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Prediction and Sensitivity Analysis of Bubble Dissolution Time in 3D Selective Laser Sintering Using Ensemble Decision Trees
by
Pham, Binh Thai
, Dal, Morgan
, Regnier, Gilles
, Ly, Hai-Bang
, Le, Tien-Thinh
, Monteiro, Eric
, Le, Vuong Minh
in
Algorithms
/ Artificial Intelligence
/ Bubble chambers
/ Bubbles
/ Chemical and Process Engineering
/ Composite materials
/ Computer Science
/ Decision trees
/ Diffusion coefficient
/ Dissolution
/ Engineering Sciences
/ Laser sintering
/ Mechanical properties
/ Polymer melts
/ Rapid prototyping
/ Root-mean-square errors
/ Sensitivity analysis
/ Simulation
/ Surface tension
/ Viscosity
2019
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Prediction and Sensitivity Analysis of Bubble Dissolution Time in 3D Selective Laser Sintering Using Ensemble Decision Trees
by
Pham, Binh Thai
, Dal, Morgan
, Regnier, Gilles
, Ly, Hai-Bang
, Le, Tien-Thinh
, Monteiro, Eric
, Le, Vuong Minh
in
Algorithms
/ Artificial Intelligence
/ Bubble chambers
/ Bubbles
/ Chemical and Process Engineering
/ Composite materials
/ Computer Science
/ Decision trees
/ Diffusion coefficient
/ Dissolution
/ Engineering Sciences
/ Laser sintering
/ Mechanical properties
/ Polymer melts
/ Rapid prototyping
/ Root-mean-square errors
/ Sensitivity analysis
/ Simulation
/ Surface tension
/ Viscosity
2019
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Prediction and Sensitivity Analysis of Bubble Dissolution Time in 3D Selective Laser Sintering Using Ensemble Decision Trees
by
Pham, Binh Thai
, Dal, Morgan
, Regnier, Gilles
, Ly, Hai-Bang
, Le, Tien-Thinh
, Monteiro, Eric
, Le, Vuong Minh
in
Algorithms
/ Artificial Intelligence
/ Bubble chambers
/ Bubbles
/ Chemical and Process Engineering
/ Composite materials
/ Computer Science
/ Decision trees
/ Diffusion coefficient
/ Dissolution
/ Engineering Sciences
/ Laser sintering
/ Mechanical properties
/ Polymer melts
/ Rapid prototyping
/ Root-mean-square errors
/ Sensitivity analysis
/ Simulation
/ Surface tension
/ Viscosity
2019
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Prediction and Sensitivity Analysis of Bubble Dissolution Time in 3D Selective Laser Sintering Using Ensemble Decision Trees
Journal Article
Prediction and Sensitivity Analysis of Bubble Dissolution Time in 3D Selective Laser Sintering Using Ensemble Decision Trees
2019
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Overview
The presence of defects like gas bubble in fabricated parts is inherent in the selective laser sintering process and the prediction of bubble shrinkage dynamics is crucial. In this paper, two artificial intelligence (AI) models based on Decision Trees algorithm were constructed in order to predict bubble dissolution time, namely the Ensemble Bagged Trees (EDT Bagged) and Ensemble Boosted Trees (EDT Boosted). A metadata including 68644 data were generated with the help of our previously developed numerical tool. The AI models used the initial bubble size, external domain size, diffusion coefficient, surface tension, viscosity, initial concentration, and chamber pressure as input parameters, whereas bubble dissolution time was considered as output variable. Evaluation of the models’ performance was achieved by criteria such as Mean Absolute Error (MAE), Root Mean Squared Error (RMSE) and coefficient of determination (R2). The results showed that EDT Bagged outperformed EDT Boosted. Sensitivity analysis was then conducted thanks to the Monte Carlo approach and it was found that three most important inputs for the problem were the diffusion coefficient, initial concentration, and bubble initial size. This study might help in quick prediction of bubble dissolution time to improve the production quality from industry.
Publisher
MDPI AG,MDPI
Subject
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