Abstract

The output performance of proton exchange membrane fuel cells (PEMFCs) is highly susceptible to the influence of various parameters, which in turn are affected by PEMFC failures. A data-driven active fault-tolerant control (DD-AFTC) method is proposed to achieve the stable control of a PEMFC in the event of a fault. In addition, this proposed method combines meta-reinforcement learning with multiagent reinforcement learning to offer a distributed multiagent deep meta-deterministic policy gradient (DMA-DMDPG) algorithm, which provides the agents with independent multitask cooperative learning capabilities, thus ensuring excellent robustness. This algorithm consists of a meta-learner and a base learner. The base learner equates the hydrogen controller and the oxygen controller as independent decision-making agents. At the same time, the meta-learner is responsible for identifying PEMFC faults and selecting the appropriate joint policy according to each specific PEMFC failure. Experimental validation for a 75 kW PEMFC illustrates that DD-AFTC can improve control performance in terms of output voltage and oxygen excess rate (OER) under fault-induced conditions.

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