期刊论文详细信息
Energies
Deep Learning Based on Multi-Decomposition for Short-Term Load Forecasting
Gu-Young Kwon1  Do-In Kim1  Yong-June Shin1  Gyul Lee1  SeonHyeog Kim1 
[1] Department of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Korea;
关键词: deep learning;    empirical mode decomposition (EMD);    long short-term memory (LSTM);    load forecasting;    neural networks;    variational mode decomposition (VMD);    weekly decomposition;   
DOI  :  10.3390/en11123433
来源: DOAJ
【 摘 要 】

Load forecasting is a key issue for efficient real-time energy management in smart grids. To control the load using demand side management accurately, load forecasting should be predicted in the short term. With the advent of advanced measuring infrastructure, it is possible to measure energy consumption at sampling rates up to every 5 min and analyze the load profile of small-scale energy groups, such as individual buildings. This paper presents applications of deep learning using feature decomposition for improving the accuracy of load forecasting. The load profile is decomposed into a weekly load profile and then decomposed into intrinsic mode functions by variational mode decomposition to capture periodic features. Then, a long short-term memory network model is trained by three-dimensional input data with three-step regularization. Finally, the prediction results of all intrinsic mode functions are combined with advanced measuring infrastructure measured in the previous steps to determine an aggregated output for load forecasting. The results are validated by applications to real-world data from smart buildings, and the performance of the proposed approach is assessed by comparing the predicted results with those of conventional methods, nonlinear autoregressive networks with exogenous inputs, and long short-term memory network-based feature decomposition.

【 授权许可】

Unknown   

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