COMPARISON OF SHORT-TERM FORECASTING METHODS OF ELECTRICITY CONSUMPTION IN MICROGRIDS

IF 0.2 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Yuliia Parfenenko, V. Shendryk, Yevhenii Kholiavka, P. M. Pavlenko
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引用次数: 1

Abstract

Context. The current stage of development of the electric power industry is characterized by an intensive process of microgrid development and management. The feasibility of using a microgrid is determined by the fact that it has a number of advantages compared to classical methods of energy generation, transmission, and distribution. It is much easier to ensure the reliability of electricity supply within the microgrid than in large energy systems. Energy consumers in a microgrid can affect the power balancing process by regulating their loads, generating, storing, and releasing electricity. One of the main tasks of the microgrid is to provide consumers with electrical energy in a balance between its generation and consumption. This is achieved thanks to the intelligent management of the microgrid operation, which uses energy consumption forecasting data. This allows to increase the efficiency of energy infrastructure management. Objective. The purpose of this work is to develop short-term electricity consumption forecasting models for various types of microgrid electricity consumers, which will improve the efficiency of energy infrastructure management and reduce electricity consumption. Method. The SARIMA autoregressive model and the LSTM machine learning model are used to obtain forecast values of electricity consumption. AIC and BIC information criteria are used to compare autoregressive models. The accuracy of forecasting models is evaluated using MAE, RMSE, MAPE errors. Results. The experiments that forecast the amount of electricity consumption for the different types of consumers were conducted. Forecasting was carried out for both LSTM and AR models on formed data sets at intervals of 6 hours, 1 day, and 3 days. The forecasting results of the LSTM model met the forecasting requirements, providing better forecasting quality compared to AR models. Conclusions. The conducted study of electricity consumption forecasting made it possible to find universal forecasting models that meet the requirements of forecasting quality. A comparative analysis of developed time series forecasting models was performed, as a result of which the advantages of ML models over AR models were revealed. The predictive quality of the LSTM model showed the accuracy of the MAPE of forecasting electricity consumption for a private house – 0.1%, a dairy plant – 3.74%, and a gas station – 3.67%. The obtained results will allow to increase the efficiency of microgrid management, the distribution of electricity between electricity consumers to reduce the amount of energy consumption and prevent peak loads on the power grid.
微电网用电量短期预测方法比较
上下文。当前电力工业发展阶段的特点是微网建设和管理的集约化过程。使用微电网的可行性是由这样一个事实决定的:与传统的能源产生、传输和分配方法相比,它具有许多优势。与大型能源系统相比,确保微电网供电的可靠性要容易得多。微电网中的能源消费者可以通过调节其负载、发电、储存和释放电力来影响电力平衡过程。微电网的主要任务之一是为消费者提供发电和消费平衡的电能。这要归功于微电网运行的智能管理,它使用了能耗预测数据。这可以提高能源基础设施管理的效率。目标。本工作旨在建立各类微电网用电用户的短期用电量预测模型,提高能源基础设施管理效率,降低用电量。方法。利用SARIMA自回归模型和LSTM机器学习模型获得电力消耗预测值。采用AIC和BIC信息准则对自回归模型进行比较。利用MAE、RMSE、MAPE误差对预测模型的精度进行了评价。结果。对不同类型的消费者进行了电量预测实验。LSTM和AR模型在形成的数据集上分别以6小时、1天和3天的间隔进行预测。LSTM模型的预测结果满足预测要求,与AR模型相比具有更好的预测质量。结论。通过对电力消费预测的研究,可以找到满足预测质量要求的通用预测模型。对已开发的时间序列预测模型进行了比较分析,结果显示ML模型优于AR模型。LSTM模型的预测质量表明,预测私人住宅用电量的MAPE准确率为0.1%,乳品厂为3.74%,加油站为3.67%。所获得的结果将允许提高微电网管理的效率,在电力消费者之间分配电力,以减少能源消耗并防止电网的峰值负荷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Radio Electronics Computer Science Control
Radio Electronics Computer Science Control COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
自引率
20.00%
发文量
66
审稿时长
12 weeks
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