一种用于故障诊断中多变量信号分类的改进宽核CNN

J. V. D. Hoogen, Stefan Bloemheuvel, M. Atzmüller
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引用次数: 9

摘要

深度学习(DL)为提高故障诊断的效率和性能提供了大量的机会。深度学习方法的自动特征提取能力可以减少对复杂信号处理的耗时特征构建和先验知识的需求。在本文中,我们提出了建立在宽核深度卷积神经网络(WDCNN)框架上的两个模型,以提高使用多元时间序列数据对故障条件进行分类的性能,也适用于有限和/或有噪声的训练数据。在我们的实验中,我们使用来自凯斯西储大学(CWRU)轴承实验[1]的著名基准数据集来评估我们的模型的性能,并通过模拟嘈杂的工业环境来研究它们在大规模应用中的可用性。在这里,所提出的模型在没有任何预处理或数据增强的情况下表现出非常好的性能,并且即使在如此复杂的多类分类任务中,也大大优于传统的机器学习应用程序以及最先进的深度学习模型。我们表明,这两种模型也能够很好地适应噪声输入数据,这使得它们适用于基于状态的维护环境。此外,我们调查并证明了模型的可解释性和透明度,这在大规模工业应用中尤为重要。
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An Improved Wide-Kernel CNN for Classifying Multivariate Signals in Fault Diagnosis
Deep Learning (DL) provides considerable opportunities for increased efficiency and performance in fault diagnosis. The ability of DL methods for automatic feature extraction can reduce the need for time-intensive feature construction and prior knowledge on complex signal processing. In this paper, we propose two models that are built on the Wide-Kernel Deep Convolutional Neural Network (WDCNN) framework to improve performance of classifying fault conditions using multivariate time series data, also with respect to limited and/or noisy training data. In our experiments, we use the renowned benchmark dataset from the Case Western Reserve University (CWRU) bearing experiment [1] to assess our models' performance, and to investigate their usability towards large-scale applications by simulating noisy industrial environments. Here, the proposed models show an exceptionally good performance without any preprocessing or data augmentation and outperform traditional Machine Learning applications as well as state-of-the-art DL models considerably, even in such complex multi-class classification tasks. We show that both models are also able to adapt well to noisy input data, which makes them suitable for condition-based maintenance contexts. Furthermore, we investigate and demonstrate explainability and transparency of the models which is particularly important in large-scale industrial applications.
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