质子交换膜燃料电池的隐私保护联邦学习

IF 16.3 1区 工程技术 Q1 ENERGY & FUELS Renewable and Sustainable Energy Reviews Pub Date : 2025-04-01 Epub Date: 2025-02-04 DOI:10.1016/j.rser.2025.115407
Zehui Zhang , Ningxin He , Weiwei Huo , Xiaobin Xu , Chao Sun , Jianwei Li
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引用次数: 0

摘要

质子交换膜燃料电池(PEMFC)是一种很有前途的清洁能源设备,从移动电站到电动汽车都有广泛的应用。为了加快应用进程,人们将深度学习(DL)应用于PEMFC的各种智能技术,如性能预测、故障诊断等,以降低制造成本,延长使用寿命。然而,单一的研究机构很难获得足够的训练数据来开发基于dl的模型,因为燃料电池系统仍处于开发阶段,其高昂的成本使得实验数据的收集过于昂贵。为了应对这些挑战,本研究为PEMFC设计了一个保护隐私的联邦学习框架。该框架可以支持多个研究机构协作训练PEMFC的高性能DL模型,同时使用同态加密和差分隐私技术保留其本地数据信息。该研究通过性能预测和故障诊断任务,在实际燃料电池数据集上对FedFC框架的性能进行了实证评估。实验结果表明,该框架具有良好的性能,有望促进与PEMFC相关的智能模型的发展。
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Privacy preserving federated learning for proton exchange membrane fuel cell
Proton Exchange Membrane Fuel Cell (PEMFC) is a promising clean energy device with applications from mobile power stations to electric vehicles. To accelerate the application process, deep learning (DL) has been applied to develop various intelligent technologies for PEMFC such as performance prediction, fault diagnosis, etc., to reduce manufacturing cost and prolong service lifetime. However, a single research institution is difficult to obtain sufficient training data for developing DL-based models, since fuel cell system is still in the development stage, and its high cost makes the collection of experimental data too expensive. To tackle the challenges, this study designs a privacy-preserving federated learning framework for PEMFC (FedFC). The framework can support multiple research institutions to collaboratively train a high-performance DL model for PEMFC while preserving their local data information using homomorphic encryption and differential privacy technologies. The study empirically evaluates FedFC framework performance on real fuel cell datasets with performance predication and fault diagnosis tasks. Experiment results demonstrate that the FedFC framework can achieve excellent performance and holds promise for promoting the development of intelligent models associated with PEMFC.
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来源期刊
Renewable and Sustainable Energy Reviews
Renewable and Sustainable Energy Reviews 工程技术-能源与燃料
CiteScore
31.20
自引率
5.70%
发文量
1055
审稿时长
62 days
期刊介绍: The mission of Renewable and Sustainable Energy Reviews is to disseminate the most compelling and pertinent critical insights in renewable and sustainable energy, fostering collaboration among the research community, private sector, and policy and decision makers. The journal aims to exchange challenges, solutions, innovative concepts, and technologies, contributing to sustainable development, the transition to a low-carbon future, and the attainment of emissions targets outlined by the United Nations Framework Convention on Climate Change. Renewable and Sustainable Energy Reviews publishes a diverse range of content, including review papers, original research, case studies, and analyses of new technologies, all featuring a substantial review component such as critique, comparison, or analysis. Introducing a distinctive paper type, Expert Insights, the journal presents commissioned mini-reviews authored by field leaders, addressing topics of significant interest. Case studies undergo consideration only if they showcase the work's applicability to other regions or contribute valuable insights to the broader field of renewable and sustainable energy. Notably, a bibliographic or literature review lacking critical analysis is deemed unsuitable for publication.
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