A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies

This study aims to propose a conceptual decision making framework for prioritising port performance improvement strategies. It can be achieved by the concepts of benchmarking-best practices using analytic hierarchy process (AHP) incorporating a fuzzy technique for order preference by similarity to i...

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Main Authors: Min Ho Ha, Zaili Yang, Man Wook Heo
Format: Article
Language:English
Published: Elsevier 2017-09-01
Series:Asian Journal of Shipping and Logistics
Subjects:
AHP
Online Access:http://www.sciencedirect.com/science/article/pii/S2092521217300408
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spelling doaj-ed057455b2f34877975bd238e11453d52020-11-24T22:01:43ZengElsevierAsian Journal of Shipping and Logistics2092-52122017-09-0133310511610.1016/j.ajsl.2017.09.001A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement StrategiesMin Ho Ha0Zaili Yang1Man Wook Heo2Postdoctoral Research Fellow, Nanyang Technological UniversityProfessor, Liverpool John Moores UniversityMinistry of Oceans and Fisheries (MOF), Republic of KoreaThis study aims to propose a conceptual decision making framework for prioritising port performance improvement strategies. It can be achieved by the concepts of benchmarking-best practices using analytic hierarchy process (AHP) incorporating a fuzzy technique for order preference by similarity to ideal solution (FTOPSIS) method. The leading performer (i.e. Busan New Port) and the poor performer (i.e. Busan North Port) are analysed as real cases to demonstrate the feasibility of the proposed methodology. The findings from the case study reveal that the terminal operating company (TOC) 2 represents a strong desire to choose the given strategies to improve its performance, followed by TOC3, while TOC1 has the least intention to adopt the given strategies. Amongst the 30 strategies of a benefit feature, optimisation of yard stacking planning (S4) is ascertained as the most crucial one to be implemented, followed by optimisation of berth to yard operations (S27) and optimising crane availability (S2). On the other hand, the formal training/education programmes from external professionals (S7) is identified as the most useful strategy among the 8 cost items. The results yielded by the framework present the ranking of strategy options in terms of their preference to different TOCs, which enables decision makers to find optimal solutions to improve performance under their own dynamic business environments.http://www.sciencedirect.com/science/article/pii/S2092521217300408Port PerformanceDecision Making FrameworkBenchmarkingAHPTOPSIS
collection DOAJ
language English
format Article
sources DOAJ
author Min Ho Ha
Zaili Yang
Man Wook Heo
spellingShingle Min Ho Ha
Zaili Yang
Man Wook Heo
A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies
Asian Journal of Shipping and Logistics
Port Performance
Decision Making Framework
Benchmarking
AHP
TOPSIS
author_facet Min Ho Ha
Zaili Yang
Man Wook Heo
author_sort Min Ho Ha
title A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies
title_short A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies
title_full A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies
title_fullStr A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies
title_full_unstemmed A New Hybrid Decision Making Framework for Prioritising Port Performance Improvement Strategies
title_sort new hybrid decision making framework for prioritising port performance improvement strategies
publisher Elsevier
series Asian Journal of Shipping and Logistics
issn 2092-5212
publishDate 2017-09-01
description This study aims to propose a conceptual decision making framework for prioritising port performance improvement strategies. It can be achieved by the concepts of benchmarking-best practices using analytic hierarchy process (AHP) incorporating a fuzzy technique for order preference by similarity to ideal solution (FTOPSIS) method. The leading performer (i.e. Busan New Port) and the poor performer (i.e. Busan North Port) are analysed as real cases to demonstrate the feasibility of the proposed methodology. The findings from the case study reveal that the terminal operating company (TOC) 2 represents a strong desire to choose the given strategies to improve its performance, followed by TOC3, while TOC1 has the least intention to adopt the given strategies. Amongst the 30 strategies of a benefit feature, optimisation of yard stacking planning (S4) is ascertained as the most crucial one to be implemented, followed by optimisation of berth to yard operations (S27) and optimising crane availability (S2). On the other hand, the formal training/education programmes from external professionals (S7) is identified as the most useful strategy among the 8 cost items. The results yielded by the framework present the ranking of strategy options in terms of their preference to different TOCs, which enables decision makers to find optimal solutions to improve performance under their own dynamic business environments.
topic Port Performance
Decision Making Framework
Benchmarking
AHP
TOPSIS
url http://www.sciencedirect.com/science/article/pii/S2092521217300408
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