Please use this identifier to cite or link to this item: http://earchive.tpu.ru/handle/11683/70747
Title: Modeling Wind Speed Based on Fractional Ornstein-Uhlenbeck Process
Authors: Obukhov, Sergey Gennadievich
Ibrahim, Ahmed
Davydov, Denis Yurjevich
Alharbi, Talal
Ahmed, Emad
Ali, Ziad
Keywords: энергия ветра; скорость ветра; дифференциальные уравнения; броуновское движение; моделирование; временные ряды; wind energy; wind speed model; stochastic differential equations; fractional Brownianmotion; time-series modeling
Issue Date: 2021
Publisher: MDPI AG
Citation: Modeling Wind Speed Based on Fractional Ornstein-Uhlenbeck Process / S. G. Obukhov, A. Ibrahim, D. Yu. Davydov [et al.] // Energies. — 2021. — Vol. 14, iss. 17. — [5561, 15 p.].
Abstract: The primary task of the design and feasibility study for the use of wind power plants is to predict changes in wind speeds at the site of power system installation. The stochastic nature of the wind and spatio-temporal variability explains the high complexity of this problem, associated with finding the best mathematical modeling which satisfies the best solution for this problem. In the known discrete models based on Markov chains, the autoregressive-moving average does not allow variance in the time step, which does not allow their use for simulation of operating modes of wind turbines and wind energy systems. The article proposes and tests a SDE-based model for generating synthetic wind speed data using the stochastic differential equation of the fractional Ornstein-Uhlenbeck process with periodic function of long-run mean. The model allows generating wind speed trajectories with a given autocorrelation, required statistical distribution and provides the incorporation of daily and seasonal variations. Compared to the standard Ornstein-Uhlenbeck process driven by ordinary Brownian motion, the fractional model used in this study allows one to generate synthetic wind speed trajectories which autocorrelation function decays according to a power law that more closely matches the hourly autocorrelation of actual data. In order to demonstrate the capabilities of this model, a number of simulations were carried out using model parameters estimated from actual observation data of wind speed collected at 518 weather stations located throughout Russia.
URI: http://earchive.tpu.ru/handle/11683/70747
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