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Inverse Design of Complex Block Copolymers for Exotic Self-Assembled Structures Based on Bayesian Optimization

Qingshu Dong, Xiangrui Gong, Kangrui Yuan, Ying Jiang, Liangshun Zhang, Weihua Li

2023ACS Macro Letters24 citationsDOI

Abstract

Variable chain topologies of multiblock copolymers provide great opportunities for the formation of numerous self-assembled nanostructures with promising potential applications. However, the consequent large parameter space poses new challenges for searching the stable parameter region of desired novel structures. In this Letter, by combining Bayesian optimization (BO), fast Fourier transform-assisted 3D convolutional neural network (FFT-3DCNN), and self-consistent field theory (SCFT), we develop a data-driven and fully automated inverse design framework to search for the desired novel structures self-assembled by ABC-type multiblock copolymers. Stable phase regions of three exotic target structures are efficiently identified in high-dimensional parameter space. Our work advances the new research paradigm of inverse design in the field of block copolymers.

Topics & Concepts

CopolymerInverseComputer scienceBlock (permutation group theory)Inverse problemNetwork topologyParameter spaceField (mathematics)Bayesian optimizationAlgorithmMaterials scienceTopology (electrical circuits)Mathematical optimizationMathematicsArtificial intelligenceOperating systemStatisticsPolymerCombinatoricsPure mathematicsComposite materialMathematical analysisGeometryBlock Copolymer Self-AssemblyMachine Learning in Materials ScienceAdvanced Polymer Synthesis and Characterization
Inverse Design of Complex Block Copolymers for Exotic Self-Assembled Structures Based on Bayesian Optimization | Litcius