Data-Driven Approach for Prediction of Band Diagram of Locally Resonant Sonic Crystal
Date29th Dec 2023
Time03:45 PM
Venue Online, Google Meet: https://meet.google.com/hum-rvtt-nmq
PAST EVENT
Details
This talk focuses on the prediction of the band diagram of Locally Resonant Sonic Crystal (LRSC) using machine learning models from structural, lattice and material parameters. The data set for the study is generated from the numerical simulations of LRSC for using COMSOL multiphysics solver. Three machine learning algorithms namely, Support Vector Machine (SVM), Artificial Neural Network (ANN), and Random Forest Regression (RFR), are employed for the study. A total of 23040 samples are simulated and included in the training of the models. Hyperparameter tuning and data set size optimization are carried out to find the optimum machine learning model given the minimum required data set. The R2 score, Root Mean Square Error (RMSE), computational time, and inference time are used to evaluate the performance of machine learning algorithms. The feature importance scores and partial dependence plots (PDP) are used to understand each input feature's critical role in predicting the band diagram. Among all the machine learning models studied, RFR outperformed the ANN and SVM models. Due to the importance of the first two band gaps in noise attenuation, the width and center frequency of the first two bandgaps are predicted through the band diagram. The feature importance scores and Partial Dependence Plots of RFR models show that the structural and lattice parameters play a crucial role in predicting the first and second bandgap, aligning with physical significance. This work has been accepted for publication in Journal of Physics - D: Applied Physics.
Speakers
Mr. R. Karthik (ME19D026)
Department of Mechanical Engineering