1. Introduction
Across the globe, the frequency and intensity of large-scale wildfires have been steadily increasing [
1]. Among these events, a particularly dangerous subset has emerged: extreme wildfire events (EWEs) [
2]. These fires are characterized by extreme behavior, with exceptionally high energy release, unpredictable spread patterns, and unprecedented size [
3].
In 2017, Portugal experienced the most severe instances of EWEs in its recorded history, with fires whose suppression exceeded the human and logistical capacities [
4]. Socio-economic dynamics, such as rural depopulation, land abandonment, and shifting land use patterns, are linked to the increasing vulnerability of landscapes to wildfires [
5,
6].
Given the increasing frequency and severity of EWEs in Portugal, prioritization within restoration planning efforts is very important [
7,
8]. The process of decision-making can be effectively supported by GIS tools, especially when engaging with multiple stakeholders [
9,
10,
11]. As Mediterranean landscapes are coupled socio-ecological systems [
12,
13], societal engagement through a participatory process contributes to the effectiveness of decision-making [
14].
In the broader literature on post-fire restoration efforts, among the main criteria used to evaluate the landscape after a wildfire, the resprouting ability of fire-prone species is a key factor in assessing vegetation recovery [
15]. Soil erosion also plays a central role in understanding land degradation following wildfires. The Revised Universal Soil Loss Equation (RUSLE) is a widely used model to estimate the long-term average annual soil loss [
16,
17]. Fire severity, defined as the degree of biomass consumption or degradation caused by fire [
18], strongly influences post-fire plant responses, depending on both the species’ traits and fire intensity.
Involving stakeholders in selecting criteria strengthens the fire and forest management strategies [
19,
20] and allows for context-specific decision-making. Geospatial technologies support the process by facilitating data visualization and spatial analysis [
21,
22,
23], while also enabling the monitoring of post-fire vegetation recovery over time [
24]. Tools like the Ecosystem Decision Support (EMDS) software and the Criterium Decision Plus (CDP) application from InfoHarvest (Seattle, WA, USA) exemplify how stakeholder preferences can be effectively incorporated into a GIS-based environment [
25,
26].
Recent applications of MCDA have emphasized the importance of stakeholder involvement in defining utility functions and assigning weights. For example, recent research engaged multiple stakeholders to prioritize the location of fuel treatments in forests to facilitate suppression if a wildfire occurs [
27,
28]. A key component of MCDA is the use of pairwise comparisons, typically conducted through questionnaires or surveys within the analytic hierarchy process (AHP) framework [
29,
30].
AHP is extensively applied in various fields, including natural resource management, due to its effectiveness in facilitating multi-objective planning [
31]. AHP problem structuring involves the design of a hierarchy of criteria and sub-criteria to reflect their relative importance [
32]. Consistency in AHP refers to the degree of logical coherence among paired comparisons, specifically relating to the principle of cardinal transitivity between judgements [
33]. For example, one study incorporated an approach to evaluate both individual consistency and overall group coherence when deriving weights [
34].
To our knowledge, no studies have applied a spatial MCDA approach for post-fire restoration prioritization following EWEs, either in Portugal or internationally. This research aims to fill this gap by designing post-fire restoration prioritization planning with local stakeholders to address restoration concerns following the EWE event in 2017 in Vale do Sousa, Portugal.
This study aimed to develop a participatory and spatially explicit decision-support approach to guide restoration planning after wildfires. The hypothesis is that integrating expert and stakeholder knowledge through a structured multi-criteria approach can effectively identify priority areas for post-fire restoration, reflecting both ecological and social needs. To achieve this, the study first identified and structured relevant criteria for restoration prioritization through a participatory process. It then applied the analytic hierarchy process (AHP) to quantify the relative importance of each criterion and define parameters that distinguish between low- and high-priority areas, as perceived by different stakeholders. Rather than excluding participants with lower consistency in their responses, all inputs were integrated to promote inclusivity and reduce potential bias. Finally, the results were synthesized into a spatial prioritization map, offering a practical tool for decision-makers involved in post-fire restoration efforts in the study area.
