Particle Swarm Algorithm to Optimize LSTM Short-Term Load Forecasting
Abstract
Accurate load forecasting is of great significance for national and grid planning and management. In order to improve the accuracy of short-term load forecasting, an LSTM prediction model based on particle swarm optimization (PSO)algorithm is proposed. LSTM has the characteristics of avoiding gradient disappearance and gradient explosion, but there is a problem that parameters are difficult to select. Therefore, particle swarm optimization algorithm is used to help it select parameters. The experimental results show that the optimized LSTM has higher prediction accuracy.
Keywords
Full Text:
PDFReferences
Kang, CQ., Xia Q., Liu, M., Power system load forecasting [M]. Beijing:China Electric Power Press. 2007.
Shi, JQ., Zhang, JH., Ultra short-term photovoltaic refined forecasting model based on deep learning [J]. Electric Power Construction, 2017, 38(6): 28-35.
Wei, D., Gong, QW., Lai, WQ., et al. Research on internal and external fault diagnosis and fault-selection of transmission line based on convolutional neural network[J]. Proceedings of the CSEE, 2016, 36(S1):21-28.
Li, GY., Li, W., Tian, XL., et al. Short-term electricity load forecasting based on the XGBoost algorithm [J]. Smart Grid, 2017, 7(4):274-285.
Liu, Y., Xu LX., High-performance back propagation neural network algorithm for classification of mass load data [J]. Automation of Electric Power Systems, 2018, 42 (21): 96-103. DOI:10.7500/ AEPS20171215005.
Su, XN., Liu, TQ., Cao, HQ., et al. Amultiple distributed BP neural networks approach for short-term load Forecasting based on Hadoop framework [J].Proceedings of the CSEE, 2017, 37(17): 4966-4973.
Zhu, HB., Cui Y., Xiong, H., Load forecasting based on improved BP neural network [J]. Modern Electronics Technique, 2016,39(20): 64-66.
Wu, XY., He JH., Zhang, Pei, et al. Power system short-term load forecasting based on improved random forest with grey relation projection [J]. Automation of Electric Power Systems. 2015, 39(12): 50-55.
Kong, XY., Zheng, F., E, ZJ., et al. Short-term load forecasting based on deep belief network[J]. Automation of Electric Power Systems, 2018, 42 (5):133-139. DOI: 10.7500/AEPS 20170826002.
Wu, QH., Gao, Jun, Hou, GS., et al. Short-term load forecasting support vector machine algorithm based on multi-source heterogeneous fusion of load factors[J]. Automation of Electric Power Systems, 2016, 40(15): 67-72.
Shen, BX., Using expert system to predict the power load in the area[J]. Electronics Demand Side Management, 2005(2): 49-50.
DOI: https://doi.org/10.18686/esta.v9i2.226
Refbacks
- There are currently no refbacks.
Copyright (c) 2022 Xifeng Guo
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.