Matthew Spellings; Sharon C. Glotzer
Index: 10.1002/aic.16157
Full Text: HTML
As computers get faster, researchers—not hardware or algorithms—become the bottleneck in scientific discovery. Computational study of colloidal self‐assembly is one area that is keenly affected: even after computers generate massive amounts of raw data, performing an exhaustive search to determine what (if any) ordered structures occur in a large parameter space of many simulations can be excruciating. We demonstrate how machine learning can be applied to discover interesting areas of parameter space in colloidal self‐assembly. We create numerical fingerprints—inspired by bond orientational order diagrams—of structures found in self‐assembly studies and use these descriptors to both find interesting regions in a phase diagram and identify characteristic local environments in simulations in an automated manner for simple and complex crystal structures. Utilizing these methods allows analysis to keep up with the data generation ability of modern high‐throughput computing environments. © 2018 American Institute of Chemical Engineers AIChE J, 2018
Effect of fuel composition on NOx formation in high‐pressure...
2018-04-11 [10.1002/aic.16170] |
Morphology evolution and dynamics of droplet coalescence on ...
2018-04-10 [10.1002/aic.16169] |
Near‐UV activated, photostable nanophosphors for in vitro do...
2018-04-10 [10.1002/aic.16166] |
Design of active NiCo2O4‐δ spinel catalyst for abatement of ...
2018-04-06 [10.1002/aic.16162] |
The effect of mixing on Co‐precipitation and evolution of mi...
2018-04-06 [10.1002/aic.16168] |
Home | MSDS/SDS Database Search | Journals | Product Classification | Biologically Active Compounds | Selling Leads | About Us | Disclaimer
Copyright © 2024 ChemSrc All Rights Reserved