3. Results
3.1. Characterization of 2017 EWE and Pre-Selection of Criteria and Sub-Criteria
Due to its continuous spatial extent and the severity of its impact, which overwhelmed the local control and suppression capacities, a single and continuous fire perimeter from 2017 was selected (
Figure 3). It affected approximately 5755 ha, and eucalypt forests extended over 4226 ha (80.45%), while maritime pine forests areas ranked second (580.89 ha, 11.06%). The perimeter included other hardwood forests areas (386.44 ha, 7.36%), other oak forests (0.85%), spontaneous pastures (0.24%), umbrella pine forests (0.05%), and invasive species (0.23%) areas.
The preliminary set included three criteria—‘Soil Erosion’ (SE), the ‘Natural Recovery Capacity of the Vegetation’ (NRCV), and ‘Social Protection’ (SP) (
Table 1)—and six sub-criteria (
Table 1).
3.2. Finalized Criteria, Sub-Criteria, and Parameters for Prioritization
Three main criteria were kept for the analysis, while a total of 10 sub-criterions were selected to reflect the key ecological and social factors influencing the assignment of post-fire restoration priority (
Table 2). The criteria ‘Soil Erosion’ (SE) contained six sub-criterions, with the inclusion of ‘Presence of Water Lines’. The criteria ‘Natural Recovery Capacity of the Vegetation’ (NRCV) included two sub criterions, and ‘Social Areas’ was changed to ‘Social Protection’ (SP), and two sub-criterions were added according to the participants’ input during the session.
The criteria of SE included six sub-criteria: the K factor (soil erodibility), L factor and S factor (topography), C factor (vegetation cover), Fire Severity, and Presence of Water Lines. The fire severity was found in two main criteria, as it influences both the SE and NRCV. Stakeholders agreed to include the ‘Presence of Water Lines’ under the SE criteria. The goal of the NRCV is to assess the vegetation’s ability to regenerate after a wildfire, considering the fire severity patterns. The two sub-criterions were the ‘Natural Recovery Potential of Species’ (NRPS) and ‘Fire Severity’.
The criteria of ‘Social Protection’ (SP) included two sub-criteria: ‘Presence of Social Areas’ and ‘Presence of Road Network’. According to the stakeholders, the inclusion of both sub-criteria should be included to help guide interventions that directly address risk, particularly erosion and limited vegetation recovery.
3.3. Weighting of Criteria and Sub-Criteria for Restoration Prioritization
Results from the AHP pairwise comparisons revealed that the stakeholders prioritized ecological factors in post-fire restoration planning, with ‘Natural Recovery Capacity of the Vegetation’ receiving the highest weight (39.2%), followed closely by ‘Soil Erosion’. Meanwhile ‘Social Protection’ was weighted lower (22.8%) (
Table 3).
At the sub-criteria level, the pairwise comparison results revealed distinct patterns of stakeholder prioritization within each main criterion (
Table 4). Under the SE group, the Presence of Water Lines emerged as the most influential sub-criterion (28.1%), followed by Fire Severity (22.9%) and the K factor (17.7%). L and S factors and vegetation cover (C factor) were assigned lower weights. Within the NRCV group, the Natural Recovery Potential of Species (NRPS) received a dominant weight (68.4%), over Fire Severity (31.6%). Finally, for the SP group, the stakeholders assigned more importance to the Presence of Social Areas (56.5%) than to the Presence of Road Network (43.5%).
Final weights were calculated based on the CR, ED, and Spearman’s rank correlation, allowing for a more robust integration of expert input. The average weights varied across participants, ranging from 9.2% to 15.1%. Participant 3 contributed the most to the final aggregated weight, reflecting both high agreement with the other participants and acceptable internal consistency. In contrast, Participant 2 contributed the least (9.2%), likely due to lower consistency or divergence in prioritization patterns (
Table 5).
When calculating the weights separately at the main criteria level to reflect the potential differences in participant consistency across the AHP model, ‘Natural Recovery Capacity of the Vegetation’ remained the most prioritized criterion, with a final weight of 41.6% (
Table 6). ‘Soil Erosion’ followed closely at 38.3%, while ‘Social Protection’ received the lowest weight at 20.1%. Compared with the earlier aggregated weighting results (
Table 3), this disaggregated approach resulted in a slightly higher weight for ‘Natural Recovery Capacity of the Vegetation’ and a modest decrease for SP.
