Fusion innovation: Multi-scale dilated collaborative model of ConvNeXt and MSDA for fault diagnosis

IF 4.3 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Xueyi Li , Daiyou Li , Peng Yuan , Yining Xie , Zhiliang Wang , Zhijie Xie , Xiangwei Kong , Fulei Chu
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引用次数: 0

Abstract

Bearings and gears are critical components in modern industry, and cross-domain diagnosis of these elements is of great significance. However, in practical applications, challenges such as insufficient training data and variability between equipment arise. To address this issue, this study proposes an innovative neural network structure, ConvNeXt, and a Multi-Scale Dilated Attention (MSDA) mechanism to improve the accuracy problem caused by inadequate feature extraction. ConvNeXt improves upon traditional convolutional neural networks by introducing a multi-scale attention mechanism to enhance the model's performance and expressiveness. Through parallel multi-channel convolution operations, ConvNeXt can capture dependencies between different channels and reduce the number of parameters. Meanwhile, the MSDA mechanism allows signals to interact and exchange information at different scales, effectively extracting complex features in one-dimensional signals. Experimental results demonstrate a significant performance improvement in one-dimensional signal processing using ConvNeXt and MSDA, better capturing relationships between global and local features in one-dimensional signals and enhancing model accuracy. The joint application of ConvNeXt and MSDA brings new solutions to one-dimensional signal processing, offering potential opportunities for effective monitoring of critical components in rotating machinery. Experimental results show that this method achieves high diagnostic accuracy in various transfer tasks, with an average accuracy of 94.28%, providing reliable support for bearing fault diagnosis.
融合创新:用于故障诊断的 ConvNeXt 和 MSDA 多尺度扩张协作模型
轴承和齿轮是现代工业的关键部件,对这些部件进行跨域诊断意义重大。然而,在实际应用中,会出现训练数据不足和设备之间存在差异等挑战。针对这一问题,本研究提出了一种创新的神经网络结构 ConvNeXt 和多尺度稀释注意(MSDA)机制,以改善因特征提取不足而导致的精度问题。ConvNeXt 在传统卷积神经网络的基础上进行了改进,引入了多尺度注意机制,以提高模型的性能和表现力。通过并行多通道卷积操作,ConvNeXt 可以捕捉不同通道之间的依赖关系,减少参数数量。同时,MSDA 机制允许信号在不同尺度上交互和交换信息,从而有效提取一维信号中的复杂特征。实验结果表明,使用 ConvNeXt 和 MSDA 对一维信号进行处理的性能有了显著提高,能更好地捕捉一维信号中全局和局部特征之间的关系,提高模型的准确性。ConvNeXt 和 MSDA 的联合应用为一维信号处理带来了新的解决方案,为有效监测旋转机械中的关键部件提供了潜在机会。实验结果表明,该方法在各种转移任务中都能达到很高的诊断精度,平均精度高达 94.28%,为轴承故障诊断提供了可靠的支持。
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来源期刊
Robotics and Autonomous Systems
Robotics and Autonomous Systems 工程技术-机器人学
CiteScore
9.00
自引率
7.00%
发文量
164
审稿时长
4.5 months
期刊介绍: Robotics and Autonomous Systems will carry articles describing fundamental developments in the field of robotics, with special emphasis on autonomous systems. An important goal of this journal is to extend the state of the art in both symbolic and sensory based robot control and learning in the context of autonomous systems. Robotics and Autonomous Systems will carry articles on the theoretical, computational and experimental aspects of autonomous systems, or modules of such systems.
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