Machine Learning-Enabled Competitive Grain Growth Behavior Study in Directed Energy Deposition Fabricated Ti6Al4V

JOM ◽  
2019 ◽  
Vol 72 (1) ◽  
pp. 458-464 ◽  
Author(s):  
Jinghao Li ◽  
Manuel Sage ◽  
Xiaoyi Guan ◽  
Mathieu Brochu ◽  
Yaoyao Fiona Zhao
2020 ◽  
Vol 321 ◽  
pp. 03004
Author(s):  
Jinghao Li ◽  
Manuel Sage ◽  
Xianglin Zhou ◽  
Mathieu Brochu ◽  
Yaoyao Fiona Zhao

Metal additive manufacturing (MAM) technology is now changing the pattern of the high-end manufacturing industry, among which MAM fabricated Ti6Al4V has been far the most extensively investigated material and attracts a lot of research interests. This work established a deep neural network (DNN) to investigate the grain boundary in competitive grain growth for a bi-crystal system, the column β grains of Ti6Al4V as an example. Because of the limited number of experimental samples, the DNN is trained based on the data coming from the Geometrical Limited criterion. A series of direct energy deposition experiment using Ti6Al4V is carried out under the Taguchi experimental design. The grain boundary angles between the column grains are measured in the experiment and used to evaluate the accuracy of DNN.


2015 ◽  
Vol 35 (10) ◽  
pp. 2815-2821 ◽  
Author(s):  
Lili Guan ◽  
Shiru Le ◽  
Xiaodong Zhu ◽  
Shaofei He ◽  
Kening Sun

2020 ◽  
Author(s):  
Michael Juhasz

Within the Additive Manufacturing area of Directed Energy Deposition (DED), single clad geometry prediction has been well covered within the literature. Currently, the two accepted methodologies of geometry prediction are physics numerical simulation, and semi-empirical regression. This work seeks to add a viable alternative through machine learning techniques. Machine learning has enjoyed many successes in the past few years due to the availability of large datasets for which these techniques scale beautifully. However, in small, high variance, tabular datasets, such as most results from physical experimentation, these techniques suffer. Presented here is a selection of machine learning methodologies which are used to extract models that perform and generalize well. Neural Networks (NNs), Gaussian Process (GP) modeling, Support-Vector Machines (SVMs), and Gradient Boosted Decision Trees (GBTs) for regression and classification are explored in this paper. These four methodologies will be applied to a small dataset containing some single clad data available in the literature and previously unpublished experimental results of this author. These techniques produce models not only with good agreement with experimental data, but also non-material specific generalizable results. Lastly, a discussion of data augmentation using Generative Adversarial Networks (GANs) with preliminary results put forth to illustrate unique, exploitable advantages capable within the machine learning paradigm.


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