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Non-intrusive load monitoring and decomposition method based on decision tree

机译:基于决策树的非侵入式负荷监测和分解方法

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In order to realize the problems of non-intrusive load monitoring and decomposition (NILMD) from two aspects of load identification and load decomposition, based on the load characteristics of the database, this paper firstly analyzes and identifies the equipment composition of mixed electrical equipment group by using the load decision tree algorithm. Then, a 0–1 programming model for the equipment status identification is established, and the Particle Swarm Optimization (PSO) is used to solve the model for equipment state recognition, and the equipment operating state in the equipment group is identified. Finally, a simulation experiment is carried out for the partial data of Question A in the 6th “teddy cup” data mining challenge competition.
机译:为了实现非侵入式负荷监测和分解(NILMD)的问题,从负载识别和负载分解的两个方面,基于数据库的负载特性,本文首先分析并识别了混合电气设备组的设备组成通过使用负载决策树算法。然后,建立0-1个用于设备状态识别的编程模型,粒子群优化(PSO)用于解决设备状态识别的模型,并识别设备组中的设备运行状态。最后,在第六次“泰迪杯”数据挖掘挑战竞赛中,对仿真实验进行了仿验实验。

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