基于数字双胞胎和迁移学习网络的聚合物电解质膜燃料电池跨域诊断✰

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
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引用次数: 0

摘要

有关聚合物电解质膜燃料电池(PEMFC)故障诊断的现有研究已取得重大进展,但数据分布的变化和对大量故障数据的要求阻碍了其性能的提高。本研究提出了一种用于 PEMFC 的跨域自适应健康诊断方法,将数字孪生模型和传递卷积诊断模型融为一体。开发了一种基于物理的高保真数字孪生模型,以获得用于训练诊断方法的多样化高质量数据集。为了从数据中提取长期时间序列特征,提出了一个时序卷积网络(TCN)作为源域的预训练诊断模型,其特征提取层可重复用于迁移学习网络。结果表明,通过有效捕捉时间序列数据中的长期依赖关系,所提出的预训练模型能够准确诊断各种燃料电池故障,包括压力、干燥、流动和淹没故障,准确率高达 99.92%。最后,建立了一个域自适应传递卷积网络(DATCN),通过学习域不变特征来提高不同燃料电池的诊断准确率。结果表明,DATCN 模型在三个不同的目标域设备上进行了测试,只使用了 10% 的正常数据进行对抗训练,平均准确率可达 98.5%(比传统诊断模型提高了 30%)。所提出的方法为 PEMFC 设备的精确跨域诊断提供了有效的解决方案,大大减少了对大量故障数据的依赖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cross-domain diagnosis for polymer electrolyte membrane fuel cell based on digital twins and transfer learning network✰

Cross-domain diagnosis for polymer electrolyte membrane fuel cell based on digital twins and transfer learning network✰

Existing research on fault diagnosis for polymer electrolyte membrane fuel cells (PEMFC) has advanced significantly, yet performance is hindered by variations in data distributions and the requirement for extensive fault data. In this study, a cross-domain adaptive health diagnosis method for PEMFC is proposed, integrating the digital twin model and transfer convolutional diagnosis model. A physical-based high-fidelity digital twin model is developed to obtain diverse and high-quality datasets for training diagnosis method. To extract long-term time series features from the data, a temporal convolutional network (TCN) is proposed as a pre-trained diagnosis model for the source domain, with feature extraction layers that can be reused to the transfer learning network. It is demonstrated that the proposed pre-trained model can hold the ability to accurately diagnose the various fuel cell faults, including pressure, drying, flow, and flooding faults, with 99.92 % accuracy, through the effective capture of the long-term dependencies in time series data. Finally, a domain adaptive transfer convolutional network (DATCN) is established to improve the diagnosis accuracy across diverse fuel cells by learning domain-invariant features. The results show that the DATCN model, tested on three different target domain devices with adversarial training using only 10 % normal data, can achieve an average accuracy of 98.5 % (30 % improved over traditional diagnosis models). This proposed method provides an effective solution for accurate cross-domain diagnosis of PEMFC devices, significantly reducing the reliance on extensive fault data.

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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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