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A hybrid transfer learning framework for in-plane freeform shape accuracy control in additive manufacturing

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  • Longwei Cheng
  • Kai Wang
  • Fugee Tsung

Abstract

Shape accuracy control is one of the quality issues of greatest concern in Additive Manufacturing (AM). An efficient approach to improving the shape accuracy of a fabricated product is to compensate the fabrication errors of AM systems by modifying the input shape defined by a digital design model. In contrast with mass production, AM processes typically fabricate customized products with extremely low volume and huge shape varieties, which makes shape accuracy control in AM a challenging problem. In this article, we propose a hybrid transfer learning framework to predict and compensate the in-plane shape deviations of new and untried freeform products based on a small number of previously fabricated products. Within this framework, the shape deviation is decomposed into a shape-independent error and a shape-specific error. A parameter-based transfer learning approach is used to facilitate a sharing of parameters for modeling the shape-independent error, whereas a feature-based transfer learning approach is taken to promote the learning of a common representation of local shape features for modeling the shape-specific error. Experimental studies of a fused filament fabrication process demonstrate the effectiveness of our proposed framework in predicting the shape deviation and improving the shape accuracy of new products with freeform shapes.

Suggested Citation

  • Longwei Cheng & Kai Wang & Fugee Tsung, 2020. "A hybrid transfer learning framework for in-plane freeform shape accuracy control in additive manufacturing," IISE Transactions, Taylor & Francis Journals, vol. 53(3), pages 298-312, December.
  • Handle: RePEc:taf:uiiexx:v:53:y:2020:i:3:p:298-312
    DOI: 10.1080/24725854.2020.1741741
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    Cited by:

    1. Zhaochen Gu & Shashank Sharma & Daniel A. Riley & Mangesh V. Pantawane & Sameehan S. Joshi & Song Fu & Narendra B. Dahotre, 2023. "A universal predictor-based machine learning model for optimal process maps in laser powder bed fusion process," Journal of Intelligent Manufacturing, Springer, vol. 34(8), pages 3341-3363, December.

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