Treffer: Machine Learning for Fluid Property Correlations: Classroom Examples with MATLAB

Title:
Machine Learning for Fluid Property Correlations: Classroom Examples with MATLAB
Language:
English
Authors:
Joss, Lisa (ORCID 0000-0002-1600-0203), Müller, Erich A. (ORCID 0000-0002-1513-6686)
Source:
Journal of Chemical Education. Apr 2019 96(4):967.
Availability:
Division of Chemical Education, Inc. and ACS Publications Division of the American Chemical Society. 1155 Sixteenth Street NW, Washington, DC 20036. Tel: 800-227-5558; Tel: 202-872-4600; e-mail: eic@jce.acs.org; Web site: http://pubs.acs.org/jchemeduc
Peer Reviewed:
Y
Page Count:
7
Publication Date:
2019
Intended Audience:
Teachers
Document Type:
Fachzeitschrift Journal Articles<br />Reports - Descriptive
Education Level:
Higher Education
Postsecondary Education
DOI:
10.1021/acs.jchemed.8b00692
ISSN:
0021-9584
Entry Date:
2019
Accession Number:
EJ1212307
Database:
ERIC

Weitere Informationen

Recent advances in computer hardware and algorithms are spawning an explosive growth in the use of computer-based systems aimed at analyzing and ultimately correlating large amounts of experimental and synthetic data. As these machine learning tools become more widespread, it is becoming imperative that scientists and researchers become familiar with them, both in terms of understanding the tools and the current limitations of artificial intelligence, and more importantly being able to critically separate the hype from the real potential. This article presents a classroom exercise aimed at first-year science and engineering college students, where a task is set to produce a correlation to predict the normal boiling point of organic compounds from an unabridged data set of >6000 compounds. The exercise, which is fully documented in terms of the problem statement and the solution, guides the students to initially perform a linear correlation of the boiling point data with a plausible relevant variable (the molecular weight) and to further refine it using multivariate linear fitting employing a second descriptor (the acentric factor). Finally, the data are processed through an artificial neural network to eventually provide an engineering-quality correlation. The problem statements, data files for the development of the exercise, and solutions are provided within a MATLAB environment but are general in nature.

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