综合能源系统多能量负荷预测的CL-MDT方法

T. Zheng, Gang Liu, Wei Cheng, Pingzhao Hu, Y. Wang
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引用次数: 0

摘要

源负荷调度是基于多能负荷预测的。综合能源系统主要包括三种能源:电、冷、热。研究电、冷、热三者之间的相关性,可以提高多能负荷预测的准确性。本文考虑了三种能源的相关性,充分分析了三者的相关性,并将三者的相关性应用于预测模型中。本文提出了一种用于多能负荷预测的CL-MDT (CNN-LSTM-Multi-Decoder-Transformer)模型。该模型基于Transformer,将编码器中的多头注意力部分替换为二维3*3 CNN(卷积神经网络)特征提取模块,对数据进行特征提取。在解码器中加入一维CNN特征提取模块和LSTM结构。本文采用单编码器和多解码器的结构,实现三者的相关性在预测模型中的应用。最后,在公共数据集上对模型进行了测试,并将CL-MDT模型与LSTM模型的多能负荷联合预测结果进行了比较。结果表明,本文提出的CL-MDT模型具有较好的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A CL-MDT Method of Multi-energy Load Forecasting in Integrated Energy System
Source-load scheduling is based on multi-energy-load forecasting. The integrated energy system mainly includes three types of energy: electricity, cooling and heating. Studying the correlation among electricity, cooling and heating may improve the accuracy of multi-energy-load forecasting. This paper considers the correlation of three energy sources, fully analyzes the correlation, and applies the correlation of the three in the forecasting model. This paper proposes a CL-MDT (CNN-LSTM-Multi-Decoder-Transformer) model for multi-energy-load forecasting. The model is based on the Transformer, and the Multi-Head Attention part in the Encoder is replaced by a 2dimensional 3*3 CNN (Convolutional Neural Network) feature extraction module for feature extraction of data. And a 1dimensional CNN feature extraction module and LSTM structure are added to the Decoder. The structure of single Encoder and multiple Decoders is used in this paper to realize the application of the correlation of the three in the forecasting model. Finally, the model is tested on public datasets and the forecasting results of CL-MDT are compared with that of LSTM model for multi-energy-load joint forecasting. The results show that the CL-MDT model proposed in this paper has better forecasting accuracy.
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