Exploring and Testing Wildfire Risk Decision-Making in the Face of Deep Uncertainty
Abstract
:1. Introduction
- The expectation that a few rare, extreme wildfires will dominate risk profiles and losses [19];
2. Methods: An Adaptable Model of Wildfire Risk
2.1. Study Area
2.2. Modeling System Overview
Stakeholder Type & Engagement Tool | Goals and Outcomes |
---|---|
1. Wildfire and Land Management Survey 1 Surveyees: rural, non-industrial private property owners; n = 651 (40% response rate) in the south Willamette Valley [42,78] | Goal: Identify general land use and management strategies landowners were likely to employ in the near future (e.g., thinning forests, restoring sensitive ecological habitats, developing homes or home sites). Outcomes: Established agent types and parameterized initial decision propensities. |
2. Wildfire and Forest Management Survey 1 Surveyees: rural, non-industrial private property owners; n = 363 (38% response rate) in the south Willamette Valley [42,78] | Goal: Identify management strategies landowners were likely to employ in the near future (e.g., fuels reduction, restoring fire-resilient ecosystems, and timber production). Outcomes: Parameterized agent types and decision propensities. |
3. Scenario Development Stakeholder Advisory Team Convened series of 7 meetings over 3 years with 15 recruited participants. Sectors represented included federal, state, and local land management; development; NGO conservation; wildfire; forestry; and agriculture. | Goal: Develop stakeholder guidance for framing contrasting alternative futures scenarios. Outcomes: Specified draft scenarios for fully crossed (climate (2) × development (2) × management (2)) alternative futures framework, including scenario contrasts, assumptions, and model parameters for future land use planning and wildfire risk mitigation practices. |
4. Restoration and Fuels Reduction Advisory Team Convened series of 4 focus group meetings over a 2-month period with 25 recruited participants. Followed up with 3 meetings of a smaller technical advisory team to finalize the work [64]. | Goal: Derive vegetation management goals and treatment types to achieve oak savanna restoration and fire hazard reduction goals. Outcomes: Generated and prioritized detailed vegetation management strategies that were later refined and specified for simulation modeling. See Table S1.1. |
5. Restoration Professiona/Land Manager Consultation Conducted 2–3 semistructured consultations with 15 recruited participants in each [79]. | Goal: Derive detailed best management practices (BMPs), associated treatment costs, and detailed species and structural targets for different fuel reduction and oak-prairie restoration treatments. Outcomes: Used results to parameterize management system treatment costs and BMP outcomes. |
6. Fire Manager Survey Surveyees: regional wildfire managers; n = 10 (59% response rate); (See Supplement S3). | Goal: Synthesize expert judgment for local fire behavior and effects under current and projected future climate. Outcomes: (Applied respondents’ expectations to parameterize fire model for detailed forest stand types, including flame length, mortality, and fire severity under different fire weather conditions. |
2.3. Analytical Approach
3. Unpacking the Effects of Uncertainty and Feedbacks
3.1. The Role of Stochastically Generated Wildfire
On the surface the story of WUI risk appears simple. The number of threatened residences in each major cover type was roughly proportional to that cover type’s area. Deeper examination, however, reveals complex interactions related to the influx of new homes into different land cover types, and within these types, agents’ propensities (or lack thereof) to implement defensible spaces practices, perform fuels reduction treatments, and restore oak-prairie ecosystems. By far the safest places to live were agricultural lands and restored oak-prairie, yet agricultural land saw less than ½ the rate of new development compared to the more hazardous forested landscapes. Both density thinning and restoration reduced risk, but less than 1/3 of successional vegetation was actively managed for fuels at the time of the fire. Agents living in unmanaged forest were the most likely to implement defensible space practices but that alone was insufficient to prevent extensive threat from high-severity fire. The problem was particularly acute in unmanaged forest, with the result that the greater capacity of forest lands to accommodate new rural homes became the primary source of enhanced WUI risk during this extreme wildfire event. Given that density thinning substantially reduced threat to homes in forest and woodland, more fuel treatments present an obvious means to reduce risk. Fuel treatment renewals, however, were prohibitively expensive. As a result, even though nearly 2/3 of unmanaged forest and woodland had been treated previously, agents were unable to sustain fuel management and, during this intense fire event, the advantages of prior treatment were overwhelmed by the subsequent regrowth of fuels. Given the predominance of low-severity fire in agricultural lands and oak-prairie ecosystems, and the relative simplicity of implementing defensible space in such vegetation, the most cost-effective way to reduce overall risk in the burned area would have been to convince agents in agricultural and oak-prairie grasslands to implement higher rates of defensible space practices. These alternatives can be visualized in a diagram of risk space, in which the roles of defensible space and fire severity in risk reduction are visualized and translated into recommendations. In the final analysis, however, the overwhelming driver of threat to homes was not vegetation type, management, or defensible space, but rather a more-than-tripling of widely distributed rural homes in the fire footprint under Dispersed Development scenario assumptions in the 35 years since 2007. The capacity to explore how the sources of risk within a Black Swan event may be contingent on antecedent factors under people’s control could provide added value to participatory planning exercises that depend on both coordination and collaboration among stakeholders. Mitigation actions to increase home protection in the Black Swan wildfire event.
