Short-Term Power Load Forecasting Method Based on GRU-Transformer Combined Neural Network Model

Q4 Computer Science
Weiwei Mao, S. Yu, Wenqing Chen
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引用次数: 0

Abstract

Load Forecast (LF) is an important task in the planning, control and application of public power systems. Accurate Short Term Load Forecast (STLF) is the premise of safe and economical operation of a power system. In the research of short-term power load forecasting, machine learning and deep learning are the most popular methods at present, but there still exists a problem that the single and simple structure of power load forecasting model leads to low accuracy of load forecasting. In order to improve the accuracy of STLF, a Gated Cycle Unit (GRU)-Transformer combined neural network model is proposed. Transformer encoder structure is used as feature extractor to mine the complex mapping relationships between the input features and load. The advantage of self-attention mechanism is used to solve the problem of information loss of long sequences in short-term power load forecasting. At the same time, the multivariate time series model of GRU is used for model training. The experimental results on the power load data set of a certain region in southwest China and Panama City show that the proposed combined model prediction method has higher accuracy than those proposed in other literatures, which further proves its feasibility and superiority.
基于 GRU 变压器组合神经网络模型的短期电力负荷预测方法
负荷预测(LF)是公共电力系统规划、控制和应用中的一项重要任务。准确的短期负荷预测(STLF)是电力系统安全、经济运行的前提。在短期电力负荷预测的研究中,机器学习和深度学习是目前最流行的方法,但仍存在电力负荷预测模型结构单一、简单,导致负荷预测准确率低的问题。为了提高 STLF 的精度,本文提出了门控循环单元(GRU)- 变压器组合神经网络模型。变压器编码器结构被用作特征提取器,以挖掘输入特征与负荷之间的复杂映射关系。利用自注意机制的优势,解决了短期电力负荷预测中长序列信息丢失的问题。同时,利用 GRU 的多元时间序列模型进行模型训练。在西南某地区和巴拿马城电力负荷数据集上的实验结果表明,所提出的组合模型预测方法比其他文献提出的预测方法具有更高的精度,进一步证明了其可行性和优越性。
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来源期刊
Journal of Computing and Information Technology
Journal of Computing and Information Technology Computer Science-Computer Science (all)
CiteScore
0.60
自引率
0.00%
发文量
16
审稿时长
26 weeks
期刊介绍: CIT. Journal of Computing and Information Technology is an international peer-reviewed journal covering the area of computing and information technology, i.e. computer science, computer engineering, software engineering, information systems, and information technology. CIT endeavors to publish stimulating accounts of original scientific work, primarily including research papers on both theoretical and practical issues, as well as case studies describing the application and critical evaluation of theory. Surveys and state-of-the-art reports will be considered only exceptionally; proposals for such submissions should be sent to the Editorial Board for scrutiny. Specific areas of interest comprise, but are not restricted to, the following topics: theory of computing, design and analysis of algorithms, numerical and symbolic computing, scientific computing, artificial intelligence, image processing, pattern recognition, computer vision, embedded and real-time systems, operating systems, computer networking, Web technologies, distributed systems, human-computer interaction, technology enhanced learning, multimedia, database systems, data mining, machine learning, knowledge engineering, soft computing systems and network security, computational statistics, computational linguistics, and natural language processing. Special attention is paid to educational, social, legal and managerial aspects of computing and information technology. In this respect CIT fosters the exchange of ideas, experience and knowledge between regions with different technological and cultural background, and in particular developed and developing ones.
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