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Inverse methods for design of soft materials

Zachary M. Sherman, Michael P. Howard, Beth A. Lindquist, Ryan B. Jadrich, Thomas M. Truskett

2020The Journal of Chemical Physics92 citationsDOIOpen Access PDF

Abstract

Functional soft materials, comprising colloidal and molecular building blocks that self-organize into complex structures as a result of their tunable interactions, enable a wide array of technological applications. Inverse methods provide a systematic means for navigating their inherently high-dimensional design spaces to create materials with targeted properties. While multiple physically motivated inverse strategies have been successfully implemented in silico, their translation to guiding experimental materials discovery has thus far been limited to a handful of proof-of-concept studies. In this perspective, we discuss recent advances in inverse methods for design of soft materials that address two challenges: (1) methodological limitations that prevent such approaches from satisfying design constraints and (2) computational challenges that limit the size and complexity of systems that can be addressed. Strategies that leverage machine learning have proven particularly effective, including methods to discover order parameters that characterize complex structural motifs and schemes to efficiently compute macroscopic properties from the underlying structure. We also highlight promising opportunities to improve the experimental realizability of materials designed computationally, including discovery of materials with functionality at multiple thermodynamic states, design of externally directed assembly protocols that are simple to implement in experiments, and strategies to improve the accuracy and computational efficiency of experimentally relevant models.

Topics & Concepts

RealizabilityComputer scienceLeverage (statistics)Soft materialsInverseSimple (philosophy)Limit (mathematics)Design methodsTheoretical computer scienceBridging (networking)Inverse problemComplex systemComputer engineeringStructural complexityDesign toolComputational complexity theoryMacroDistributed computingTranslation (biology)Material propertiesSystems engineeringNanotechnologyMachine Learning in Materials ScienceBlock Copolymer Self-AssemblySurface Chemistry and Catalysis
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