sentiment quantification and correlation analysis was implemented: A deep learning model based on the Transformer framework was employed to perform sentiment quantification scoring for each comment; Sankey diagrams were used to quantitatively correlate spatial scenes with sentiment tendencies, thereby exploring the public’s perceptual associations with the architectural spatial environment of rural campuses. Full article
(This article belongs to the Section Architectural Design, Urban Science, and Real Estate)
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24 pages, 7295 KB  
Article
Architectural Heritage Digitization: A Classification-Driven Semi-Automated Scan-to-HBIM Workflow
by Rnin Salah, Nóra Géczy and Kitti Ajtayné Károlyfi
Buildings 2026, 16(1), 21; https://doi.org/10.3390/buildings16010021 - 20 Dec 2025
Cited by 2 | Viewed by 1731
Abstract
The digitization of historic architecture increasingly relies on dense point clouds, yet the conversion of these datasets into structured Historic Building Information Models (HBIM) remains slow, inconsistent, and heavily dependent on manual interpretation. This paper introduces a classification-driven, mesh-based semi-automated workflow designed to [...] Read more.
The digitization of historic architecture increasingly relies on dense point clouds, yet the conversion of these datasets into structured Historic Building Information Models (HBIM) remains slow, inconsistent, and heavily dependent on manual interpretation. This paper introduces a classification-driven, mesh-based semi-automated workflow designed to close this gap by providing a controlled, repeatable path from raw TLS data to BIM-ready geometry. The method combines three elements strategically integrated into a unified framework: (1) pre-classified point cloud groups that establish a structured starting point, (2) mesh simplification and slice-based geometric reconstruction executed through Rhino and Grasshopper, and (3) direct BIM integration using Rhino.Inside.Revit to generate categorized HBIM components rather than passive mesh imports. The workflow is validated on an irregular exterior stone column from the historic chapel in Sopronhorpács, Hungary, an element characterized by surface erosion, asymmetric profiles, and deviations from verticality. This type of geometry typically challenges both manual modeling and fully automated shape-fitting. The proposed method reconstructed the column as a Revit Structural Column element with a substantial reduction in modeling time compared to a manual Scan-to-BIM workflow. A deviations analysis confirmed that the reconstructed geometry remained within the millimeter-level accuracy required for conservation-grade documentation. The study demonstrates that combining element-based classification, mesh preprocessing, and controlled semi-automation can significantly improve both the speed and reliability of Scan-to-HBIM processes without requiring technical expertise yet delivers results that align with the precision expected in scientific documentation. By formalizing the Pre-Classified Modeling Logic (PCML), the approach provides a foundation for reconstructing a wide range of heritage elements and establishes a practical step forward toward more efficient, interpretable, and accessible digital preservation practices. Full article
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17 pages, 2657 KB  
Article
GEPReS: A Geospatially Enabled Predictive Recommendation System for the Preventive Management of Historical Buildings
by Noëlla Dolińska, Gabriela Wojciechowska, Joanna Bac-Bronowicz and Łukasz Jan Bednarz
ISPRS Int. J. Geo-Inf. 2026, 15(1), 1; https://doi.org/10.3390/ijgi15010001 - 19 Dec 2025
Cited by 1 | Viewed by 704
Abstract
This study introduces GEPReS, a Geospatially Enabled Predictive Recommendation System designed to support the preventive management of historical buildings through short-horizon risk forecasting and context-aware decision support. The system integrates Geographic Information Systems (GISs), Internet of Things (IoT) sensor networks, and authoritative meteorological [...] Read more.
