Deep convolutional neural networks for short-term multi-energy demand prediction of integrated energy systems

IF 5 2区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Electrical Power & Energy Systems Pub Date : 2024-07-10 DOI:10.1016/j.ijepes.2024.110111
Corneliu Arsene, Alessandra Parisio
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Abstract

Forecasting power consumptions of integrated electrical, heat and gas network systems is essential in order to operate more efficiently the multi-energy network system. Multi-energy systems are increasingly seen as a key component of future energy systems, and a valuable source of flexibility, which can significantly contribute to a cleaner and more sustainable integrated energy system. Therefore, there is a stringent need for developing novel and performant models for forecasting multi-energy demands of integrated energy systems, which to account for the different types of interacting energy vectors and of the coupling between them. Previous efforts in demand forecasting focused only on electrical power consumptions or, more recently, on the single heat or gas power consumptions. Therefore, in order to address the multi-energy demand forecasting problem, in this paper six novel prediction models based on Convolutional Neural Networks (CNNs) are developed, for either individual or joint prediction of multi-energy power consumptions: the single input/single output variable CNN model with determining the optimum number of epochs (CNN_1), the multiple input/single output variable CNN model (CNN_2), the single input/single output CNN model with training/validation/testing datasets (CNN_3), the joint prediction CNN model (CNN_4), the multiple-building input/output CNN model (CNN_5) and the federated learning CNN model (CNN_6). All six models are applied in a comprehensive manner on a novel integrated electrical, heat and gas network system, which only recently has started to be used for forecasting. The forecast horizon is short-term (i.e. next half an hour) and all the prediction results are evaluated in terms of the Signal to Noise Ratio (SNR) and the Normalized Root Mean Square Error (NRMSE), while the Mean Absolute Percentage Error (MAPE) is used for comparison purposes with other existent results from literature. The numerical results show that the single input/single output variable CNN model with training/validation/testing datasets (CNN_3) is able to equal the performances of the single input/single output variable CNN model with determining the optimum number of epochs (CNN_1), and to outperform the other four prediction models. The prediction accuracy of the multi-energy networks loads is shown to significantly depend on the level of non-linearity and scarcity existent in the input training dataset(s). Furthermore, this extensive multi-model study reveals that the characteristics (i.e. connections between the different networks, correlations between the different energy vectors) of the considered integrated energy system need to be explored when designing the CNNs prediction models.

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用于综合能源系统短期多能源需求预测的深度卷积神经网络
为了更有效地运行多能源网络系统,预测综合电力、热力和天然气网络系统的耗电量至关重要。多能源系统日益被视为未来能源系统的关键组成部分,也是一种宝贵的灵活性来源,可极大地促进更清洁、更可持续的综合能源系统。因此,亟需开发新的高性能模型来预测综合能源系统的多能源需求,以考虑不同类型的相互作用的能源矢量以及它们之间的耦合。以往的需求预测只关注电力消耗,或最近关注单一的热能或燃气消耗。因此,为了解决多能源需求预测问题,本文开发了六种基于卷积神经网络(CNN)的新型预测模型,用于单独或联合预测多能源电力消耗量:单输入/单输出变量 CNN 模型(CNN_1)、多输入/单输出变量 CNN 模型(CNN_2)、单输入/单输出 CNN 模型(CNN_3)、联合预测 CNN 模型(CNN_4)、多输入/多输出 CNN 模型(CNN_5)和联合学习 CNN 模型(CNN_6)。所有六个模型都以综合方式应用于一个新颖的综合电力、热力和燃气网络系统,该系统最近才开始用于预测。预测范围为短期(即未来半小时),所有预测结果均以信噪比(SNR)和归一化均方根误差(NRMSE)进行评估,同时使用平均绝对百分比误差(MAPE)与其他文献中的现有结果进行比较。数值结果表明,使用训练/验证/测试数据集的单输入/单输出变量 CNN 模型(CNN_3)与使用确定最佳历元数的单输入/单输出变量 CNN 模型(CNN_1)性能相当,并且优于其他四个预测模型。多能源网络负载的预测准确性在很大程度上取决于输入训练数据集的非线性和稀缺程度。此外,这项广泛的多模型研究表明,在设计 CNNs 预测模型时,需要探索所考虑的综合能源系统的特征(即不同网络之间的连接、不同能源向量之间的相关性)。
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来源期刊
International Journal of Electrical Power & Energy Systems
International Journal of Electrical Power & Energy Systems 工程技术-工程:电子与电气
CiteScore
12.10
自引率
17.30%
发文量
1022
审稿时长
51 days
期刊介绍: The journal covers theoretical developments in electrical power and energy systems and their applications. The coverage embraces: generation and network planning; reliability; long and short term operation; expert systems; neural networks; object oriented systems; system control centres; database and information systems; stock and parameter estimation; system security and adequacy; network theory, modelling and computation; small and large system dynamics; dynamic model identification; on-line control including load and switching control; protection; distribution systems; energy economics; impact of non-conventional systems; and man-machine interfaces. As well as original research papers, the journal publishes short contributions, book reviews and conference reports. All papers are peer-reviewed by at least two referees.
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