2022
DOI: 10.20517/jmi.2022.06
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Estimating the performance of a material in its service space via Bayesian active learning: a case study of the damping capacity of Mg alloys

Abstract: In addition to being determined by its chemical composition and processing conditions, the performance of a material is also affected by the variables of its service space, including temperature, pressure, and frequency. A rapid means to estimate the performance of a material in its service space is urgently required to accelerate the screening of materials with targeted performance. In the present study, a materials informatics approach is proposed to rapidly predict performance within a service space based o… Show more

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Cited by 8 publications
(2 citation statements)
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“…The results demonstrate a good agreement between our ReaxFF-nn potential model and the DFT calculations. Although active learning algorithms [29,61,62] to collect data automatically are available, the application to molecular systems requires further tests, and we also plan to develop an uncertainty-driven active learning algorithm based on the Z-matrix.…”
Section: Training and Testing The Potential Modelmentioning
confidence: 99%
“…The results demonstrate a good agreement between our ReaxFF-nn potential model and the DFT calculations. Although active learning algorithms [29,61,62] to collect data automatically are available, the application to molecular systems requires further tests, and we also plan to develop an uncertainty-driven active learning algorithm based on the Z-matrix.…”
Section: Training and Testing The Potential Modelmentioning
confidence: 99%
“…In particular, so-called active machine learning approaches, which combine human expertise with iterative model refinement, have demonstrated great potential in reducing the experimental burden and maximising the search efficiency in materials design 11 14 . Bayesian optimisation and adaptive design are methods following an active ML strategy, which require goal-directed iterative feedback 6 , 15 , 16 .…”
Section: Introductionmentioning
confidence: 99%