Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm

The purpose of this research study is to solve a four-objective optimization problem in the construction industry using a hybrid model that combines the slime mould algorithm (SMA) with opposition-based learning. This hybrid model is known as the adaptive opposition slime mould algorithm (AOSMA). Tw...

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Main Authors: Pham Vu Hong Son, Luu Ngoc Quynh Khoi
Format: Article
Language:English
Published: Wiley 2023-01-01
Series:Advances in Civil Engineering
Online Access:http://dx.doi.org/10.1155/2023/7228896
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author Pham Vu Hong Son
Luu Ngoc Quynh Khoi
author_facet Pham Vu Hong Son
Luu Ngoc Quynh Khoi
author_sort Pham Vu Hong Son
collection DOAJ
description The purpose of this research study is to solve a four-objective optimization problem in the construction industry using a hybrid model that combines the slime mould algorithm (SMA) with opposition-based learning. This hybrid model is known as the adaptive opposition slime mould algorithm (AOSMA). Two typical construction projects have introduced time, cost, quality, and safety trade-off (TCQS), which are the factors that have the greatest influence on the completion of a construction project and are represented by optimal results and obtained at Pareto, in order to better illustrate the potential of the proposed model. In order to compare AOSMA with a nondominated sorting genetic algorithm III (NSGA III), multiobjective particle swarm optimization (MOPSO), LHS-based NSGA III, and a hybrid model of MAWA (MAWA-TLBO, MAWA-GA, MAWA-AS, and MAWA-ACS-SGPU) and to assess the model’s potential and viability, performance evaluation indexes are applied. To assist project managers in planning time, cost, quality, and safety for construction investment projects, this study creates a hybrid model.
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publishDate 2023-01-01
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spelling doaj-art-1b93d5cbe4af409a88befd5bb0257efb2025-02-03T01:30:24ZengWileyAdvances in Civil Engineering1687-80942023-01-01202310.1155/2023/7228896Optimization in Construction Management Using Adaptive Opposition Slime Mould AlgorithmPham Vu Hong Son0Luu Ngoc Quynh Khoi1Construction Engineering & Management DepartmentConstruction Engineering & Management DepartmentThe purpose of this research study is to solve a four-objective optimization problem in the construction industry using a hybrid model that combines the slime mould algorithm (SMA) with opposition-based learning. This hybrid model is known as the adaptive opposition slime mould algorithm (AOSMA). Two typical construction projects have introduced time, cost, quality, and safety trade-off (TCQS), which are the factors that have the greatest influence on the completion of a construction project and are represented by optimal results and obtained at Pareto, in order to better illustrate the potential of the proposed model. In order to compare AOSMA with a nondominated sorting genetic algorithm III (NSGA III), multiobjective particle swarm optimization (MOPSO), LHS-based NSGA III, and a hybrid model of MAWA (MAWA-TLBO, MAWA-GA, MAWA-AS, and MAWA-ACS-SGPU) and to assess the model’s potential and viability, performance evaluation indexes are applied. To assist project managers in planning time, cost, quality, and safety for construction investment projects, this study creates a hybrid model.http://dx.doi.org/10.1155/2023/7228896
spellingShingle Pham Vu Hong Son
Luu Ngoc Quynh Khoi
Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm
Advances in Civil Engineering
title Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm
title_full Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm
title_fullStr Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm
title_full_unstemmed Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm
title_short Optimization in Construction Management Using Adaptive Opposition Slime Mould Algorithm
title_sort optimization in construction management using adaptive opposition slime mould algorithm
url http://dx.doi.org/10.1155/2023/7228896
work_keys_str_mv AT phamvuhongson optimizationinconstructionmanagementusingadaptiveoppositionslimemouldalgorithm
AT luungocquynhkhoi optimizationinconstructionmanagementusingadaptiveoppositionslimemouldalgorithm