可变条件下的多模态轴承故障分类:带有迁移学习的1D CNN

IF 4.9
Tasfiq E. Alam, Md Manjurul Ahsan, Shivakumar Raman
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引用次数: 0

摘要

轴承在确保旋转机械的可靠性和效率方面发挥着不可或缺的作用-减少摩擦和处理临界载荷。轴承故障占机械故障的90%,这突出了对可靠状态监测和故障检测的迫切需要。本研究提出了一种基于一维卷积神经网络(1D CNN)框架内振动和电机相电流信号的多模态轴承故障分类方法。该方法融合了多个信号的特征,提高了故障检测的准确性。在1500 rpm、0.7 Nm负载扭矩和1000 N径向力的基线条件下,加入L2正则化后,模型的准确率达到96%。此外,该模型通过采用迁移学习(TL)策略,在三种不同的操作条件下表现出稳健的性能。在测试的TL变体中,保留参数直到第一个max-pool层,然后调整后续层的方法获得了最高的性能。虽然这种方法在各种条件下都能达到很高的精度,但由于其可训练参数的数量较多,需要更多的计算时间。为了解决资源限制问题,计算密集度较低的模型提供了可行的折衷方案,尽管要付出一点准确性的代价。总体而言,这种具有后期融合和TL策略的多模态1D CNN框架为在具有可变运行条件的工业环境中更准确、更适应性和更高效的轴承故障分类奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal bearing fault classification under variable conditions: A 1D CNN with transfer learning
Bearings play an integral role in ensuring the reliability and efficiency of rotating machinery — reducing friction and handling critical loads. Bearing failures that constitute up to 90% of mechanical faults highlight the imperative need for reliable condition monitoring and fault detection. This study proposes a multimodal bearing fault classification approach that relies on vibration and motor phase current signals within a one-dimensional convolutional neural network (1D CNN) framework. The method fuses features from multiple signals to enhance the accuracy of fault detection. Under the baseline condition (1500 rpm, 0.7 Nm load torque, and 1000 N radial force), the model reaches an accuracy of 96% with addition of L2 regularization. In addition, the model demonstrates robust performance across three distinct operating conditions by employing transfer learning (TL) strategies. Among the tested TL variants, the approach that preserves parameters up to the first max-pool layer and then adjusts subsequent layers achieves the highest performance. While this approach attains excellent accuracy across varied conditions, it requires more computational time due to its greater number of trainable parameters. To address resource constraints, less computationally intensive models offer feasible trade-offs, albeit at a slight accuracy cost. Overall, this multimodal 1D CNN framework with late fusion and TL strategies lays a foundation for more accurate, adaptable, and efficient bearing fault classification in industrial environments with variable operating conditions.
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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