Load-forecasting method for IES based on LSTM and dynamic similar days with multi-features

IF 1.9 Q4 ENERGY & FUELS
Fan Sun , Yaojia Huo , Lei Fu , Huilan Liu , Xi Wang , Yiming Ma
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引用次数: 0

Abstract

To fully exploit the rich characteristic variation laws of an integrated energy system (IES) and further improve the short-term load-forecasting accuracy, a load-forecasting method is proposed for an IES based on LSTM and dynamic similar days with multi-features. Feature expansion was performed to construct a comprehensive load day covering the load and meteorological information with coarse and fine time granularity, far and near time periods. The Gaussian mixture model (GMM) was used to divide the scene of the comprehensive load day, and gray correlation analysis was used to match the scene with the coarse time granularity characteristics of the day to be forecasted. Five typical days with the highest correlation with the day to be predicted in the scene were selected to construct a “dynamic similar day” by weighting. The key features of adjacent days and dynamic similar days were used to forecast multi-loads with fine time granularity using LSTM. Comparing the static features as input and the selection method of similar days based on non-extended single features, the effectiveness of the proposed prediction method was verified.

基于LSTM和多特征动态相似日的电力系统负荷预测方法
为了充分利用综合能源系统丰富的特征变化规律,进一步提高短期负荷预测精度,提出了一种基于LSTM和多特征动态相似日的综合能源系统负荷预测方法。通过特征展开,构建了覆盖负荷和气象信息的综合负荷日,具有粗粒度和细粒度、远时间段和近时间段。采用高斯混合模型(GMM)对综合负荷日的场景进行划分,并采用灰色关联分析将场景与待预测日的粗时间粒度特征进行匹配。选取与场景中待预测日相关性最高的5个典型日,通过加权构建“动态相似日”。利用相邻日和动态相似日的关键特征,利用LSTM进行时间粒度较细的多负荷预测。将静态特征作为输入与基于非扩展单特征的相似天数选择方法进行比较,验证了所提预测方法的有效性。
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来源期刊
Global Energy Interconnection
Global Energy Interconnection Engineering-Automotive Engineering
CiteScore
5.70
自引率
0.00%
发文量
985
审稿时长
15 weeks
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