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A SVM Optimized by Particle Swarm Optimization Approach to Load Disaggregation in Non-Intrusive Load Monitoring in Smart Homes

机译:通过粒子群优化方法优化的SVM在智能家居非侵入式负载监控中进行负载分解

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The essence of NILM (Non-intrusive load monitoring) is load decomposition whose results can be further used to improve the energy acquisition system, intelligent power consumption system, and hold out two-way interactive service and intelligent power consumption service. In this paper, a PSO-SVM approach is proposed for load disaggregation in non-intrusive load monitoring. A method in view of the power difference is used to do event detection for switching state of electrical equipment which is proved to be very effective. A multi-feature classification (MFC) on account of PSO-SVM is suggested that it can recognize the switching state of electrical equipment. The simulation results showed that the accuracy rate can attain 95.3% for switched-on state and 96.2% for switched-off state which are more precise than GA-BP and GA-SVM.
机译:NILM(非侵入式负载监控)的本质是负载分解,其结果可进一步用于改进能源获取系统,智能功耗系统,并支持双向交互服务和智能功耗服务。本文提出了一种PSO-SVM方法,用于非侵入式负载监控中的负载分解。考虑到功率差的一种方法被用于对电气设备的开关状态进行事件检测,这被证明是非常有效的。提出了一种基于PSO-SVM的多功能分类(MFC),它可以识别电气设备的开关状态。仿真结果表明,与GA-BP和GA-SVM相比,开机状态的准确率达到95.3%,关机状态的准确率达到96.2%。

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