Developing risk assessment framework for wildfire in the United States – A deep learning approach to safety and sustainability

Pingfan Hu , Rachel Tanchak , Qingsheng Wang
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Abstract

The frequency and intensity of wildfires have significantly increased in the United States over recent decades, posing profound threats to community safety and ecological sustainability. The escalating losses of human life, property, and biodiversity demand a proactive approach to wildfire prediction and management. This study proposes a highly efficient deep learning framework, utilizing a geospatial database of wildfire incidents in the United States from 1992 to 2018, aimed at bolstering our collective resilience against such disasters. The framework comprises two components: firstly, leveraging deep neural networks (DNN), the cause and size of potential wildfires are predicted, achieving accuracy rates of 76.9% and 76.4% for 5-class classification respectively. Secondly, a forecast model using long short term memory networks (LSTM) and an autoencoder is used to anticipate the likelihood of imminent wildfires, focusing on highly at-risk regions such as California. A specific model created to perform one-week forecasts for California achieved a coefficient of determination (R2) and root-mean-square error (RMSE) of 0.90 and 49.5076, respectively. These predictive models offer a significant step towards advancing community safety and environmental sustainability by facilitating timely and effective responses, thereby mitigating the catastrophic effects of wildfires on human life, properties, and delicate ecosystems.

Abstract Image

制定美国野火风险评估框架--安全和可持续性的深度学习方法
近几十年来,美国野火发生的频率和强度显著增加,对社区安全和生态可持续性构成了严重威胁。人类生命、财产和生物多样性的损失不断增加,这就要求我们采取积极主动的方法来预测和管理野火。本研究利用 1992 年至 2018 年美国野火事件地理空间数据库,提出了一种高效的深度学习框架,旨在增强我们应对此类灾害的集体复原力。该框架由两部分组成:首先,利用深度神经网络(DNN)预测潜在野火的起因和规模,5 类分类的准确率分别达到 76.9% 和 76.4%。其次,利用长期短期记忆网络(LSTM)和自动编码器建立预测模型,预测即将发生野火的可能性,重点关注加利福尼亚等高风险地区。为对加利福尼亚州进行一周预测而创建的特定模型的判定系数 (R2) 和均方根误差 (RMSE) 分别为 0.90 和 49.5076。这些预测模型促进了及时有效的应对措施,从而减轻了野火对人类生命、财产和脆弱生态系统的灾难性影响,为提高社区安全和环境可持续性迈出了重要一步。
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