Abstract

Because of the stochastic nature of wind turbines, the output power management of wind power generation (WPG) is a fundamental challenge for the integration of wind energy systems into either power systems or microgrids (i.e., isolated systems consisting of local wind energy systems only) in operation and planning studies. In general, a wind energy system can refer to both one wind farm consisting of a number of wind turbines and a given number of wind farms sited at the area in question. In power systems (microgrid) planning, a WPG should be quantified for the determination of the expected power flows and the analysis of the adequacy of power generation. Concerning this operation, the WPG should be incorporated into an optimal operation decision process, as well as unit commitment and economic dispatch studies. In both cases, the probabilistic investigation of WPG leads to a multivariate uncertainty analysis problem involving correlated random variables (the output power of either wind turbines that constitute wind farm or wind farms sited at the area in question) that follow different distributions. This paper advances a multivariate model of WPG for a wind farm that relies on indexed semi-Markov chains (ISMC) to represent the output power of each wind energy system in question and a copula function to reproduce the spatial dependencies of the energy systems’ output power. The ISMC model can reproduce long-term memory effects in the temporal dependence of turbine power and thus understand, as distinct cases, the plethora of Markovian models. Using copula theory, we incorporate non-linear spatial dependencies into the model that go beyond linear correlations. Some copula functions that are frequently used in applications are taken into consideration in the paper; i.e., Gumbel copula, Gaussian copula, and the t-Student copula with different degrees of freedom. As a case study, we analyze a real dataset of the output powers of six wind turbines that constitute a wind farm situated in Poland. This dataset is compared with the synthetic data generated by the model thorough the calculation of three adequacy indices commonly used at the first hierarchical level of power system reliability studies; i.e., loss of load probability (LOLP), loss of load hours (LOLH) and loss of load expectation (LOLE). The results will be compared with those obtained using other models that are well known in the econometric field; i.e., vector autoregressive models (VAR).

Highlights

  • Wind energy sources can be characterized by a high degree of uncertainty, which in turn determines the risk of their incorrect mathematical representation in planning and operation studies for both power systems and microgrids [1,2]

  • The macro-approach relies on directly modeling the total wind power generation (WPG) of the wind energy system, which is obtained from the aggregation of single time series of each component of the system

  • Based on previous research works in which the suitability of a semi-Markovian approach to generate synthetic time series of wind speed was confirmed, in this research, we apply the indexed semi-Markov chain (ISMC) model to model the energy produced by a whole wind farm

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Summary

Introduction

Wind energy sources can be characterized by a high degree of uncertainty, which in turn determines the risk of their incorrect mathematical representation in planning and operation studies for both power systems and microgrids [1,2]. The most common feature is the correlation between the output power of the power sources; this correlation is caused by similarities in terms of exposure to wind resources, share effects, landforms and so on Based on this micro-approach, it is necessary to develop a model in which these features are taken into account. We apply an ISMC model directly to the power generated by each wind turbine and not to the wind speed, as was the approach in the papers mentioned above. In the present study, we consider several copulas, such as the Gumbel copula, the Gaussian copula and the t-Student copula, with different degrees of freedom and compare them in terms of the global appropriateness of the model for reproducing classical reliability metrics in the energy sector, such as the loss of load hours (LOLH), loss of load expectation (LOLE) and loss of load probability (LOLP), which are evaluated in this probabilistic framework for the first time.

Dataset
The Indexed Semi-Markov Chain
From Univariate to Multivariate Models
Parameter Optimization
Estimation of Reliability Indices
Loss of Load Hours
Loss of Load Expectation
Loss of Load Probability
Discussion
Full Text
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