Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry

In the current research, the dataset for conducting data mining calculations was generated based on a sample with 2,000 data, reports of the general manager of the textile industry of Iran's Ministry of Industry, Mine and Trade (information from 240 industrial units and 630 spinning and weaving...

Full description

Saved in:
Bibliographic Details
Main Author: Shahram Fatemi
Format: Article
Language:English
Published: REA Press 2023-06-01
Series:Computational Algorithms and Numerical Dimensions
Subjects:
Online Access:https://www.journal-cand.com/article_186205_681590a7779d7b362c9099866de80305.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832580043591647232
author Shahram Fatemi
author_facet Shahram Fatemi
author_sort Shahram Fatemi
collection DOAJ
description In the current research, the dataset for conducting data mining calculations was generated based on a sample with 2,000 data, reports of the general manager of the textile industry of Iran's Ministry of Industry, Mine and Trade (information from 240 industrial units and 630 spinning and weaving units were collected), and textile industry plants in Borujerd as the place for implementing the plan between 2015 and 2019, a period 6 month each year. Due to extensive information from the textile industry (with the help of the Ministry of Industry, Mine and Trade), the current research is unique. Using IBM SPSS Modeler 18, the most significant results of datamining calculations to extract knowledge are as follows, which are arranged based on main predictors of the research: predicting models of "strategy innovation in net with data code (A5)" with the prediction wight of 0.34; "technology innovation in net with data code (A1)" with the prediction wight of 0.30; "work environment innovation in net with data code (A3)" with the prediction wight of 0.16; Quality innovation in net with data code (A4)" with the prediction wight of 0.15; "employe  innovation in net with data code (A2)" with the prediction wight of 0.10 are utilized to accurately analyze preventive maintenance in interaction with production.
format Article
id doaj-art-eca1ce1703204747a529189cde7d304c
institution Kabale University
issn 2980-7646
2980-9320
language English
publishDate 2023-06-01
publisher REA Press
record_format Article
series Computational Algorithms and Numerical Dimensions
spelling doaj-art-eca1ce1703204747a529189cde7d304c2025-01-30T11:22:05ZengREA PressComputational Algorithms and Numerical Dimensions2980-76462980-93202023-06-0122637310.22105/cand.2023.432834.1084186205Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industryShahram Fatemi0Department of Industrial Engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.In the current research, the dataset for conducting data mining calculations was generated based on a sample with 2,000 data, reports of the general manager of the textile industry of Iran's Ministry of Industry, Mine and Trade (information from 240 industrial units and 630 spinning and weaving units were collected), and textile industry plants in Borujerd as the place for implementing the plan between 2015 and 2019, a period 6 month each year. Due to extensive information from the textile industry (with the help of the Ministry of Industry, Mine and Trade), the current research is unique. Using IBM SPSS Modeler 18, the most significant results of datamining calculations to extract knowledge are as follows, which are arranged based on main predictors of the research: predicting models of "strategy innovation in net with data code (A5)" with the prediction wight of 0.34; "technology innovation in net with data code (A1)" with the prediction wight of 0.30; "work environment innovation in net with data code (A3)" with the prediction wight of 0.16; Quality innovation in net with data code (A4)" with the prediction wight of 0.15; "employe  innovation in net with data code (A2)" with the prediction wight of 0.10 are utilized to accurately analyze preventive maintenance in interaction with production.https://www.journal-cand.com/article_186205_681590a7779d7b362c9099866de80305.pdfpreventive maintenance systemsdata miningibm modelertextile industry
spellingShingle Shahram Fatemi
Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
Computational Algorithms and Numerical Dimensions
preventive maintenance systems
data mining
ibm modeler
textile industry
title Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
title_full Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
title_fullStr Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
title_full_unstemmed Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
title_short Extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
title_sort extracting knowledge of preventive maintenance using data mining technique in interaction with production within textile industry
topic preventive maintenance systems
data mining
ibm modeler
textile industry
url https://www.journal-cand.com/article_186205_681590a7779d7b362c9099866de80305.pdf
work_keys_str_mv AT shahramfatemi extractingknowledgeofpreventivemaintenanceusingdataminingtechniqueininteractionwithproductionwithintextileindustry