| Literature DB >> 28960343 |
Al'ona Furmanchuk1, James E Saal2, Jeff W Doak2, Gregory B Olson2, Alok Choudhary3, Ankit Agrawal3.
Abstract
The regression model-based tool is developed for predicting the Seebeck coefficient of crystalline materials in the temperature range from 300 K to 1000 K. The tool accounts for the single crystal versus polycrystalline nature of the compound, the production method, and properties of the constituent elements in the chemical formula. We introduce new descriptive features of crystalline materials relevant for the prediction the Seebeck coefficient. To address off-stoichiometry in materials, the predictive tool is trained on a mix of stoichiometric and nonstoichiometric materials. The tool is implemented into a web application (http://info.eecs.northwestern.edu/SeebeckCoefficientPredictor) to assist field scientists in the discovery of novel thermoelectric materials.Keywords: Seebeck coefficient; data mining; nonstoichiometric materials; prediction; thermoelectric properties; web application
Year: 2017 PMID: 28960343 DOI: 10.1002/jcc.25067
Source DB: PubMed Journal: J Comput Chem ISSN: 0192-8651 Impact factor: 3.376