Non-Intrusive Load Monitoring Based on Residual U-Net and Conditional Generation Adversarial Networks

被引:2
作者
Wang, Jinlong [1 ]
Pang, Chengxin [1 ]
Zeng, Xinhua [2 ]
Chen, Yongbo [3 ]
机构
[1] Shanghai Univ Elect Power, Sch Elect & Informat Engn, Shanghai 200000, Peoples R China
[2] Fudan Univ, Acad Engn & Technol, Shanghai 200433, Peoples R China
[3] ZTE Corp, Shenzhen 518057, Peoples R China
关键词
Conditional generative adversarial networks; NILM; ResU-net;
D O I
10.1109/ACCESS.2023.3292911
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
A non-intrusive load disaggregation method based on residual U-Net and conditional generation adversarial networks (RUCGAN) model is proposed to address the low decomposition accuracy and poor generalization of traditional load disaggregation algorithms. The method is based on a conditional generative adversarial networks (CGAN), which is a variant of the encoder-decoder model that is suitable for processing time-series data and overcomes the limitation of requiring a manually designed feature extractor in traditional encoder-decoder structures. By introducing the U-Net structure as the encoder of the CGAN network, the size of the feature map can be gradually reduced through convolution and pooling operations, and gradually restored through deconvolution and upsampling operations. The U-Net structure also has skip connections that effectively preserve feature information and accelerate gradient propagation, thus improving model stability and generalization. Furthermore, combining the residual structure with the U-Net structure further enhances the model's performance, as the residual connections can effectively reduce the number of network parameters and computation. Experimental results show that the MAE value of the model on the UK-DALE dataset decreased by at least 20.5%, and the MAE value of the model on the REFIT dataset decreased by at least 9.9%. Moreover, while improving the decomposition accuracy, the model size decreased by at least 5.6%.
引用
收藏
页码:77441 / 77451
页数:11
相关论文
共 35 条
  • [1] Denoising autoencoders for Non-Intrusive Load Monitoring: Improvements and comparative evaluation
    Bonfigli, Roberto
    Felicetti, Andrea
    Principi, Emanuele
    Fagiani, Marco
    Squartini, Stefano
    Piazza, Francesco
    [J]. ENERGY AND BUILDINGS, 2018, 158 : 1461 - 1474
  • [2] PALDi: Online Load Disaggregation via Particle Filtering
    Egarter, Dominik
    Bhuvana, Venkata Pathuri
    Elmenreich, Wilfried
    [J]. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2015, 64 (02) : 467 - 477
  • [3] Generative Adversarial Networks
    Goodfellow, Ian
    Pouget-Abadie, Jean
    Mirza, Mehdi
    Xu, Bing
    Warde-Farley, David
    Ozair, Sherjil
    Courville, Aaron
    Bengio, Yoshua
    [J]. COMMUNICATIONS OF THE ACM, 2020, 63 (11) : 139 - 144
  • [4] A Brief Review of Non-Intrusive Load Monitoring and Its Impact on Social Life
    Gurbuz, Fethi Batincan
    Bayindir, Ramazan
    Bulbul, Halil Ibrahim
    [J]. 2021 9TH INTERNATIONAL CONFERENCE ON SMART GRID, ICSMARTGRID, 2021, : 289 - 294
  • [5] Han, 2011, P 2011 SIAM INT C DA, P747, DOI [DOI 10.1137/1.9781611972818.64, 10.1137/1.9781611972818.64]
  • [6] NONINTRUSIVE APPLIANCE LOAD MONITORING
    HART, GW
    [J]. PROCEEDINGS OF THE IEEE, 1992, 80 (12) : 1870 - 1891
  • [7] An Empirical Investigation of V-I Trajectory Based Load Signatures for Non-Intrusive Load Monitoring
    Hassan, Taha
    Javed, Fahad
    Arshad, Naveed
    [J]. IEEE TRANSACTIONS ON SMART GRID, 2014, 5 (02) : 870 - 878
  • [8] Deep Residual Learning for Image Recognition
    He, Kaiming
    Zhang, Xiangyu
    Ren, Shaoqing
    Sun, Jian
    [J]. 2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, : 770 - 778
  • [9] Johnson MJ, 2013, J MACH LEARN RES, V14, P673
  • [10] Neural NILM: Deep Neural Networks Applied to Energy Disaggregation
    Kelly, Jack
    Knottenbelt, William
    [J]. BUILDSYS'15 PROCEEDINGS OF THE 2ND ACM INTERNATIONAL CONFERENCE ON EMBEDDED SYSTEMS FOR ENERGY-EFFICIENT BUILT, 2015, : 55 - 64