He Nian, Liu Dengfeng, Zhang Zhichen, Lin Zhiquan, Zhao Tiesong, Xu Yiwen
Zhicheng College, Fuzhou University, Fuzhou 350002, China.
Fujian Key Lab for Intelligent Processing and Wireless Transmission of Media Information, Fuzhou University, Fuzhou 350108, China.
Sensors (Basel). 2024 May 14;24(10):3109. doi: 10.3390/s24103109.
State-of-the-art smart cities have been calling for economic but efficient energy management over a large-scale network, especially for the electric power system. It is a critical issue to monitor, analyze, and control electric loads of all users in the system. In this study, a non-intrusive load monitoring method was designed for smart power management using computer vision techniques popular in artificial intelligence. First of all, one-dimensional current signals are mapped onto two-dimensional color feature images using signal transforms (including the wavelet transform and discrete Fourier transform) and Gramian Angular Field (GAF) methods. Second, a deep neural network with multi-scale feature extraction and attention mechanism is proposed to recognize all electrical loads from the color feature images. Third, a cloud-based approach was designed for the non-intrusive monitoring of all users, thereby saving energy costs during power system control. Experimental results on both public and private datasets demonstrate that the method achieves superior performances compared to its peers, and thus supports efficient energy management over a large-scale Internet of Things network.
先进的智慧城市一直呼吁在大规模网络上进行经济高效的能源管理,尤其是电力系统。监测、分析和控制系统中所有用户的电力负荷是一个关键问题。在本研究中,设计了一种用于智能电力管理的非侵入式负荷监测方法,该方法使用人工智能中流行的计算机视觉技术。首先,利用信号变换(包括小波变换和离散傅里叶变换)和格拉姆角场(GAF)方法将一维电流信号映射到二维颜色特征图像上。其次,提出了一种具有多尺度特征提取和注意力机制的深度神经网络,用于从颜色特征图像中识别所有电力负荷。第三,设计了一种基于云的方法用于对所有用户进行非侵入式监测,从而在电力系统控制过程中节省能源成本。在公共和私有数据集上的实验结果表明,该方法与同类方法相比具有卓越的性能,从而支持在大规模物联网网络上进行高效的能源管理。