This study introduces GEPReS, a Geospatially Enabled Predictive Recommendation System designed to support the preventive management of historical buildings through short-horizon risk forecasting and context-aware decision support. The system integrates Geographic Information Systems (GISs), Internet of Things (IoT) sensor networks, and authoritative meteorological data to generate timely, actionable recommendations for conservation interventions. These may include pre-emptive shutter closure during heatwaves, activation of ventilation under elevated humidity, or intensified monitoring of structurally sensitive zones during heavy precipitation. By coupling historical datasets with real-time telemetry and calibrated predictive models, GEPReS addresses the distinctive vulnerabilities of heritage structures, which arise from material sensitivity, conservation constraints, and operational limitations under contemporary climatic conditions. The architecture combines spatial analysis, typology-aware risk assessment, and reproducible modelling practices to ensure interpretability and compliance with conservation principles. Designed for scalability and online implementation, the system provides a modular framework capable of adapting to diverse building typologies and resource environments. The paper details the system architecture, data sources, modelling approach, and implementation challenges, supported by empirical evidence from multi-site pilot deployments. Full article
(This article belongs to the Special Issue Spatial Data Science and Knowledge Discovery)
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36 pages, 12940 KB  
Article
Cyber Representation in Experimental Architectural Restoration: Integrating HBIM, As-Designed BIM, and VR in a Multilevel and Multitemporal Immersive Ecosystem
by Fabrizio Banfi, Marco Pela and Angelo Giuseppe Landi
Appl. Sci. 2025, 15(18), 10243; https://doi.org/10.3390/app151810243 - 20 Sep 2025
Cited by 2 | Viewed by 2651
Abstract
This study explores the transformative potential of cyber technologies in the preservation, representation, and restoration of architectural heritage. Bridging technical and humanistic dimensions, it examines how tools like Heritage Building Information Modeling (HBIM), As-Designed BIM, and Virtual Reality (VR) support deeper, multilevel, and [...] Read more.
This study explores the transformative potential of cyber technologies in the preservation, representation, and restoration of architectural heritage. Bridging technical and humanistic dimensions, it examines how tools like Heritage Building Information Modeling (HBIM), As-Designed BIM, and Virtual Reality (VR) support deeper, multilevel, and multitemporal understandings of cultural sites. Central to the research is an experimental restoration project on the castles of Civitella in Val di Chiana (Arezzo), serving as a methodological testbed for a digitally integrated approach. Developed through a scan-to-BIM process, the project yields a high-fidelity immersive ecosystem—both a rigorous model for future restoration and a VR platform enabling access to previously unreachable spaces. Here, representation is not a secondary or illustrative phase but a central, operative component in historical interpretation and architectural design. This approach embraces cyber representation: a digitally mediated, interactive, and evolving form that extends heritage beyond its physical boundaries. The immersive model fosters renewed dialogue between past and present, encouraging critical reflection on material authenticity, spatial transformation, and conservation strategies within a dynamic, participatory, interactive webVR environment. Representation thus becomes a generative and narrative tool, shaping restoration scenarios while enhancing analytical depth and public engagement. The study ultimately proposes a shift in historical storytelling toward a polyphonic, experiential, cyber-mediated narrative—where technology, memory, and perception converge to create new forms of cultural continuity. Full article
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23 pages, 5510 KB  
Article
Research on Intelligent Generation of Line Drawings from Point Clouds for Ancient Architectural Heritage
by Shuzhuang Dong, Dan Wu, Weiliang Kong, Wenhu Liu and Na Xia
Buildings 2025, 15(18), 3341; https://doi.org/10.3390/buildings15183341 - 15 Sep 2025
Viewed by 1782
Abstract
Addressing the inefficiency, subjective errors, and limited adaptability of existing methods for surveying complex ancient structures, this study presents an intelligent hierarchical algorithm for generating line drawings guided by structured architectural features. Leveraging point cloud data, our approach integrates prior semantic and structural [...] Read more.
