A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty

Scarce resources may cause delay in completion of a project on time. In this research, a multi-objective decision making model is developed for scheduling multi-mode resource constraint scheduling problem in the presence of uncertain resources. The objectives are profit, execution cost and completio...

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Main Authors: Aidin Delgoshaei, Aisa Aram, Vahid Mantegh, Sepehr Hanjani, Amir Hossein Nasiri, Fatemeh Shirmohamadi
Format: Article
Language:English
Published: Kharazmi University 2019-08-01
Series:International Journal of Supply and Operations Management
Subjects:
Online Access:http://www.ijsom.com/article_2791_ca0e6881d0aeffbb30deac41cbcc922e.pdf
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spelling doaj-96d976028449423eafadb3cf591594402021-09-29T04:17:29ZengKharazmi UniversityInternational Journal of Supply and Operations Management2383-13592383-25252019-08-016321323010.22034/2019.3.32791A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource UncertaintyAidin Delgoshaei0Aisa Aram1Vahid Mantegh2Sepehr Hanjani3Amir Hossein Nasiri4Fatemeh Shirmohamadi5Department of Mechanical and Manufacturing Engineering, Faculty of Engineering, University of Putra, Serdang, MalaysiaDepartment of Mechanical and Manufacturing Engineering, Faculty of Engineering, University of Putra, Serdang, MalaysiaDepartment of Mechanical and Manufacturing Engineering, Faculty of Engineering, University of Putra, Serdang, MalaysiaDepartment of Mechanical and Manufacturing Engineering, Faculty of Engineering, University of Putra, Serdang, MalaysiaDepartment of Mechanical and Manufacturing Engineering, Faculty of Engineering, University of Putra, Serdang, MalaysiaDepartment of Mechanical and Manufacturing Engineering, Faculty of Engineering, University of Putra, Serdang, MalaysiaScarce resources may cause delay in completion of a project on time. In this research, a multi-objective decision making model is developed for scheduling multi-mode resource constraint scheduling problem in the presence of uncertain resources. The objectives are profit, execution cost and completion time. To develop this idea, a multi-objective non-linear mixed integer programming model is developed where resource availability is not deterministic and expressed by triangular probability function. In continue a multi-objective weighting genetic algorithm is proposed (MOWGA) which is flexible enough to be used in real projects. To verify the performance of the proposed method, a number of experiments are solved and results are analyzed. The outcomes, indicated that while resource uncertainty increases, higher complexity in schedules is observed. It is also found that optimizing one objective function is not necessarily resulted in optimizing the others. The MOWGA is then successfully applied for a project with real data.http://www.ijsom.com/article_2791_ca0e6881d0aeffbb30deac41cbcc922e.pdfproject planningmulti-mode schedulingmulti-objective weighting genetic algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Aidin Delgoshaei
Aisa Aram
Vahid Mantegh
Sepehr Hanjani
Amir Hossein Nasiri
Fatemeh Shirmohamadi
spellingShingle Aidin Delgoshaei
Aisa Aram
Vahid Mantegh
Sepehr Hanjani
Amir Hossein Nasiri
Fatemeh Shirmohamadi
A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty
International Journal of Supply and Operations Management
project planning
multi-mode scheduling
multi-objective weighting genetic algorithm
author_facet Aidin Delgoshaei
Aisa Aram
Vahid Mantegh
Sepehr Hanjani
Amir Hossein Nasiri
Fatemeh Shirmohamadi
author_sort Aidin Delgoshaei
title A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty
title_short A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty
title_full A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty
title_fullStr A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty
title_full_unstemmed A Multi-Objectives Weighting Genetic Algorithm for Scheduling Resource-Constraint Project Problem in the Presence of Resource Uncertainty
title_sort multi-objectives weighting genetic algorithm for scheduling resource-constraint project problem in the presence of resource uncertainty
publisher Kharazmi University
series International Journal of Supply and Operations Management
issn 2383-1359
2383-2525
publishDate 2019-08-01
description Scarce resources may cause delay in completion of a project on time. In this research, a multi-objective decision making model is developed for scheduling multi-mode resource constraint scheduling problem in the presence of uncertain resources. The objectives are profit, execution cost and completion time. To develop this idea, a multi-objective non-linear mixed integer programming model is developed where resource availability is not deterministic and expressed by triangular probability function. In continue a multi-objective weighting genetic algorithm is proposed (MOWGA) which is flexible enough to be used in real projects. To verify the performance of the proposed method, a number of experiments are solved and results are analyzed. The outcomes, indicated that while resource uncertainty increases, higher complexity in schedules is observed. It is also found that optimizing one objective function is not necessarily resulted in optimizing the others. The MOWGA is then successfully applied for a project with real data.
topic project planning
multi-mode scheduling
multi-objective weighting genetic algorithm
url http://www.ijsom.com/article_2791_ca0e6881d0aeffbb30deac41cbcc922e.pdf
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