利用时间序列预测模型预测美国的野火

Q2 Computer Science
Muhammad Khubayeeb Kabir, Kawshik Kumar Ghosh, Md. Fahim Ul Islam, Jia Uddin
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引用次数: 0

摘要

野火是一种普遍现象,随着气候变暖影响着世界的每一个角落。仅在美国,野火每年就会烧毁数万平方公里的森林和植被,而在过去十年中,野火事件的数量急剧增加。本研究旨在利用时空核热图了解全美易受野火影响的森林和植被区域,并在全美和各州范围内每周和每月对这些野火进行预测,以缩短灭火行动的反应时间,并有效设计资源地图来缓解野火。我们采用了最先进的时间序列神经基础扩展分析(N-BEATS)模型来预测未来数周和数月野火烧毁的总面积。该模型根据均方误差 (MSE) 和平均误差 (MAE) 等预测指标进行了评估。与其他最先进(SOTA)模型相比,N-BEATS 模型的性能有所提高,在年度、月度和周度预测中的 MSE 值分别为 116.3、38.2 和 19.0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wildfire Prediction in the United States Using Time Series Forecasting Models
Wildfires are a widespread phenomenon that affects every corner of the world with the warming climate. Wildfires burn tens of thousands of square kilometres of forests and vegetation every year in the United States alone with the past decade witnessing a dramatic increase in the number of wildfire incidents. This research aims to understand the regions of forests and vegetation across the US that are susceptible to wildfires using spatiotemporal kernel heat maps and, forecast these wildfires across the United States at country-wide and state levels on a weekly and monthly basis in an attempt to reduce the reaction time of the suppression operations and effectively design resource maps to mitigate wildfires. We employed the state-of-the-art Neural Basis Expansion Analysis for Time Series (N-BEATS) model to predict the total area burned by wildfires by several weeks and months into the future. The model was evaluated based on forecasting metrics including mean-squared error (MSE)., and mean average error (MAE). The N-BEATS model demonstrates improved performance compared to other state-of-the-art (SOTA) models, obtaining MSE values of 116.3, 38.2, and 19.0 for yearly, monthly, and weekly forecasting, respectively.
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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