Title :
A reinforcement learning algorithm based technique for thermal energy management of a PEM fuel cell power plant
Author :
Suparna Chowdhury;M. Y. El-sharkh
Author_Institution :
Dept. of Electrical and Computer Engineering, University of South Alabama, Mobile, USA
Abstract :
In this paper, a reinforcement learning dynamic programming algorithm (RLDP) has been developed to manage the cogenerated thermal energy and the operation of a PEM fuel cell power plant. The solution methodology is based on selecting the optimal operational schedule of a fuel cell to minimize the total expected cost of generation incurred during a specified schedule period. The optimal operation schedule of the PEM fuel cell power plant is based on estimating the hourly generated electrical power, electrical energy trade with a local utility, and the recovered thermal energy utilization and storage based on electrical and thermal demand. The proposed technique is based on the Q-learning algorithm. At the training stage, the reinforcement learning (RL) is scheduled to explore and learn the Q values using the epsilon greedy policy, and after that, decision making is done using the learned Q values. The proposed algorithm is tested using a 24-hour based electrical and thermal load, the obtained results indicate the viability of the proposed approach.
Keywords :
"Dynamic programming","Protons","Learning systems","Energy management","Fuel cells"
Conference_Titel :
Industry Applications Society Annual Meeting, 2015 IEEE
DOI :
10.1109/IAS.2015.7356834