基于BP神经网络的森林火灾蔓延预测方法

Binhao. Li, Jingwen Zhong, Guoliang Shi, Jie Fang
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引用次数: 0

摘要

本文提出了一种适合边缘计算的方法,利用神经网络预测森林火灾的蔓延,旨在提高火灾蔓延预测的准确性和效率,并在低能耗要求下实现无人机侧的边缘计算。利用FlamMap获得的模拟火灾蔓延光栅数据对BP神经网络模型进行训练,分别预测火灾蔓延的方向和速度,并根据惠更斯原理,通过预测数据拟合得到矢量火线,并与FlamMap获得的火线进行对比,验证方法的准确性。可以认为,通过真实火灾的遥感数据,对火灾的蔓延进行训练和计算也可以达到同样的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forest Fire Spread Prediction Method based on BP Neural Network
This paper proposes a method suitable for edge computing to use neural networks to predict the spread of forest fires, aiming to improve the accuracy and efficiency of fire spread prediction, and to achieve edge computing on the drone side with low energy consumption requirements. The BP neural network model is trained by the simulated fire spread raster data obtained by FlamMap, the direction and speed of fire spread are predicted respectively, and according to the Huygens' principle, the vector fire line is obtained by the prediction data fit, and the fire line obtained by FlamMap is compared to verify the accuracy of the method. It can be considered that the same effect can be trained and calculated for the spread of fire through remote sensing data of real fires.
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