Towards a Digital Twin Framework in Additive Manufacturing: Machine Learning and Bayesian Optimization for Time Series Process Optimization
Vispi Karkaria, Anthony Goeckner, Rujing Zha, Jie Chen, Jianjing, Zhang, Qi Zhu, Jian Cao, Robert X. Gao, Wei Chen

TL;DR
This paper proposes a digital twin framework for additive manufacturing that combines machine learning, Bayesian inference, and optimization to predict and control process parameters in real time, improving material properties.
Contribution
It introduces a novel digital twin framework integrating LSTM-based surrogate modeling, Bayesian inference, and a new Bayesian optimization method for time series process control in additive manufacturing.
Findings
Accurate real-time temperature prediction in DED processes.
Effective optimization of laser power profiles for desired properties.
Enhanced process control through the digital twin framework.
Abstract
Laser-directed-energy deposition (DED) offers advantages in additive manufacturing (AM) for creating intricate geometries and material grading. Yet, challenges like material inconsistency and part variability remain, mainly due to its layer-wise fabrication. A key issue is heat accumulation during DED, which affects the material microstructure and properties. While closed-loop control methods for heat management are common in DED research, few integrate real-time monitoring, physics-based modeling, and control in a unified framework. Our work presents a digital twin (DT) framework for real-time predictive control of DED process parameters to meet specific design objectives. We develop a surrogate model using Long Short-Term Memory (LSTM)-based machine learning with Bayesian Inference to predict temperatures in DED parts. This model predicts future temperature states in real time. We…
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Taxonomy
TopicsDigital Transformation in Industry · Manufacturing Process and Optimization · Additive Manufacturing and 3D Printing Technologies
MethodsAttention Model
