Litcius/Paper detail

Leveraging machine learning for predicting human body model response in restraint design simulations

Hamed Joodaki, Bronisław Gepner, Jason Kerrigan

2020Computer Methods in Biomechanics & Biomedical Engineering12 citationsDOI

Abstract

The objective of this study was to leverage and compare multiple machine learning techniques for predicting the human body model response in restraint design simulations. Parametric simulations with 16 independent variables were performed. Ordinary least-squares (OLS), least absolute shrinkage and selection operator (LASSO), neural network (NN), support vector regression (SVR), regression forest (RF), and an ensemble method were used to develop response surface models of the simulations. The hyperparameters of the machine learning techniques were optimized through grid search and cross-validation to avoid under-fitting and over-fitting. The ensemble method outperformed other techniques, followed by LASSO, SVR, NN, RF, and OLS. Findings indicated that optimizing the metamodel hyper-parameters are essential to predict the optimum set of restraint design parameters.

Topics & Concepts

Hyperparameter optimizationHyperparameterSupport vector machineLasso (programming language)Machine learningComputer scienceLeverage (statistics)Artificial neural networkArtificial intelligenceFeature selectionEnsemble learningRandom forestParametric statisticsRegressionMathematicsStatisticsWorld Wide WebAdvanced Statistical Modeling TechniquesAerospace, Electronics, Mathematical ModelingAutomotive and Human Injury Biomechanics