Fast Optimization of Wildfire Suppression Policies with SMAC
Sean McGregor, Rachel Houtman, Claire Montgomery, Ronald Metoyer,, Thomas G. Dietterich

TL;DR
This paper demonstrates that SMAC, a black-box optimization algorithm, can rapidly optimize wildfire suppression policies within a high-fidelity simulation environment, enabling stakeholders to explore tradeoffs effectively.
Contribution
It introduces a methodology for fast optimization of wildfire policies using SMAC and surrogate modeling, enabling interactive stakeholder analysis in complex simulations.
Findings
SMAC efficiently finds high-quality policies for wildfire management.
Surrogate models accurately predict full-fidelity simulation outcomes.
First successful optimization of wildfire policies with a full-fidelity simulator.
Abstract
Managers of US National Forests must decide what policy to apply for dealing with lightning-caused wildfires. Conflicts among stakeholders (e.g., timber companies, home owners, and wildlife biologists) have often led to spirited political debates and even violent eco-terrorism. One way to transform these conflicts into multi-stakeholder negotiations is to provide a high-fidelity simulation environment in which stakeholders can explore the space of alternative policies and understand the tradeoffs therein. Such an environment needs to support fast optimization of MDP policies so that users can adjust reward functions and analyze the resulting optimal policies. This paper assesses the suitability of SMAC---a black-box empirical function optimization algorithm---for rapid optimization of MDP policies. The paper describes five reward function components and four stakeholder constituencies.…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Forest Management and Policy · Water resources management and optimization
