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Optimal Look-Ahead Strategic Bidding/Offering of Integrated Renewable Power Plants and CAES With Stochastic-Robust Approach

Amir Mirzapour-Kamanaj, Amir Talebi, Kazem Zare, Behnam Mohammadi‐Ivatloo, Zulkurnain Abdul‐Malek, Amjad Anvari‐Moghaddam

2022IEEE Access14 citationsDOIOpen Access PDF

Abstract

Today, due to the high penetration of renewable energy resources and restructuring of power systems, photovoltaic power plants (PVPPs) and wind power plants (WPPs) as renewable power plants (RPPs) can participate in the electricity markets. However, the intermittent power generation of RPPs may be challenging for the owners of these power plants. In order to mitigate the unpredictable and intermittent power generation of RPPs, energy storage systems like compressed air energy storage (CAES) can be an appropriate solution. In this paper, the optimal day-ahead and look-ahead strategic offering and bidding of integrated RPPs and CAES in the electricity market are investigated. Also, a stochastic-robust approach is proposed for modeling renewable generation and electricity price uncertainty. The proposed mixed-integer linear program (MILP) is formulated in GAMS software under the CPLEX solver. Three case studies are investigated to validate the proposed method. According to numerical results, in the optimistic strategy, the coordinator of RPPs and CAES has more opportunities to participate in the electricity market. But in the pessimistic strategy, due to low electricity market (EM) prices, the coordinator has no more tendency to participate in the electricity market compared to the optimistic strategy.

Topics & Concepts

Electricity marketBiddingRenewable energyElectricityWind powerElectricity generationComputer scienceCompressed air energy storageStand-alone power systemEnvironmental economicsDistributed generationEnergy storagePower (physics)EconomicsMicroeconomicsElectrical engineeringEngineeringQuantum mechanicsPhysicsIntegrated Energy Systems OptimizationSmart Grid Energy ManagementMicrogrid Control and Optimization