A Novel Method for Flatness Pattern Recognition via Least Squares Support Vector Regression

被引:0
作者
Xiu-ling Zhang
Shao-yu Zhang
Guang-zhong Tan
Wen-bao Zhao
机构
[1] National Engineering Research Cent for Equipment and Technology of Cold Strip Rolling,Key Laboratory of Industrial Computer Control Engineering of Hebei Province
[2] Yanshan University,undefined
来源
Journal of Iron and Steel Research International | 2012年 / 19卷
关键词
flatness; pattern recognition; least squares support vector regression; cross-validation;
D O I
暂无
中图分类号
学科分类号
摘要
To adapt to the new requirement of the developing flatness control theory and technology, cubic patten were introduced on the basis of the traditional linear, quadratic and quartic flatness basic patterns. Linear, quadratii cubic and quartic Legendre orthogonal polynomials were adopted to express the flatness basic patterns. In order to ove come the defects live in the existent recognition methods based on fuzzy, neural network and support vector regre sion (SVR) theory, a novel flatness pattern recognition method based on least squares support vector regression (LS-SVI was proposed. On this basis, for the purpose of determining the hyper-parameters of LS-SVR effectively and enhai cing the recognition accuracy and generalization performance of the model, particle swarm optimization algorith with leave-one-out (LOO) error as fitness function was adopted. To overcome the disadvantage of high computatior complexity of naive cross-validation algorithm, a novel fast cross-validation algorithm was introduced to calculate tl LOO error of LS-SVR. Results of experiments on flatness data calculated by theory and a 900HC cold-rolling m practically measured flatness signals demonstrate that the proposed approach can distinguish the types and define tl magnitudes of the flatness defects effectively with high accuracy, high speed and strong generalization ability.
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页码:25 / 30
页数:5
相关论文
共 19 条
  • [1] Zhang X-l(2003)GA-BP Model of Flatness Pattern Recognition and Improved Least Squares Method [J] Iron and Steel 38 29-undefined
  • [2] Liu H-min(2005)Transfer Matrix Method of Flatness Control for Strip Mills [J] Journal of Materials Processing Technology 15 237-undefined
  • [3] Liu H-m(2010)A Recognition Method of New Flatness Pattern Containing the Cubic Flatness [J] Iron and Steel 45 56-undefined
  • [4] Zhang X-ling(2008)Fuzzy Pattern Recognition Method of Flatness Based on Particle Swarm Theory [J] Chinese Journal of Mechanical Engineering 44 173-undefined
  • [5] Shan X-y(2009)Flatness Pattern Recognition Based on Adaptive Neuro-Fuzzy Inference System [J] Journal Iron and Steel Research 21 59-undefined
  • [6] Liu H-min(2008)Fuzzy Neural Model for Flatness Pattern Recognition [J] Iron and Steel Research, International 15 30-undefined
  • [7] Liu J(2000)Introduction to Statistical Learning Theory and Support Vector Machines [J] Acta Automatic Sinica 26 32-undefined
  • [8] Wang Y-qun(1999)Least Squares Support Vector Machine Classifiers [J] Neural Processing Letter 9 293-undefined
  • [9] Zhang X-l(2004)Benchmarking Least Squares Support Vector Machine Classifiers [J] Machine Learning 54 5-undefined
  • [10] Pang Z-peng(2007)The Improved RF Network Approach to Flatness Pattern Recognition Based on SVM [J] Process Automation Instrumentation 28 1-undefined