|
计算机应用研究 2011
Adaptive clone and suppression artificial immune algorithm
|
Abstract:
Analyzed the reasons of the traditional artificial immune algorithm easily falling into local extreme point or premature convergence in the optimization process. This paper put forward a novel artificial immune algorithm, adaptive clone and suppression artificial immune algorithm (ACSAIA). The algorithm took into account two factors of antibody affinity and concentration of antibody, and gave an adaptive operator to adjust them. Comparing with the corresponding evolutionary algorithm, ACSAIA could enhance the diversity of the population, avoid prematurity and solve deceptive problems to some extent. Meanwhile it had high convergence speed. The experiments show the proposed algorithm is superior to the traditional artificial immune algorithm and standard genetic algorithm in convergence speed and optimization performance.