Cargando…

Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data

Manufacturing polypropylene (PP) composites to meet customers’ needs is difficult, time-consuming, and costly, owing to the ever-increasing diversity and complexity of the corresponding specifications and the trial-and-error method currently used to satisfy the required physical properties. To addre...

Descripción completa

Detalles Bibliográficos
Autores principales: Joo, Chonghyo, Park, Hyundo, Kwon, Hyukwon, Lim, Jongkoo, Shin, Eunchul, Cho, Hyungtae, Kim, Junghwan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9459971/
https://www.ncbi.nlm.nih.gov/pubmed/36080575
http://dx.doi.org/10.3390/polym14173500
_version_ 1784786636153815040
author Joo, Chonghyo
Park, Hyundo
Kwon, Hyukwon
Lim, Jongkoo
Shin, Eunchul
Cho, Hyungtae
Kim, Junghwan
author_facet Joo, Chonghyo
Park, Hyundo
Kwon, Hyukwon
Lim, Jongkoo
Shin, Eunchul
Cho, Hyungtae
Kim, Junghwan
author_sort Joo, Chonghyo
collection PubMed
description Manufacturing polypropylene (PP) composites to meet customers’ needs is difficult, time-consuming, and costly, owing to the ever-increasing diversity and complexity of the corresponding specifications and the trial-and-error method currently used to satisfy the required physical properties. To address this issue, we developed three models for predicting the physical properties of PP composites using three machine learning (ML) methods: multiple linear regression (MLR), deep neural network (DNN), and random forest (RF). Further, the industrial data of 811 recipes were acquired to verify the developed models. Data categorization was performed to account for the differences between data and the fact that different recipes require different materials. The three models were then deployed to predict the flexural strength (FS), melting index (MI), and tensile strength (TS) of the PP composites in nine case studies. The predictive performance results differed according to the physical properties of the composites. The FS and MI prediction models with MLR exhibited the highest R(2) values of 0.9291 and 0.9406. The TS model with DNN exhibited the highest R(2) value of 0.9587. The proposed models and study findings are useful for predicting the physical properties of PP composites for recipes and the development of new recipes with specific physical properties.
format Online
Article
Text
id pubmed-9459971
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-94599712022-09-10 Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data Joo, Chonghyo Park, Hyundo Kwon, Hyukwon Lim, Jongkoo Shin, Eunchul Cho, Hyungtae Kim, Junghwan Polymers (Basel) Article Manufacturing polypropylene (PP) composites to meet customers’ needs is difficult, time-consuming, and costly, owing to the ever-increasing diversity and complexity of the corresponding specifications and the trial-and-error method currently used to satisfy the required physical properties. To address this issue, we developed three models for predicting the physical properties of PP composites using three machine learning (ML) methods: multiple linear regression (MLR), deep neural network (DNN), and random forest (RF). Further, the industrial data of 811 recipes were acquired to verify the developed models. Data categorization was performed to account for the differences between data and the fact that different recipes require different materials. The three models were then deployed to predict the flexural strength (FS), melting index (MI), and tensile strength (TS) of the PP composites in nine case studies. The predictive performance results differed according to the physical properties of the composites. The FS and MI prediction models with MLR exhibited the highest R(2) values of 0.9291 and 0.9406. The TS model with DNN exhibited the highest R(2) value of 0.9587. The proposed models and study findings are useful for predicting the physical properties of PP composites for recipes and the development of new recipes with specific physical properties. MDPI 2022-08-26 /pmc/articles/PMC9459971/ /pubmed/36080575 http://dx.doi.org/10.3390/polym14173500 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Joo, Chonghyo
Park, Hyundo
Kwon, Hyukwon
Lim, Jongkoo
Shin, Eunchul
Cho, Hyungtae
Kim, Junghwan
Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data
title Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data
title_full Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data
title_fullStr Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data
title_full_unstemmed Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data
title_short Machine Learning Approach to Predict Physical Properties of Polypropylene Composites: Application of MLR, DNN, and Random Forest to Industrial Data
title_sort machine learning approach to predict physical properties of polypropylene composites: application of mlr, dnn, and random forest to industrial data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9459971/
https://www.ncbi.nlm.nih.gov/pubmed/36080575
http://dx.doi.org/10.3390/polym14173500
work_keys_str_mv AT joochonghyo machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata
AT parkhyundo machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata
AT kwonhyukwon machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata
AT limjongkoo machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata
AT shineunchul machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata
AT chohyungtae machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata
AT kimjunghwan machinelearningapproachtopredictphysicalpropertiesofpolypropylenecompositesapplicationofmlrdnnandrandomforesttoindustrialdata