Eraliev Oybek, Lee Kwang-Hee, Lee Chul-Hee
Department of Future Vehicle Engineering, Inha University, 100 Inharo, Mitchuholgu, Incheon 22212, Republic of Korea.
Department of Mechanical Engineering, Inha University, 100 Inharo, Mitchuholgu, Incheon 22212, Republic of Korea.
Sensors (Basel). 2024 Jul 18;24(14):4661. doi: 10.3390/s24144661.
Deep learning (DL) models require enormous amounts of data to produce reliable diagnosis results. The superiority of DL models over traditional machine learning (ML) methods in terms of feature extraction, feature dimension reduction, and diagnosis performance has been shown in various studies of fault diagnosis systems. However, data acquisition can sometimes be compromised by sensor issues, resulting in limited data samples. In this study, we propose a novel DL model based on a stacked convolutional autoencoder (SCAE) to address the challenge of limited data. The innovation of the SCAE model lies in its ability to enhance gradient information flow and extract richer hierarchical features, leading to superior diagnostic performance even with limited and noisy data samples. This article describes the development of a fault diagnosis method for a hydraulic piston pump using time-frequency visual pattern recognition. The proposed SCAE model has been evaluated on limited data samples of a hydraulic piston pump. The findings of the experiment demonstrate that the suggested approach can achieve excellent diagnostic performance with over 99.5% accuracy. Additionally, the SCAE model has outperformed traditional DL models such as deep neural networks (DNN), standard stacked sparse autoencoders (SSAE), and convolutional neural networks (CNN) in terms of diagnosis performance. Furthermore, the proposed model demonstrates robust performance under noisy data conditions, further highlighting its effectiveness and reliability.
深度学习(DL)模型需要大量数据才能产生可靠的诊断结果。在故障诊断系统的各种研究中,DL模型在特征提取、特征降维和诊断性能方面优于传统机器学习(ML)方法。然而,数据采集有时会因传感器问题而受到影响,导致数据样本有限。在本研究中,我们提出了一种基于堆叠卷积自动编码器(SCAE)的新型DL模型,以应对数据有限的挑战。SCAE模型的创新之处在于它能够增强梯度信息流并提取更丰富的层次特征,即使在数据样本有限且有噪声的情况下也能带来卓越的诊断性能。本文描述了一种使用时频视觉模式识别的液压活塞泵故障诊断方法 的开发。所提出的SCAE模型已在液压活塞泵的有限数据样本上进行了评估。实验结果表明,所建议的方法能够以超过99.5%的准确率实现出色的诊断性能。此外,SCAE模型在诊断性能方面优于深度神经网络(DNN)、标准堆叠稀疏自动编码器(SSAE)和卷积神经网络(CNN)等传统DL模型。此外,所提出的模型在有噪声的数据条件下表现出稳健的性能,进一步突出了其有效性和可靠性。