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Physics-Informed-and-Hybrid-Machine-Learning-in-Additive-Manufacturing
Physics-Informed and Hybrid Machine Learning in Additive Manufacturing: Application to Fused Filament FabricationProcess-Optimization-Under-Uncertainty-for-Improving-the-Bond-Quality-of-Polymer-Filaments-in-Fused-
This paper develops a computational framework to optimize the process parameters such that the bond quality between extruded polymer filaments is maximized in fused filament fabrication (FFF). A one-dimensional heat transfer analysis providing an estimate of the temperature profile of the filaments is coupled with a sintering neck growth model to assess the bond quality that occurs at the interfaces between adjacent filaments. Predicting the variability in the FFF process is essential for achieving proactive quality control of the manufactured part; however, the models used to predict the variability are affected by assumptions and approximations. This paper systematically quantifies the uncertainty in the bond quality model prediction due to various sources of uncertainty, both aleatory and epistemic, and includes the uncertainty in the process parameter optimization. Variance-based sensitivity analysis based on Sobol' indices is used to quantify the relative contributions of the different uncertainty sources to the uncertainty in the bond quality. A Gaussian process (GP) surrogate model is constructed to compute and include the model error within the optimization. Physical experiments are conducted to show that the proposed formulation for process parameter optimization under uncertainty results in high bond quality between adjoining filaments of the FFF product.Uncertainty-Quantification
This document is prepared based on the lectures and notes for the graduate level course- ‘Uncertainty Quantification’ (CE 6310) taught by Dr. Sankaran Mahadevan at Vanderbilt University. Course materials of ‘Spring 2015’ and ‘Spring 2019’.Multi-Objective-Optimization-Under-Uncertainty-of-Part-Quality-in-Fused-Filament-Fabrication
Multi-objective optimizationPCA-Tutorial
Principal Component Analysis (PCA)Personal-weight-predictions-using-machine-learning
What can machine learning tell you about your weight?Bayesian-Neural-Network
Bayesian Neural NetworkminiLlama
Replicated the architecture of Llama to create miniLlama for testing / demo purposes.Python-Save-Plots
Save plots as PDF/PGF (Progressive Graphics File) for direct upload to LaTeX.Information-fusion-and-machine-learning-for-sensitivity-analysis-using-physics-knowledge-and-experim
Highlights • Physics-informed machine learning is investigated for global sensitivity analysis. • Physics and test data are fused to maximize the accuracy of sensitivity estimates. • Uncertainties in Gaussian process and deep neural network models are included. • Accuracy, uncertainty and computational effort of proposed approaches are compared.Love Open Source and this site? Check out how you can help us