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Deep Learning Fault Diagnosis Based on Model Updation in Case of Missing data

机译:数据丢失情况下基于模型更新的深度学习故障诊断

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The sampling frequency of different sensor used to collect data may be different, which will result in a structure incomplete sample at a particular sampling point. It is a kind of data missing problem. Deep learning based fault diagnosis model may be inaccurate because there are fewer well-structured samples that can be used to train the DNN based fault diagnosis model. In this paper, the potential cross-correlation between missing variables and existing variables is used to obtain additional well-structured samples by establishing an interpolation model based on BP neural network. Using the new well-structured samples, an online update mechanism of the DNN fault diagnosis model is designed to update the parameters of DNN. It is effective to get more accurate fault diagnosis result since more structure incomplete samples is used in the training process. The experimental results show that the method proposed in this paper can effectively improve the accuracy of fault diagnosis in the case of missing data.
机译:用于收集数据的不同传感器的采样频率可能不同,这将导致在特定采样点结构不完整的采样。这是一种数据丢失的问题。基于深度学习的故障诊断模型可能不准确,因为可以用于训练基于DNN的故障诊断模型的结构良好的样本较少。本文通过建立基于BP神经网络的插值模型,利用缺失变量与现有变量之间的潜在互相关性来获得其他结构良好的样本。使用新的结构良好的样本,设计了DNN故障诊断模型的在线更新机制来更新DNN的参数。由于在训练过程中使用了更多结构不完整的样本,因此获得更准确的故障诊断结果是有效的。实验结果表明,本文提出的方法可以有效地提高数据丢失情况下故障诊断的准确性。

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