Abstract
Tool condition monitoring has found its importance to meet the requirement of quality production in industries. Machined surface is directly affected by the extent of tool wear. Hence, by analyzing the machined surface, the information about the cutting tool condition can be obtained. This paper presents a novel technique for multi-classification of tool wear states using a kernel-based support vector machine (SVM) technique applied on the features extracted from the gray-level co-occurrence matrix (GLCM) of machined surface images. The tool conditions are classified into sharp, semi-dull, and dull tool states by using Gaussian and polynomial kernels. The proposed method is found to be cost-effective and reliable for online tool wear classification.
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Byrne G, Dornfeld D, Inasaki I, Ketteler G, König W, Teti R (1995) Tool condition monitoring (TCM) – the status of research and industrial application. Ann CIRP 44/2:541–568
Mannan MA, Kassim AA, Jing M (2000) Application of image and sound analysis techniques to monitor the condition of cutting tools. Pattern Recogn Lett 21:969–9793
Dutta S, Pal SK, Mukhopadhyay S, Sen R (2013) Application of digital image processing in tool condition monitoring: a review. CIRP J Manuf Sci Technol 6:212–232
Kassim AA, Mannan MA, Jing M (2000) Machine tool condition monitoring using workpiece surface texture analysis. Mach Vis Appl 11:257–263
Bradley C, Wong YS (2001) Surface texture indicators of tool wear – a machine vision approach. Int J Adv Manuf Technol 17:435–443
Kang MC, Kim JS, Kim KH (2005) Fractal dimension analysis of machined surface depending on coated tool wear. Surf Coat Technol 193:259–265
Dhanasekar B, Krishna MN, Bhaduri B, Ramamoorthy B (2008) Evaluation of surface roughness based on monochromatic speckle correlation using image processing. Precis Eng 32:196–206
Dutta S, Kanwat A, Pal SK, Sen R (2013) Correlation study of tool flank wear with machined surface texture in end milling. Measurement 46:4249–4260
Datta A, Dutta S, Pal SK, Sen R (2013) Progressive cutting tool wear detection from machined surface images using Voronoi tessellation method. J Mater Process Technol 213:2339–2349
Wong FS, Nee AFC, Li XQ, Reisdorj C (1997) Tool condition monitoring using laser scatter pattern. J Mater Process Technol 63:205–210
Ho SY, Lee KC, Chen SS, Ho SJ (2002) Accurate modelling and prediction of surface roughness by computer vision in turning operations using an adaptive neuro-fuzzy inference system. Int J Mach Tools Manuf 42:1441–1446
Lee BY, Yu SF, Juan H (2004) The model of surface roughness inspection by vision system in turning. Mechatronics 14:129–141
Kumar R, Kulashekar P, Dhanasekar B, Ramamoorthy B (2005) Application of digital image magnification for surface roughness evaluation using machine vision. Int J Mach Tools Manuf 45:228–234
Al-Kindi GA, Shirinzadeh B (2007) An evaluation of surface roughness parameters measurement using vision-based data. Int J Mach Tools Manuf 47:697–708
Ramamoorthy B, Radhakrishnan V (1993) Statistical approaches to surface texture classification. Wear 167:155–161
Ramana KV, Ramamoorthy B (1996) Statistical methods to compare the texture features of machined surfaces. Pattern Recogn 29:1447–1459
Datta A, Dutta S, Pal SK, Sen R, Mukhopadhyay S (2012) Texture analysis of turned surfaces using grey level co-occurrence technique. Adv Mater Res 365:38–43
Dutta S, Datta A, Das Chakladar N, Pal SK, Mukhopadhyay S, Sen R (2012) Detection of tool condition from the turned surface images using an accurate grey level co-occurrence technique. Precis Eng 36:458–466
Dutta S, Pal SK, Sen R (2014) Digital image processing in machining. In: Davim JP (ed) Modern, mechanical engineering - research development and education, 1st edn. Springer-Verlag, Berlin, pp 369–412
Chryssolouris G (1988) Sensor integration for tool wear estimation in machining. Sensor Control Manuf 1988:115–123
Rangwala S, Dornfeld DA (1990) Sensor integration using neural networks for intelligent tool condition monitoring. Trans ASME- J Eng Ind 112:219–228
Chryssolouris G (1992) Sensor synthesis for control of manufacturing process. Trans ASME- J Eng Ind 114:158–174
Tsai DM, Chen JJ, Chert JF (1998) A vision system for surface roughness assessment using neural networks. Int J Adv Manuf Technol 14:412–422
Du R, Elbestawi MA, Wu SM (1995) Automated monitoring of manufacturing processes, part 2: applications. J Manuf Sci Eng 117:133–141
Hirotoshi H et al (1993) Monitoring of milling process with an acoustic emission sensor. J Japan Soc Precis Eng 59:269–274
Leem CS, Dornfeld DA (1995) A customized neural network for sensor fusion in online monitoring of cutting tool wear. Trans ASME-J Eng Ind 117:152–159
Dong J, Hong GS, Wong YS (2004) Bayesian support vector regression for tool condition monitoring and feature selection. http://www.icsc.ab.ca/conferences/eis2004/conf/41.pdf. Accessed 30 October 2012
