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Nonintrusive Load Monitoring (NILM) Using an Artificial Neural Network in Embedded System with Low Sampling Rate

机译:使用嵌入式系统中的人工神经网络具有低采样率的非流体负荷监测(NILM)

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摘要

A Nonintrusive load monitoring (NILM) system is an energy demand monitoring and load identification system that only uses one instrument installed at main power distribution board. In this paper authors have used low sampling rate of monitored data to detect any change of power signal that obtained a 1 Hz sampling rate of active power from energy meter. Using Artificial Neural Network (ANN) for training steady-state real power and reactive power signatures. This paper point to four appliances including air conditioner television refrigerator and rice cooker. The results showed that in simulation test can disaggregation of appliances in correct detection rate 98% and in the installation test can disaggregation of appliances in correct detection rate 95%.
机译:一个非识别负载监测(NILM)系统是一种能源需求监控和负载识别系统,只需使用在主电源配电板上安装的一个仪器。在本文中,作者使用了监控数据的低采样速率来检测从能量计获得1 Hz采样率的电源信号的任何变化。使用人工神经网络(ANN)训练稳态实电源和无功功率签名。本文指出了四个设备,包括空调电视冰箱和电饭煲。结果表明,在仿真试验中,可以在正确的检测速率下分解电器98%,并且在安装测试中可以在正确的检测率为95%的情况下分解电器。

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