TY - JOUR
T1 - Identification of novel organic polar materials
T2 - A machine learning study with importance sampling
AU - Ghosh, Ayana
AU - Trujillo, Dennis P.
AU - Hazarika, Subhashis
AU - Schiesser, Elizabeth
AU - Swamynathan, M. J.
AU - Ghosh, Saurabh
AU - Zhu, Jian Xin
AU - Nakhmanson, Serge
N1 - Publisher Copyright:
© 2023 Author(s).
PY - 2023/12/1
Y1 - 2023/12/1
N2 - Recent advances in the synthesis of polar molecular materials have produced practical alternatives to ferroelectric ceramics, opening up exciting new avenues for their incorporation into modern electronic devices. However, in order to realize the full potential of polar polymer and molecular crystals for modern technological applications, it is paramount to assemble and evaluate all the available data for such compounds, identifying descriptors that could be associated with an emergence of ferroelectricity. In this paper, we utilized data-driven approaches to judiciously shortlist candidate materials from a wide chemical space that could possess ferroelectric functionalities. A machine learning study with importance sampling was employed to address the challenge of having a limited amount of available data on already-known organic ferroelectrics. Sets of molecular- and crystal-level descriptors were combined with a Random Forest Regression algorithm in order to predict the spontaneous polarization of the shortlisted compounds. First-principles simulations were performed to further validate the predictions obtained from the machine learning model.
AB - Recent advances in the synthesis of polar molecular materials have produced practical alternatives to ferroelectric ceramics, opening up exciting new avenues for their incorporation into modern electronic devices. However, in order to realize the full potential of polar polymer and molecular crystals for modern technological applications, it is paramount to assemble and evaluate all the available data for such compounds, identifying descriptors that could be associated with an emergence of ferroelectricity. In this paper, we utilized data-driven approaches to judiciously shortlist candidate materials from a wide chemical space that could possess ferroelectric functionalities. A machine learning study with importance sampling was employed to address the challenge of having a limited amount of available data on already-known organic ferroelectrics. Sets of molecular- and crystal-level descriptors were combined with a Random Forest Regression algorithm in order to predict the spontaneous polarization of the shortlisted compounds. First-principles simulations were performed to further validate the predictions obtained from the machine learning model.
UR - https://www.scopus.com/pages/publications/105024473142
U2 - 10.1063/5.0162380
DO - 10.1063/5.0162380
M3 - Article
AN - SCOPUS:105024473142
SN - 2770-9019
VL - 1
JO - APL Machine Learning
JF - APL Machine Learning
IS - 4
M1 - 046115
ER -