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Conflict Resolution in Construction Projects Using Nonzero-Sum Fuzzy Bimatrix Games

  • Mehrdad Sharif
  • Reza Kerachian
Research Paper
  • 27 Downloads

Abstract

The large damages that result from construction conflicts due to delays, cost overruns and decreasing productivity justify developing new models and decision support systems for resolving conflicts in large construction projects. Since most games take place in uncertain environments, the payoffs cannot be exactly assessed in many real-world problems. In these games, the uncertainty is mainly due to the inaccuracy of information and fuzzy comprehension of situations by players. In such cases, it is reasonable to model the problems as games with fuzzy payoffs. In this paper, two methodologies are proposed for conflict resolution in construction projects using nonzero-sum games with fuzzy payoffs. The first methodology transforms the original matrix game into a family of its α-cut equivalents. The second methodology introduces fuzzy goals for payoffs in order to incorporate ambiguity of player’s judgments. In this game, each player tries to maximize the degree of attainment of his fuzzy goal. The methodologies are applied to a large oil project in the Persian Gulf. The results show that the proposed methodology can be effectively used for resolving contractual conflicts between owners and contractors in a construction project.

Keywords

Construction disputes Fuzzy bimatrix games Conflict resolution Bilinear programming Fuzzy payoff 

Notes

Acknowledgements

This study was partially supported by Pars Oil and Gas Company, Iran. The contribution of managers and experts of this company as well as the technical contribution of Dr. Tahmasb Mazaheri are hereby acknowledged.

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Copyright information

© Shiraz University 2018

Authors and Affiliations

  1. 1.Department of Civil and Environmental EngineeringUniversity of AlbertaEdmontonCanada
  2. 2.School of Civil Engineering and Center of Excellence for Engineering and Management of Civil Infrastructures, College of EngineeringUniversity of TehranTehranIran

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