Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural

The article oversees forecasting model for deviations of the balancing market index and day-ahead market index according to the maximum similarity sample for different levels of approximation in the context of positive and negative time-series value. The model was being tested on the factual data of...

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Main Authors: Mokhov V.G., Demyanenko T.S.
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:SHS Web of Conferences
Online Access:https://doi.org/10.1051/shsconf/20173501096
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spelling doaj-7667be50d7f8490eb22b3e7bd30213aa2021-02-02T08:20:05ZengEDP SciencesSHS Web of Conferences2261-24242017-01-01350109610.1051/shsconf/20173501096shsconf_icie2017_01096Modeling prices of wholesale market of electric energy and power by the example of the UPS of the UralMokhov V.G.0Demyanenko T.S.1South Ural State UniversitySouth Ural State UniversityThe article oversees forecasting model for deviations of the balancing market index and day-ahead market index according to the maximum similarity sample for different levels of approximation in the context of positive and negative time-series value. The model was being tested on the factual data of the Integrated Power system of the Ural, Wholesale market for electricity and power of Russian Federation. Describes the price formation on the day-ahead market and the balancing market index. The necessity to use accurate forecasting methods consumption and prices of electrical energy and power to reduce penalties when the electric power industry entities on the energy exchange. The testing of mathematical models to predict the balancing market index deviations and day-ahead market based on a sample of maximum similarity with certain approximation equations for positive and negative values gave the prediction error of 3.3%.https://doi.org/10.1051/shsconf/20173501096
collection DOAJ
language English
format Article
sources DOAJ
author Mokhov V.G.
Demyanenko T.S.
spellingShingle Mokhov V.G.
Demyanenko T.S.
Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural
SHS Web of Conferences
author_facet Mokhov V.G.
Demyanenko T.S.
author_sort Mokhov V.G.
title Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural
title_short Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural
title_full Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural
title_fullStr Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural
title_full_unstemmed Modeling prices of wholesale market of electric energy and power by the example of the UPS of the Ural
title_sort modeling prices of wholesale market of electric energy and power by the example of the ups of the ural
publisher EDP Sciences
series SHS Web of Conferences
issn 2261-2424
publishDate 2017-01-01
description The article oversees forecasting model for deviations of the balancing market index and day-ahead market index according to the maximum similarity sample for different levels of approximation in the context of positive and negative time-series value. The model was being tested on the factual data of the Integrated Power system of the Ural, Wholesale market for electricity and power of Russian Federation. Describes the price formation on the day-ahead market and the balancing market index. The necessity to use accurate forecasting methods consumption and prices of electrical energy and power to reduce penalties when the electric power industry entities on the energy exchange. The testing of mathematical models to predict the balancing market index deviations and day-ahead market based on a sample of maximum similarity with certain approximation equations for positive and negative values gave the prediction error of 3.3%.
url https://doi.org/10.1051/shsconf/20173501096
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