Statistical modeling of tensile properties of talc-filled polypropylene based on multivariate regression and neural network analyses

Ilhyun Kim, Jungsub Lee, Byoung Ho Choi, Keum Hyang Lee, Chanho Jeong

    Research output: Chapter in Book/Report/Conference proceedingConference contribution

    Abstract

    In this paper, tensile properties of homo polypropylene (PP) with respect to talc filler content were predicted using regression model and neural network model. Talc content, tensile speed, Differential Scanning Calorimeter (DSC), Gel Permeation Chromatography (GPC) and rheometer data were used as modeling input factors. 2 different multiple regression models and 1 neural network model were established and the models were compared quantitatively by average error rate (AER). The results showed high reliability for all models but neural network models were determined as the most meaningful model.

    Original languageEnglish
    Title of host publication75th Annual Technical Conference and Exhibition of the Society of Plastics Engineers, SPE ANTEC Anaheim 2017
    PublisherSociety of Plastics Engineers
    Pages983-986
    Number of pages4
    ISBN (Electronic)9780878493609
    ISBN (Print)978-0-692-88309-9
    Publication statusPublished - 2017
    Event75th Annual Technical Conference and Exhibition of the Society of Plastics Engineers, SPE ANTEC Anaheim 2017 - Anaheim, United States
    Duration: 2017 May 82017 May 10

    Publication series

    NameAnnual Technical Conference - ANTEC, Conference Proceedings
    Volume2017-May

    Other

    Other75th Annual Technical Conference and Exhibition of the Society of Plastics Engineers, SPE ANTEC Anaheim 2017
    Country/TerritoryUnited States
    CityAnaheim
    Period17/5/817/5/10

    ASJC Scopus subject areas

    • General Chemical Engineering
    • Polymers and Plastics

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