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Optimal strategy of searching FPD weights scanning matrix using GA-PSO

Optimal strategy of searching FPD weights scanning matrix using GA-PSO
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摘要 This paper discusses a kind of optimal method used for searching flat panel display (FPD) scanning matrix. The method adopts bionic algorithm: genetic algorithm (GA) and particle swarm optimization (PSO) algorithm. The method using single GA is more time-consuming, and the search efficiency is low in later evolution; the PSO algorithm is easily falling into the local optimal solution and appears the premature convergent phenomenon. Hence, a hybrid approach of GAPSO is found to optimize the search for high grayscale weights scanning matrix. Finally in the acceptable time, it finds a weight scanning matrix (WSM) of 256 gray scales with Matlab, whose scanning efficiency reaches 94.73% and the linearity is very good. This paper discusses a kind of optimal method used for searching flat panel display (FPD) scanning matrix. The method adopts bionic algorithm: genetic algorithm (GA) and particle swarm optimization (PSO) algorithm. The method using single GA is more time-consuming, and the search efficiency is low in later evolution; the PSO algorithm is easily falling into the local optimal solution and appears the premature convergent phenomenon. Hence, a hybrid approach of GAPSO is found to optimize the search for high grayscale weights scanning matrix. Finally in the acceptable time, it finds a weight scanning matrix (WSM) of 256 gray scales with Matlab, whose scanning efficiency reaches 94.73% and the linearity is very good.
出处 《Journal of Shanghai University(English Edition)》 CAS 2011年第4期292-296,共5页 上海大学学报(英文版)
基金 supported by the Innovation Foundation of Shanghai University(Grant No.SHUCX112371)
关键词 fiat panel display (FPD) weights scanning matrix (WSM) genetic algorithm (GA) particle swarm optimization (PSO) algorithm fiat panel display (FPD), weights scanning matrix (WSM), genetic algorithm (GA), particle swarm optimization (PSO) algorithm
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