Non-intrusive Load Monitoring for Consistent Shape Loads Based on Convolutional Neural Network

Xiang Li, Y. Guo, Meng Yan, Xin Wu
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Abstract

As the key method for demand-side management in power grid, non-intrusive load monitoring (NILM) keep up to the power consumption of various users in real time and provides data to support the formulation of relevant power policies. In order to achieve accurate resident load monitoring, this paper proposes a NILM architecture focus on consistent shape loads (CSL). Loads in CSL meet the following conditions: 1) current waveform images of different load individuals in the same type are highly similar. 2) different types of load waveform images are different in shapes which are distinguishable. Besides, a non-intrusive load monitoring method based on convolutional neural network (CNN) to identify CSL load is proposed and carried out on actual users. Power consumption data of CSL with different operating environments is taken as training samples. The outcome of our experiment shows the effectiveness of the method in accurately distinguishing CSL and high-precision identification which reaches 97.06%. The method ensures the real-time performance and accuracy of load monitoring.
基于卷积神经网络的非侵入式一致形状载荷监测
非侵入式负荷监测(NILM)是电网需求侧管理的关键手段,实时掌握各类用户的用电情况,为制定相关电力政策提供数据支持。为了实现准确的驻留荷载监测,本文提出了一种基于一致形状荷载(CSL)的NILM体系结构。CSL荷载满足以下条件:1)同一类型不同荷载个体的电流波形图像高度相似。2)不同类型的负载波形图像形状不同,易于区分。此外,提出了一种基于卷积神经网络(CNN)的非侵入式负荷监测方法来识别CSL负荷,并在实际用户中进行了应用。以CSL在不同运行环境下的功耗数据作为训练样本。实验结果表明,该方法对CSL的准确识别和高精度识别达到了97.06%。该方法保证了负荷监测的实时性和准确性。
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