Predictive modeling of surface roughness in lenses precision turning using regression and support vector machines

被引:0
|
作者
Xingsheng Wang
Min Kang
Xiuqing Fu
Chunlin Li
机构
[1] Nanjing Agricultural University,College of Engineering
[2] Jiangsu Key Laboratory for Intelligent Agricultural Equipment,undefined
关键词
Lenses; Slow tool servo; Orthogonal regression analysis; LS-SVM; Prediction model;
D O I
暂无
中图分类号
学科分类号
摘要
Slow tool servo (STS) turning is superior in machining precision and in complicated surface. However, STS turning is a complex process in which many variables can affect the desired results. This paper focuses on surface roughness prediction in lenses STS turning. An exponential model, based on the five main cutting parameters including tool nose radius, feed rate, depth of cut, C-axis speed, and discretization angle, for surface roughness prediction of lenses is developed by means of orthogonal experiment regression analysis. Meanwhile, a prediction model of surface roughness based on least squares support vector machines (LS-SVM) with radial basis function is constructed. Orthogonal experiment swatches are studied, and chaotic particle swarm optimization and leave-one-out cross-validation are applied to determine the model parameters. The comparison of LS-SVM model and exponential model is also carried out. Predictive LS-SVM model is found to be capable of better predictions for surface roughness and has absolute fraction of variance R2 of 0.99887, the mean absolute percent error eM of 8.96 %, and the root mean square error eR of 10.68 %. The experimental results and prediction of LS-SVM model show that effects of tool nose radius and feed rate are more significant than that of depth of cut on surface roughness of lenses turning.
引用
下载
收藏
页码:1273 / 1281
页数:8
相关论文
共 50 条
  • [41] Ensembles of support vector machines for regression problems
    Lima, CAM
    Coelho, ALV
    Von Zuben, FJ
    PROCEEDING OF THE 2002 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOLS 1-3, 2002, : 2381 - 2386
  • [42] Smoothing support vector machines for ε-insensitive regression
    Xiong, Jinzhi
    Hu, Tianming
    Hu, Jinlian
    Li, Guangming
    Peng, Hong
    ISDA 2006: Sixth International Conference on Intelligent Systems Design and Applications, Vol 1, 2006, : 222 - 225
  • [43] Relevance regression learning with support vector machines
    Apolloni, Bruno
    Malchiodi, Dario
    Valerio, Lorenzo
    NONLINEAR ANALYSIS-THEORY METHODS & APPLICATIONS, 2010, 73 (09) : 2855 - 2867
  • [44] Support vector machines regression with unbounded sampling
    Tong, Hongzhi
    Chen, Di-Rong
    Yang, Fenghong
    APPLICABLE ANALYSIS, 2019, 98 (09) : 1626 - 1635
  • [45] Selection of Support Vector Machines Parameters for Regression Using Nested Grids
    Popov, Alexander
    Sautin, Alexander
    IFOST 2008: PROCEEDING OF THE THIRD INTERNATIONAL FORUM ON STRATEGIC TECHNOLOGIES, 2008, : 329 - 331
  • [46] Electric Load Forecasting using Support Vector Machines for Robust Regression
    De Cosmis, Sonia
    De Leone, Renato
    Kropat, Erik
    Meyer-Nieberg, Silja
    Pickl, Stefan
    EMERGING M&S APPLICATIONS IN INDUSTRY AND ACADEMIA SYMPOSIUM AND THE MODELING AND HUMANITIES SYMPOSIUM 2013 (EAIA AND MATH 2013) - 2013 SPRING SIMULATION MULTI-CONFERENCE (SPRINGSIM'13), 2013, 45 (05): : 72 - 79
  • [47] Fast training of support vector machines for regression
    Anguita, D
    Boni, A
    Pace, S
    IJCNN 2000: PROCEEDINGS OF THE IEEE-INNS-ENNS INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOL V, 2000, : 210 - 214
  • [48] Validation and data splitting in predictive regression modeling of honing surface roughness data
    Feng, CXJ
    Yu, ZGS
    Wang, JHJ
    INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH, 2005, 43 (08) : 1555 - 1571
  • [49] Approximating Nonlinear Model Predictive Controllers using Support Vector Machines
    Dang, Tony
    Debrouwere, Frederik
    Hostens, Erik
    2021 AUSTRALIAN & NEW ZEALAND CONTROL CONFERENCE (ANZCC), 2021, : 155 - 160
  • [50] Support Vector Machines for Uplift Modeling
    Zaniewicz, Lukasz
    Jaroszewicz, Szymon
    2013 IEEE 13TH INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOPS (ICDMW), 2013, : 131 - 138