Non-Intrusive Load Identification Model Based on 3D Spatial Feature and Convolutional Neural Network

Jiangyong Liu, Ning Liu, Huina Song, Ximeng Liu, Xing-Ming Sun, Dake Zhang
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引用次数: 3

Abstract

Load identification method is one of the major technical difficulties of non-intrusive composite monitoring. Binary V-I trajectory image can reflect the original V-I trajectory characteristics to a large extent, so it is widely used in load identification. However, using single binary V-I trajectory feature for load identification has certain limitations. In order to improve the accuracy of load identification, the power feature is added on the basis of the binary V-I trajectory feature in this paper. We change the initial binary V-I trajectory into a new 3D feature by mapping the power feature to the third dimension. In order to reduce the impact of imbalance samples on load identification, the SVM SMOTE algorithm is used to balance the samples. Based on the deep learning method, the convolutional neural network model is used to extract the newly produced 3D feature to achieve load identification in this paper. The results indicate the new 3D feature has better observability and the proposed model has higher identification performance compared with other classification models on the public data set PLAID.
基于三维空间特征和卷积神经网络的非侵入式负载识别模型
载荷识别方法是非侵入式复合监测的主要技术难点之一。二值V-I弹道图像能在很大程度上反映原V-I弹道特征,因此在载荷识别中得到了广泛的应用。然而,利用单二进制V-I轨迹特征进行载荷识别存在一定的局限性。为了提高负载识别的精度,本文在二元V-I轨迹特征的基础上增加了功率特征。通过将功率特征映射到三维空间,将初始二进制V-I轨迹转换为新的三维特征。为了减少样本不平衡对负载识别的影响,采用支持向量机SMOTE算法对样本进行平衡。本文在深度学习方法的基础上,利用卷积神经网络模型提取新生成的三维特征,实现载荷识别。结果表明,在公共数据集PLAID上,与其他分类模型相比,新的三维特征具有更好的可观测性,并且该模型具有更高的识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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