Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
Abstract
:1. Introduction
2. Methods
2.1. Experiments
2.2. Microstructure Analysis and Quantification
2.3. Mechanical Characterization
2.4. Gaussian Process Modeling
- (1)
- is called the output scaling factor and determines the variance of the output values. A higher value of indicates that the values of the output are widely spread. The ratio of to the output noise (discussed later) determines the uncertainty of the predictions made from the GP model.
- (2)
- and are the interpolation length scale parameters associated with the two input variables and capture the sensitivity of the output variable to the changes in the respective input values. Lower length scale values exhibit shorter memory, leading to sharper fluctuations and more complex nonlinear mapping between the inputs and the output. In other words, lower values of the interpolation length parameter indicate a higher sensitivity of the output to the input value (for the selected input variable). Conversely, larger values of the interpolation length parameters indicate low levels of correlation between the output and the corresponding input variable.
- (3)
- is called the output noise hyperparameter and captures the variance in the training data. For the present study, where the training data are obtained from experiments, this variance can arise from variations in the execution of the experimental assays themselves or variations in the application of the analysis protocols (e.g., image segmentation). is assumed to be the same for the entire input domain (also called homoscedasticity [104]).
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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GPR Results | CL α | CL β | VF-β | Y | H | E |
---|---|---|---|---|---|---|
667.17 | 141.85 | 263.23 | 199.12 | 143.38 | 211.78 | |
10.95 | 10.48 | 9.39 | 16.83 | 14.78 | 12.49 | |
19.52 | 18.47 | 0.55 | 2.48 | 53.97 | 92.17 | |
0.93 | 1.66 | 0.01 | 0.17 | 2.64 | 1.39 | |
20.88 | 11.13 | 45.59 | 14.50 | 20.41 | 66.10 | |
MAPE | 6.89 | 9.87 | 3.54 | 6.26 | 3.32 | 2.02 |
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Gong, X.; Yabansu, Y.C.; Collins, P.C.; Kalidindi, S.R. Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression. Materials 2020, 13, 4641. https://doi.org/10.3390/ma13204641
Gong X, Yabansu YC, Collins PC, Kalidindi SR. Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression. Materials. 2020; 13(20):4641. https://doi.org/10.3390/ma13204641
Chicago/Turabian StyleGong, Xinyi, Yuksel C. Yabansu, Peter C. Collins, and Surya R. Kalidindi. 2020. "Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression" Materials 13, no. 20: 4641. https://doi.org/10.3390/ma13204641
APA StyleGong, X., Yabansu, Y. C., Collins, P. C., & Kalidindi, S. R. (2020). Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression. Materials, 13(20), 4641. https://doi.org/10.3390/ma13204641