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Deep Reinforcement Learning-Based Energy Storage Arbitrage With Accurate Lithium-Ion Battery Degradation Model
290
Citations
26
References
2020
Year
EngineeringMachine LearningEnergy EfficiencyHome Energy StorageIntelligent Energy SystemData ScienceBattery Energy ArbitrageEnergy Storage DeviceEnergy Demand ManagementElectrical EngineeringEnergy ForecastingEnergy StorageEnergy Storage SystemDeep LearningEnergy PredictionEnergy Arbitrage MarketDeep Reinforcement LearningEnergy ManagementBattery Degradation CostBatteries
Accurate estimation of battery degradation cost is one of the main barriers for battery participating on the energy arbitrage market. This paper addresses this problem by using a model-free deep reinforcement learning (DRL) method to optimize the battery energy arbitrage considering an accurate battery degradation model. Firstly, the control problem is formulated as a Markov Decision Process (MDP). Then a noisy network based deep reinforcement learning approach is proposed to learn an optimized control policy for storage charging/discharging strategy. To address the uncertainty of electricity price, a hybrid Convolutional Neural Network (CNN) and Long Short Term Memory (LSTM) model is adopted to predict the price for the next day. Finally, the proposed approach is tested on the historical U.K. wholesale electricity market prices. The results compared with model based Mixed Integer Linear Programming (MILP) have demonstrated the effectiveness and performance of the proposed framework.
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