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A review of adaptive neural control applied to proton exchange membrane fuel cell systems

机译:应用于质子交换膜燃料电池系统的自适应神经控制综述

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Proton exchange membrane fuel cell systems are promising technologies for the integration of renewable energy. They pave the way for further emission-reduction and energy autonomy initiatives. However, widespread commercialization still faces several challenges to extend their durability, improve their reliability while reducing their cost. Control strategies included information about the state of heath are among promising levers to tackle these challenges. In this context, an active fault tolerant control strategy based on three modules is introduced. Firstly, a fault diagnosis tool identify the system state of health and detect abnormal conditions. Then, a decision process based on diagnosis results, manages to find a fault strategy mitigation. Finally, a set of controllers, or a re-configurable controller, are used to apply the decision strategy. This third module has to be suited to the real-time specifications of the system. In this context, neural networks-based controllers with adaptive learning appear to be especially appropriate methods for system state of health consideration. For this reason, this paper aims to bring a literature review for adaptive neural-based control applied on proton exchange membrane fuel cell systems. Based on this overview of recent works available, propositions are made to fill the resource gaps about fuel cell control and give some answers to the aforementioned issues. (C) 2019 Elsevier Ltd. All rights reserved.
机译:质子交换膜燃料电池系统是为整合可再生能源的有前途的技术。他们为进一步排放和能源自治举措铺平了道路。然而,广泛的商业化仍然面临着延长其耐用性的几项挑战,提高其可靠性,同时降低成本。控制策略包括有关荒地状态的信息是有前途的杠杆,以解决这些挑战。在这种情况下,引入了基于三个模块的主动容错控制策略。首先,故障诊断工具标识系统的健康状态并检测异常情况。然后,一个基于诊断结果的决策过程,设法寻找故障策略缓解。最后,使用一组控制器或重新配置控制器,用于应用决策策略。该第三个模块必须适用于系统的实时规范。在这种情况下,具有自适应学习的基于神经网络的控制器似乎是系统健康考虑系统状态的特别适用性方法。出于这个原因,本文旨在为施加在质子交换膜燃料电池系统上应用适应性神经控制的文献综述。基于近期作品的概述,提出命题填补燃料电池控制的资源差距,并对上述问题提供一些答案。 (c)2019 Elsevier Ltd.保留所有权利。

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