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Predicting the Optimal Input Parameters for the Desired Print Quality Using Machine Learning. | LitMetric

AI Article Synopsis

  • 3D printing is being widely adopted across industries due to its advantages like precision and reduced fabrication time, but it faces errors like stringing and overheating.
  • This study explores using machine learning to optimize 3D printing parameters, incorporating factors like material type and temperature, and uses four network architectures (CNN, ResNet152, MobileNet, Inception V3) for this purpose.
  • The Inception V3 model achieved the highest accuracy at 97%, effectively predicting parameters and detecting errors, thus preventing material waste in manufacturing.

Article Abstract

3D printing is a growing technology being incorporated into almost every industry. Although it has obvious advantages, such as precision and less fabrication time, it has many shortcomings. Although several attempts were made to monitor the errors, many have not been able to thoroughly address them, like stringing, over-extrusion, layer shifting, and overheating. This paper proposes a study using machine learning to identify the optimal process parameters such as infill structure and density, material (ABS, PLA, Nylon, PVA, and PETG), wall and layer thickness, count, and temperature. The result thus obtained was used to train a machine learning algorithm. Four different network architectures (CNN, Resnet152, MobileNet, and Inception V3) were used to build the algorithm. The algorithm was able to predict the parameters for a given requirement. It was also able to detect any errors. The algorithm was trained to pause the print immediately in case of a mistake. Upon comparison, it was found that the algorithm built with Inception V3 achieved the best accuracy of 97%. The applications include saving the material from being wasted due to print time errors in the manufacturing industry.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782863PMC
http://dx.doi.org/10.3390/mi13122231DOI Listing

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