A data-driven model for Fennoscandian wildfire danger

被引:3
|
作者
Bakke, Sigrid Jorgensen [1 ]
Wanders, Niko [2 ]
van der Wiel, Karin [3 ]
Tallaksen, Lena Merete [1 ]
机构
[1] Univ Oslo, Dept Geosci, Oslo, Norway
[2] Univ Utrecht, Dept Phys Geog, Utrecht, Netherlands
[3] Royal Netherlands Meteorol Inst, Res & Dev Weather & Climate models, De Bilt, Netherlands
基金
荷兰研究理事会;
关键词
FIRE-WEATHER; BURNED AREA; CLIMATE-CHANGE; FOREST-FIRES; INDEX; VEGETATION; SATELLITE; SENSITIVITY; RISK;
D O I
10.5194/nhess-23-65-2023
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Wildfires are recurrent natural hazards that affect terrestrial ecosystems, the carbon cycle, climate and society. They are typically hard to predict, as their exact location and occurrence are driven by a variety of factors. Identifying a selection of dominant controls can ultimately improve predictions and projections of wildfires in both the current and a future climate. Data-driven models are suitable for identification of dominant factors of complex and partly unknown processes and can both help improve process-based models and work as independent models. In this study, we applied a data-driven machine learning approach to identify dominant hydrometeorological factors determining fire occurrence over Fennoscandia and produced spatiotemporally resolved fire danger probability maps. A random forest learner was applied to predict fire danger probabilities over space and time, using a monthly (2001-2019) satellite-based fire occurrence dataset at a 0.25 degrees spatial grid as the target variable. The final data-driven model slightly outperformed the established Canadian Forest Fire Weather Index (FWI) used for comparison. Half of the 30 potential predictors included in the study were automatically selected for the model. Shallow volumetric soil water anomaly stood out as the dominant predictor, followed by predictors related to temperature and deep volumetric soil water. Using a local fire occurrence record for Norway as target data in a separate analysis, the test set performance increased considerably. This demonstrates the potential of developing reliable data-driven models for regions with a high-quality fire occurrence record and the limitation of using satellite-based fire occurrence data in regions subject to small fires not identified by satellites. We conclude that data-driven fire danger probability models are promising, both as a tool to identify the dominant predictors and for fire danger probability mapping. The derived relationships between wildfires and the selected predictors can further be used to assess potential changes in fire danger probability under different (future) climate scenarios.
引用
收藏
页码:65 / 89
页数:25
相关论文
共 50 条
  • [31] A data-driven model of the role of energy in sepsis
    Ramirez-Zuniga, Ivan
    Rubin, Jonathan E.
    Swigon, David
    Redl, Heinz
    Clermont, Gilles
    JOURNAL OF THEORETICAL BIOLOGY, 2022, 533
  • [32] A data-driven fuzzy model for prediction of rockburst
    Rastegarmanesh, Ashkan
    Moosavi, Mahdi
    Kalhor, Ahmad
    GEORISK-ASSESSMENT AND MANAGEMENT OF RISK FOR ENGINEERED SYSTEMS AND GEOHAZARDS, 2021, 15 (02) : 152 - 164
  • [33] Data-driven background model for the CUORE experiment
    Adams, D. Q.
    Alduino, C.
    Alfonso, K.
    Avignone, F. T., III
    Azzolini, O.
    Bari, G.
    Bellini, F.
    Benato, G.
    Beretta, M.
    Biassoni, M.
    Branca, A.
    Brofferio, C.
    Bucci, C.
    Camilleri, J.
    Caminata, A.
    Campani, A.
    Cao, J.
    Capelli, S.
    Capelli, C.
    Cappelli, L.
    Cardani, L.
    Carniti, P.
    Casali, N.
    Celi, E.
    Chiesa, D.
    Clemenza, M.
    Cremonesi, O.
    Creswick, R. J.
    D'Addabbo, A.
    Dafinei, I.
    Del Corso, F.
    Dell'Oro, S.
    Di Domizio, S.
    Di Lorenzo, S.
    Dixon, T.
    Dompe, V.
    Fang, D. Q.
    Fantini, G.
    Faverzani, M.
    Ferri, E.
    Ferroni, F.
    Fiorini, E.
    Franceschi, M. A.
    Freedman, S. J.
    Fu, S. H.
    Fujikawa, B. K.
    Ghislandi, S.
    Giachero, A.
    Girola, M.
    Gironi, L.
    PHYSICAL REVIEW D, 2024, 110 (05)
  • [34] A data-driven model for nonlinear marine dynamics
    Xu, Wenzhe
    Maki, Kevin J.
    Silva, Kevin M.
    OCEAN ENGINEERING, 2021, 236
  • [35] A Data-Driven Verilog-A ReRAM Model
    Messaris, Ioannis
    Serb, Alexander
    Stathopoulos, Spyros
    Khiat, Ali
    Nikolaidis, Spyridon
    Prodromakis, Themistoklis
    IEEE TRANSACTIONS ON COMPUTER-AIDED DESIGN OF INTEGRATED CIRCUITS AND SYSTEMS, 2018, 37 (12) : 3151 - 3162
  • [36] A data-driven model of the global calcite lysocline
    Archer, D
    GLOBAL BIOGEOCHEMICAL CYCLES, 1996, 10 (03) : 511 - 526
  • [37] A DATA-DRIVEN MODEL FOR A SUBSET OF LOGIC PROGRAMMING
    BIC, L
    LEE, C
    ACM TRANSACTIONS ON PROGRAMMING LANGUAGES AND SYSTEMS, 1987, 9 (04): : 618 - 645
  • [38] Data-driven correction for the masking model of Smith
    Tamisier, Elsa
    Ribardiere, Mickael
    Meneveaux, Daniel
    Horna, Sebastien
    Poulin, Pierre
    JOURNAL OF THE OPTICAL SOCIETY OF AMERICA A-OPTICS IMAGE SCIENCE AND VISION, 2024, 41 (09) : 1777 - 1785
  • [39] A Data-Driven Model for Rapid CII Prediction
    Muehmer, Markus
    La Ferlita, Alessandro
    Geber, Evangelos
    Ehlers, Soeren
    Di Nardo, Emanuel
    El Moctar, Ould
    Ciaramella, Angelo
    JOURNAL OF MARINE SCIENCE AND ENGINEERING, 2024, 12 (11)
  • [40] Design of a Data-Driven Internal Model Controller
    Fujita, Junya
    Yamamoto, Toru
    2009 IEEE INTERNATIONAL CONFERENCE ON NETWORKING, SENSING AND CONTROL, VOLS 1 AND 2, 2009, : 261 - 265