Affiliation:
1. Materials Genome Institute Shanghai University Shanghai 200444 China
2. Shanghai Engineering Research Center of Organ Repair ShanghaiUniversity Shanghai 200444 China
3. QianWeichang College Shanghai University Shanghai 200444 China
Abstract
AbstractCircularly polarized luminescence (CPL) materials have garnered significant interest due to their potential applications in chiral functional devices. Synthesizing CPL materials with a high dissymmetry factor (glum) remains a significant challenge. Inspired by efficient machine learning (ML) applications in scientific research, this work demonstrates ML‐based techniques for the first time to guide the synthesis of G‐quartet‐based CPL gels with high glum values and multiple chiral regulation strategies. Employing an “experiment‐prediction‐verification” approach, this work devises a ML classification and regression model for the solvothermal synthesis of G‐quartet gels in deep eutectic solvents. This process illustrates the relationship between various synthesis parameters and the glum value. The decision tree algorithm demonstrates superior performance across six ML models, with model accuracy and determination coefficients amounting to 0.97 and 0.96, respectively. The screened CPL gels exhibiting a glum value up to 0.15 are obtained through combined ML guidance and experimental verification, among the highest ones reported till now for biomolecule‐based CPL systems. These findings indicate that ML can streamline the rational design of chiral nanomaterials, thereby expediting their further development.
Funder
Program for Professor of Special Appointment (Eastern Scholar) at Shanghai Institutions of Higher Learning
National Natural Science Foundation of China
Shanghai Rising-Star Program
Subject
Mechanical Engineering,Mechanics of Materials,General Materials Science
Cited by
19 articles.
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