Proceedings Article10.1109/IITA.2008.99
Multi-Objective Optimization in Construction Project Based on a Hierarchical Subpopulation Particle Swarm Optimization Algorithm
Weibo Wang,Quanyuan Feng +1 more
- 20 Dec 2008
- Vol. 1, pp 746-750
13
TL;DR: The hierarchical subpopulation particle swarm optimization algorithm (HSPSO) proposed in this paper is proposed to solve time-cost-quality trade-off problems and exhaustive enumeration is given to verify the effectiveness of the models and the feasibility of solution method.
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Abstract: Comprehensive trade-off control on construction time, cost and quality is main aspect of construction project management, and it is significant for improving the benefits of construction projects. This paper presents mathematical models for time, cost and quality separately, and a multi-objective optimization model for time-cost-quality trade-off optimization is set up by synthesizing weighted single-objective models. In a case study, comparing to standard particle swarm optimization (SPSO) and differential evolution algorithm (DE), the most satisfied decision results can be obtained by applying the hierarchical subpopulation particle swarm optimization algorithm (HSPSO) proposed in this paper to solve time-cost-quality trade-off problems. Finally, exhaustive enumeration is given to verify the effectiveness of the models and the feasibility of solution method.
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Citations
A robust time-cost-quality-energy-environment trade-off with resource-constrained in project management: A case study for a bridge construction project
TL;DR: In this article , the authors investigated the time-cost-quality-energy-environment problem in executing projects and practically indicates its implementation capability in the form of a case study of a bridge construction project in Tehran, Iran.
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Investigating associations among performance criteria in Green Building projects
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Residential Building Construction: State-of-the-Art Review
Ali M. Memari,Patrick H Huelman,Lisa D. Iulo,Joseph Laquatra,Carlos Martin,Andrew P. McCoy,Isabelina Nahmens,Tom Williamson +7 more
TL;DR: In this article, the authors present an overview of the most current topics of interest related to the field of housing and residential building construction, focusing on the need for renewed research and development efforts, outside-the-box thinking related to financial and investment structures for housing, improved models for adopting innovative technologies in residential construction, new construction management approaches, incorporation of more advanced building science in conjunction with advanced engineered features and architectural design.
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3 – Particle Swarm Optimization in Civil Infrastructure Systems: State-of-the-Art Review
Kasthurirangan Gopalakrishnan
- 01 Jan 2013
TL;DR: This chapter presents a state-of-the-art review of PSO applications in civil infrastructure systems reported mainly in archival journals and conference proceedings from 1995 (the year ofPSO’s inception) until now.
13
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