Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods

Modern electricity consumers place increasingly high demands on the level of reliability of power supply and, correspondingly, the reliability of electric power systems (EPS). These requirements should be directly addressed in the EPS development planning tasks. To this end, the evaluation of the le...

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Main Authors: Boyarkin D.A., Krupenev D.S., Iakubobsky D.V.
Format: Article
Language:English
Published: EDP Sciences 2019-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2019/40/e3sconf_esr2019_03003.pdf
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spelling doaj-c7f3fd3089a64f1b842f72c57e8654b32021-04-02T13:06:54ZengEDP SciencesE3S Web of Conferences2267-12422019-01-011140300310.1051/e3sconf/201911403003e3sconf_esr2019_03003Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methodsBoyarkin D.A.Krupenev D.S.Iakubobsky D.V.Modern electricity consumers place increasingly high demands on the level of reliability of power supply and, correspondingly, the reliability of electric power systems (EPS). These requirements should be directly addressed in the EPS development planning tasks. To this end, the evaluation of the level of EPS reliability is performed by employing software and computer systems that have various methods of reliability evaluation implemented therein. Among the variety of methods for identifying reliability indicators to evaluate resource adequacy the most appropriate one is the Monte Carlo method (the method of statistical tests): it enables to perform calculations within a reasonable time with the required accuracy, while the calculation of complex EPS-like systems by means of analytical methods proves impossible because of the large dimensionality of the problem. However, even when using the Monte Carlo method, the difficulties arise as well, namely the problem of the need to reproduce a large number of random states of the simulated EPS and the calculation of the operating mode of each of them. There are several ways to reduce the overall calculation time by either efficient random number generators and optimizers or alternative methods of the calculation of operating modes. The article deals with the issue of bringing up to date the method behind reliability calculation that makes use of the Monte Carlo method. We propose to use regression analysis methods when calculating operating modes of random states of the EPS. To this end, we adopt the support-vector machine and the random forest method. Experimental studies covered in the article attest to the efficiency of the new method, for the 24-node system IEEE RTS-96 the calculation speed has been increased by almost a factor of 4 while maintaining accuracy.https://www.e3s-conferences.org/articles/e3sconf/pdf/2019/40/e3sconf_esr2019_03003.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Boyarkin D.A.
Krupenev D.S.
Iakubobsky D.V.
spellingShingle Boyarkin D.A.
Krupenev D.S.
Iakubobsky D.V.
Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
E3S Web of Conferences
author_facet Boyarkin D.A.
Krupenev D.S.
Iakubobsky D.V.
author_sort Boyarkin D.A.
title Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
title_short Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
title_full Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
title_fullStr Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
title_full_unstemmed Prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
title_sort prediction of the power shortage in the electric power system by means of regression analysis by machine learning methods
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2019-01-01
description Modern electricity consumers place increasingly high demands on the level of reliability of power supply and, correspondingly, the reliability of electric power systems (EPS). These requirements should be directly addressed in the EPS development planning tasks. To this end, the evaluation of the level of EPS reliability is performed by employing software and computer systems that have various methods of reliability evaluation implemented therein. Among the variety of methods for identifying reliability indicators to evaluate resource adequacy the most appropriate one is the Monte Carlo method (the method of statistical tests): it enables to perform calculations within a reasonable time with the required accuracy, while the calculation of complex EPS-like systems by means of analytical methods proves impossible because of the large dimensionality of the problem. However, even when using the Monte Carlo method, the difficulties arise as well, namely the problem of the need to reproduce a large number of random states of the simulated EPS and the calculation of the operating mode of each of them. There are several ways to reduce the overall calculation time by either efficient random number generators and optimizers or alternative methods of the calculation of operating modes. The article deals with the issue of bringing up to date the method behind reliability calculation that makes use of the Monte Carlo method. We propose to use regression analysis methods when calculating operating modes of random states of the EPS. To this end, we adopt the support-vector machine and the random forest method. Experimental studies covered in the article attest to the efficiency of the new method, for the 24-node system IEEE RTS-96 the calculation speed has been increased by almost a factor of 4 while maintaining accuracy.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2019/40/e3sconf_esr2019_03003.pdf
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