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Coordinated control of gas supply system in PEMFC based on multi-agent deep reinforcement learning

机译:基于多智能经纪深增强学习的PEMFC气体供应系统协调控制

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In proton exchange membrane fuel cells (PEMFCs), the hydrogen supply system and air supply system jointly impact the output characteristics, and there is a coordination problem between these two systems. To solve this coordination problem, an intelligent control framework is presented that considers the coordination between the air flux controller and hydrogen flux controller in PEMFCs, and an ensemble imitation learning multi-trick deep deterministic policy gradient (EILMMA-DDPG) is advanced for this framework. The algorithm proposed here complies with an ensemble imitation learning policy, i.e., exploiting multiple reinforcement learning explorers that contain actor networks to perform distributed exploration in the environment, thereby improving the exploration efficiency. Moreover, a control algorithm explorer that contains various conventional control algorithms is presented to create model samples over a range of scenarios in an attempt to address sparse rewards and improve the training efficiency in conjunction with an experience probability replay mechanism. Next, multiple tricks are adopted to improve the overestimated Q value. Finally, a model-free intelligent control algorithm capable of coordinating controllers and exhibiting a better global searching ability is developed. In addition, the proposed algorithm is adopted in the control framework of the air and hydrogen supply system in PEMFCs. Furthermore, as revealed from the simulated results, the proposed intelligent control framework can more effectively control the oxygen excess rate (OER) and output voltage. (c) 2021 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:在质子交换膜燃料电池(PEMFC)中,氢气供应系统和空气供应系统联合冲击输出特性,这两个系统之间存在协调问题。为了解决这个协调问题,提出了一种智能控制框架,其考虑了PEMFC中的空气通量控制器和氢通量控制器之间的协调,并且为此框架提前了一个集成仿制学习多技能深度确定性政策梯度(EILMMA-DDPG) 。这里提出的算法符合集合模拟学习策略,即利用包含演员网络的多个增强学习探索器来在环境中执行分布式探索,从而提高勘探效率。此外,介绍包含各种传统控制算法的控制算法探索器,以在尝试解决稀疏奖励并与经验概率重放机制结合提高训练效率,在一系列场景中创建模型样本。接下来,采用多种技巧来改善高估Q值。最后,开发了一种能够协调控制器并表现出更好的全球搜索能力的无模型智能控制算法。此外,在PEMFC的空气和氢气供应系统的控制框架中采用了所提出的算法。此外,如模拟结果所揭示的那样,所提出的智能控制框架可以更有效地控制氧过量速率(OER)和输出电压。 (c)2021氢能出版物LLC。 elsevier有限公司出版。保留所有权利。

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