Addressing the inefficiency, subjective errors, and limited adaptability of existing methods for surveying complex ancient structures, this study presents an intelligent hierarchical algorithm for generating line drawings guided by structured architectural features. Leveraging point cloud data, our approach integrates prior semantic and structural knowledge of ancient buildings to establish a multi-granularity feature extraction framework encompassing local geometric features (normal vectors, curvature, Simplified Point Feature Histograms-SPFH), component-level semantic features (utilizing enhanced PointNet++ segmentation and geometric graph matching for specialized elements), and structural relationships (adjacency analysis, hierarchical support inference). This framework autonomously achieves intelligent layer assignment, line type/width selection based on component semantics, vectorization optimization via orthogonal and hierarchical topological constraints, and the intelligent generation of sectional views and symbolic annotations. We implemented an algorithmic toolchain using the AutoCAD Python API (pyautocad version 0.5.0) within the AutoCAD 2023 environment. Validation on point cloud datasets from two representative ancient structures—Guanchang No. 11 (Luoyuan County, Fujian) and Li Tianda’s Residence (Langxi County, Anhui)—demonstrates the method’s effectiveness in accurately identifying key components (e.g., columns, beams, Dougong brackets), generating engineering-standard line drawings with significantly enhanced efficiency over traditional approaches, and robustly handling complex architectural geometries. This research delivers an efficient, reliable, and intelligent solution for digital preservation, restoration design, and information archiving of ancient architectural heritage. Full article
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20 pages, 4277 KB  
Article
BIM and HBIM: Comparative Analysis of Distinct Modelling Approaches for New and Heritage Buildings
by Alcínia Zita Sampaio, Augusto M. Gomes, João Tomé and António M. Pinto
Heritage 2025, 8(8), 299; https://doi.org/10.3390/heritage8080299 - 28 Jul 2025
Cited by 3 | Viewed by 2146
Abstract
The Building Information Modelling (BIM) methodology has been applied in distinct sectors of the construction industry with a growing demonstration of benefits, supporting the elaboration of integrated and collaborative projects. The main foundation of the methodology is the generation of a three-dimensional (3D) [...] Read more.
The Building Information Modelling (BIM) methodology has been applied in distinct sectors of the construction industry with a growing demonstration of benefits, supporting the elaboration of integrated and collaborative projects. The main foundation of the methodology is the generation of a three-dimensional (3D) digital representation, the BIM model, concerning the different disciplines that make up a complete project. The BIM model includes a database referring to all the information regarding the geometric and physical aspects of the project. The procedure related to the generation of BIM models presents a significant difference depending on whether the project refers to new or old buildings. Current BIM systems contain libraries with various types of parametric objects that are effortlessly adaptable to new constructions. However, the generation of models of old buildings, supported by the definition of detailed new parametric objects, is required. The present study explores the distinct modelling procedures applied in the generation of specific parametric objects for new and old constructions, with the objective of evaluating the comparative complexity that the designer faces in modelling specific components. For a correct representation of new buildings in the design phase or for the reproduction of the accurate architectural configuration of heritage buildings, the modelling process presents significant differences identified in the study. Full article
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33 pages, 9781 KB  
Article
Spatial Narrative Optimization in Digitally Gamified Architectural Scenarios
by Deshao Wang, Jieqing Xu and Luwang Chen
Buildings 2025, 15(15), 2597; https://doi.org/10.3390/buildings15152597 - 23 Jul 2025
Cited by 1 | Viewed by 3599
Abstract
Currently, exploring digital immersive experiences is a new trend in the innovation and development of cultural tourism. This study addresses the growing demand for digital immersion in cultural tourism by examining the integration of spatial narrative and digitally gamified architectural scenarios. This study [...] Read more.
