Research on tool wear condition monitoring based on deep transfer learning and residual network

IF 1.6 Q2 ENGINEERING, MULTIDISCIPLINARY Engineering Research Express Pub Date : 2024-09-16 DOI:10.1088/2631-8695/ad78a6
Yong Ge, Hiu Hong Teo, Lip Kean Moey and Walisijiang Tayier
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Abstract

To address the issues of sample scarcity and insufficient recognition accuracy in existing deep learning models for tool wear monitoring, this study developed a milling tool wear monitoring model that combines transfer learning (TL) and deep residual networks (ResNet). The model uses continuous wavelet transform to convert vibration signals into time-frequency maps, which are then fed into the network model for analysis. ResNet50 was selected as the base feature extraction model, and transfer learning techniques were employed to update the classification layer’s weights, enabling tool wear detection. The model based on ResNet-TL achieved a detection accuracy of 94%, significantly exceeding the threshold for intelligent tool wear recognition. This accomplishment markedly improves the precision and stability of tool wear state monitoring, providing more reliable technical support for tool management in manufacturing processes. Additionally, the method demonstrated superiority in addressing the small sample problem, paving the way for future research in tool wear monitoring. By integrating advanced deep learning techniques with transfer learning, the model not only enhances detection capabilities but also improves adaptability and robustness in practical industrial applications.
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基于深度迁移学习和残差网络的刀具磨损状态监测研究
为了解决现有刀具磨损监测深度学习模型中样本稀缺和识别精度不足的问题,本研究开发了一种结合了迁移学习(TL)和深度残差网络(ResNet)的铣削刀具磨损监测模型。该模型使用连续小波变换将振动信号转换成时频图,然后将其输入网络模型进行分析。选择 ResNet50 作为基础特征提取模型,并采用迁移学习技术更新分类层的权重,从而实现刀具磨损检测。基于 ResNet-TL 的模型达到了 94% 的检测准确率,大大超过了智能工具磨损识别的阈值。这一成果显著提高了刀具磨损状态监测的精度和稳定性,为生产过程中的刀具管理提供了更可靠的技术支持。此外,该方法在解决小样本问题方面也表现出了优越性,为未来的刀具磨损监测研究铺平了道路。通过将先进的深度学习技术与迁移学习相结合,该模型不仅增强了检测能力,还提高了实际工业应用中的适应性和鲁棒性。
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来源期刊
Engineering Research Express
Engineering Research Express Engineering-Engineering (all)
CiteScore
2.20
自引率
5.90%
发文量
192
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