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Multi‐objective optimization of photovoltaic/wind/biomass/battery‐based grid‐integrated hybrid renewable energy system

Yadala Pavankumar, Ravindra Kollu, Sudipta Debnath

2021IET Renewable Power Generation37 citationsDOIOpen Access PDF

Abstract

Abstract The variable nature of the renewable energy resources (RES) complicates their modelling, operation, and integration to the grid. Therefore, it is difficult to choose optimal RES with a proper energy storage system (ESS) for the economic and reliable operation of the grid‐integrated hybrid renewable energy system (HRES). There is a need to solve this optimal HRES problem using efficient algorithms due to the high cost and model complexity involved. In this study, optimal photovoltaic, wind, biomass, and battery‐based grid‐integrated HRES is proposed using a multi‐objective artificial cooperative search algorithm (MOACS) to minimise annual life cycle costing and loss of power supply probability. ESS is chosen to provide a backup power supply for at least 30 min during peak load condition. A probabilistic approach is used to consider the time‐varying nature of the RES and load while solving optimal HRES design problem by employing MOACS. A comparative analysis is provided at the end, which shows that MOACS can provide a better optimal design of HRES.

Topics & Concepts

Renewable energyPhotovoltaic systemGridWind powerBattery (electricity)Automotive engineeringEnvironmental scienceComputer scienceElectrical engineeringEngineeringPower (physics)MathematicsPhysicsQuantum mechanicsGeometryHybrid Renewable Energy SystemsEnergy and Environment ImpactsAdvanced Battery Technologies Research
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