面向变工况机械设备智能故障诊断的可解释三特征提取器迁移网络

Interpretable triple feature extractor transfer network for intelligent fault diagnosis of mechanical equipment under variable working conditions

  • 摘要: 针对深度神经网络可解释性低及目前可解释网络无法实现跨域诊断的问题,提出了一种可解释三特征提取器迁移网络(interpretable triple feature extractor transfer network,ITFETN)。针对可解释性问题,建立了多层稀疏编码模型,推导了多层稀疏编码模型的迭代求解算法,通过展开快速迭代软阈值算法,得到稀疏编码模型求解算法的等效网络形式,并将其作为特征提取器,形成具有可解释性的算法结构等效网络;针对跨域迁移诊断问题,构建了三特征提取器策略用于提取源域、目标域的共享特征以及各自的私有特征,并基于特征对抗思想设计了迁移诊断任务的损失函数用于ITFETN的有效训练,有效提取出源域和目标域中距离最小化的共享特征进行跨域诊断,实现可解释迁移诊断任务。试验结果表明,ITFETN在两个实例分析中的平均准确率和鲁棒性相较于对比方法均有所提升,能够有效实现具有可解释性的跨域诊断。

     

    Abstract: To solve the problems of low interpretability of deep neural networks and that the existing interpretable networks can not accomplish the cross-domain diagnosis tasks, an interpretable triple feature extractor transfer network (ITFETN) is proposed. To solve the problems of the absence of interpretability, a multi-layer sparse coding model is built and the iterative solving algorithm is deduced for this model. Through unrolling fast iterative soft thresholding algorithm, the equivalent form of network for the algorithm is obtained and regarded as the feature extractor to construct an interpretable algorithm structure equivalent model. In addition, to solve the problems of cross-domain diagnosis, a strategy of triple feature extractor is proposed to extract the shared features from source domain and target domain and their respective private features, and the loss function of transfer learning tasks is designed based on the concept of feature adversary for effective training of ITFETN. The shared features from source domain and target domain with minimum distance are effectively extracted for cross-domain diagnosis to realize interpretable transfer tasks. The results of experiments show that the average accuracy and robustness of ITFETN in two cases of datasets have been improved, compared with the optimal comparing methods and ITFETN can accomplish the tasks of interpretable cross-domain diagnosis effectively.

     

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