Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)

Resources planning is an important task in a supply chain in order to achieve a good result. The better the utilization of resources, especially scarce resources, the better the performance of a supply chain. This research focuses on allocating two scarce resources, i.e., berth and quay cranes (QCs)...

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Main Authors: Hsien-Pin Hsu, Chia-Nan Wang
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/8/5/764
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spelling doaj-f8f1097429264ceeaaa71b77e8cb1e942020-11-25T03:02:48ZengMDPI AGMathematics2227-73902020-05-01876476410.3390/math8050764Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)Hsien-Pin Hsu0Chia-Nan Wang1Department of Supply Chain Management, National Kaohsiung University of Science and Technology, Kaohsiung 80778, TaiwanDepartment of Industrial Engineering and Management, National Kaohsiung University of Science and Technology, Kaohsiung 81157, TaiwanResources planning is an important task in a supply chain in order to achieve a good result. The better the utilization of resources, especially scarce resources, the better the performance of a supply chain. This research focuses on allocating two scarce resources, i.e., berth and quay cranes (QCs), to ships that call at a container terminal in a maritime supply chain. As global container shipments continue to grow, improving the efficiency of container terminals is important. A two-stage approach is used to find the optimal/near-optimal solution, in which the first stage is devoted to generating alternative ship placement sequences as inputs to the second stage that subsequently employs an event-based heuristic to place ships, resolve overlaps of ships, and assign/adjust QCs so as to develop a feasible solution. For identifying a better approach, various heuristics/metaheuristics, including first-come first-served (FCFS), particle swarm optimization (PSO), improved PSO (PSO2), and multiple PSO (MPSO), have been employed in the first stage, respectively. The experimental results show that combining the MPSO with the event-based heuristic leads to a better result.https://www.mdpi.com/2227-7390/8/5/764berth allocation problem (BAP)quay crane assignment problem (QCAP)metaheuristicmultiple particle swarms optimization (MPSO)
collection DOAJ
language English
format Article
sources DOAJ
author Hsien-Pin Hsu
Chia-Nan Wang
spellingShingle Hsien-Pin Hsu
Chia-Nan Wang
Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)
Mathematics
berth allocation problem (BAP)
quay crane assignment problem (QCAP)
metaheuristic
multiple particle swarms optimization (MPSO)
author_facet Hsien-Pin Hsu
Chia-Nan Wang
author_sort Hsien-Pin Hsu
title Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)
title_short Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)
title_full Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)
title_fullStr Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)
title_full_unstemmed Resources Planning for Container Terminal in a Maritime Supply Chain Using Multiple Particle Swarms Optimization (MPSO)
title_sort resources planning for container terminal in a maritime supply chain using multiple particle swarms optimization (mpso)
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2020-05-01
description Resources planning is an important task in a supply chain in order to achieve a good result. The better the utilization of resources, especially scarce resources, the better the performance of a supply chain. This research focuses on allocating two scarce resources, i.e., berth and quay cranes (QCs), to ships that call at a container terminal in a maritime supply chain. As global container shipments continue to grow, improving the efficiency of container terminals is important. A two-stage approach is used to find the optimal/near-optimal solution, in which the first stage is devoted to generating alternative ship placement sequences as inputs to the second stage that subsequently employs an event-based heuristic to place ships, resolve overlaps of ships, and assign/adjust QCs so as to develop a feasible solution. For identifying a better approach, various heuristics/metaheuristics, including first-come first-served (FCFS), particle swarm optimization (PSO), improved PSO (PSO2), and multiple PSO (MPSO), have been employed in the first stage, respectively. The experimental results show that combining the MPSO with the event-based heuristic leads to a better result.
topic berth allocation problem (BAP)
quay crane assignment problem (QCAP)
metaheuristic
multiple particle swarms optimization (MPSO)
url https://www.mdpi.com/2227-7390/8/5/764
work_keys_str_mv AT hsienpinhsu resourcesplanningforcontainerterminalinamaritimesupplychainusingmultipleparticleswarmsoptimizationmpso
AT chiananwang resourcesplanningforcontainerterminalinamaritimesupplychainusingmultipleparticleswarmsoptimizationmpso
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