Abstract

The integration of rising shares of volatile wind power in the generation mix is a major challenge for the future energy system. To address the uncertainties involved in wind power generation, models analysing and simulating the stochastic nature of this energy source are becoming increasingly important. One statistical approach that has been frequently used in the literature is the Markov chain approach. Recently, the method was identified as being of limited use for generating wind time series with time steps shorter than 15–40 min as it is not capable of reproducing the autocorrelation characteristics accurately. This paper presents a new Markov-chain-related statistical approach that is capable of solving this problem by introducing a variable second lag. Furthermore, additional features are presented that allow for the further adjustment of the generated synthetic time series. The influences of the model parameter settings are examined by meaningful parameter variations. The suitability of the approach is demonstrated by an application analysis with the example of the wind feed-in in Germany. It shows that—in contrast to conventional Markov chain approaches—the generated synthetic time series do not systematically underestimate the required storage capacity to balance wind power fluctuation.

Highlights

  • The integration of rising shares of fluctuating renewables, such as wind and photovoltaic, is a major challenge for the future energy system (Turner 1999, Marris 2008)

  • The rising share of wind power feed-in leads to growing uncertainties in the electricity system

  • The stochastic modelling of wind is one approach to address these uncertainties in energy system models

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Summary

Introduction

The integration of rising shares of fluctuating renewables, such as wind and photovoltaic, is a major challenge for the future energy system (Turner 1999, Marris 2008). This paper presents a new Markov-chain-related approach which is suitable for generating synthetic time series for wind power feed-in that have statistical characteristics comparable to those of real ex post time series. The synthetic time series can be used to analyse a multitude of different situations and scenarios for the feed-in from wind power–which may include situations that have not yet occurred in historical data This is, for example, useful to examine the robustness of an electricity system derived by energy system models such as that described in (Pesch et al 2014). Fast fluctuations exist on time scales as short as seconds due to the turbulent character of wind energy These effects are not the subject of this paper but are discussed in detail in (Milan et al 2013).

Approaches for the modelling of wind speed and wind power time series
Modelling of the new Markov-chain-related approach
Analysis of the synthetic time series
Conclusion
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