Examining the electrical discharge machining (EDM) process is challenging in manufacturing technology due to the complexity of the physical events that take place in the gaps between electrodes. In this study, we examined the EDM process in detail and developed multiple machine learning (ML) models to describe the relationship between the EDM independent (process parameters) and dependent (responses) variables. The collected experimental data was used to train the machine learning models. According to the results, the GPR model outperformed other ML models across different materials, with average RMSE values of 0.9234 and 3.0216 for the material removal rate (MRR) and surface roughness (Sa), respectively, highlighting the effectiveness of ML tools at modeling complex machining processes, such as EDM. In addition, as a practical implication, this study opens the door to employing the developed ML models to predict the EDM process performance.
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Isam Qasem
Amjad Alsakarneh
Journal of Manufacturing and Materials Processing
Al-Balqa Applied University
Yarmouk University
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Qasem et al. (Mon,) studied this question.
www.synapsesocial.com/papers/68a36dd90a429f7973330f78 — DOI: https://doi.org/10.3390/jmmp9080274
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