共 51 条
Efficient Closed-loop Maximization of Carbon Nanotube Growth Rate using Bayesian Optimization
被引:58
作者:
Chang, Jorge
[1
]
Nikolaev, Pavel
[2
,3
,5
]
Carpena-Nunez, Jennifer
[2
,3
]
Rao, Rahul
[2
,3
]
Decker, Kevin
[2
,3
]
Islam, Ahmad E.
[2
,3
]
Kim, Jiseob
[4
]
Pitt, Mark A.
[1
]
Myung, Jay I.
[1
]
Maruyama, Benji
[3
]
机构:
[1] Ohio State Univ, Dept Psychol, Columbus, OH 43210 USA
[2] UES Inc, Dayton, OH 45432 USA
[3] US Air Force, Mat & Mfg Directorate, Res Lab, Dayton, OH 45433 USA
[4] Seoul Natl Univ, Sch Comp Sci & Engn, Seoul 151742, South Korea
[5] Cornerstone Res Grp, Miamisburg, OH 45342 USA
关键词:
WATER;
D O I:
10.1038/s41598-020-64397-3
中图分类号:
O [数理科学和化学];
P [天文学、地球科学];
Q [生物科学];
N [自然科学总论];
学科分类号:
07 ;
0710 ;
09 ;
摘要:
A major technological challenge in materials research is the large and complex parameter space, which hinders experimental throughput and ultimately slows down development and implementation. In single-walled carbon nanotube (CNT) synthesis, for instance, the poor yield obtained from conventional catalysts is a result of limited understanding of input-to-output correlations. Autonomous closedloop experimentation combined with advances in machine learning (ML) is uniquely suited for high-throughput research. Among the ML algorithms available, Bayesian optimization (BO) is especially apt for exploration and optimization within such high-dimensional and complex parameter space. BO is an adaptive sequential design algorithm for finding the global optimum of a black-box objective function with the fewest possible measurements. Here, we demonstrate a promising application of BO in CNT synthesis as an efficient and robust algorithm which can (1) improve the growth rate of CNT in the BO-planner experiments over the seed experiments up to a factor 8; (2) rapidly improve its predictive power (or learning); (3) Consistently achieve good performance regardless of the number or origin of seed experiments; (4) exploit a high-dimensional, complex parameter space, and (5) achieve the former 4 tasks in just over 100 hundred experiments (similar to 8 experimental hours) - a factor of 5x faster than our previously reported results.
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页数:9
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