个人信息Personal Information
教授
博士生导师
硕士生导师
性别:男
毕业院校:清华大学
学位:博士
所在单位:化工学院
学科:化学工程
办公地点:西部校区化工实验楼D203
电子邮箱:keleiz@dlut.edu.cn
基于反向机器学习的调香设计方法
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论文类型:期刊论文
发表时间:2022-06-28
发表刊物:化工学报
卷号:70
期号:12
页面范围:4722-4729
ISSN号:0438-1157
摘要:The business of fragrances has become a multibillion-dollar market, and the development of fragrance tuned technology enriches modern social life. In this study, the inverse machine learning model for fragrance tuned design is proposed. The molecular surface charge density distribution based on the conductor-like screening model (COSMO) is used as the structural descriptor of the fragrance molecule to design the final fragrance tuned product. First, the fragrance attributes are identified and transform attributes into target properties according to needs. Then, change odor scores and establish the Inverse Machine Learning (IML) models, in which the input variables are odors and the output variable is molecular structure descriptor. Based on the trained IML models, the structure descriptors of the potential product are predicted according to the target properties. Finally, the candidate tuned mixtures were screened out using Euclidean-based method in the specified database. In this paper, two types of fragrant examples are taken as examples. The framework is used to design the fragrance, and the experimental data and odor radar map are used to verify the experimental results.
备注:新增回溯数据