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Reinforcement Learning for Generating Toolpaths in Additive Manufacturing

by Steven D Patrick, Andrzej Nycz, Mark W Noakes, Katherine T Gaul
Publication Type
Conference Paper
Book Title
Proceedings of the 29th Annual International Solid Freeform Fabrication Symposium
Publication Date
Issue
0
Publisher Location
Texas, United States of America
Conference Name
International Solid Freeform Fabrication Symposium (SFF)
Conference Location
Austin, Texas, United States of America
Conference Sponsor
Laboratory for Freeform Fabrication and University of Texas at Austin
Conference Date
-

Generating toolpaths plays a key role in additive manufacturing processes. In the case of 3-Dimensional (3D) printing, these toolpaths are the pathways the printhead will follow to fabricate a part in a layer-by-layer fashion. Most toolpath generators use nearest neighbor (NN), branch-and-bound, or linear programming algorithms to produce valid toolpaths. These algorithms often produce sub-optimal results or cannot handle large sets of traveling points. In this paper, the researchers at Oak Ridge National Laboratory’s (ORNL) Manufacturing Demonstration Facility (MDF) propose using a machine learning (ML) approach called reinforcement learning (RL) to produce toolpaths for a print. RL is the process of two agents, the player and the critic, learning how to maximize a score based upon the actions of the player in a defined state space. In the context of 3D printing, the player will learn how to find the optimal toolpath that reduces printhead lifts and global print time.