基于电流瞬态信号特征和建设性反向传播方法的智能电表

M. Syai’in, M. F. Adiatmoko, Isa Rachman, L. Subiyanto, Koko Hutoro, O. Penangsang, A. Soeprijanto
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引用次数: 30

摘要

电力消耗和电价的上涨使得消费者在解决问题上更加敏感。因此,准确记录设备的功耗(千瓦时表)就成为绝对必要的,以减少可能出现的潜在冲突。本文提出了一种结合暂态峰值和稳态值来识别电器活动的智能电表原型。这些值被用作电器的身份,将被教导给建设性反向传播神经网络(CBP-NN),以详细记录功耗,包括电器类型和使用时间。该方法结构简单,仅使用两个输入(瞬态峰值和稳态值)和单个隐藏层,包含5个神经元。输出的数量等于器具的数量。因此,该方法可在微处理器系统或独立产品中实现。仿真和实验结果验证了该方法在实际系统中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart-Meter based on current transient signal signature and constructive backpropagation method
Increasing of electric power consumption and electricity price are making customers more sensitive in addressing the issues. Therefore, the accuracy of the recording device power consumption (kWh-meter) becomes an absolute necessity to reduce potential conflicts that may arise. This paper proposed prototype of smart-meter which combines transient peak value and steady state values to identify an activity of electrical appliances. These values are used as the identity of electrical appliances that will be taught to Constructive Backpropagation Neural Network (CBP-NN) to record power consumption in detail, including type appliance and time use. The proposed method has very simple structure, it only uses two input (transient peak value and steady state values) and single hidden layer with five neuron. The number of output is equal to the number of appliance. So that, the proposed method implement in microsprocessor system or in standalone product. Simulation and experimental results have validated the performance of the proposed method to operate in a real system.
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