Title :
Hybrid coevolutionary programming for Nash equilibrium search in games with local optima
Author :
Son, You Seok ; Baldick, Ross
Author_Institution :
Lower Colorado River Authority, Austin, TX, USA
Abstract :
The conventional local optimization path and coevolutionary processes are studied when "local Nash equilibrium (NE) traps" exist. Conventional NE search algorithms in games with local optima can misidentify NE by following a local optimization path. We prove that any iterative NE search algorithms based on local optimization cannot differentiate real NE and "local NE traps". Coevolutionary programming, a parallel and global search algorithm, is applied to overcome this problem. In order to enhance the poor convergence of simple coevolutionary programming, hybrid coevolutionary programming is suggested. The conventional NE algorithms, simple coevolutionary programming, and hybrid coevolutionary algorithms are tested through a simple numerical example and transmission-constrained electricity market examples.
Keywords :
game theory; genetic algorithms; power markets; Nash equilibrium search; electricity market; evolutionary game; genetic algorithm; hybrid coevolutionary programming; iterative search algorithm; local optimization path; Ash; Convergence; Electricity supply industry; Game theory; Genetic algorithms; Genetic programming; Iterative algorithms; Nash equilibrium; Parallel programming; Testing; Coevolutionary programming; NE; Nash equilibrium; electricity market; evolutionary game; game theory; genetic algorithm;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2004.832862