Imbalanced Fault Diagnosis of Bearing-Rotor System via Normalized Conditional Variational Auto-Encoder with Adaptive Focal Loss

Xiaoli Zhao, Jianyong Yao, W. Deng, M. Jia
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引用次数: 1

Abstract

The distribution of mechanical system health data monitored in the industrial field is imbalanced mainly. To this end, this paper designs a new imbalanced fault diagnosis framework of the mechanical system based on Normalized Conditional Variational Auto-Encoder with Adaptive Focal Loss (NCVAE-AFL). The core of this diagnostic framework is to use the designed NCVAE model to enhance the data’s feature learning ability. The multi-layer sensitive feature vector of the data can be extracted, the generalization performance of the diagnostic model is further improved. Meanwhile, a new Adaptive Focus Loss (AFL) function is designed for NCVAE model, which focuses training on a few samples of health conditions that are difficult to classify and balance the diagnosis difficulty of samples of different categories. Finally, the double-span rotor-bearing system fault simulation experiment platform verifies the effectiveness and superiority of the proposed NCVAE-AFL algorithm and its diagnostic framework.
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自适应焦损归一化条件变分自编码器诊断轴承-转子系统不平衡故障
工业现场监测的机械系统健康数据分布主要是不平衡的。为此,本文设计了一种基于归一化条件变分自适应焦损编码器(NCVAE-AFL)的机械系统不平衡故障诊断新框架。该诊断框架的核心是利用所设计的NCVAE模型来增强数据的特征学习能力。提取出数据的多层敏感特征向量,进一步提高了诊断模型的泛化性能。同时,针对NCVAE模型设计了一种新的自适应焦点损失(AFL)函数,该函数将训练重点放在少数难以分类的健康状况样本上,并平衡不同类别样本的诊断难度。最后,通过双跨转子-轴承系统故障仿真实验平台验证了所提出的NCVAE-AFL算法及其诊断框架的有效性和优越性。
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