At the sub-criteria level, the final weights showed variation within each main criterion (
Table 7). The sub-criterion ‘Presence of Water Lines’ remained the most influential sub-criterion (31.3%), reflecting strong consensus on the role of hydrological features in erosion risk. ‘Fire Severity‘ was also significant (22.3%), while slope-related factors (K, S, L, and C factors) were comparatively less influential, particularly the L factor (5.3%). Within ‘Natural Recovery Capacity of the Vegetation’, the ‘Natural Recovery Potential of Species’ (65.8%) clearly outweighed ‘Fire Severity’ (33.8%), indicating a preference for proactive, species-based restoration capacity over disturbance intensity. For the SP group criteria, the ‘Presence of Social Areas’ was weighted more heavily (55.7%) than the ‘Presence of Road Network’ (44.3%).
3.4. Hierarchical Model
The hierarchical model (
Figure 4) reflected the preferences of all participants, adjusted by the weights’ results.
The survey results revealed stakeholder preferences that emphasized the importance of ecological over social criteria, which were incorporated into the final weighting scheme. The model structured the decision-making hierarchy across two levels: the main criteria and the sub-criteria. To integrate expert input, each block was assigned the final weight based on the Spearman’s rank correlation (S), Euclidean distance (ED), and consistency ratio (CR).
3.5. Development of the Restoration Prioritization Map
The CDP model, implemented within the EMDS framework in ArcGIS Pro, generated a series of spatial maps that displayed the outcomes of the evaluation process. These maps illustrated how each criterion and sub-criterion performed across the landscape (
Figure 5). Each map contains attribute fields representing the calculated priority scores based on the weighted criteria derived from the stakeholders’ input.
The final map of the restoration priorities (
Figure 6) resulted from the integration of the three main criteria maps using their respective AHP-derived weights. The composite map revealed spatial patterns in restoration needs, with high-priority areas concentrated primarily along riparian zones. These zones consistently emerged as critical due to their overlap with areas of high soil erosion risk and low natural vegetation recovery capacity of species.
The spatial prioritization results revealed distinct levels of restoration prioritization across the fire perimeter from the combination of the socio-ecological landscape criteria. From this final map of priorities, information regarding the area distribution for each priority class is presented below (
Table 8).
At the ‘Very high’ (6.80%, 360.10 ha) priority and ‘High priority’ (21.94%, 1162.19 ha) levels, stakeholders emphasized the need to protect riparian zones, recognizing their ecological importance in the landscape and their role as natural buffers against EWEs; these areas were consistently assigned as medium to high priority levels, particularly where the fire severity values were moderate to high. In addition, these highly prioritized areas included native species stands, such as the non-riparian species like cork oak (Quercus suber) and chestnut (Castanea Sativa), due to their higher conservation value according to the participants’ input.
At the ‘Medium’ priority level (38.12%,2019.46 ha), combinations of lower fire severity with sensitive land cover types, such as non-resprouter dominated forests or slopes near water bodies, also emerged as significant. These zones may not have experienced the most intense burns, but they still exhibit structural vulnerabilities that when coupled with certain topographic or vegetative traits, increase their susceptibility to degradation over time.
At the ‘Low’ (29.66%, 1571.22 ha) and ‘Very Low’ (3.49%, 184.76 ha) prioritization levels, areas with low fire severity, high canopy cover, and minimal slope were located. These areas are more likely to recover naturally due to better ecological conditions and lower exposure to erosion or water-related impacts. These zones, while still within the fire perimeter, presented more favorable conditions for regeneration, with limited immediate risk of erosion. In addition, these areas often overlap with social infrastructure such as settlements and a denser road network. According to the stakeholders, the proximity to human activity implies a higher likelihood of receiving rapid attention during and after wildfire events, whether through firefighting efforts or emergency interventions.
