基于可解释机器学习模型的全球雷击野火预测和气候变化预测

Assaf Shmuel, Teddy Lazebnik, Oren Glickman, Eyal Heifetz, Colin Price
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引用次数: 0

摘要

野火给人类带来了巨大的自然灾害风险,并加剧了气候变化。由于野火也受到气候变化的影响,极端野火越来越频繁。尽管在全球范围内,野火的发生频率低于人类活动引发的野火,但闪电引发的野火在碳排放中扮演着重要角色,在某些地区占烧毁面积的绝大部分。虽然现有的计算模型,尤其是基于机器学习的模型,旨在预测雷击引发的野火,但这些模型通常是针对具有独特特征的特定区域而设计的,限制了其全球适用性。在这项研究中,我们提出了机器学习模型,旨在描述和预测全球范围内由闪电引发的野火。利用这些模型,我们分析了闪电引发的野火的季节和空间趋势,揭示了气候变化对这一现象的影响。我们利用可扩展人工智能(XAI)框架分析了各种特征对模型的影响。我们的研究结果凸显了人为野火和闪电引发的野火在全球范围内的显著差异。此外,我们还证明,即使在不到十年的短时间内,气候变化也在稳步增加全球因雷电引发野火的风险。这种区别凸显了对专门针对每种野火类型的专用预测模型和火灾天气指数的迫切需要。
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Global Lightning-Ignited Wildfires Prediction and Climate Change Projections based on Explainable Machine Learning Models
Wildfires pose a significant natural disaster risk to populations and contribute to accelerated climate change. As wildfires are also affected by climate change, extreme wildfires are becoming increasingly frequent. Although they occur less frequently globally than those sparked by human activities, lightning-ignited wildfires play a substantial role in carbon emissions and account for the majority of burned areas in certain regions. While existing computational models, especially those based on machine learning, aim to predict lightning-ignited wildfires, they are typically tailored to specific regions with unique characteristics, limiting their global applicability. In this study, we present machine learning models designed to characterize and predict lightning-ignited wildfires on a global scale. Our approach involves classifying lightning-ignited versus anthropogenic wildfires, and estimating with high accuracy the probability of lightning to ignite a fire based on a wide spectrum of factors such as meteorological conditions and vegetation. Utilizing these models, we analyze seasonal and spatial trends in lightning-ignited wildfires shedding light on the impact of climate change on this phenomenon. We analyze the influence of various features on the models using eXplainable Artificial Intelligence (XAI) frameworks. Our findings highlight significant global differences between anthropogenic and lightning-ignited wildfires. Moreover, we demonstrate that, even over a short time span of less than a decade, climate changes have steadily increased the global risk of lightning-ignited wildfires. This distinction underscores the imperative need for dedicated predictive models and fire weather indices tailored specifically to each type of wildfire.
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