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首页> 外文期刊>Mechanical systems and signal processing >Collaborative deep learning framework for fault diagnosis in distributed complex systems
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Collaborative deep learning framework for fault diagnosis in distributed complex systems

机译:分布式复杂系统故障诊断的协同深度学习框架

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摘要

In distributed complex systems, condition monitoring and fault diagnosis have received considerable attention, especially for recent developments of data-driven methods with deep learning structures, which greatly enhance the performance as of superior represen-tation capacity over big data. To apply these methods, massive data needs to be collected from distributed systems, requiring high costs for data transmission and causing more and more concerns on privacy issues. For the naturally distributed data in such scenario, this work presents a novel collaborative deep learning framework with the idea that the fea-tures, as representations of data, can be transmitted through latent parameters of deep learning structure while the raw data won't be shared in the distributed network. Based on the collaborative learning setup, the proposed framework adopts a secure communicat-ing strategy with no need of transmitting raw data, and obtains a consensus for distributed deep learning models that can be geographically located. To validate the proposed scheme, four case studies are carried out and the results show that it is able to improve the diagno-sis accuracy compared with local learning models. Also, it is robust and adaptive for diag-nosis problems with data that is imbalanced or from different distributions.
机译:在分布式复杂系统中,条件监测和故障诊断已经得到了相当大的关注,特别是对于具有深度学习结构的数据驱动方法的最新发展,这大大提高了大数据上的优越代表能力的性能。为了应用这些方法,需要从分布式系统中收集大规模数据,需要高成本的数据传输,并对隐私问题导致越来越多的疑虑。对于这种情况下的自然分布式数据,这项工作提出了一种新颖的协作深度学习框架,即可以通过深度学习结构的潜在参数传输FEA-Tures,作为数据的表示,可以通过深度学习结构的潜在参数来传输。在分布式网络中共享。基于协作学习设置,所提出的框架采用安全的通信策略,无需传输原始数据,并为可以在地理位置定位的分布式深度学习模型获得共识。为了验证所提出的计划,进行了四种案例研究,结果表明,与本地学习模型相比,它能够提高诊断准确性。此外,它是坚固且适应性的诊断烟雾问题,其数据不平衡或来自不同的分布。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2021年第7期|107650.1-107650.18|共18页
  • 作者单位

    Department of Energy and Power Engineering Tsinghua University Beijing 100084 China;

    Department of Energy and Power Engineering Tsinghua University Beijing 100084 China Key laboratory for Thermal Science and Power Engineering of Ministry of Education Tsinghua University Beijing 100084 China;

    Department of Energy and Power Engineering Tsinghua University Beijing 100084 China State Key Laboratory of Control and Simulation of Power System and Generation Equipment Tsinghua University Beijing 100084 China;

    Johnson Controls 507 East Michigan St Milwaukee WI 53202 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fault diagnosis; Distributed complex systems; Collaborative deep learning; Privacy preserving;

    机译:故障诊断;分布式复杂系统;合作深度学习;隐私保留;

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