| Professor Advisor | dc.contributor.advisor | Weintraub Pohorille, Andrés | |
| Author | dc.contributor.author | Castillo Jaimes, Tatiana Andrea | |
| Associate professor | dc.contributor.other | Ordóñez Pizarro, Fernando | |
| Associate professor | dc.contributor.other | Weber Haas, Richard | |
| Associate professor | dc.contributor.other | Carrasco Barra, Jaime | |
| Admission date | dc.date.accessioned | 2026-04-09T19:55:45Z | |
| Available date | dc.date.available | 2026-04-09T19:55:45Z | |
| Publication date | dc.date.issued | 2025 | |
| Identifier | dc.identifier.uri | https://repositorio.uchile.cl/handle/2250/209496 | |
| Abstract | dc.description.abstract | Wildfire management in Chile requires an integrated framework spanning preventive planning, faithful landscape representation, and impact anticipation. This three-study dissertation addresses that methodological sequence: (i) comparing reinforcement-learning (RL) algorithms for efficient firebreak placement in simulated landscapes; (ii) multiband CNN-based fuel-type mapping in two regions; and (iii) predicting—later explaining—individual wildfire size with tabular and image-derived variables (ongoing work).
Chapter~\ref{chapter1:RL} benchmarks A2C, PPO, and Rainbow under increasing complexity. A2C is the only method that stabilizes, while PPO and Rainbow often converge to local optima and fail to surpass a Greedy-DPV baseline. Absent a clearly dominant solution, agents need many more episodes to find and maintain strong policies. Seed variability mirrors stabilization difficulty (higher for Rainbow; lower for PPO, yet stuck below baseline). A key limitation is the slow fire simulator ($\approx$8-20 s/episode), misaligned with RL’s need for high-throughput training (ideally $\le$1 s/episode), which precluded wider exploration of hyperparameters, reward designs, and approximator networks.
Chapter~\ref{chapter2:class} delivers regional fuel-type classifiers for Valparaíso (10×10×17, 20 classes, 5,268 samples) and Biobío (8×8×23, 30 classes, 15,169 samples); cross-region transfer was not pursued due to marked data differences. The best operational model achieved a Cohen's Kappa value of 0.5588 $\pm$ 0.0127 (Valparaíso) and 0.4935 $\pm$ 0.0221 (Biobío) for the test set. Beyond supporting prevention and response, these fuel maps improve fire simulations by territory-specific parameterization, thus strengthening the validity of model-based planning.
Chapter~\ref{chapter:3} models wildfire size with 838 cases and a skewed, heavy-tailed response (10-6,600 ha). Current models underperform, so explainability is deferred. We hypothesize a data-limited regime, limited predictor relevance, and phenomenon complexity, likely requiring dynamic meteorology, fine-scale fuel continuity, and operational signals.
Overall, the dissertation advances an integrated framework: plan (RL for firebreaks), represent the landscape (multiband classification), and anticipate impacts (size).
Future work focuses on accelerating and parallelizing the simulator—targeting $\ge$10× throughput and sub-second episodes—to enable substantive RL exploration of hyperparameters, reward designs, and network architectures; on coupling the regional fuel maps from Chapter 2 with the simulator and RL to increase realism and external validity of firebreak policies; on enriching size-prediction models with dynamic covariates (wind, evolving meteorology, fine-scale fuel continuity) to raise explanatory and predictive power; and on pursuing external validation with agency co-design to support operational usefulness and adoption. | es_ES |
| Patrocinador | dc.description.sponsorship | Este trabajo ha sido parcialmente financiado por ANID Becas Doctorado Nacional 2019 N°21192005, Minciencias Colombia Doctorados en el Exterior N° 885-2, Proyecto FINANCANID PINC230018 y FONDECYT Proyectos 1191531, 1220893 y 1251454 | es_ES |
| Lenguage | dc.language.iso | es | es_ES |
| Publisher | dc.publisher | Universidad de Chile | es_ES |
| Type of license | dc.rights | Attribution-NonCommercial-NoDerivatives 4.0 International | es_ES |
| Link to License | dc.rights.uri | https://creativecommons.org/licenses/by-nc-nd/4.0 | es_ES |
| Título | dc.title | Artificial intelligence applications for sustainable wildfire management | es_ES |
| Document type | dc.type | Tesis | es_ES |
| dc.description.version | dc.description.version | Versión original del autor | es_ES |
| dcterms.accessRights | dcterms.accessRights | Acceso abierto | es_ES |
| Cataloguer | uchile.catalogador | chb | es_ES |
| Department | uchile.departamento | Departamento de Ingeniería Industrial | es_ES |
| Faculty | uchile.facultad | Facultad de Ciencias Físicas y Matemáticas | es_ES |
| uchile.gradoacademico | uchile.gradoacademico | Doctorado | es_ES |
| uchile.notadetesis | uchile.notadetesis | Tesis para optar al grado de Doctora en Sistemas de Ingeniería | es_ES |