Litcius/Paper detail

Bias free multiobjective active learning for materials design and discovery

Kevin Maik Jablonka, Giriprasad Melpatti Jothiappan, Shefang Wang, Berend Smit, Brian Yoo

2021Nature Communications176 citationsDOIOpen Access PDF

Abstract

The design rules for materials are clear for applications with a single objective. For most applications, however, there are often multiple, sometimes competing objectives where there is no single best material and the design rules change to finding the set of Pareto optimal materials. In this work, we leverage an active learning algorithm that directly uses the Pareto dominance relation to compute the set of Pareto optimal materials with desirable accuracy. We apply our algorithm to de novo polymer design with a prohibitively large search space. Using molecular simulations, we compute key descriptors for dispersant applications and drastically reduce the number of materials that need to be evaluated to reconstruct the Pareto front with a desired confidence. This work showcases how simulation and machine learning techniques can be coupled to discover materials within a design space that would be intractable using conventional screening approaches.

Topics & Concepts

Leverage (statistics)Computer sciencePareto principleMulti-objective optimizationSet (abstract data type)Pareto optimalActive learning (machine learning)Mathematical optimizationMachine learningMathematicsProgramming languageMachine Learning in Materials ScienceAdvanced Multi-Objective Optimization AlgorithmsMachine Learning and Algorithms