Sun J, Hong GS, Rahman M, Wong YS (2004) The application of nonstandard support vector machine in tool condition monitoring system. In: Proceedings of the Second IEEE International Workshop on Electronic Design, Test and Applications (DELTA'04). IEEE Computer Society Washington, DC, USA, 295--300. doi:10.1109/DELTA.2004.10017
Sun J, Rahman M, Wong YS, Hong GS (2004) Multiclassification of tool wear with support vector machine by manufacturing loss consideration. Int J Mach Tools Manuf 44:1179–1187
Cho S, Asfour S, Onar A, Kaundinya N (2005) Tool breakage detection using support vector machine learning in a milling process. Int J Mach Tools Manuf 45:241–249
Bhattacharyya P, Sanadhya SK (2006) Support vector regression based tool wear assessment in face milling. In: Proceedings of IEEE international conference on industrial technology. IEEE, New York, 2468–2473. doi:10.1109/ICIT.2006.372659
Sun J, Wong YS, Rahman M, Hong GS (2007) Identification of feature set for effective tool condition monitoring by acoustic emission sensing. Int J Prod Res 42:901–918
Shi D, Gindy NN (2007) Tool wear predictive model based on least squares support vector machines. Mech Syst Signal Process 21:1799–1814
Salgado DR, Alonso FJ (2007) An approach based on current and sound signals for in-process tool wear monitoring. Int J Mach Tools Manuf 47:2140–2152
Hsueh YW, Yang CY (2008) Prediction of tool breakage in face milling using support vector machine. Int J Adv Manuf Technol 37:872–880
Chiu NH, Guao YY (2008) State classification of CBN grinding with support vector machine. J Mater Process Technol 201:601–605
Karacal C, Cho S, Yu W (2009) A novel approach to optimal cutting tool replacement. World Acad Sci Eng Technol 57:19–23
Jiang Z (2010) Intelligent prediction of surface roughness of milling aluminium alloy based on least square support vector machine. In: Cao H, Zhu X (eds) Proceedings of 2010 Chinese Control and Decision Conference, IEEE Industrial Electronics (IE) Chapter, Singapore, pp 2872–2876. doi:10.1109/CCDC.2010.5498687
Cho S, Binsaeid S, Asfour S (2010) Design of multisensor fusion-based tool condition monitoring system in end milling. Int J Adv Manuf Technol 46:681–694
Huang S, Li X, Gan OP (2010) Tool wear estimation using support vector machines in ball-nose end milling. https://www.phmsociety.org/sites/phmsociety.org/files/phm_submission/2010/phmc_10_016.pdf. Accessed 1 October 2012
Elangovan M, Sugumaran V, Ramachandran KI, Ravikumar S (2011) Effect of SVM kernel functions on classification of vibration signals of a single point cutting tool. Exp Syst Appl 38:15202–15207
Brezak D, Majetic D, Udiljak T, Kasac J (2012) Tool wear estimation using an analytic fuzzy classifier and support vector machines. J Intell Manuf 23:797–809
Çaydaş U, Ekici S (2012) Support vector machines models for surface roughness prediction in CNC turning of AISI 304 austenitic stainless steel. J Intell Manuf 23:639–650
Eddaoudi F, Regragui F, Mahmoudi A (2011) Masses detection using SVM classifier based on textures analysis. Appl Math Sci 5:367–379
Rode KN, Patil RT (2012) Texture analysis of MRI using SVM & ANN for multiple sclerosis patients. Int J Eng Res Appl 2:1925–1928
Paneque-Gálvez et al. (2011) Textural classification of land cover using support vector machines: an empirical comparison with parametric, non parametric and hybrid classifiers in the Bolivian Amazon. http://heller.brandeis.edu/sustainable-international-development/tsimane/wp/TAPS-WP-69.pdf. Accessed 2 December 2012
Pawade PW, Suralkar SR, Karode AH (2012) Texture image classification using support vector machine. Int J Comput Technol Appl 3:71–75
Astakhov VP (2004) The assessment of cutting tool wear. Int J Mach Tools Manuf 44:637–647
Gonzalez RC, Woods RE (2002) Digital image processing. Prentice-Hall, New Jersey
Zuiderveld K (1994) Contrast limited adaptive histogram equalization. In: Heckbart PS (ed) Graphics gems IV. Academic Press Professional, California, pp. 474–485
Haralick RM, Shanmugam K, Dinsten I (1973) Textural features for image classification. IEEE Trans Syst SMC-3:610–621
Conners RW, Trivedi MM, Harlow CA (1984) Segmentation of a high resolution urban scene using texture operators. Comput Vis Graphics Image Process 25:273–310
Gadelmawla ES, Eladawi AE, Abouelatta OB, Elewa IM (2008) Investigation of the cutting conditions in milling operations using image texture features. Proc Inst Mech Eng B—J Eng Manuf 222:1395–1404
Theodoridis S, Koutroumbas K (2009) An introduction to pattern recognition. Academic Press, Burlington
Chiang LH, Russell EL, Braatz RD (2000) Fault diagnosis in chemical processes using Fisher discriminant analysis, discriminant partial least squares and principal component analysis. Chemometr Intell Lab 50:243–252
Cristianini N, Shawe-Taylor J (2000) An introduction to support vector machines and other kernel-based learning. Cambridge University Press, Cambridge
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Bhat, N.N., Dutta, S., Vashisth, T. et al. Tool condition monitoring by SVM classification of machined surface images in turning. Int J Adv Manuf Technol 83, 1487–1502 (2016). https://doi.org/10.1007/s00170-015-7441-3
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DOI: https://doi.org/10.1007/s00170-015-7441-3