Identification of Milling Cutter Wear State under Variable Working Conditions Based on Optimized SDP

Author:

Chang Hao1,Gao Feng1,Li Yan1,Chang Lihong2

Affiliation:

1. Key Laboratory of NC Machine Tools and Integrated Manufacturing Equipment of the Ministry of Education & Key Laboratory of Manufacturing Equipment of Shaanxi Province, Xi’an University of Technology, Xi’an 710048, China

2. Department of Rural Regional Development, College of Humanities and Urban-Rural Development, Beijing University of Agriculture, Beijing 102206, China

Abstract

Traditional data-driven tool wear state recognition methods rely on complete data under targeted working conditions. However, in actual cutting operations, working conditions vary, and data for many conditions lack labels, with data distribution characteristics differing between conditions. To address these issues, this article proposes a method for recognizing the wear state of milling cutters under varying working conditions based on an optimized symmetrized dot pattern (SDP). This method utilizes complete data from source working conditions for representation learning, transferring a generalized milling cutter wear state recognition model to varying working condition scenarios. By leveraging computer image processing features, the vibration signals produced by milling are converted into desymmetrization dot pattern images. Clustering analysis is used to extract template images of different wear states, and differential evolution algorithms are employed to adaptively optimize parameters using the maximization of Euclidean distance as an indicator. Transfer learning with a residual network incorporating an attention mechanism is used to recognize the wear state of milling cutters under varying working conditions. The experimental results indicate that the method proposed in this paper reduces the impact of working condition changes on the mapping relationship of milling cutter wear states. In the wear state identification experiment under varying conditions, the accuracy reached 97.39%, demonstrating good recognition precision and generalization ability.

Funder

Key Industrial Innovation Chain Project of Shaanxi Province

Project of Cultivation for young top-notch Talents of Beijing Municipal Institutions

Prosperous Social Science Action Plan Project of Beijing University of Agriculture

Publisher

MDPI AG

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