4.7 Article

Material independent effectiveness of workpiece vibration in μ-EDM drilling

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出版社

ELSEVIER
DOI: 10.1016/j.jmrt.2022.02.063

关键词

Micro-EDM; GPR; Microholes; Drilling; Vibration; BeCu; Co29Cr6Mo

资金

  1. Department of Science and Technology, Government of India [DST-SERB/EMR/2016/003372]

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This study evaluates the effects of vibration on micro electrical discharge machining (m-EDM). The results show that vibrating the workpiece can increase the drilling speed but does not significantly affect the maximum achievable depth. The overcut on the entry side is highly stochastic and not significantly influenced by vibration. Vibration causes spillover from the molten pool on the machined surface for materials with higher conductivity. Gaussian Process Regression (GPR) proves to be more accurate than multivariate regression in predicting the outputs of this complex hybrid process.
The micro electrical discharge machining (m-EDM) process is extensively applied for micro hole drilling in difficult-to-cut materials used in industries including aerospace, automotive, and biomedical. However, the slow material removal and challenges in drilling deep holes, limits the wide range applications of m-EDM. Although, several research proposed approach of workpiece vibration to improve the process performance, the ambiguity remains towards the influence of vibration on process outputs. In this work, experiments were conducted to assess effectiveness of vibration in improving machining rate, and depth, overcut and surface quality of drilling holes. It was witnessed that in absence of tool wear compensation, vibrating the workpiece does not significantly improve maximum attainable depth, however, it helps in drilling the hole faster. Entry side hole overcut was highly stochastic in nature and not significantly affected by vibration. On the machined surface, spillover from molten pool due to vibration is observed for material with higher conductivity. For modelling the outputs of this complex hybrid process, a previously unused technique-Gaussian Process Regression (GPR) is tried and found that it predicts with greater accuracy than multivariate regression technique. (c) 2022 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

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