Improved Transfer Component Analysis and It Application for Bearing Fault Diagnosis Across Diverse Domains

Ping Ma, Hongli Zhang, Cong Wang
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引用次数: 3

Abstract

In recent years, intelligent fault diagnosis models based on machine learning used for intelligent condition monitoring and diagnosis have achieved considerable success. However, in the current research, the diagnosis process is based on an assumption that the same feature distribution exists between training data and testing data. Regrettably, in real application, training data and testing data are often from diverse domains, the difference in feature distributions is often prevalent; in this case, the traditional diagnostic models lack adaptability. To address this issue, this work proposed a diagnosis framework based on domain adaptation. This framework is inspired by the domain adaptation ability of transfer learning, in that the model trained by the labeled data in source domain can be transferred to diagnose a new but similar target data. The domain adaptation algorithm transfer component analysis (TCA) and its improved algorithm- improved transfer component analysis (ITCA) are embedded into this framework, respectively, to verify its applicability. An experiment was conducted on the datasets of bearing to demonstrate the applicability and practicability of the proposed transfer framework. The results show that the proposed method presents high accuracy in the transfer task of bearing fault diagnosis under different conditions across diverse experimental positions and fault types.
改进的传递分量分析及其在多领域轴承故障诊断中的应用
近年来,基于机器学习的智能故障诊断模型用于智能状态监测和诊断已经取得了相当大的成功。然而,在目前的研究中,诊断过程是基于训练数据和测试数据之间存在相同特征分布的假设。遗憾的是,在实际应用中,训练数据和测试数据往往来自不同的领域,特征分布的差异往往是普遍存在的;在这种情况下,传统的诊断模型缺乏适应性。为了解决这一问题,本文提出了一种基于领域自适应的诊断框架。该框架受迁移学习的领域适应能力的启发,可以将源域标记数据训练的模型转移到新的相似目标数据中进行诊断。将领域自适应算法转移分量分析(TCA)及其改进算法-改进转移分量分析(ITCA)分别嵌入到该框架中,验证其适用性。在轴承数据集上进行了实验,验证了所提转移框架的适用性和实用性。结果表明,该方法在不同实验位置和故障类型的不同条件下,对轴承故障诊断的传递任务具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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