Long term persistence in daily wind speed series using fractal dimension

In the assessment of wind turbines installations efficiency long series of wind speed data are necessary. Such data are not usually available it is then important to generate them. In this paper we examine the long-term persistence of daily wind speed data with many years of record using the fractal...

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Main Author: S Harrouni
Format: Article
Language:English
Published: Multi-Science Publishing 2016-09-01
Series:International Journal of Multiphysics
Online Access:http://journal.multiphysics.org/index.php/IJM/article/view/225
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spelling doaj-b9c8f462229048acb8ceb08cdc56cf0b2020-11-24T23:27:56ZengMulti-Science PublishingInternational Journal of Multiphysics1750-95482048-39612016-09-017210.1260/1750-9548.7.2.87237Long term persistence in daily wind speed series using fractal dimensionS Harrouni0Instrumentation Laboratory, Faculty of Electronics and Computer, University of Science and Technology H. Boumediene (USTHB), P.O. Box 32, El-Alia, 16111 Algiers, AlgeriaIn the assessment of wind turbines installations efficiency long series of wind speed data are necessary. Such data are not usually available it is then important to generate them. In this paper we examine the long-term persistence of daily wind speed data with many years of record using the fractal dimension. The persistence measures the correlation between adjacent values within the time series. Values of a time series can affect other values in the time series that are not only nearby in time but also far away in time. For this purpose, a new method to measure the fractal dimension of temporal discrete signals is presented. The fractal dimension is then used as criterion in an approach we have elaborated to detect the long term correlation in wind speed series. The results show that daily wind speed are anti-persistent.http://journal.multiphysics.org/index.php/IJM/article/view/225
collection DOAJ
language English
format Article
sources DOAJ
author S Harrouni
spellingShingle S Harrouni
Long term persistence in daily wind speed series using fractal dimension
International Journal of Multiphysics
author_facet S Harrouni
author_sort S Harrouni
title Long term persistence in daily wind speed series using fractal dimension
title_short Long term persistence in daily wind speed series using fractal dimension
title_full Long term persistence in daily wind speed series using fractal dimension
title_fullStr Long term persistence in daily wind speed series using fractal dimension
title_full_unstemmed Long term persistence in daily wind speed series using fractal dimension
title_sort long term persistence in daily wind speed series using fractal dimension
publisher Multi-Science Publishing
series International Journal of Multiphysics
issn 1750-9548
2048-3961
publishDate 2016-09-01
description In the assessment of wind turbines installations efficiency long series of wind speed data are necessary. Such data are not usually available it is then important to generate them. In this paper we examine the long-term persistence of daily wind speed data with many years of record using the fractal dimension. The persistence measures the correlation between adjacent values within the time series. Values of a time series can affect other values in the time series that are not only nearby in time but also far away in time. For this purpose, a new method to measure the fractal dimension of temporal discrete signals is presented. The fractal dimension is then used as criterion in an approach we have elaborated to detect the long term correlation in wind speed series. The results show that daily wind speed are anti-persistent.
url http://journal.multiphysics.org/index.php/IJM/article/view/225
work_keys_str_mv AT sharrouni longtermpersistenceindailywindspeedseriesusingfractaldimension
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