Abstract

Uncertainties in wind power forecast, day-ahead and imbalance prices for the next day possess a great deal of risk for the profit of generation companies participating in a day-ahead electricity market. Generation companies are exposed to imbalance penalties in the balancing market for unordered mismatches between associated day-ahead power schedule and real-time generation. Coordination of wind and thermal power plants alleviates the risks raised from wind uncertainties. This paper proposes a novel optimal coordination strategy by balancing wind power forecast deviations with thermal units in the Turkish day-ahead electricity market. The main focus of this study is to provide an optimal trade-off between the expected profit and the risk under wind uncertainty through conditional value at risk (CVaR) methodology. Coordination problem is formulated as a two-stage mixed-integer stochastic programming problem, where scenario-based wind power approach is used to handle the stochasticity of the wind power. Dynamic programming approach is utilized to attain the commitment status of thermal units. Profitability of the coordination with different day-ahead bidding strategies and trade-off between expected profit and CVaR are examined with comparative scenario studies.

Highlights

  • Participation of wind-based power plant in electricity markets offers diverse privileges for utilities and end-use costumers

  • The problem considers a generation company participating in Turkish DA electricity market with its thermal and wind generation units

  • The main objective of the generation company is to determine the optimum power for the DA market to maximize its expected profit in the first stage while controlling risks associated with possible realizations of wind power output in the second stage

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Summary

Introduction

Participation of wind-based power plant in electricity markets offers diverse privileges for utilities and end-use costumers. This paper contributes to the state-of-art with coordinating wind and thermal units by adapting conditional value at risk (CVaR) concept — a mathematical approach to optimize risk of profit — to control profit variation in DA markets from the view point of generation company. For this purpose, a stochastic programming procedure considering Turkish DA market mechanism is developed. In Turkish DA power exchange market, market clearing price (MCP) is initially determined by ignoring network constraints Market participants submit their supply and demand volumes remaining from bilateral transactions to the DA market.

Two-stage stochastic programming
Assumptions
NT X NS
Constraints
Bidding constraints
Imbalance price constraints
Imbalance power constraints
Thermal unit constraints
Findings
Conclusion
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