Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan
The train is the best alternative public transport for Malaysians to use to avoid traffic jams. However, passengers are often delayed by the lengthy queuing time at the ticket counter during rush hours. To help reduce passenger travel time before boarding during rush hour, the current study aimed to...
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my.uitm.ir.444162021-10-27T04:09:21Z https://ir.uitm.edu.my/id/eprint/44416/ Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan Noor Hamizan, Nur Ariena Farhana Urban transportation Path analysis. Structural equation modeling The train is the best alternative public transport for Malaysians to use to avoid traffic jams. However, passengers are often delayed by the lengthy queuing time at the ticket counter during rush hours. To help reduce passenger travel time before boarding during rush hour, the current study aimed to minimize two items, namely counter service time for buying tickets and travel time from the ticket counter to the train platform. To achieve these objectives, Queuing Theory Problem and Shortest Path Problem (Dijkstra Algorithm) were applied. Based on the result, both objectives were successfully achieved. The minimum average counter service time was 0.88 minutes. Then, the shortest time from the ticket counter to the platform was 111 seconds. For both time frames, the minimum duration before buying tickets until arriving at the platform was 2.73 minutes. It is recommended that future research in this area compare between waiting time during rush hour and non-rush hour to identify the major problem that occurs during rush hour. This study can be further enhanced by expanding the use of the queuing theory to determine the number of optimal counters to operate at one time. 2021-03-29 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/44416/1/44416.pdf ID44416 Noor Hamizan, Nur Ariena Farhana (2021) Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan. Degree thesis, thesis, Universiti Teknologi Mara Perlis. |
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Urban transportation Path analysis. Structural equation modeling Noor Hamizan, Nur Ariena Farhana Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan |
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The train is the best alternative public transport for Malaysians to use to avoid traffic jams. However, passengers are often delayed by the lengthy queuing time at the ticket counter during rush hours. To help reduce passenger travel time before boarding during rush hour, the current study aimed to minimize two items, namely counter service time for buying tickets and travel time from the ticket counter to the train platform. To achieve these objectives, Queuing Theory Problem and Shortest Path Problem (Dijkstra Algorithm) were applied. Based on the result, both objectives were successfully achieved. The minimum average counter service time was 0.88 minutes. Then, the shortest time from the ticket counter to the platform was 111 seconds. For both time frames, the minimum duration before buying tickets until arriving at the platform was 2.73 minutes. It is recommended that future research in this area compare between waiting time during rush hour and non-rush hour to identify the major problem that occurs during rush hour. This study can be further enhanced by expanding the use of the queuing theory to determine the number of optimal counters to operate at one time. |
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Thesis |
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Noor Hamizan, Nur Ariena Farhana |
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Noor Hamizan, Nur Ariena Farhana |
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Noor Hamizan, Nur Ariena Farhana |
title |
Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan |
title_short |
Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan |
title_full |
Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan |
title_fullStr |
Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan |
title_full_unstemmed |
Optimizing passenger before- boarding time using Queuing Theory and Dijkstra Algorithm / Nur Ariena Farhana Noor Hamizan |
title_sort |
optimizing passenger before- boarding time using queuing theory and dijkstra algorithm / nur ariena farhana noor hamizan |
publishDate |
2021 |
url |
https://ir.uitm.edu.my/id/eprint/44416/1/44416.pdf https://ir.uitm.edu.my/id/eprint/44416/ |
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1715193365520187392 |