Household Power Demand Prediction Using Evolutionary Ensemble Neural Network Pool with Multiple Network Structures

被引:32
作者
Ai, Songpu [1 ]
Chakravorty, Antorweep [1 ]
Rong, Chunming [1 ]
机构
[1] Univ Stavanger, Dept Elect Engn & Comp Sci, N-4036 Stavanger, Norway
基金
欧盟地平线“2020”;
关键词
machine learning; artificial neural network; smart sensor; evolutionary algorithm; ensemble learning; long short-term memory; gated recurrent unit; demand prediction; HEMS; missing data; GRADIENT DESCENT;
D O I
10.3390/s19030721
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The progress of technology on energy and IoT fields has led to an increasingly complicated electric environment in low-voltage local microgrid, along with the extensions of electric vehicle, micro-generation, and local storage. It is required to establish a home energy management system (HEMS) to efficiently integrate and manage household energy micro-generation, consumption and storage, in order to realize decentralized local energy systems at the community level. Domestic power demand prediction is of great importance for establishing HEMS on realizing load balancing as well as other smart energy solutions with the support of IoT techniques. Artificial neural networks with various network types (e.g., DNN, LSTM/GRU based RNN) and other configurations are widely utilized on energy predictions. However, the selection of network configuration for each research is generally a case by case study achieved through empirical or enumerative approaches. Moreover, the commonly utilized network initialization methods assign parameter values based on random numbers, which cause diversity on model performance, including learning efficiency, forecast accuracy, etc. In this paper, an evolutionary ensemble neural network pool (EENNP) method is proposed to achieve a population of well-performing networks with proper combinations of configuration and initialization automatically. In the experimental study, power demand predictions of multiple households are explored in three application scenarios: optimizing potential network configuration set, forecasting single household power demand, and refilling missing data. The impacts of evolutionary parameters on model performance are investigated. The experimental results illustrate that the proposed method achieves better solutions on the considered scenarios. The optimized potential network configuration set using EENNP achieves a similar result to manual optimization. The results of household demand prediction and missing data refilling perform better than the naive and simple predictors.
引用
收藏
页数:19
相关论文
共 33 条
  • [21] Neural Network-Based Uncertainty Quantification: A Survey of Methodologies and Applications
    Kabir, H. M. Dipu
    Khosravi, Abbas
    Hosen, Mohammad Anwar
    Nahavandi, Saeid
    [J]. IEEE ACCESS, 2018, 6 : 36218 - 36234
  • [22] Kumar S., 2018, P 2018 5 INT C EM AP, P1
  • [23] Mahajan Richa., 2013, International Journal of Computer Applications, V77, P6, DOI [10.5120/13549-1153, DOI 10.5120/13549-1153]
  • [24] Marino DL, 2016, IEEE IND ELEC, P7046, DOI 10.1109/IECON.2016.7793413
  • [25] Nielsen M. A., 2015, NEURAL NETWORKS DEEP, V25
  • [26] Ravichandran Arunkumar., 2013, Transportation Electrification Conference and Expo (ITEC), 2013 IEEE, P1
  • [27] Upgrade of an artificial neural network prediction method for electrical consumption forecasting using an hourly temperature curve model
    Roldan-Blay, Carlos
    Escriva-Escriva, Guillermo
    Alvarez-Bel, Carlos
    Roldan-Porta, Carlos
    Rodriguez-Garcia, Javier
    [J]. ENERGY AND BUILDINGS, 2013, 60 : 38 - 46
  • [28] Sak H, 2014, INTERSPEECH, P338
  • [29] Songpu Ai, 2018, 2018 IEEE 2nd International Conference on Energy Internet (ICEI). Proceedings, P163, DOI 10.1109/ICEI.2018.00037
  • [30] Wichard JD, 2016, IEEE IJCNN, P1495, DOI 10.1109/IJCNN.2016.7727375