论文标题
注意事项二次网络(qttention)用于有效且可解释的轴承故障诊断
Attention-embedded Quadratic Network (Qttention) for Effective and Interpretable Bearing Fault Diagnosis
论文作者
论文摘要
轴承诊断对于降低旋转机器的损害风险并进一步改善经济利润至关重要。最近,以深度学习为代表的机器学习在轴承诊断方面取得了长足的进步。但是,将深度学习应用到这样的任务仍然面临一个主要问题。众所周知,深层网络是黑匣子。很难知道模型如何分类分类背后的正常原理和物理原理的错误信号。为了解决可解释性问题,首先,我们原型卷积网络具有最近发明的二次神经元。由于二次神经元的特征表示能力,该二次神经元授权网络可以鉴定噪声轴承数据。此外,我们通过将学习的二次功能分配到类似于注意力的情况下,从二次神经元中独立得出注意力机制,称为qttention,从而使学到的二次功能具有固有解释的二次神经元的模型。公众和我们的数据集进行的实验表明,所提出的网络可以促进有效且可解释的轴承故障诊断。
Bearing fault diagnosis is of great importance to decrease the damage risk of rotating machines and further improve economic profits. Recently, machine learning, represented by deep learning, has made great progress in bearing fault diagnosis. However, applying deep learning to such a task still faces a major problem. A deep network is notoriously a black box. It is difficult to know how a model classifies faulty signals from the normal and the physics principle behind the classification. To solve the interpretability issue, first, we prototype a convolutional network with recently-invented quadratic neurons. This quadratic neuron empowered network can qualify the noisy bearing data due to the strong feature representation ability of quadratic neurons. Moreover, we independently derive the attention mechanism from a quadratic neuron, referred to as qttention, by factorizing the learned quadratic function in analogue to the attention, making the model with quadratic neurons inherently interpretable. Experiments on the public and our datasets demonstrate that the proposed network can facilitate effective and interpretable bearing fault diagnosis.