Global fire modelling and control attributions based on the ensemble machine learning and satellite observations

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Yulong Zhang , Jiafu Mao , Daniel M. Ricciuto , Mingzhou Jin , Yan Yu , Xiaoying Shi , Stan Wullschleger , Rongyun Tang , Jicheng Liu
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引用次数: 0

Abstract

Contemporary fire dynamics is one of the most complex and least understood land surface phenomena. Global fire controls related to climate, vegetation, and anthropogenic activity are usually intertwined, and difficult to disentangle in a quantitative way. Here, we leveraged an ensemble of five machine learning (ML) models and multiple satellite-based observations to conduct global fire modeling for three fire metrics (burned area, fire number, and fire size), and quantified driving mechanisms underlying annual fire changes in a spatially resolved manner for the period 2003–2019. Ensemble learning is a meta-approach that combines multiple ML predictions to improve accuracy, robustness, and generalization performance. We found that the optimized ensemble ML well reproduced annual dynamics of global burned area (R2 = 0.90, P < 0.001), total fire numbers (R2 = 0.86, P < 0.001), and averaged fire size (R2 = 0.70, P < 0.001). Additionally, the ensemble ML captured key spatial patterns of multi-year mean magnitudes, annual variabilities, anomalies, and trends for different fire metrics. Our ML-based fire attributions further highlighted the dominant role of enhanced anthropogenic activity in reducing global burned area (−1.9 Mha/yr, P < 0.01), followed by climate control (−1.3 Mha/yr, P < 0.01) and insignificant positive vegetation control (0.4 Mha/yr, P = 0.60). Spatially, climate dominated a much larger burned area (53.7%) than human (23.4%) or vegetation control (22.9%); however, the counteracting effects from regional wetting and drying trends weakened the net climate impacts on global burned area. The fire number and fire size exhibited similar spatial control patterns with burned area; globally, however, fire number tended to be more affected by climate while fire size more influenced by human activities. Overall, our study confirmed the feasibility and efficiency of ensemble ML in global fire modeling and subsequent control attributions, providing a better understanding of contemporary fire regimes and contributing to robust fire projections in a changing environment.

基于集成机器学习和卫星观测的全局火灾建模和控制归因
当代火灾动力学是最复杂和最不为人所知的地表现象之一。与气候、植被和人类活动有关的全球火灾控制通常是相互交织的,很难以定量的方式理清关系。在这里,我们利用五个机器学习(ML)模型和多个基于卫星的观测结果,对2003-2019年期间的三个火灾指标(过火面积、火灾数量和火灾规模)进行了全球火灾建模,并以空间分辨的方式量化了年度火灾变化的驱动机制。集成学习是一种元方法,它结合了多个ML预测,以提高准确性、鲁棒性和泛化性能。我们发现,优化后的集合ML很好地再现了全球燃烧面积(R2=0.90,P<;0.001)、火灾总数(R2=0.86,P>;0.001)和平均火灾规模(R2=0.70,P<!0.001)的年度动态。此外,集合ML还捕捉到了不同火灾指标的多年平均震级、年度变化率、异常和趋势的关键空间模式。我们基于ML的火灾归因进一步强调了人类活动增强在减少全球烧伤面积方面的主导作用(-1.9百万公顷/年,P<;0.01),其次是气候控制(-1.3百万公顷/年度,P<!0.01)和不显著的正植被控制(0.4百万公顷/年份,P=0.60),气候主导的烧伤面积(53.7%)远大于人类(23.4%)或植被控制(22.9%);然而,区域湿润和干燥趋势的抵消作用削弱了气候对全球烧伤面积的净影响。火灾数量和火灾规模与过火面积具有相似的空间控制模式;然而,在全球范围内,火灾数量往往更多地受到气候的影响,而火灾规模则更多地受到人类活动的影响。总的来说,我们的研究证实了集合ML在全球火灾建模和后续控制归因中的可行性和效率,更好地了解了当代火灾状况,并有助于在不断变化的环境中进行稳健的火灾预测。
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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CiteScore
12.20
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