Pushing the Pareto front of band gap and permittivity: ML-guided search for dielectric materials
Janosh Riebesell, T. Wesley Surta, Rhys Goodall, Michael Gaultois,, Alpha A Lee

TL;DR
This paper introduces a machine learning-guided multi-objective optimization workflow to discover new dielectric materials with high permittivity and suitable band gaps, successfully synthesizing two novel compounds and demonstrating the approach's effectiveness.
Contribution
It presents the first successful ML-guided multi-objective materials optimization for dielectric properties, including de-novo design and experimental validation of new materials.
Findings
Synthesized two novel dielectric materials, CsTaTeO6 and Bi2Zr2O7.
Demonstrated the effectiveness of ML in multi-objective optimization with Pareto front.
Achieved high-purity synthesis and characterization of Bi2Zr2O7 with desired properties.
Abstract
Materials with high-dielectric constant easily polarize under external electric fields, allowing them to perform essential functions in many modern electronic devices. Their practical utility is determined by two conflicting properties: high dielectric constants tend to occur in materials with narrow band gaps, limiting the operating voltage before dielectric breakdown. We present a high-throughput workflow that combines element substitution, ML pre-screening, ab initio simulation and human expert intuition to efficiently explore the vast space of unknown materials for potential dielectrics, leading to the synthesis and characterization of two novel dielectric materials, CsTaTeO6 and Bi2Zr2O7. Our key idea is to deploy ML in a multi-objective optimization setting with concave Pareto front. While usually considered more challenging than single-objective optimization, we argue and show…
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Taxonomy
TopicsMachine Learning in Materials Science · Delphi Technique in Research · BIM and Construction Integration
