电池(电)
维持
计算机科学
汽车工程
能源管理
质子交换膜燃料电池
荷电状态
遗传算法
MATLAB语言
功率(物理)
算法
能量(信号处理)
燃料电池
工程类
数学
化学工程
机器学习
操作系统
统计
政治学
量子力学
法学
物理
作者
Haibo Yuan,Wen-Jiang Zou,Seunghun Jung,Young‐Bae Kim
标识
DOI:10.1016/j.ijhydene.2021.12.121
摘要
The polymer electrolyte membrane fuel cell (PEMFC) coupled with the battery is a promising hybrid power system for future energy supply application. Fuel cell durability, battery charge sustenance, and fuel consumption strongly rely on the energy management strategy (EMS). This paper puts forward an optimized rule-based EMS using genetic algorithm (GA) to optimally allocate the power between the fuel cell and the battery system. Control variables in real-time rule-based EMS are optimally adjusted with single objective of battery charge sustenance considering the fuel cell durability and efficiency. The proposed optimized rule-based EMS is simulated and experimentally verified via MATLAB/Simulink and LabVIEW-based experimental rig, respectively. The conventional rule-based EMS, fuzzy logic EMS, and dynamic programming (DP) EMS are also examined for comparison. The comparison results elucidate that the optimized rule-based EMS realizes a large performance improvement over the conventional rule-based and fuzzy logic EMSs. Near optimal performance is verified compared with DP EMS in terms of fuel economy, battery charge sustenance, fuel cell efficiency, and system durability. The combination of rule-based EMS and GA optimization algorithm has the advantage of having expert experience and global optimization properties, realizing optimal power allocation in real-time application with lower computation burden, which could be applied easily to other EMS system without loss of validity. • Fuel cell efficiency, power fluctuation and constraints of system are fully considered in EMSs. • Rule-based EMS optimized by GA is proposed for online power allocation problem. • Four representative EMSs are evaluated and compared in two driving conditions. • The proposed online EMS can realize a near optimal fuel consumption compared with DP EMS.
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