Additive Manufacturing Processes Protocol Prediction by Artificial Intelligence using X-ray Computed Tomography data
Journal:
arXiv
Published Date:
Jan 24, 2025
Abstract
The quality of the part fabricated from the Additive Manufacturing (AM)
process depends upon the process parameters used, and therefore, optimization
is required for apt quality. A methodology is proposed to set these parameters
non-iteratively without human intervention. It utilizes Artificial Intelligence
(AI) to fully automate the process, with the capability to self-train any apt
AI model by further assimilating the training data.This study includes three
commercially available 3D printers for soft material printing based on the
Material Extrusion (MEX) AM process. The samples are 3D printed for six
different AM process parameters obtained by varying layer height and nozzle
speed. The novelty part of the methodology is incorporating an AI-based image
segmentation step in the decision-making stage that uses quality inspected
training data from the Non-Destructive Testing (NDT) method. The performance of
the trained AI model is compared with the two software tools based on the
classical thresholding method. The AI-based Artificial Neural Network (ANN)
model is trained from NDT-assessed and AI-segmented data to automate the
selection of optimized process parameters. The AI-based model is 99.3 %
accurate, while the best available commercial classical image method is 83.44 %
accurate. The best value of overall R for training ANN is 0.82. The MEX process
gives a 22.06 % porosity error relative to the design. The NDT-data trained two
AI models integrated into a series pipeline for optimal process parameters are
proposed and verified by classical optimization and mechanical testing methods.