Lab Home | Phone | Search
Center for Nonlinear Studies  Center for Nonlinear Studies
 Home 
 People 
 Current 
 Affiliates 
 Visitors 
 Students 
 Research 
 ICAM-LANL 
 Publications 
 Conferences 
 Workshops 
 Sponsorship 
 Talks 
 Colloquia 
 Colloquia Archive 
 Seminars 
 Postdoc Seminars Archive 
 Quantum Lunch 
 Quantum Lunch Archive 
 CMS Colloquia 
 Q-Mat Seminars 
 Q-Mat Seminars Archive 
 P/T Colloquia 
 Archive 
 Kac Lectures 
 Kac Fellows 
 Dist. Quant. Lecture 
 Ulam Scholar 
 Colloquia 
 
 Jobs 
 Postdocs 
 CNLS Fellowship Application 
 Students 
 Student Program 
 Visitors 
 Description 
 Past Visitors 
 Services 
 General 
 
 History of CNLS 
 
 Maps, Directions 
 CNLS Office 
 T-Division 
 LANL 
 
Wednesday, March 01, 2017
1:00 PM - 2:00 PM
CNLS Conference Room (TA-3, Bldg 1690)

Seminar

Predicting the electronic structure and properties of inorganic materials with machine learning

Olexandr Isayev
University of North Carolina at Chapel Hill

Historically, novel materials have been discovered because of long and laborious trial-and-error process. Over the years, materials research has led to the accumulation of relatively large collections of experimental data on materials structure and properties. Prompted by the growth of materials databases, the emerging materials informatics approaches offer an opportunity to transform this trial-and-error practice into data- and knowledge-driven rational design and accelerated discovery of novel materials with the desired properties. Using the data from the AFLOWLIB repository (http:www.aflowlib.org) of materials properties obtained with the high-throughput DFT calculations, we have constructed Machine Learning (ML) models to predict three critical materials properties including band gap, Fermi level energy, and the class of materials as metals or insulators. To enable these calculation, we have developed novel materials descriptors such as universal property-labelled fragments (PLMF).[1] We have established that the accuracy of predictions obtained with Quantitative Materials Structure–Property Relationship (QMSPR) models approaches that of GGA DFT functionals yet model development requires a minute fraction of computational time as compared to ab initio calculations. Notably, due to the representation of materials with PLMF the QMSPR models are broadly applicable to virtually any stoichiometric inorganic materials. This representation also affords straightforward model interpretation in terms of simple heuristic design rules that could guide rational design of novel materials. This proof-of-concept study demonstrates the power of materials informatics to dramatically accelerate the search for novel materials.

Host: Kipton Barros