Litcius/Paper detail

Economical operation strategy of an integrated energy system with wind power and power to gas technology – a DRL‐based approach

Bin Zhang, Weihao Hu, Di Cao, Qi Huang, Zhe Chen, Frede Blaabjerg

2020IET Renewable Power Generation17 citationsDOI

Abstract

With the rapid development of artificial intelligence, adopting advanced deep reinforcement learning (DRL) methodologies to solve the optimisation problem in power systems has become more effective. This study proposes a novel energy control method associated with DRL to solve the economical optimisation problems in an integrated energy system with wind power and power‐to‐gas technology. To consider the randomness of wind power and the flexibility of upper‐level energy prices, the economical optimisation problem is formulated as a finite Markov decision‐making process. Cycling decay learning rate deep deterministic policy gradient (CDLR‐DDPG) algorithm is proposed to obtain the optimal operation strategy. A comparison among different benchmark methods is provided to demonstrate the superiority of CDLR‐DDPG algorithm in optimising an economical problem for the considered system.

Topics & Concepts

Wind powerPower to gasPower (physics)Electric power systemAutomotive engineeringComputer scienceEngineeringElectrical engineeringPhysicsElectrodeQuantum mechanicsElectrolysisElectrolyteIntegrated Energy Systems OptimizationGlobal Energy and Sustainability ResearchHybrid Renewable Energy Systems