Integrating machine learning and mathematical programming for efficient optimization of electric discharge machining technique

Published

30-09-2023

DOI:

https://doi.org/10.58414/SCIENTIFICTEMPER.2023.14.3.46

Keywords:

Predictive Modelling, Machining Parameters, Regression Analysis, Electrical Discharge Machining (EDM), Performance Optimization

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Issue

Section

Research article

Authors

  • Neerav Nishant School of Engineering, Babu Banarasi Das University
  • Nisha Rathore
  • Vinay Kumar Nassa
  • Vijay Kumar Dwivedi
  • Thulasimani T
  • Surrya Prakash Dillibabu

Abstract

This study focuses on predictive modeling in machining, specifically material removal rate (MRR), tool wear rate (TWR), and surface roughness (Ra) prediction using regression analysis. The research employs electrical discharge machining (EDM) experiments to validate the proposed unified predictive model. The approach involves varying machining parameters systematically and collecting empirical data. The dataset is split for training and testing, and advanced regression techniques are used to formulate the model. Evaluation metrics such as R-squared and mean-squared error (MSE) are employed to assess the model’s accuracy. Notable findings include accurate predictions for MRR, TWR, and Ra. This approach demonstrates the potential for real-world application, aiding decision-making processes and enhancing machining efficiency. The research underscores the importance of predictive modeling in manufacturing optimization, offering insights into refining model architectures, data preprocessing techniques, and feature selection. The findings affirm the relevance and applicability of predictive modeling in manufacturing, emphasizing its potential to elevate precision and efficiency

How to Cite

Neerav Nishant, Rathore, N., Vinay Kumar Nassa, Dwivedi, V. K., Thulasimani T, & Surrya Prakash Dillibabu. (2023). Integrating machine learning and mathematical programming for efficient optimization of electric discharge machining technique. The Scientific Temper, 14(03), 859–863. https://doi.org/10.58414/SCIENTIFICTEMPER.2023.14.3.46

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