Data Science Journal
Online ISSN : 1683-1470
Contents of Volume 1, Issue 1, April 2002
The application of Principal Component Analysis to materials science data
Changwon SuhArun RajagopalanXiang LiKrishna Rajan
Author information
JOURNAL FREE ACCESS

2002 Volume 1 Pages 19-26

Details
Abstract
The relationship between apparently disparate sets of data is a critical component of interpreting materials' behavior, especially in terms of assessing the impact of the microscopic characteristics of materials on their macroscopic or engineering behavior. In this paper we demonstrate the value of principal component analysis of property data associated with high temperature superconductivity to examine the statistical impact of the materials' intrinsic characteristics on high temperature superconducting behavior.
Content from these authors

This article cannot obtain the latest cited-by information.

Previous article Next article
feedback
Top