Forest Fire Prediction Based on Time Series Networks and Remote Sensing Images

Forests Pub Date : 2024-07-14 DOI:10.3390/f15071221
Yue Cao, Xuanyu Zhou, Yanqi Yu, Shuyu Rao, Yihui Wu, Chunpeng Li, Zhengli Zhu
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Abstract

Protecting forest resources and preventing forest fires are vital for social development and public well-being. However, current research studies on forest fire warning systems often focus on extensive geographic areas like states, counties, and provinces. This approach lacks the precision and detail needed for predicting fires in smaller regions. To address this gap, we propose a Transformer-based time series forecasting model aimed at improving the accuracy of forest fire predictions in smaller areas. Our study focuses on Quanzhou County, Guilin City, Guangxi Province, China. We utilized time series data from 2021 to 2022, along with remote sensing images and ArcGIS technology, to identify various factors influencing forest fires in this region. We established a time series dataset containing twelve influencing factors, each labeled with forest fire occurrences. By integrating these data with the Transformer model, we generated forest fire danger level prediction maps for Quanzhou County. Our model’s performance is compared with other deep learning methods using metrics such as RMSE, and the results reveal that the proposed Transformer model achieves higher accuracy (ACC = 0.903, MAPE = 0.259, MAE = 0.053, RMSE = 0.389). This study demonstrates that the Transformer model effectively takes advantage of spatial background information and the periodicity of forest fire factors, significantly enhancing predictive accuracy.
基于时间序列网络和遥感图像的森林火灾预测
保护森林资源和预防森林火灾对社会发展和公众福祉至关重要。然而,目前有关森林火灾预警系统的研究通常侧重于州、县和省等广阔的地理区域。这种方法缺乏预测较小区域火灾所需的精度和细节。针对这一不足,我们提出了一种基于 Transformer 的时间序列预测模型,旨在提高较小区域森林火灾预测的准确性。我们的研究重点是中国广西省桂林市全州县。我们利用 2021 年至 2022 年的时间序列数据以及遥感图像和 ArcGIS 技术,确定了影响该地区森林火灾的各种因素。我们建立了一个时间序列数据集,其中包含 12 个影响因素,每个因素都标有森林火灾发生次数。通过将这些数据与 Transformer 模型整合,我们生成了全州县的森林火险等级预测图。我们使用 RMSE 等指标将模型的性能与其他深度学习方法进行了比较,结果表明所提出的 Transformer 模型实现了更高的准确度(ACC = 0.903、MAPE = 0.259、MAE = 0.053、RMSE = 0.389)。这项研究表明,Transformer 模型有效利用了空间背景信息和森林火灾因素的周期性,显著提高了预测精度。
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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