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3.2. Feedbacks from Fire to Risk to Management to Fuels for Future Fires
3.3. Stabilizing Feedbacks from Treatment Costs Reduced Effectiveness of Policy Response to Changing Risk
4. Advancing Wildfire Risk Management Modeling
4.1. Integrating Wildfire within an Agent-Based Model of Landscape Change
- Detailed representations of local landowner distribution and decision propensities that guide how agents in mixed-ownership landscapes decide where and when to build new homes or implement different types of fuels treatments;
- Empirically based ignition locations and numbers that respond dynamically to changing development patterns and climate;
- Spatial and temporal downscaling of GCM climate projections into probabilistic streams of daily fire weather, with wildfire frequency, size, and behavior calibrated to statistical relationships with the daily energy release component (ERC) and applied to fine-grained fuels and topography;
- Feedbacks between fire and other simulated processes that explore how agent decisions interact with stochastic events to affect trends and uncertainties across large numbers of alternative futures, particularly under a changing climate;
- The capacity to reconstruct individual fire events, especially Black Swan events, deconstruct the antecedent landscape changes that may have contributed to their impacts, and assess the path-dependent consequences of an individual fire or an entire future’s history of fires.
4.2. Exploring Path Dependency and Extreme Events
- Identify landscape areas most likely to experience catastrophic fires via simulation modeling across large number sets of alternative futures [24];
- Assess the relative risks of different development and management practices, and the potential value of different risk-mitigation strategies in different locations;
- Craft recommendations for proactive interventions in pivotal landscape areas;
- Conduct further simulations that test and refine the strategies employed to provide actionable recommendations to landowners, wildfire managers, and policy makers.
4.3. Disentangling Coupled Processes to Craft Local Solutions
- Rapid growth of WUI extent and fire risk due to varying demographic shifts, including demand for amenity lifestyles that drives further fire suppression and increased fuels, and rural land abandonment that leads to loss of traditional land uses and management;
- The need for policies and governance systems that are effective at managing fire transmission across mixed land uses and land ownerships, particularly those with a fine-grained mosaic of private ownerships, protected areas, and localized cultural values;
- Climate impacts on fire weather that combine with other factors to push fire sizes, frequency, and severity outside the bounds of experience and, in doing so, challenge existing social and ecological capacity to recover or adapt.
4.4. Integrating Social and Ecological Submodels
4.5. The Challenges of Uncertainty
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Mngmt. Scenario-Run | Area Burned (ha) | High- Severity (%) | Mixed- Severity (%) | Low- Severity (%) | Largest Fire (ha) | Threatened Residences |
---|---|---|---|---|---|---|
HAZ-max | 6412 | 50% | 6% | 44% | 5722 | 1023 |
HAZ-min | 409 | 30% | 17% | 53% | 35 | 40 |
HAZ-med | 760 | 29% | 13% | 58% | 90 | 109 |
RES-med | 1129 | 39% | 11% | 50% | 132 | 108 |
NoM-med | 869 | 56% | 13% | 31% | 174 | 155 |
Scenario | Treatment Type | Cost ($) | Area (ha) | Cost ($/ha) |
---|---|---|---|---|
HAZ-min 1 | Incentivized Fuels Treatment | $16,602,986 | 50,832 | $327 |
Incentivized Ecol. Restoration | $17,581,503 | 7869 | $2234 | |
Landowner-funded Fuels | $4,734,554 | 4332 | $1093 | |
Landowner-funded Restoration | $992,045 | 763 | $1299 | |
HAZ-max 2 | Incentivized Fuels Treatment | $21,407,097 | 53,462 | $400 |
Incentivized Ecol. Restoration | $13,894,766 | 6930 | $2005 | |
Landowner-funded Fuels | $5,135,483 | 4658 | $1102 | |
Landowner-funded Restoration | $936,601 | 854 | $1096 |
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Johnson, B.R.; Ager, A.A.; Evers, C.R.; Hulse, D.W.; Nielsen-Pincus, M.; Sheehan, T.J.; Bolte, J.P. Exploring and Testing Wildfire Risk Decision-Making in the Face of Deep Uncertainty. Fire 2023, 6, 276. https://doi.org/10.3390/fire6070276
Johnson BR, Ager AA, Evers CR, Hulse DW, Nielsen-Pincus M, Sheehan TJ, Bolte JP. Exploring and Testing Wildfire Risk Decision-Making in the Face of Deep Uncertainty. Fire. 2023; 6(7):276. https://doi.org/10.3390/fire6070276
Chicago/Turabian StyleJohnson, Bart R., Alan A. Ager, Cody R. Evers, David W. Hulse, Max Nielsen-Pincus, Timothy J. Sheehan, and John P. Bolte. 2023. "Exploring and Testing Wildfire Risk Decision-Making in the Face of Deep Uncertainty" Fire 6, no. 7: 276. https://doi.org/10.3390/fire6070276
APA StyleJohnson, B. R., Ager, A. A., Evers, C. R., Hulse, D. W., Nielsen-Pincus, M., Sheehan, T. J., & Bolte, J. P. (2023). Exploring and Testing Wildfire Risk Decision-Making in the Face of Deep Uncertainty. Fire, 6(7), 276. https://doi.org/10.3390/fire6070276