Deep Neural Operator Enabled Digital Twin Modeling for Additive Manufacturing
Ning Liu, Xuxiao Li, Manoj R. Rajanna, Edward W. Reutzel, Brady, Sawyer, Prahalada Rao, Jim Lua, Nam Phan, Yue Yu

TL;DR
This paper introduces a deep neural operator-based digital twin framework for additive manufacturing, enabling real-time process prediction, defect mitigation, and adaptive control through physics-informed machine learning models.
Contribution
It presents a novel deep neural operator approach for creating a high-fidelity, data-driven digital twin that can predict melt pool behavior and optimize laser parameters in additive manufacturing.
Findings
Accurately predicts melt pool temperature fields from laser parameters.
Effectively correlates melt pool features with defect formation.
Enables real-time defect mitigation and process optimization.
Abstract
A digital twin (DT), with the components of a physics-based model, a data-driven model, and a machine learning (ML) enabled efficient surrogate, behaves as a virtual twin of the real-world physical process. In terms of Laser Powder Bed Fusion (L-PBF) based additive manufacturing (AM), a DT can predict the current and future states of the melt pool and the resulting defects corresponding to the input laser parameters, evolve itself by assimilating in-situ sensor data, and optimize the laser parameters to mitigate defect formation. In this paper, we present a deep neural operator enabled computational framework of the DT for closed-loop feedback control of the L-PBF process. This is accomplished by building a high-fidelity computational model to accurately represent the melt pool states, an efficient surrogate model to approximate the melt pool solution field, followed by an physics-based…
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Taxonomy
TopicsAdditive Manufacturing and 3D Printing Technologies · Manufacturing Process and Optimization · Additive Manufacturing Materials and Processes
MethodsSparse Evolutionary Training · Attention Model
