Machine-vision-based electrode wear analysis for closed loop wire EDM process control

P. M. Abhilash , D. Chakradhar

Advances in Manufacturing ›› 2022, Vol. 10 ›› Issue (1) : 131 -142.

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Advances in Manufacturing ›› 2022, Vol. 10 ›› Issue (1) : 131 -142. DOI: 10.1007/s40436-021-00373-y
Article

Machine-vision-based electrode wear analysis for closed loop wire EDM process control

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Abstract

The purpose of this study was to develop a closed-loop machine vision system for wire electrical discharge machining (EDM) process control. Excessive wire wear leading to wire breakage is the primary cause of wire EDM process failures. Such process interruptions are undesirable because they affect cost efficiency, surface quality, and process sustainability. The developed system monitors wire wear using an image-processing algorithm and suggests parametric changes according to the severity of the wire wear. Microscopic images of the wire electrode coming out from the machining zone are fed to the system as raw images. In the proposed method, the images are pre-processed and enhanced to obtain a binary image that is used to compute the wire wear ratio (WWR). The input parameters that are adjusted to recover from the unstable conditions that cause excessive wire wear are pulse off time, servo voltage, and wire feed rate. The algorithm successfully predicted wire breakage events. In addition, the alternative parametric settings proposed by the control algorithm were successful in reducing the wire wear to safe limits, thereby preventing wire breakage interruptions.

Keywords

Wire electrical discharge machining (WEDM) / Machine vision / Image processing / Wire wear / Wire electrode / Wire breakage / Inconel 718 / Process control

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P. M. Abhilash, D. Chakradhar. Machine-vision-based electrode wear analysis for closed loop wire EDM process control. Advances in Manufacturing, 2022, 10(1): 131-142 DOI:10.1007/s40436-021-00373-y

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References

[1]

Ho KH, Newman ST, Rahimifard S, et al. State of the art in wire electrical discharge machining (WEDM). Int J Mach Tools Manuf, 2004, 44(12/13): 1247-1259.

[2]

Mandal A, Dixit AR. State of art in wire electrical discharge machining process and performance. Int J Mach Manu Mater, 2014, 16(1): 1-21.

[3]

Ramakrishnan R, Karunamoorthy L. Modeling and multi-response optimization of Inconel 718 on machining of CNC WEDM process. J Mater Process Technol, 2008, 207: 343-349.

[4]

Mandal A, Dixit AR, Das AK, et al. Modeling and optimization of machining nimonic C-263 superalloy using multicut strategy in WEDM. Mater Manuf Process, 2016, 31: 860-868.

[5]

Manjaiah M, Laubscher RF, Kumar A, et al. Parametric optimization of MRR and surface roughness in wire electro discharge machining (WEDM) of D2 steel using taguchi-based utility approach. Int J Mech Mater Eng, 2016, 11(7): 1-9.

[6]

Senkathir S, Aravind R, Samson RM, et al. Optimization of machining parameters of Inconel 718 by WEDM using response surface methodology. Adv Manuf Process, 2019, 37: 383-392.

[7]

Bergs T, Tombul U, Herrig T, et al. Analysis of characteristic process parameters to identify unstable process conditions during wire EDM. Procedia Manuf, 2018, 18: 138-145.

[8]

Gamage JR, Desilva AKM. Effect of wire breakage on the process energy utilisation of EDM. Procedia CIRP, 2016, 42: 586-590.

[9]

Kawata A, Okada A, Okamoto Y, et al. Influence of nozzle jet flushing on wire breakage in 1st-cut wire EDM from start hole. Key Eng Mater, 2017, 749: 130-135.

[10]

Melnik Y, Kozochkin M, Porvatov A, et al. On adaptive control for electrical discharge machining using vibroacoustic emission. Technologies, 2018, 6: 96-114.

[11]

Kwon S, Yang MY. The benefits of using instantaneous energy to monitor the transient state of the wire EDM process. Int J Adv Manuf Technol, 2006, 27: 930-938.

