论文标题
基于新型机器学习框架的多模式野火预测和个性化的早期训练系统
A Multi-Modal Wildfire Prediction and Personalized Early-Warning System Based on a Novel Machine Learning Framework
论文作者
论文摘要
野火越来越多地影响环境,人类健康和安全。在加利福尼亚前20名野火中,2020 - 2021年的野火燃烧的英亩比上个世纪的总和更多。加利福尼亚的2018年野火季节造成了1485亿美元的损失。在数百万受影响的人中,残疾人(约占世界人口约15%)由于警报不足而受到不成比例的影响。在这个项目中,基于先进的机器学习体系结构开发了多模式野火预测和个性化预警系统。从2012年到2018年的环境保护局和历史野火数据中的传感器数据已编译,以建立一个全面的野火数据库,即同类最大的数据库。接下来,设计了一种新型的U-Convolutional-LSTM(长短期内存)神经网络,其设计具有特殊的体系结构,可从连续的环境参数中提取关键的空间和时间特征,指示即将发生的野火。环境和气象因素被纳入数据库,并分类为主要指标和尾随指标,分别与野火构想和传播的风险相关。此外,地质数据还用于提供更好的野火风险评估。这种新颖的时空神经网络使用传统的卷积神经网络实现了> 97%的精度,而左右的卷积神经网络则达到了约76%,成功地预测了2018年2018年最具破坏性的五个野火,提前5-14天。最后,提出了一种个性化的预警系统,该警告系统是针对具有感官残疾或呼吸系统加剧条件的个体量身定制的。该技术将使消防部门在袭击之前预测和防止野火,并为处于危险中的个人提供早期警告以更好地准备,从而挽救生命并减少经济损失。
Wildfires are increasingly impacting the environment, human health and safety. Among the top 20 California wildfires, those in 2020-2021 burned more acres than the last century combined. California's 2018 wildfire season caused damages of $148.5 billion. Among millions of impacted people, those living with disabilities (around 15% of the world population) are disproportionately impacted due to inadequate means of alerts. In this project, a multi-modal wildfire prediction and personalized early warning system has been developed based on an advanced machine learning architecture. Sensor data from the Environmental Protection Agency and historical wildfire data from 2012 to 2018 have been compiled to establish a comprehensive wildfire database, the largest of its kind. Next, a novel U-Convolutional-LSTM (Long Short-Term Memory) neural network was designed with a special architecture for extracting key spatial and temporal features from contiguous environmental parameters indicative of impending wildfires. Environmental and meteorological factors were incorporated into the database and classified as leading indicators and trailing indicators, correlated to risks of wildfire conception and propagation respectively. Additionally, geological data was used to provide better wildfire risk assessment. This novel spatio-temporal neural network achieved >97% accuracy vs. around 76% using traditional convolutional neural networks, successfully predicting 2018's five most devastating wildfires 5-14 days in advance. Finally, a personalized early warning system, tailored to individuals with sensory disabilities or respiratory exacerbation conditions, was proposed. This technique would enable fire departments to anticipate and prevent wildfires before they strike and provide early warnings for at-risk individuals for better preparation, thereby saving lives and reducing economic damages.