基于信道关注的轻型卷积网络非侵入式负荷监测

Zhan Liu, Gan Zhou, Yanjun Feng, Jing Zhang, Ying Zeng, Long Jin
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引用次数: 0

摘要

非侵入式负荷监测是智能电网端端信息化应用的基础。同时,非侵入式负荷监测算法分解出的设备细粒度耗电量,对调整用电结构也有重要作用。目前,深度神经网络已成为非侵入式负载识别领域的研究热点,但大多数神经网络模型只关注如何提高识别精度,而忽略了实际部署过程中硬件监控设备对网络规模的要求。本文提出了一种结合通道注意机制(LACNet)的轻量级卷积神经网络。通过序列化的多尺度扩张卷积结构,在增加接收野、减少参数的同时达到压缩模型大小的目的,同时利用通道注意机制对不同特征进行优化,提高模型识别精度。最后,我们在公共数据集UK-DALE上进行了实验验证。结果表明,LACNet在EA和其他评估指标方面优于几个现有的负载识别网络。同时,模型参数也大大减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Convolutional Network Combined with Channel Attention for Non-intrusive Load Monitoring
Non-intrusive load monitoring (NILM) is the basis of end-side informatization applications in smart grids. At the same time, the fine-grained power consumption of equipment decomposed by non-intrusive load monitoring algorithms also plays an important role in adjusting the power consumption structure. At present, deep neural network has become the focus of research in the field of non-intrusive load identification, but most neural network models only focus on how to improve the identification accuracy, while ignoring the network size requirements of hardware monitoring devices in the actual deployment process. In this paper, we propose a lightweight convolutional neural network combined with channel attention mechanism (LACNet). Through the serialized multi-scale dilated convolution structure, while increasing the receptive field, reducing the parameters to achieve the purpose of compressing the model size, and also using the channel attention mechanism to optimize different features to improve the model identification accuracy. Finally, we conducted experimental verification on the public dataset UK-DALE. The results showed that LACNet outperforms several existing load identification networks in terms of EA and other evaluation metrics. At the same time, the model parameters are also greatly reduced.
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