Multi-step least squares support vector machine modeling approach for forecasting short-term electricity demand with application

Electricity demand forecasting plays a crucial role in the operation of electrical power systems because it can provide management decisions related to load switching and power grid. Thus, there have been models developed to estimate the electricity demand. However, inaccurate demand forecasting may...

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Veröffentlicht in:Neural computing & applications 2021-01, Vol.33 (1), p.301-320
Hauptverfasser: Li, Ranran, Chen, Xueli, Balezentis, Tomas, Streimikiene, Dalia, Niu, Zhiyong
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container_start_page 301
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Chen, Xueli
Balezentis, Tomas
Streimikiene, Dalia
Niu, Zhiyong
description Electricity demand forecasting plays a crucial role in the operation of electrical power systems because it can provide management decisions related to load switching and power grid. Thus, there have been models developed to estimate the electricity demand. However, inaccurate demand forecasting may raise the operating cost of electric power sector, which means that it would waste considerable money. In this paper, a novel modeling framework was proposed for forecasting electricity demand. Sample entropy was developed to identify the nonlinearity and uncertainty in the original time series, after that redundant noise was removed through a decomposition technique. Besides, the most optimal modes of original series and the optimal input form of the model were determined by the feature selection method. Finally, electricity demand series can be conducted forecasting through least squares support vector machine tuned by multi-objective sine cosine optimization algorithm. The case studies of Australia demonstrated that the proposed framework can ensure high accuracy and strong stability. Thus, it can be considered as a useful tool for electricity demand forecasting.
doi_str_mv 10.1007/s00521-020-04996-3
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subjects Algorithms
Artificial Intelligence
Computational Biology/Bioinformatics
Computational Science and Engineering
Computer Science
Data Mining and Knowledge Discovery
Economic forecasting
Electric power demand
Electric power grids
Electric power systems
Electricity
Electricity consumption
Electricity distribution
Forecasting
Image Processing and Computer Vision
Least squares
Mathematical models
Modelling
Multiple objective analysis
Optimization
Original Article
Probability and Statistics in Computer Science
Support vector machines
Trigonometric functions
title Multi-step least squares support vector machine modeling approach for forecasting short-term electricity demand with application
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