December 31, 2006
Conference Paper

Information-Based Development of New Radiation Detectors

Abstract

With our present concern for a secure environment, the development of new radiation detection materials has focused on the capability of identifying potential radiation sources at increased sensitivity levels. As the initial framework for a materials-informatics approach to radiation detection materials, we have explored the use of both supervised (Support Vector Machines – SVM and Linear Discriminant Analysis – LDA) and unsupervised (Principal Component Analysis – PCA) learning methods for the development of structural signature models. Application of these methods yields complementary results, both of which are necessary to reduce parameter space and variable degeneracy. Using a crystal structure classification test, the use of the nonlinear SVM significantly increases predictive performance, suggesting trade-offs between smaller descriptor spaces and simpler linear models.

Revised: February 11, 2009 | Published: December 31, 2006

Citation

Ferris K.F., B.M. Webb-Robertson, and D.M. Jones. 2006. Information-Based Development of New Radiation Detectors. In Materials Research Society Symposium Proceedings: Combinatorial Methods and Informatics in Materials Science, edited by MJ Fasolka, et al, 894. Warrendale, Pennsylvania:Materials Research Society. PNNL-SA-47703.