Ensemble Deep Learning Method for Short-Term Load Forecasting

Haibo Guo, Lingling Tang, Yuexing Peng
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引用次数: 4

Abstract

Short-term load forecasting (STLF) is the basis for the economic operation of the power system, and accurate STLF can optimize the power company's generation scheduling and improve the economics and safety of power grid operation. Classical regression-based models are mainly developed for stationary time series, while power load is typical nonstationary one. Shallow neural network model usually cannot capture complicated non-linear pattern efficiently, while power load features complicated varying patterns due to the numerous factors such as region, climate, economics, industry. Deep neural network, especially recurrent neural network (RNN) methods, like long short-term memory (LSTM), can model complicated pattern efficiently with the state-of-the-art erformance, but the training of the deep network becomes much harder with the increase of input sequence length. Since the power load holds large span of periodicity from daily through yearly, LSTM cannot fully exploit the inner correlation of power load. In this paper, ensemble deep learning method is proposed to exploit both non-linear pattern by LSTM and large-span period by similar day method. The proposed method integrates several LSTM networks, and each network is fed with different input time sequences which are selected regarding the similarity of load pattern. Experiment results show the effectiveness of the proposed method when comparing with exiting methods.
短期负荷预测的集成深度学习方法
短期负荷预测是电力系统经济运行的基础,准确的短期负荷预测可以优化电力公司的发电计划,提高电网运行的经济性和安全性。经典的回归模型主要针对平稳时间序列,而电力负荷是典型的非平稳时间序列。浅层神经网络模型通常不能有效地捕捉复杂的非线性模式,而电力负荷由于受到地域、气候、经济、行业等诸多因素的影响,具有复杂的变化模式。深度神经网络,特别是递归神经网络(RNN)方法,如长短期记忆(LSTM),能够以最先进的性能高效地对复杂模式进行建模,但随着输入序列长度的增加,深度网络的训练难度越来越大。由于电力负荷具有从日到年的大周期跨度,LSTM不能充分挖掘电力负荷的内在相关性。本文提出了集成深度学习方法,利用LSTM方法挖掘非线性模式和相似日方法挖掘大跨度周期。该方法集成了多个LSTM网络,每个网络都有不同的输入时间序列,这些输入时间序列是根据负载模式的相似性来选择的。实验结果与现有方法进行了比较,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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