Sensitivity Analysis of Reinforcement Learning to Schedule the battery in Grid-tied microgrid

This research paper explores the application of offline reinforcement learning (RL) in controlling battery operation in a grid-connected microgrid. The study investigates the impact of different parameters on the performance of the RL algorithm, such as the number of discretization levels, gamma, an...

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מידע ביבליוגרפי
Main Authors: Khawaja Haider Ali, Hasnain Hyder, Muhammad Asif Khan
פורמט: Article
שפה:English
יצא לאור: University of Sindh 2023-05-01
סדרה:University of Sindh Journal of Information and Communication Technology
נושאים:
גישה מקוונת:https://sujo.usindh.edu.pk/index.php/USJICT/article/view/6218
תיאור
סיכום:This research paper explores the application of offline reinforcement learning (RL) in controlling battery operation in a grid-connected microgrid. The study investigates the impact of different parameters on the performance of the RL algorithm, such as the number of discretization levels, gamma, and alpha values. The results show that the convergence time and optimality of the RL algorithm are affected by the choice of these parameters. The research concludes that carefully selecting the discretization levels of state-action spaces and RL hyperparameters is crucial for optimal RL algorithm performance. The benchmark offline sensitivity analysis can be compared in the future with other RL approaches, such as function approximation or DRL methods.
ISSN:2521-5582
2523-1235