School of National Safety and Emergency Management, Beijing Normal University, Beijing, China.
Academy of Disaster Reduction and Emergency Management, Beijing Normal University, Beijing, China.
Ecol Appl. 2022 Jul;32(5):e2610. doi: 10.1002/eap.2610. Epub 2022 Jun 2.
Wildfires not only severely damage the natural environment and global ecological balance but also cause substantial losses to global forest resources and human lives and property. Unprecedented fire events such as Australia's bushfires have alerted us to the fact that wildfire prediction is a critical scientific problem for fire management. Therefore, robust, long-lead models and dynamic predictions of wildfire are valuable for global fire prevention. However, despite decades of effort, the dynamic, effective, and accurate prediction of wildfire remains problematic. There is great uncertainty in predicting the future based on historical and existing spatiotemporal sequence data, but with advances in deep learning algorithms, solutions to prediction problems are being developed. Here, we present a dynamic prediction model of global burned area of wildfire employing a deep neural network (DNN) approach that produces effective wildfire forecasts based on historical time series predictors and satellite-based burned area products. A hybrid DNN that combines long short-term memory and a two-dimensional convolutional neural network (CNN2D-LSTM) was proposed, and CNN2D-LSTM model candidates with four different architectures were designed and compared to construct the optimal architecture for fire prediction. The proposed model was also shown to outperform convolutional neural networks (CNNs) and the fully connected long short-term memory (FcLSTM) approach using the refined index of agreement and evaluation metrics. We produced monthly global burned area spatiotemporal prediction maps and adequately reflected the seasonal peak in fire activity and highly fire-prone areas. Our combined CNN2D-LSTM approach can effectively predict the global burned area of wildfires 1 month in advance and can be generalized to provide seasonal estimates of global fire risk.
野火不仅严重破坏自然环境和全球生态平衡,还对全球森林资源和人类生命财产造成巨大损失。澳大利亚丛林大火等前所未有的火灾事件提醒我们,野火预测是火灾管理的一个关键科学问题。因此,稳健的、长时的野火模型和动态预测对于全球防火是有价值的。然而,尽管经过几十年的努力,野火的动态、有效和准确预测仍然存在问题。基于历史和现有时空序列数据预测未来存在很大的不确定性,但随着深度学习算法的进步,预测问题的解决方案正在开发中。在这里,我们提出了一种基于深度神经网络(DNN)的全球野火燃烧面积动态预测模型,该模型利用历史时间序列预测因子和基于卫星的燃烧面积产品来生成有效的野火预测。提出了一种结合长短时记忆和二维卷积神经网络(CNN2D-LSTM)的混合 DNN,设计并比较了具有四种不同架构的 CNN2D-LSTM 模型候选者,以构建最佳的火灾预测架构。所提出的模型还通过改进的一致性指数和评估指标显示出优于卷积神经网络(CNNs)和全连接长短时记忆(FcLSTM)方法的性能。我们生成了每月的全球野火燃烧面积时空预测图,充分反映了火灾活动的季节性高峰和高火灾风险地区。我们的组合 CNN2D-LSTM 方法可以有效地提前 1 个月预测全球野火燃烧面积,并可以推广以提供全球火灾风险的季节性估计。