posted on 2022-05-19, 15:09authored byJiuyang Zhao, Jacqueline M. Cole
Predicting the properties
of materials prior to their synthesis
is of great significance in materials science. Optical materials exhibit
a large number of interesting properties that make them useful in
a wide range of applications, including optical glasses, optical fibers,
and laser optics. In all of these applications, refraction and its
chromatic dispersion can directly reflect the characteristics of the
transmitted light and determine the practical utility of the material.
We demonstrate the feasibility of reconstructing chromatic-dispersion
relations of well-known optical materials by aggregating data over
a large number of independent sources, which are contained within
a material database of experimentally determined refractive indices
and wavelength values. We also employ this database to develop a machine-learning
platform that can predict refractive indices of compounds without
needing to know the structure or other properties of a material of
interest. We present a web-based application that enables users to
build their customized machine-learning models; this will help the
scientific community to conduct further research into the discovery
of optical materials.