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Using a MIMO based approach for prediction of MRR, TWR and Residual Stress using transfer learning deep learning approach.

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Simulation For MIMO Prediction based on transfer learning deep learning method

Uses a MIMO based approach for prediction of MRR, TWR and Residual Stress using transfer learning deep learning approach.

Installation

  1. Clone the repository [https://github.com/VarunBhattacharya/SimulationMultiOutputPredictions.git](https://github.com/VarunBhattacharya/SimulationMultiOutputPredictions.git) or download the zip file.
  2. Extract the zip file.
  3. Run main.py file.

Process

  • Uses transfer learning based approach MLP Regressor for multi input multi output prediction of MRR, TWR and Residual Stress from Current, Voltage, Pulse on Time and Duty Factor.
  • Minimised losses for effective and efficient usage.

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Using a MIMO based approach for prediction of MRR, TWR and Residual Stress using transfer learning deep learning approach.

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  • Jupyter Notebook 92.9%
  • Python 7.1%