Predicting Wildfire Ember Hot-Spots on Gable Roofs via Deep Learning

Fire Pub Date : 2024-04-25 DOI:10.3390/fire7050153
M. al-Bashiti, Dac Nguyen, M. Z. Naser, Nigel B. Kaye
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Abstract

Ember accumulation on and around homes can lead to spot fires and home ignition. Post wildland fire assessments suggest that this mechanism is one of the leading causes of home destruction in wildland urban interface (WUI) fires. However, the process of ember deposition and accumulation on and around houses remains poorly understood. Herein, we develop a deep learning (DL) model to analyze data from a series of ember-related wind tunnel experiments for a range of wind conditions and roof slopes. The developed model is designed to identify building roof regions where embers will remain in contact with the rooftop. Our results show that the DL model is capable of accurately predicting the position and fraction of the roof on which embers remain in place as a function of the wind speed, wind direction, roof slope, and location on the windward and leeward faces of the rooftop. The DL model was augmented with explainable AI (XAI) measures to examine the extent of the influence of these parameters on the rooftop ember coverage and potential ignition.
通过深度学习预测屋檐上的野火微粒热点
微光在房屋上和房屋周围积聚会导致点火和房屋着火。野地火灾后评估表明,这种机制是野地城市交界处(WUI)火灾中房屋被毁的主要原因之一。然而,人们对房屋及其周围的微粒沉积和积累过程仍然知之甚少。在此,我们开发了一个深度学习(DL)模型,用于分析一系列与微粒相关的风洞实验中的数据,这些实验涉及一系列风力条件和屋顶坡度。所开发的模型旨在识别余烬会与屋顶保持接触的建筑屋顶区域。结果表明,DL 模型能够根据风速、风向、屋顶坡度以及屋顶迎风面和背风面的位置,准确预测余烬停留在屋顶上的位置和比例。在 DL 模型的基础上增加了可解释人工智能 (XAI) 指标,以检验这些参数对屋顶余火覆盖范围和潜在点火的影响程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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