基于光梯度增强机模型的野火风险评估

Feng Xiao, Guanyu Lin, Tianyu Li, Jiaying Li, Jiaqing Zhang
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引用次数: 0

摘要

随着电网规模的扩大和地理环境的限制,一些地区不得不采用穿越林区的方式布置输电线路。有些林区人烟稀少,植被茂盛。一旦发生山火,很容易蔓延到输电走廊附近,造成输电线路跳闸重合闸失败。为了有效预测野火,本文提出了一种基于LightGBM的野火风险评估模型。结合植被因素、气象因素、地形因素和人为因素,通过相关性分析筛选出中度相关火点特征,构建野火风险评估模型。然后,利用NPP和MODIS的火点产品作为模型的验证数据,通过准确率、精密度、召回率、F1-Score和AUC值来预测模型的准确率。综合评价表明,模型的精度为0.86,AUC值为0.83。结果表明,该模型能够有效地预测山火风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wildfire risk assessment based on Light Gradient Boosting Machine model
With the expansion of the power grid and the limitation of the geographical environment, some areas have to adopt the way of crossing the forest area to arrange the transmission lines. Some forest areas are sparsely populated and the vegetation is lush. Once a mountain fire occurs, it is easy to spread to the vicinity of the transmission corridor, resulting in the failure of transmission line tripping and reclosing. In order to effectively predict wildfires, this paper proposes a wildfire risk assessment model based on LightGBM. Combining vegetation factors, meteorological factors, terrain factors, and human factors, the moderately correlated fire point characteristics were screened out based on correlation analysis, and a wildfire risk assessment model was constructed. After that, the fire point products of NPP and MODIS are used as the validation data of the model, and the acracy of the model is predicted by the accuracy, precision, recall, F1-Score and AUC values. A comprehensive evaluation showed that the accuracy of the model was 0.86 and the AUC value was 0.83. The results showed that the model could effectively predict wildfire risk.
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