Title :
Nonlinear Modeling of Temporal Wind Power Variations
Author :
Haghi, H. Valizadeh ; Bina, Mohammad Tavakoli ; Golkar, M. Aliakbar
Author_Institution :
Fac. of Electr. Eng., K.N. Toosi Univ. of Technol., Tehran, Iran
Abstract :
Modeling wind speed time series (WSTS) is an essential part of network planning studies in order to generate synthetic wind power time series (WPTS). Hence, this paper proposes a methodology to equip planners with accurate simulation of wind speed and power variations as well as complete temporal dependence structure based on the copula theory. Unlike traditional autoregressive and Markov chain methods, the suggested technique is well-prepared to deal with “nonlinear long-memory temporal dependence” and “non-Gaussian empirical probability distributions” of the WSTS. Meanwhile, the proposed statistical modeling framework is compatible with the scenario-based analysis of active networks as well. Furthermore, a case study for optimal sizing of an autonomous wind/photovoltaic/battery system is presented. The purpose of the presented study is to fully examine the accuracy and effectiveness of the copula-based model of wind generation for planning nonmemoryless power systems. Among a list of commercially available system devices, the optimal number and type of units are calculated ensuring both a minimum 20-year round total system cost and a perfect reliability. The genetic algorithm is used in four wind generation scenarios consisting of real and simulated WPTS. Then, considering the corresponding optimal solutions, the autoregressive moving average (ARMA), nonparametric Markov and proposed copula-based simulations are compared against real data.
Keywords :
Markov processes; autoregressive moving average processes; battery storage plants; genetic algorithms; photovoltaic power systems; power generation planning; power generation reliability; statistical distributions; time series; wind power plants; ARMA; WPTS; autonomous battery system sizing; autonomous photovoltaic system sizing; autonomous wind system sizing; autoregressive moving average; copula theory; copula-based simulations; network planning studies; nonGaussian empirical probability distributions; nonlinear long-memory temporal dependence; nonlinear modeling; nonmemoryless power system planning; nonparametric Markov; power variation simulation; scenario-based analysis; statistical modeling framework; synthetic wind power time series generation; temporal dependence structure; temporal wind power variations; wind generation; wind speed time series modeling; wind speed variation simulation; Genetic algorithms; Modeling; Time series analysis; Wind power generation; Copula; temporal dependence; time series; wind power;
Journal_Title :
Sustainable Energy, IEEE Transactions on
DOI :
10.1109/TSTE.2013.2252433