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Computación y Sistemas
versión On-line ISSN 2007-9737versión impresa ISSN 1405-5546
Comp. y Sist. vol.19 no.1 Ciudad de México ene./mar. 2015
https://doi.org/10.13053/CyS-19-1-1921
Artículos
Finding Pure Nash Equilibrium for the Resource-Constrained Project Scheduling Problem
Guillermo De Ita Luna, Fernando Zacarias-Flores and L. Carlos Altamirano-Robles
Computer Science Department, Autonomous University of Puebla (BUAP), México. deita@cs.buap.mx, altamirano@cs.buap.mx, fzflores@yahoo.com.mx
Corresponding author is Fernando Zacarias-Flores.
Article received on 12/12/2013.
Accepted on 27/11/2014.
Abstract
The paper focuses on solving the Resource-Constrained Project Scheduling (RCPS) problem with a method based on intelligent agents. Parallelism for performing the tasks is allowed. Common and limited resources are available to all agents. The agents are non-cooperative and compete with each other for the use of common resources, thereby forming instances of RCPS problem. We analyze the global joint interaction of scheduling via a congestion network and seek to arrive at stable assignments of scheduling. For this class of network, stable assignments of scheduling correspond to a pure Nash equilibrium, and we show that in this case there is a guarantee of obtaining a pure Nash equilibrium in polynomial time complexity. The pure Nash equilibrium point for this congestion network will be a local optimum in the neighborhood structure of the projects, where no project can improve its completion time without negatively affecting the completion time of the total system. In our case, each state of the neighborhood represents an instance of the RCPS problem, and for solving such problem, we apply a novel greedy heuristic. It has a polynomial time complexity and works similar to the well-knowing heuristic NEH.
Keywords: Intelligent agents, congestion network, pure Nash equilibrium, RCPS problem, multi-scheduling, greedy heuristic NEH.
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