The scope of data-driven fault diagnosis models is greatly extended through deep learning (DL). However, the classical convolution and recurrent structure have their defects in computational efficiency and feature representation, while the latest Transformer architecture based on attention mechanism has not yet been applied in this field. To solve these problems, we propose a novel time-frequency Transformer (TFT) model inspired by the massive success of vanilla Transformer in sequence processing. Specially, we design a fresh tokenizer and encoder module to extract effective abstractions from the time-frequency representation (TFR) of vibration signals. On this basis, a new end-to-end fault diagnosis framework based on time-frequency Transformer is presented in this paper. Through the case studies on bearing experimental datasets, we construct the optimal Transformer structure and verify its fault diagnosis performance. The superiority of the proposed method is demonstrated in comparison with the benchmark models and other state-of-the-art methods.
翻译:数据驱动缺陷诊断模型的范围通过深层学习而大大扩展。然而,古老的变迁和经常性结构在计算效率和特征表达方面有缺陷,而基于关注机制的最新变异器结构尚未在这一领域应用。为了解决这些问题,我们提出了一个新颖的时间频率变异器模型,这是香草变异器在序列处理方面的巨大成功所启发的。特别是,我们设计了一个新鲜的代谢器和编码器模块,从振动信号的时间-频率表示中提取有效的抽取。在此基础上,本文件提出了基于时间-频率变异器的新端对端断裂诊断框架。通过对实验数据集进行案例研究,我们构建了最佳变异器结构,并核实其错误诊断性能。与基准模型和其他最先进的方法相比,可以证明拟议方法的优越性。