[12]

Yan MT, Liao YS. A self-learning fuzzy controller for wire rupture prevention in WEDM. Int J Adv Manuf Technol, 1996, 11: 267-275.

[13]

Yan MT, Liao YS. Adaptive control of the WEDM process using the fuzzy control strategy. J Manuf Syst, 1998, 17: 263-274.

[14]

Liao YS, Woo JC. Design of a fuzzy controller for the adaptive control of WEDM process. Int J Mach Tools Manuf, 2000, 40: 2293-2307.

[15]

Bufardi A, Akten O, Arif M, et al. Towards zero-defect manufacturing with a combined online-offline fuzzy-nets approach in wire electrical discharge machining. WSEAS Trans Environ Dev, 2017, 13: 401-409.

[16]

Caggiano A, Teti R, Perez R, et al. Wire EDM monitoring for zero-defect manufacturing based on advanced sensor signal processing. Procedia CIRP, 2015, 33: 315-320.

[17]

Cabanes I, Portillo E, Marcos M, et al. On-line prevention of wire breakage in wire electro-discharge machining. Robot Comput Integr Manuf, 2008, 24: 287-298.

[18]

Klocke F, Welling D, Klink A, et al. Quality assessment through in-process monitoring of wire-EDM for fir tree slot production. New Prod Technol Aerosp Ind-5th Mach Innov Conf (MIC 2014)-Procedia CIRP, 2014, 24: 97-102.

[19]

Abhilash PM, Chakradhar D (2021) Chakradhar image processing algorithm for detection quantification and classification of microdefects in wire electric discharge machined precision finish cut surfaces. J Micromanuf. https://doi.org/10.1177/25165984211015410

[20]

Martínez SS, Vázquez CO, García JG, et al. Image fusion for surface finishing inspection. Int Conf Imaging Syst Tech Proc, 2015, 2015: 3-8.

[21]

Frayman Y, Zheng H, Nahavandi S. Machine vision system for automatic inspection of surface defects in aluminum die casting. J Adv Comput Intell Intell Informatics, 2006, 10: 281-286.

[22]

Steiner D, Katz R. Measurement techniques for the inspection of porosity flaws on machined surfaces. J Comput Inf Sci Eng, 2007, 7: 85-94.

[23]

Khalifa OO, Densibali A, Faris W. Image processing for chatter identification in machining processes. Int J Adv Manuf Technol, 2006, 31: 443-449.

[24]

Manish R, Venkatesh A, Denis AS. Machine vision based image processing techniques for surface finish and defect inspection in a grinding process. Mater Today Proc, 2018, 5: 12792-12802.

[25]

Zhang C, Zhang J. On-line tool wear measurement for ball-end milling cutter based on machine vision. Comput Ind, 2013, 64: 708-719.

[26]

Tsai DM, Rivera MDE. Morphology-based defect detection in machined surfaces with circular tool-mark patterns. Meas J Int Meas Confed, 2019, 134: 209-217.

[27]

Reed RC. The superalloys fundamentals and applications, 2006 Cambridge University Press.

[28]

Ramamurthy A, Sivaramakrishnan R, Muthuramalingam T, et al. Performance analysis of wire electrodes on machining Ti-6Al-4V alloy using electrical discharge machining process. Mach Sci Technol, 2015, 19: 577-592.

[29]

Maher I, Sarhan AAD, Hamdi M. Review of improvements in wire electrode properties for longer working time and utilization in wire EDM machining. Int J Adv Manuf Technol, 2014, 76: 329-351.

[30]

Thakur DG, Ramamoorthy B, Vijayaraghavan L. Study on the machinability characteristics of superalloy Inconel 718 during high speed turning. Mater Des, 2009, 30: 1718-1725.

[31]

Abhilash PM, Chakradhar D. Failure detection and control for wire EDM process using multiple sensors. CIRP J Manuf Sci Technol, 2021, 33: 315-326.

[32]

Abhilash PM, Chakradhar D. Surface integrity comparison of wire electric discharge machined Inconel 718 surfaces at different machining stabilities. Procedia CIRP, 2020, 87: 228-233.

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