Research on Bearing Remaining Useful Life Anti-noise Prediction Based on Fusion of Color-Grayscale Time-Frequency Features

Wenchao Jia, Aimin An, Xianjun Du, Yaoke Shi, Bin Gong
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Abstract

In contemporary industrial processes, vibration signals collected from bearings often contain significant noise, challenging the efficacy of conventional predictive models in extracting critical degradation features and accurately predicting the remaining useful life (RUL) of bearings. Addressing these challenges, this paper introduces a novel method for predicting bearing RUL under noisy conditions, leveraging a dual-branch multi-scale convolutional attention network (DMCSA) integrated with a dense residual feature fusion network (DRF). Initially, the method applies continuous wavelet trans-form (CWT) to vibration signals to extract color time-frequency image data, followed by grayscale processing to construct a comprehensive color-grayscale time-frequency image dataset, thereby augmenting the model's input features. Enhanced channel and spatial attention mechanisms, combined with multi-scale convolutions, facilitate supe-rior feature extraction and selection. The model's resilience to noise is fortified by in-corporating noise into the training dataset. Subsequently, selected color-gray time-frequency features undergo fusion and relearning through the DRF framework at the model's backend. The crayfish optimization algorithm (COA) is deployed for the astute determination of the model's critical hyperparameters. The proposed DMCSA-DRF model is then applied to predict the health indicator (MSCA-DRF-HI) of the test dataset, culminating in the accurate prediction of the bearings' RUL. Validation experiments demonstrate that our method surpasses comparative models in prediction accuracy un-der diverse noise interferences, signifying a substantial advancement in predictive performance.
基于颜色-灰度-时间-频率特性融合的轴承剩余使用寿命抗噪预测研究
在当代工业流程中,从轴承收集到的振动信号通常含有大量噪声,这对传统预测模型提取关键退化特征和准确预测轴承剩余使用寿命(RUL)的功效提出了挑战。为了应对这些挑战,本文介绍了一种在噪声条件下预测轴承剩余使用寿命的新方法,该方法利用双分支多尺度卷积注意力网络(DMCSA)与密集残差特征融合网络(DRF)进行整合。该方法首先对振动信号进行连续小波变换(CWT),提取彩色时频图像数据,然后进行灰度处理,构建彩色-灰度综合时频图像数据集,从而增强模型的输入特征。增强的通道和空间注意机制与多尺度卷积相结合,促进了超前特征提取和选择。通过在训练数据集中加入噪声,加强了模型对噪声的适应能力。随后,选定的颜色-灰色-时间-频率特征将通过模型后端的 DRF 框架进行融合和再学习。小龙虾优化算法(COA)可用于精确确定模型的关键超参数。然后,应用所提出的 DMCSA-DRF 模型预测测试数据集的健康指标(MSCA-DRF-HI),最终准确预测轴承的 RUL。验证实验表明,我们的方法在不受各种噪声干扰的情况下,其预测准确性超过了同类模型,这标志着我们在预测性能方面取得了巨大进步。
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