Currently, exploring digital immersive experiences is a new trend in the innovation and development of cultural tourism. This study addresses the growing demand for digital immersion in cultural tourism by examining the integration of spatial narrative and digitally gamified architectural scenarios. This study synthesizes an optimized framework for narrative design in digitally gamified architectural scenarios, integrating spatial narrative theory and feedback-informed design. The proposed model comprises four key components: (1) developing spatial narrative design methods for such scenarios; (2) constructing a spatial language system for spatial narratives using linguistic principles to organize narrative expression; (3) building a preliminary digitally gamified scenario based on the “Wuhu Jiaoji Temple Renovation Project” after architectural and environmental enhancements; and (4) optimization through thermal feedback experiments—collecting visitor trajectory heatmaps, eye-tracking heatmaps, and oculometric data. The results show that the optimized design, validated in the original game Dreams of Jiaoji, effectively enhanced spatial narrative execution by refining both on-site and in-game architectural scenarios. Post-optimization visitor feedback confirmed the validity of the proposed optimization strategies and principles, providing theoretical and practical references for innovative digital cultural tourism models and architectural design advancements. In the context of site-specific architectural conservation, this approach achieves two key objectives: the generalized interpretation of architectural cultural resources and their visual representation through gamified interactions. This paradigm not only enhances public engagement through enabling a multidimensional understanding of historical building cultures but also accelerates the protective reuse of heritage sites, allowing heritage value to be maximized through contemporary reinterpretation. The interdisciplinary methodology promotes sustainable development in the digital transformation of cultural tourism, fostering user-centered experiences and contributing to rural revitalization. Ultimately, this study highlights the potential use of digitally gamified architectural scenarios as transformative tools for heritage preservation, cultural dissemination, and rural community revitalization. Full article
(This article belongs to the Section Architectural Design, Urban Science, and Real Estate)
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29 pages, 7900 KB  
Article
An Integrated BIM-Based Application for Automating the Conceptual Design for Vietnamese Vernacular Architecture: Using Revit and Dynamo
by Thai Bao Tran, Tien Phat Dinh, Truong Dang Hoang Nhat Nguyen, Dang Huy Ly, Byeol Kim and Yonghan Ahn
Appl. Sci. 2025, 15(12), 6776; https://doi.org/10.3390/app15126776 - 16 Jun 2025
Cited by 4 | Viewed by 4204
Abstract
Vietnamese vernacular architecture (VVA), rich in cultural and historical significance, is increasingly endangered by modernization, the consequences of war, and environmental degradation. The preservation and revitalization of this architectural heritage demand the integration of advanced digital technologies. Building Information Modeling (BIM), known for [...] Read more.
Vietnamese vernacular architecture (VVA), rich in cultural and historical significance, is increasingly endangered by modernization, the consequences of war, and environmental degradation. The preservation and revitalization of this architectural heritage demand the integration of advanced digital technologies. Building Information Modeling (BIM), known for its capabilities in digital documentation, data management, and design accuracy, offers significant potential. However, its adoption within the context of VVA remains underexplored, particularly due to a lack of specialized tools and methods that align with modern technical requirements. This study proposes an integrated BIM-based approach to automate the conceptual design of buildings inspired by VVA, utilizing Revit and Dynamo. The research follows a multi-stage methodology comprising data acquisition, architectural element analysis, and prototype model development. The outcomes aim to assist architects and engineers in efficiently generating design concepts that blend traditional aesthetics with contemporary building standards. Ultimately, this work contributes to sustainable architectural practices by bridging heritage preservation with modern construction imperatives. Full article
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19 pages, 3115 KB  
Article
OnlineLino—A Website on Architect Raul Lino’s Built Heritage at Médio Tejo, in Portugal
by Anabela Moreira, Inês Serrano, Paulo Santos, Regina Delfino, Pedro Matos, Ana Gracio and Ana Xavier
Buildings 2025, 15(2), 290; https://doi.org/10.3390/buildings15020290 - 20 Jan 2025
Cited by 1 | Viewed by 2232
Abstract
The cultural context and values of twentieth-century architecture and construction confirm the need to preserve them for future generations, given the multiple challenges to overcome. Raul Lino da Silva (1879–1974) is a celebrated Portuguese architect who worked throughout the twentieth century and whose [...] Read more.
The cultural context and values of twentieth-century architecture and construction confirm the need to preserve them for future generations, given the multiple challenges to overcome. Raul Lino da Silva (1879–1974) is a celebrated Portuguese architect who worked throughout the twentieth century and whose architectural legacy is scattered from the north to the south of the country. The aim of this paper is to present the development of the website OnlineLino, which is related to the architectural and construction heritage of Raul Lino in the Médio Tejo region, an inland Portuguese territory with low demographic density. This work is focused on integrating documentary information dispersed across different digital funds, by aggregating it on a website that will be made available for public access in the future. To this end, data were collected from different funds, and the information was aggregated and systematised so that it could be included in the digital database developed, the OnlineLino website. The work was carried out by a multidisciplinary team in an academic setting, involving the areas of architecture, civil engineering, computer engineering and design. We hope that this website will contribute to the dissemination of Raul Lino’s architectural legacy, especially for buildings that are less studied and known. Full article
(This article belongs to the Special Issue Selected Papers from the REHABEND 2024 Congress)
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24 pages, 2866 KB  
Article
BIM-Based Strategies for the Revitalization and Automated Management of Buildings: A Case Study
by Stefano Cascone, Giuliana Parisi and Rosa Caponetto
Sustainability 2024, 16(16), 6720; https://doi.org/10.3390/su16166720 - 6 Aug 2024
Cited by 18 | Viewed by 4763
Abstract
This study explores the transformative potential of integrating Building Information Modeling (BIM) and Generative Design methodologies in heritage conservation and building management. By utilizing BIM, detailed architectural, structural, and MEP models were created, facilitating precise design and effective stakeholder collaboration. Generative Design enabled [...] Read more.
