一种用于十字轴工业机器人故障诊断的注意力增强扩张CNN方法

Yuxin Liu, Chong Chen, Tao Wang, Lianglun Cheng
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引用次数: 0

摘要

工业机器人是一个复杂的机电一体化系统,其故障很难根据监测数据进行诊断。以往的研究报道了多种利用深度网络模型提高故障诊断准确率的方法,在数据样本量充足的情况下,可以得到准确的预测模型。然而,故障数据难以获得,这就导致了模型的寥寥无几和泛化能力差的问题。因此,本文提出了一种注意力增强型扩张卷积神经网络(D-CNN)方法,用于跨轴工业机器人故障诊断方法。首先,采用关键特征提取和滑动窗口对工业机器人的监测数据进行预处理,然后引入 D-CNN 提取数据特征。此外,还采用了自注意技术来增强特征注意能力。最后,利用预训练模型进行迁移学习,并利用多轴工业机器人另一轴的少量数据集进行微调实验。实验结果表明,所提出的方法在源域和目标域都能达到令人满意的故障诊断精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An attention enhanced dilated CNN approach for cross-axis industrial robotics fault diagnosis

An industrial robot is a complex mechatronics system, whose failure is hard to diagnose based on monitoring data. Previous studies have reported various methods with deep network models to improve the accuracy of fault diagnosis, which can get an accurate prediction model when the amount of data sample is sufficient. However, the failure data is hard to obtain, which leads to the few-shot issue and the bad generalization ability of the model. Therefore, this paper proposes an attention enhanced dilated convolutional neural network (D-CNN) approach for the cross-axis industrial robotics fault diagnosis method. Firstly, key feature extraction and sliding window are adopted to pre-process the monitoring data of industrial robots before D-CNN is introduced to extract data features. And self-attention is used to enhance feature attention capability. Finally, the pre-trained model is used for transfer learning, and a small number of the dataset from another axis of the multi-axis industrial robot are used for fine-tuning experiments. The experimental results show that the proposed method can reach satisfactory fault diagnosis accuracy in both the source domain and target domain.

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