4. Discussion
This study proposed a science-based, post-fire restoration prioritization methodology. The model integrated both ecological and social criteria to reflect the diverse restoration needs of the landscape. Its application enabled the identification of areas where restoration is most urgent. What makes this approach unique is the deliberate inclusion of both ecological and social concerns through a participatory process involving local stakeholders. This integration helps ensure that the prioritization captures the challenges and concerns faced on the affected area, making the framework more relevant and useful for guiding post-fire restoration efforts in practice.
The analysis of the fire perimeter in Vale do Sousa focused on the largest and most continuous fire patch affected by the 2017 wildfire events, providing a relevant spatial context for the prioritization model. This event, part of which has been documented as Portugal’s most catastrophic fire season, exemplifies the characteristics of an EWE. Such events are increasingly frequent worldwide, and wildfires have grown in size and severity, creating an environmental and social crisis with disproportionate impacts on vulnerable communities, public health, and ecological systems [
63]. Although the present study prioritized restoration areas within fire perimeters based on current post-fire conditions, we recognize the importance of incorporating future climate projections and considerations of long-term ecosystem resilience.
This framework was designed to be replicable in other fire-prone landscapes. The selection and processing of each criterion were transparently documented, the weighting procedure was conducted using a structured and participatory analytic hierarchy process (AHP), and implementation was carried out using publicly available spatial datasets within a geographic information system (GIS) and EMDS environment. These characteristics make the methodology technically transferable.
The weighting outcomes revealed a strong stakeholder preference for ecological dimensions in post-fire restoration, particularly the natural recovery capacity of the vegetation and soil erosion risk. This prioritization underscores a shared concern with landscape resilience and the biophysical conditions that influence the recovery trajectories. The lower emphasis on social protection suggests that in the Vale do Sousa context, stakeholders viewed ecological stabilization as a prerequisite for securing long-term safety and functionality. Notably the inclusion of fire severity as a transversal criterion reflects its dual role in influencing both erosion potential and vegetation dynamics.
In this study, fire severity was integrated into two separate criteria: ‘Soil Erosion’ and ‘Natural Recovery Capacity of the Vegetation’ to reflect its influence on post-fire landscape processes. While some level of high severity can promote ecological renewal, extensive patches of high severity can lead to regeneration failure and disrupt habitats for species reliant on late-seral conditions [
64]. Such post-fire conditions can critically affect the water quality and biodiversity, making these areas essential targets for ecological restoration [
65].
The use of CDP and EMDS in this study provided a framework to aggregate individual stakeholder inputs into a single group decision model. These tools facilitated the development of a consensus-based prioritization map by integrating weighted criteria and value functions within a hierarchical structure. Compared with qualitative approaches, such as manual scoring, CDP and EMDS offer greater traceability and the ability to manage criteria relationships systematically.
One of the main limitations of this study was the reliance on available spatial data, which contained the completeness and resolution of certain variables. In particular, the processing of canopy cover and species composition data resulted in the partial loss of spatial information in some areas. This limitation led to a reduction in the total coverage of burned areas included in the final analysis. Nevertheless, despite these data gaps, the framework developed still offers valuable insights into restoration priorities and remains a robust tool for supporting post-fire decision-making.
5. Conclusions
This research presented a spatially explicit MCDA approach, supported by expert knowledge, to identify and prioritize the most and least vulnerable areas for post-fire restoration. By integrating ecological and social criteria into a composite prioritization map, this methodology provides a framework for decision-makers to target interventions where they are most needed. The resulting maps not only distinguish the levels of restoration priority, but also reflect the convergence of multiple risk factors. In doing so, this approach addresses the urgent challenge of allocating limited resources in fire-prone landscapes.
Beyond its application in the study area, this framework can be adapted to other regions facing similar post-fire restoration challenges, offering a flexible tool for landscape-scale planning. Future research could expand on this work by integrating dynamic variables such as projected climate scenarios, long-term vegetation trajectories, and the economic costs of interventions. Additionally, testing the framework through field implementation and collaboration with land managers could enhance its practical relevance and support the design of more resilient restoration strategies. We suggest that future research should aim to integrate these aspects into restoration planning frameworks to support adaptive, robust, and forward-looking strategies.