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Deep Learning-Based Cross-Machine Health Identification Method for Vacuum Pumps with Domain Adaptation

机译:基于深度学习的跨机器健康识别方法,具有域适应的真空泵

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摘要

Intelligent data-driven machinery health identification has been attracting increasing attention in the manufacturing industries, due to reduced maintenance cost and enhanced operation safety. Despite the successful development, the main limitation of most existing methods lies in the assumption that the training and testing data are collected from the same distribution, i.e. the same machine under identical condition. However, this assumption is difficult to be met in the real industries, since the diagnostic model is generally expected to be applied on new machines. In order to address this issue, a deep learning-based cross-machine health identification method is proposed for industrial vacuum pumps, which are of great importance in the manufacturing industry but have received far less research attention in the literature. Generalized diagnostic features can be learnt using the proposed domain adaptation technique with maximum mean discrepancy metric. The health identification model learnt from the training machines can be well applied on new machines. Experiments on a real-world vacuum pump dataset validate the proposed method, which is promising for industrial applications.
机译:由于降低的维护成本和增强的操作安全,智能数据驱动的机械卫生识别在制造业中一直吸引了不断的关注。尽管发展成功,但大多数现有方法的主要限制在于假设培训和测试数据是从相同的分布收集的,即在相同条件下的同一台机器。然而,在真实行业中难以满足这种假设,因为通常预期诊断模型将应用于新机器。为了解决这个问题,提出了一种基于深入的学习的跨机器健康识别方法,用于工业真空泵,这在制造业中具有重要意义,但在文献中受到了远远较低的研究。可以使用具有最大平均差异度量的所提出的域适配技术来学习广义诊断功能。从训练机中学到的健康识别模型可以很好地应用于新机器。真实世界的真空泵数据集的实验验证了建议的方法,这是对工业应用的承诺。

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