Publication | Open Access
A hybrid approach using entropy and TOPSIS to select key drivers for a successful and sustainable lean construction implementation
94
Citations
125
References
2020
Year
Total Quality ManagementLean ConceptEngineeringIndustrial EngineeringProject ManagementGreen BuildingMultiple-criteria Decision AnalysisSocial SciencesSustainable DesignBuilt EnvironmentFuzzy Multi-criteria Decision-makingManagementLean ThinkingSystems EngineeringMulticriteria EvaluationQuantitative ManagementLean ConstructionHybrid ApproachDesignKey DriversLean Software DevelopmentIndustrial DesignCivil EngineeringSustainable ConstructionCritical DriversConstruction ManagementConstruction EngineeringLean Manufacturing
Successful implementation of the lean concept as a sustainable approach in the construction industry requires the identification of critical drivers in lean construction. Despite this significance, the number of in-depth studies toward understanding the considerable drivers of lean construction implementation is quite limited. There is also a shortage of methodologies for identifying key drivers. To address these challenges, this paper presents a list of all essential drivers within three aspects of sustainability (social, economic, and environmental) and proposes a novel methodology to rank the drivers and identify the key drivers for successful and sustainable lean construction implementation. In this regard, the entropy weighted Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) was employed in this research. Subsequently, an empirical study was conducted within the Malaysian construction industry to demonstrate the proposed method. Moreover, sensitivity analysis and comparison with the existing method were engaged to validate the stability and accuracy of the achieved results. The significant results obtained in this study are as follows: presenting, verifying and ranking of 63 important drivers; identifying 22 key drivers; proposing an MCDM model of key drivers. The outcomes show that the proposed method in this study is an effective and accurate tool that could help managers make better decisions.
| Year | Citations | |
|---|---|---|
Page 1
Page 1