Litcius/Paper detail

Recent advances in utility of artificial intelligence towards multiscale colloidal based materials design

Aref Abbasi Moud

2022Colloids and Interface Science Communications44 citationsDOIOpen Access PDF

Abstract

Colloidal material design necessitates a collection of computer approaches ranging from quantum chemistry to molecular dynamics and continuum modeling. Machine learning (ML) and other umbrella terminology for current optimization approaches (requiring computation) have accelerated the predictability of material characteristics. Colloidal materials include polymers, liquid crystals, and colloids. Supervised and unsupervised strategies have come under scrutiny in this review. Other ways, such as combined simulation of ML and molecular modeling dynamics procedures, are also available that are not available through the present arsenal of characterization tools. Such hybrid approaches can improve our understanding of materials and design protocols. In this review, we have accumulated expertise and information from over 300 sources.

Topics & Concepts

ScrutinyPredictabilityComputer scienceTerminologyCharacterization (materials science)NanotechnologyManagement scienceSystems engineeringArtificial intelligenceBiochemical engineeringMaterials scienceEngineeringPhysicsPhilosophyQuantum mechanicsLinguisticsLawPolitical sciencePickering emulsions and particle stabilizationAdvanced Polymer Synthesis and CharacterizationMachine Learning in Materials Science