A Multi-channel Transfer Learning Framework for Fault Diagnosis of Axial Piston Pump

You He, He-sheng Tang, Yan Ren
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引用次数: 2

Abstract

To deal with the problem that the traditional intelligent fault diagnosis models invalid when classifying data with different probability distributions, the Multi-channel Deep Transfer Learning Network (MDTLN) is proposed in this paper. The network structure is divided into three modules: domain adaptation module, condition recognition module and feature extraction module. Firstly, the target domain data are pretrained to obtain its inherent features. Secondly, the model is optimized by maximizing the domain recognition error and minimizing the classification. Finally, the target domain data are accurately classified through the trained model. Multilinear Principal Component Analysis (MPCA) is employed to reduce the dimension of data obtained from multiple sensors. The effect of this method is verified in axial piston pump dataset, and this method has obvious advantages compared with the advanced transfer learning method.
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轴向柱塞泵故障诊断的多通道迁移学习框架
针对传统智能故障诊断模型对不同概率分布的数据进行分类无效的问题,提出了多通道深度迁移学习网络(MDTLN)。网络结构分为三个模块:领域适应模块、状态识别模块和特征提取模块。首先,对目标域数据进行预训练,获得其固有特征;其次,通过最大化领域识别误差和最小化分类来优化模型;最后,通过训练好的模型对目标域数据进行准确分类。采用多线性主成分分析(MPCA)对多传感器数据进行降维处理。在轴向柱塞泵数据集上验证了该方法的效果,与先进的迁移学习方法相比,该方法具有明显的优势。
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