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在 Firelihood 的概率贝叶斯框架中预测区域野火活动。

Prediction of regional wildfire activity in the probabilistic Bayesian framework of Firelihood.

机构信息

Ecologie des Forêts Méditerranéennes (URFM), INRAe, Avignon, 84914, France.

Biostatistics and Spatial Processes, INRAe, Avignon, 84914, France.

出版信息

Ecol Appl. 2021 Jul;31(5):e02316. doi: 10.1002/eap.2316. Epub 2021 Apr 25.

DOI:10.1002/eap.2316
PMID:33636026
Abstract

Modeling wildfire activity is crucial for informing science-based risk management and understanding the spatiotemporal dynamics of fire-prone ecosystems worldwide. Models help disentangle the relative influences of different factors, understand wildfire predictability, and provide insights into specific events. Here, we develop Firelihood, a two-component, Bayesian, hierarchically structured, probabilistic model of daily fire activity, which is modeled as the outcome of a marked point process: individual fires are the points (occurrence component), and fire sizes are the marks (size component). The space-time Poisson model for occurrence is adjusted to gridded fire counts using the integrated nested Laplace approximation (INLA) combined with the stochastic partial differential equation (SPDE) approach. The size model is based on piecewise-estimated Pareto and generalized Pareto distributions, adjusted with INLA. The Fire Weather Index (FWI) and forest area are the main explanatory variables. Temporal and spatial residuals are included to improve the consistency of the relationship between weather and fire occurrence. The posterior distribution of the Bayesian model provided 1,000 replications of fire activity that were compared with observations at various temporal and spatial scales in Mediterranean France. The number of fires larger than 1 ha across the region was coarsely reproduced at the daily scale, and was more accurately predicted on a weekly basis or longer. The regional weekly total number of larger fires (10-100 ha) was predicted as well, but the accuracy degraded with size, as the model uncertainty increased with event rareness. Local predictions of fire numbers or burned areas also required a longer aggregation period to maintain model accuracy. The estimation of fires larger than 1 ha was also consistent with observations during the extreme fire season of the 2003 unprecedented heat wave, but the model systematically underrepresented large fires and burned areas, which suggests that the FWI does not consistently rate the actual danger of large fire occurrence during heat waves. Firelihood enabled a novel analysis of the stochasticity underlying fire hazard, and offers a variety of applications, including fire hazard predictions for management and projections in the context of climate change.

摘要

野火活动建模对于为基于科学的风险管理提供信息和了解全球易发生火灾的生态系统的时空动态至关重要。模型有助于厘清不同因素的相对影响、理解野火的可预测性,并深入了解特定事件。在这里,我们开发了 Firelihood,这是一个两部分的、贝叶斯的、层次结构的、概率模型,用于模拟每日火灾活动,该模型被建模为标记点过程的结果:单个火灾是点(发生组件),火灾规模是标记(规模组件)。发生的时空泊松模型使用集成嵌套拉普拉斯近似 (INLA) 结合随机偏微分方程 (SPDE) 方法进行网格化火灾计数调整。规模模型基于分段估计的帕累托和广义帕累托分布,并使用 INLA 进行调整。火险指数 (FWI) 和森林面积是主要的解释变量。包括时间和空间残差以提高天气和火灾发生之间关系的一致性。贝叶斯模型的后验分布提供了 1000 次火灾活动的复制,这些复制与法国地中海地区各种时间和空间尺度的观测结果进行了比较。该地区每天的火灾活动都能粗略地复制大于 1 公顷的火灾数量,并且在每周或更长时间的基础上预测更为准确。每周更大火灾(10-100 公顷)的区域总数也得到了预测,但随着事件的罕见性增加,模型不确定性增加,预测精度也随之降低。较小规模的火灾数量或燃烧面积的局部预测也需要更长的聚合期来保持模型的准确性。大于 1 公顷的火灾估计也与 2003 年史无前例热浪期间的极端火灾季节的观测结果一致,但该模型系统地低估了大型火灾和燃烧面积,这表明火险指数在热浪期间并不始终能准确评估大型火灾发生的实际危险。Firelihood 实现了对火灾危险背后随机性的新分析,并提供了多种应用,包括管理中的火灾危险预测和气候变化背景下的预测。

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