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Profit distribution in IPD projects based on weight fuzzy cooperative games

    Shuwen Guo Affiliation
    ; Junwu Wang Affiliation

Abstract

Integrated Project Delivery (IPD) is regarded as an effective project delivery method that can deal with the challenge of the rapid development of the architecture, engineering, and construction (AEC) industry. In the IPD team, the alliance profit is not distributed fairly and effectively due to uncertainty, preventing the achievement of the IPD project goals. This study focuses on optimizing the profit distribution among stakeholders in IPD projects and uses quadratic programming models to solve fuzzy cooperative games in the IPD. A payoff function is used in the fuzzy alliance to determine the characteristics of the interval-valued fuzzy numbers, and different weights of the alliance and the efficiency of the player’s participation in the IPD are considered in the profit distribution. A case study is conducted, and the results of the proposed method are compared with those of crisp cooperative games. The results show that the fuzzy cooperative game increases the profit of participants in IPD projects. It is more practical to use weight fuzzy cooperative games than crisp games to express imputation. Moreover, the quadratic programming models and methods result in a fair and efficient profit distribution scheme in IPD projects.


First published online 31 December 2021

Keyword : profit distribution, integrated project delivery, fuzzy cooperative game, weight of alliance, interval-valued fuzzy numbers, quadratic programming

How to Cite
Guo, S., & Wang, J. (2022). Profit distribution in IPD projects based on weight fuzzy cooperative games. Journal of Civil Engineering and Management, 28(1), 68–80. https://doi.org/10.3846/jcem.2021.16156
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Jan 11, 2022
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