基于CNN-LSTM-LGBM多模型融合的短期负荷预测

Wei-dong Qian, Chunlei Gu, Chongxi Zhu, Zi-bin Jiang, Baohui Han, Miao Yu
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引用次数: 3

摘要

区域间能源调度和区域截峰填谷都需要准确的负荷预测作为支撑。为了提高预测精度,本文提出了一种考虑需求响应的基于CNN(卷积神经网络)-LSTM(长短期记忆)-LGBM(光梯度增强机)的多模型融合预测方法。利用CNN的能力有效提取局部特征,利用LSTM对时间序列信息的抓取能力构建串行CNN-LSTM模型。同时,利用LGBM对非线性影响因素的回归分析能力,构建LGBM预测模型,并采用最优组合方法进行模型融合。此外,还考虑了需求响应即电价因素对区域负荷的影响。通过对负荷数据集的测试,结果表明,融合模型的负荷预测性能优于单个模型,测试集的平均绝对百分比误差(MAPE)为1.597%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term Load Forecasting Based on Multi-model Fusion of CNN-LSTM-LGBM
Inter-regional energy dispatch and regional peak cutting and valley filling require accurate load forecasting as support. In order to improve the forecasting accuracy, this paper proposes a multi-model fusion forecasting method based on CNN (convolutional neural network)-LSTM (long short-term memory)-LGBM (Light Gradient Boosting Machine) considering demand response. The CNN's ability is exploited to effectively extract local features, and LSTM’s ability to grasp time series information is used to build a serial CNN-LSTM model. Meanwhile, LGBM's regression analysis capabilities for nonlinear influencing factors is utilized to build an LGBM prediction model, and then an optimal combination method is used for model fusion. In addition, the impact of demand response, that is, electricity price factors, on regional loads is also considered. Through testing on the load data set, the results show that the fusion model has better load forecasting performance than individual model, and the MAPE (Mean Absolute Percentage Error) of the test set is 1.597%.
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