Optimizing process parameters of in-situ laser assisted cutting of glass-ceramic by applying hybrid machine learning models

被引:9
|
作者
Wei, Jiachen [1 ]
He, Wenbin [2 ]
Lin, Chuangting [1 ]
Zhang, Jianguo [1 ]
Chen, Xiao [3 ]
Xiao, Junfeng [1 ]
Xu, Jianfeng [1 ]
机构
[1] Huazhong Univ Sci & Technol, Sch Mech Sci & Engn, State Key Lab Intelligent Mfg Equipment & Technol, Wuhan 430074, Peoples R China
[2] Jihua Lab, Foshan 528200, Guangdong, Peoples R China
[3] Hubei Univ Technol, Sch Mech Engn, Wuhan 430072, Peoples R China
基金
中国国家自然科学基金;
关键词
In -situ laser assisted diamond cutting; Glass-ceramic; Hybrid machine learning; Surface quality; Optimization; SURFACE-ROUGHNESS; FUSED-SILICA; OPTIMIZATION; EVOLUTIONARY; ALGORITHMS; FORCE; TESTS;
D O I
10.1016/j.aei.2024.102590
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Glass-ceramic is an advanced optical material. However, its high hardness and brittleness pose significant challenges to achieving high-quality surfaces during the machining process. Currently, in-situ laser assisted diamond cutting technology has emerged as an effective method for machining hard and brittle materials. To achieve the most favorable machining effect, this study utilized a range of methods to determine the optimal process parameters. The experiments were initially designed using the Taguchi method and response surface methodology. The influence of laser power, cutting depth, spindle speed, and feed speed on the surface quality of glass-ceramic was investigated through analytical techniques including variance analysis and signal-to-noise ratio analysis. Subsequently, a hybrid machine learning model was developed to predict the surface roughness of glass-ceramic, including synthetic minority over-sampling, stepwise regression, bagging, and artificial neural network technologies. The results indicated that varying parameter combinations during in-situ laser-assisted diamond cutting had a significant impact on surface roughness. The contribution rates of laser power, cutting depth, spindle speed, and feed speed to surface roughness were determined as 32.40 %, 23.15 %, 11.63 %, and 22.18 %, respectively. Moreover, a hybrid machine learning prediction model for glass-ceramic surface roughness achieved an R2 value of 0.9737 on the testing set with a mean absolute error of 4.1858. Subsequently, an improved quantum genetic algorithm was adopted to determine the optimal process parameters, achieving a smooth surface quality of Sa 14.022 nm with laser power of 12 W, cutting depth of 2 mu m, feed speed of 1 mm/ min, and spindle speed of 2274 rpm. The error between the surface roughness obtained from the verification experiment and the optimized result was below 8 %.
引用
收藏
页数:19
相关论文
共 30 条
  • [21] Machine-learning-assisted fabrication: Bayesian optimization of laser-induced graphene patterning using in-situ Raman analysis
    Wahab, Hud
    Jain, Vivek
    Tyrrell, Alexander Scott
    Seas, Michael Alan
    Kotthoff, Lars
    Johnson, Patrick Alfred
    CARBON, 2020, 167 : 609 - 619
  • [22] Process parameters influence on cutting force and surface roughness during hybrid laser- and ultrasonic elliptical vibration-assisted machining
    Mohsen Khajehzadeh
    Seyyed Sajjad Ahmadpoor
    Omid Rohani Raftar
    Mohammad Reza Beyki Sarveolia
    Mohammad Reza Razfar
    Journal of the Brazilian Society of Mechanical Sciences and Engineering, 2021, 43
  • [23] Process parameters influence on cutting force and surface roughness during hybrid laser- and ultrasonic elliptical vibration-assisted machining
    Khajehzadeh, Mohsen
    Ahmadpoor, Seyyed Sajjad
    Rohani Raftar, Omid
    Sarveolia, Mohammad Reza Beyki
    Razfar, Mohammad Reza
    JOURNAL OF THE BRAZILIAN SOCIETY OF MECHANICAL SCIENCES AND ENGINEERING, 2021, 43 (01)
  • [24] In-situ quality monitoring of laser hot wire cladding process based on multi-sensing diagnosis and machine learning model
    Chen, Xi
    Yao, Mingpu
    Kong, Fanrong
    Fu, Youheng
    Wu, Jun
    Zhang, Haiou
    JOURNAL OF MANUFACTURING PROCESSES, 2023, 87 : 183 - 198
  • [25] Computational fluid dynamics-based in-situ sensor analytics of direct metal laser solidification process using machine learning
    Ren, Yi Ming
    Zhang, Yichi
    Ding, Yangyao
    Wang, Yongjian
    Christofides, Panagiotis D.
    COMPUTERS & CHEMICAL ENGINEERING, 2020, 143
  • [26] Influence of process parameters on the interlaminar shear strength of CF/ PEEK composites in-situ consolidated by laser-assisted automated fiber placement
    Dong, Ningguo
    Luan, Congcong
    Yao, Xinhua
    Ding, Zequan
    Ji, Yuyang
    Niu, Chengcheng
    Zheng, Yaping
    Xu, Yuetong
    Fu, Jianzhong
    COMPOSITES SCIENCE AND TECHNOLOGY, 2024, 258
  • [27] Process mapping and anomaly detection in laser wire directed energy deposition additive manufacturing using in-situ imaging and process-aware machine learning
    Assad, Anis
    Bevans, Benjamin D.
    Potter, Willem
    Rao, Prahalada
    Cormier, Denis
    Deschamps, Fernando
    Hamilton, Jakob D.
    Rivero, Iris, V
    MATERIALS & DESIGN, 2024, 245
  • [28] Using machine learning to identify in-situ melt pool signatures indicative of flaw formation in a laser powder bed fusion additive manufacturing process
    Scime, Luke
    Beuth, Jack
    ADDITIVE MANUFACTURING, 2019, 25 : 151 - 165
  • [29] Machine-learning assisted optimization of process parameters for controlling the microstructure in a laser powder bed fused WC/Co cemented carbide
    Suzuki, Asuka
    Shiba, Yusuke
    Ibe, Hiroyuki
    Takata, Naoki
    Kobashi, Makoto
    ADDITIVE MANUFACTURING, 2022, 59
  • [30] Subsurface deformation and crack propagation between 3C-SiC/6H-SiC interface by applying in-situ laser-assisted diamond cutting RB-SiC
    Zhang, Jianguo
    Fu, Yufan
    Yu, Yongjing
    Chen, Xiao
    Zhang, Junjie
    Xiao, Junfeng
    Xu, Jianfeng
    MATERIALS LETTERS, 2023, 336