Dynamic Stochastic EPEC Model for Competition of Dominant Producers in Generation Expansion Planning

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openAccess

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A4 Artikkeli konferenssijulkaisussa

Date

2019-01-16

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en

Pages

5

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Proceedings of the 5th International Symposium on Environment-Friendly Energies and Applications, EFEA 2018

Abstract

This paper aims to presents dynamic stochastic an equilibrium problem with equilibrium constraints (DSEPEC) model to invistigate the generation capacity expansion at a certain time horizon and the presence of dominant producers. The DSEPEC model is proposed while there is an uncertainty in the predicted demand, and it is modeled based on discrete Markov model. Each dominant producer is modeled by a bi-level optimization problem so that the first level and the second level provide models for the investment and operation decisions, respectively. The supply function equilibrium (SFE) is used for short-term electricity market. Then, each bi-level model is convert to dynamic stochastic mathemathical problem with equilibrium constraints (DSMPEC). To convert DSEPEC to an auxiliary MILP problem, Karush-Kuhn-Tucker (KKT) conditions as well as primal-dual transformation. A sample two-buses power network is employed for simulation and necessary analysis to confirm the efficiency of the proposed framework.

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Keywords

Generation exansion, EPEC, MPEC, Multistage planning, Dynamic strochastic model

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Citation

Valinejad, J, Marzband, M, Barforoshi, T, Kyyrä, J & Pouresmaeil, E 2019, Dynamic Stochastic EPEC Model for Competition of Dominant Producers in Generation Expansion Planning . in E Santini, S Di Gennaro & C Bruzzese (eds), Proceedings of the 5th International Symposium on Environment-Friendly Energies and Applications, EFEA 2018 ., 8617107, IEEE, International Symposium on Environment-Friendly Energies and Applications, Rome, Italy, 24/09/2018 . https://doi.org/10.1109/EFEA.2018.8617107