This study explores the transformative potential of integrating Building Information Modeling (BIM) and Generative Design methodologies in heritage conservation and building management. By utilizing BIM, detailed architectural, structural, and MEP models were created, facilitating precise design and effective stakeholder collaboration. Generative Design enabled the exploration of multiple design solutions, optimizing spatial layouts and structural integrity. The project also integrated automated management systems and IoT sensors to enhance real-time monitoring, energy efficiency, and user comfort through the development of a digital twin. Despite encountering challenges such as technical complexities and budget constraints, the project successfully preserved the cinema’s historical essence while incorporating modern functionalities. The findings highlight the contributions of BIM and Generative Design to the AEC industry, emphasizing their role in improving design accuracy, operational efficiency, and sustainability. This research provides valuable insights for future projects in heritage conservation, offering a blueprint for balancing historical preservation with contemporary needs. The revitalization of the “Ex Cinema Santa Barbara” in Paternò exemplifies these advancements, demonstrating how these technologies can restore and modernize culturally significant historical buildings effectively. Full article
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29 pages, 13001 KB  
Article
A Comprehensive Heritage BIM Methodology for Digital Modelling and Conservation of Built Heritage: Application to Ghiqa Historical Market, Saudi Arabia
by Ahmad Baik
Remote Sens. 2024, 16(15), 2833; https://doi.org/10.3390/rs16152833 - 2 Aug 2024
Cited by 21 | Viewed by 4619
Abstract
Preserving historical architectural structures is crucial for safeguarding cultural heritage. This study explores the application of Heritage Building Information Modelling (HBIM) to enhance the documentation process of the Ghiqa Historical Market in Saudi Arabia, a monument known for its intricate architecture and cultural [...] Read more.
Preserving historical architectural structures is crucial for safeguarding cultural heritage. This study explores the application of Heritage Building Information Modelling (HBIM) to enhance the documentation process of the Ghiqa Historical Market in Saudi Arabia, a monument known for its intricate architecture and cultural significance. Traditional documentation methods often fail to capture detailed features accurately and rely on labour-intensive manual processes. HBIM uses advanced digital technologies to improve precision, efficiency, and preservation efforts. In this study, point cloud data from 3D laser scanning is used to create a detailed digital model of the market, covering structural systems, material attributes, architectural features, and historical context. The research also integrates historical archives and photographs to enrich the model with additional contextual information. This comprehensive approach provides a holistic understanding of the Ghiqa Historical Market, aiding accurate preservation and restoration decisions. HBIM offers several advantages in architectural documentation. The digital model enhances visualization, allowing stakeholders to explore the site from multiple perspectives. It also serves as a tool for analysing structural integrity, identifying potential risks, and planning restoration interventions. Moreover, digital documentation ensures effective knowledge transfer across generations, preserving valuable architectural heritage for future reference and research. Additionally, it promotes interdisciplinary collaboration among architects, historians, conservators, and other stakeholders involved in preservation. Including the Ghiqa Historical Market in the UNESCO World Heritage List would highlight its global significance, attracting international attention and resources for its preservation. This designation would underscore the market’s cultural and historical importance, fostering a sense of pride and responsibility in its maintenance. The implementation of Heritage BIM demonstrates its potential to revolutionize heritage conservation by combining diverse data sources into a single, detailed, and accessible digital resource. Full article
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