Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model

Metro is considered one of the fastest and most efficient means of transport within the city in different countries, which reduces traffic and pollution and is more cost-effective and time-efficient. Routing transportation systems is one of the critical parts of determining the route and choosing th...

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Main Authors: Vinh Phuc Dung, Minh Tien Nhung
Format: Article
Language:English
Published: Bilijipub publisher 2022-10-01
Series:Advances in Engineering and Intelligence Systems
Subjects:
Online Access:https://aeis.bilijipub.com/article_158267_ee0cba644c88a32d97359002cee03f09.pdf
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author Vinh Phuc Dung
Minh Tien Nhung
author_facet Vinh Phuc Dung
Minh Tien Nhung
author_sort Vinh Phuc Dung
collection DOAJ
description Metro is considered one of the fastest and most efficient means of transport within the city in different countries, which reduces traffic and pollution and is more cost-effective and time-efficient. Routing transportation systems is one of the critical parts of determining the route and choosing the optimal route with minimal time and cost for users. Most of the methods that led to optimization in routing in the past, both in the airline and on the ground, are based on smart methods. It should be noted that the discovery of knowledge from the data is also essential to predict the path. Hence, data mining operations will also be considered. This research tries to provide an optimal data mining approach and machine learning principles to predict the route and select the optimal path in metro lines with minimum time, best speed, and minor errors in routing. Identifying the factors influencing the scheduling issue have uncertainty. This study tries to provide an optimal method based on data mining and machine learning principles using Fuzzy Logic and Technique for Order Preference by Similarity to Ideal Solution method to predict the priorities of effective factors in metro scheduling in Tehran and select the optimal route in metro lines with a minimum time, the best speed and the least error in routing. According to the findings, the top priorities have a significant influence on the preferred strategy in the metro plan.
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spelling doaj-art-242cf734d5e14f81b7e3395e4edc22e22025-02-12T08:46:30ZengBilijipub publisherAdvances in Engineering and Intelligence Systems2821-02632022-10-010010311110.22034/aeis.2022.351469.1028158267Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS ModelVinh Phuc Dung0Minh Tien Nhung1Department of Computer Science, University of Saigon, Ho Chi Minh City, 700000, VietnamFaculty of Social Sciences and Humanities, Ton Duc Thang University, Ho Chi Minh City, VietnamMetro is considered one of the fastest and most efficient means of transport within the city in different countries, which reduces traffic and pollution and is more cost-effective and time-efficient. Routing transportation systems is one of the critical parts of determining the route and choosing the optimal route with minimal time and cost for users. Most of the methods that led to optimization in routing in the past, both in the airline and on the ground, are based on smart methods. It should be noted that the discovery of knowledge from the data is also essential to predict the path. Hence, data mining operations will also be considered. This research tries to provide an optimal data mining approach and machine learning principles to predict the route and select the optimal path in metro lines with minimum time, best speed, and minor errors in routing. Identifying the factors influencing the scheduling issue have uncertainty. This study tries to provide an optimal method based on data mining and machine learning principles using Fuzzy Logic and Technique for Order Preference by Similarity to Ideal Solution method to predict the priorities of effective factors in metro scheduling in Tehran and select the optimal route in metro lines with a minimum time, the best speed and the least error in routing. According to the findings, the top priorities have a significant influence on the preferred strategy in the metro plan.https://aeis.bilijipub.com/article_158267_ee0cba644c88a32d97359002cee03f09.pdfprioritize effective factorsmetro schedulingmetro routingfuzzy logictopsis method
spellingShingle Vinh Phuc Dung
Minh Tien Nhung
Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model
Advances in Engineering and Intelligence Systems
prioritize effective factors
metro scheduling
metro routing
fuzzy logic
topsis method
title Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model
title_full Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model
title_fullStr Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model
title_full_unstemmed Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model
title_short Prioritize Effective Factors of Scheduling in Tehran Metro Station with Fuzzy TOPSIS Model
title_sort prioritize effective factors of scheduling in tehran metro station with fuzzy topsis model
topic prioritize effective factors
metro scheduling
metro routing
fuzzy logic
topsis method
url https://aeis.bilijipub.com/article_158267_ee0cba644c88a32d97359002cee03f09.pdf
work_keys_str_mv AT vinhphucdung prioritizeeffectivefactorsofschedulingintehranmetrostationwithfuzzytopsismodel
AT minhtiennhung prioritizeeffectivefactorsofschedulingintehranmetrostationwithfuzzytopsismodel