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Research on Secondary Analysis Method of Synchronous Satellite Monitoring Data of Power Grid Wildfire

机译:电网野火同步卫星监测数据二次分析方法研究

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摘要

In the process of monitoring the power grid wildfire, synchronous satellite may produce false fire point information. By using the hot spot monitoring data of Himawari-8 synchronous satellite and field verification information during 2015-2020, this study constructs a secondary analysis algorithm of hot spot monitoring data based on binary decision tree, and analyzes the effectiveness of the algorithm in the improvement of fire identification. The research shows that the algorithm of hot spot secondary analysis has advantages in adapting to data characteristics, fast automatic identification, and autonomous optimization. After training and testing the monitoring data of 2015-2020 hot spots data, the binary decision tree algorithm can significantly reduce the hot spots monitoring error rate of synchronous satellite, with a 100% accuracy rate of the true fire and a 77.1% accuracy rate of the false fire. There is a certain difference between North and South of monitoring fire data of synchronous satellite. As a whole, the accuracy of North fire is higher, and the more south the lower accuracy is.
机译:在监控电网野火的过程中,同步卫星可能产生错误的火点信息。通过在2015 - 2015年期间使用HIMAWARI-8同步卫星和现场验证信息的热点监测数据,本研究构建了基于二进制决策树的热点监测数据的二级分析算法,并分析了算法在改进中的有效性火灾识别。该研究表明,热点二次分析算法在适应数据特征,快速自动识别和自主优化方面具有优势。在培训和测试2015-2020热点数据的监测数据之后,二进制决策树算法可以显着降低同步卫星的热点监测误差率,具有100%的真实火灾精度和77.1%的精度率假火。北部和南部的同步卫星的火灾数据之间存在一定差异。总的来说,北部火的准确性更高,较低的精度越多。

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