DocumentCode
64706
Title
Modeling and Predicting Surface Roughness in Hard Turning Using a Bayesian Inference-Based HMM-SVM Model
Author
Kang He ; Qingsong Xu ; Minping Jia
Author_Institution
Sch. of Mech. Eng., Southeast Univ., Nanjing, China
Volume
12
Issue
3
fYear
2015
fDate
Jul-15
Firstpage
1092
Lastpage
1103
Abstract
This study proposes a hybrid model for evaluating surface roughness in hard turning using a Bayesian inference-based hidden Markov model and least squares support vector machine (HMM-SVM). The model inputs are multidirectional fusion features that are extracted from the acquired monitoring signals through independent component analysis and singular spectrum analysis. Based on a detailed analysis of the workpiece surface formation mechanism, the cutting vibration signals are determined as monitoring signals and an experimental scheme based on the multifeed rate is designed. The error rate of HMM-SVM is further reduced by introducing the stratification factor comparison method rather than using the conventional probability comparison method. A five-step iterative algorithm is presented to select and optimize the training set, which effectively solves the problems of precision degradation and training data insufficiency. Experimental studies show that the proposed model can accurately predict the surface roughness in case of missing samples. The advantages of the proposed model over least squares support vector machine (LSSVM) and multiple regression approaches are demonstrated via statistical analysis. Note to Practitioners-As an alternative to traditional grinding, hard turning is an attractive machining method, in which surface quality is a crucial measurement index. However, under the scenario of sample missing, a straightforward and relatively accurate model for predicting surface roughness is challenging to establish using conventional strategies. This paper reports on a new HMM-SVM model based on Bayesian inference for modeling and predicting surface roughness in hard turning. The samples are classified based on the accuracy grade of surface roughness according to the GB/T1031-2009 standard using the expectation maximization algorithm and HMM, which is superior in small-sample classification problem. LSSVM is employed to estimate surface roughness. The effectiv- ness of the proposed model is demonstrated through experimental investigations. The reported methodology can also be extended to other related fields.
Keywords
cutting; expectation-maximisation algorithm; feature extraction; hidden Markov models; independent component analysis; iterative methods; least squares approximations; mechanical engineering computing; production engineering computing; signal processing; support vector machines; surface roughness; turning (machining); vibrations; Bayesian inference-based HMM-SVM model; Bayesian inference-based hidden Markov model; GB-T1031-2009 standard; HMM-SVM error rate reduction; conventional probability comparison method; cutting vibration signals; expectation maximization algorithm; five-step iterative algorithm; hard turning; hybrid model; independent component analysis; least squares support vector machine; machining method; measurement index; monitoring signals; multidirectional fusion features; multifeed rate; multiple-regression approach; sample missing; singular spectrum analysis; small-sample classification problem; statistical analysis; stratification factor comparison method; surface quality; surface roughness accuracy grade; surface roughness modeling; surface roughness prediction; training set optimization; training set selection; workpiece surface formation mechanism; Feature extraction; Hidden Markov models; Predictive models; Rough surfaces; Surface roughness; Turning; Vibrations; Hard turning; hidden Markov model (HMM); least squares support vector machine (LSSVM); surface roughness prediction;
fLanguage
English
Journal_Title
Automation Science and Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1545-5955
Type
jour
DOI
10.1109/TASE.2014.2369478
Filename
6969831
Link To Document