A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design

This study compared swarm-based algorithms in terms of their effectiveness in improving the design of facilities in container terminals (CTs). The design was conducted within the framework of stochastic discrete optimization and involved determining the number of equipment needed in CTs by consi...

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Main Authors: Febri Zukhruf, Russ Bona Frazila, Wijang Widhiarso
Format: Article
Language:English
Published: Universitas Indonesia 2020-04-01
Series:International Journal of Technology
Subjects:
Online Access:http://ijtech.eng.ui.ac.id/article/view/2090
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spelling doaj-5b42a5d6770e499d8c9002dc9c40b87c2020-11-25T02:02:23ZengUniversitas IndonesiaInternational Journal of Technology2086-96142087-21002020-04-0111237438710.14716/ijtech.v11i2.20902090A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal DesignFebri Zukhruf0Russ Bona Frazila1Wijang Widhiarso2Faculty of Civil and Environmental Engineering, Institut Teknologi Bandung, Jl. Ganesha No. 10, Bandung 40132, IndonesiaFaculty of Civil and Environmental Engineering, Institut Teknologi Bandung, Jl. Ganesha No. 10, Bandung 40132, IndonesiaFaculty of Information Technology, Multi Data Palembang Bachelor Program, Palembang 30113, IndonesiaThis study compared swarm-based algorithms in terms of their effectiveness in improving the design of facilities in container terminals (CTs). The design was conducted within the framework of stochastic discrete optimization and involved determining the number of equipment needed in CTs by considering variations in demand and the productivity of facilities—issues that are rarely elaborated in CT design. Variations were identified via Monte Carlo simulation characterized by a particular distribution. The conflicting issue due to increments in equipment investment that possibly cause the distribution delays was also modeled, specifically in relation to the increasing number of trucks used in terminals. Given that the optimization problem is typified by numerous combinations of actions, the swarm-based algorithms were deployed to develop a feasible solution. A new variant of glowworm swarm optimization (GSO) was then proposed and compared with particle swarm optimization (PSO) algorithms. The numerical results showed that the performance of the proposed GSO is superior to that of PSO algorithms. http://ijtech.eng.ui.ac.id/article/view/2090design of container terminal facilitiesglowworm swarm optimizationparticle swarm optimizationstochastic optimization.
collection DOAJ
language English
format Article
sources DOAJ
author Febri Zukhruf
Russ Bona Frazila
Wijang Widhiarso
spellingShingle Febri Zukhruf
Russ Bona Frazila
Wijang Widhiarso
A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design
International Journal of Technology
design of container terminal facilities
glowworm swarm optimization
particle swarm optimization
stochastic optimization.
author_facet Febri Zukhruf
Russ Bona Frazila
Wijang Widhiarso
author_sort Febri Zukhruf
title A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design
title_short A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design
title_full A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design
title_fullStr A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design
title_full_unstemmed A Comparative Study on Swarm-based Algorithms to Solve the Stochastic Optimization Problem in Container Terminal Design
title_sort comparative study on swarm-based algorithms to solve the stochastic optimization problem in container terminal design
publisher Universitas Indonesia
series International Journal of Technology
issn 2086-9614
2087-2100
publishDate 2020-04-01
description This study compared swarm-based algorithms in terms of their effectiveness in improving the design of facilities in container terminals (CTs). The design was conducted within the framework of stochastic discrete optimization and involved determining the number of equipment needed in CTs by considering variations in demand and the productivity of facilities—issues that are rarely elaborated in CT design. Variations were identified via Monte Carlo simulation characterized by a particular distribution. The conflicting issue due to increments in equipment investment that possibly cause the distribution delays was also modeled, specifically in relation to the increasing number of trucks used in terminals. Given that the optimization problem is typified by numerous combinations of actions, the swarm-based algorithms were deployed to develop a feasible solution. A new variant of glowworm swarm optimization (GSO) was then proposed and compared with particle swarm optimization (PSO) algorithms. The numerical results showed that the performance of the proposed GSO is superior to that of PSO algorithms. 
topic design of container terminal facilities
glowworm swarm optimization
particle swarm optimization
stochastic optimization.
url http://ijtech.eng.ui.ac.id/article/view/2090
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