Tandem application of exploration factors and variantspin mechanism on steady state genetic algorithms for loss minimisation in power system (original) (raw)
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The utilization of genetic algorithm (GA) in tackling engineering problems has been a major issue arousing the curiosity of researcher and practitioner system and engineering research, operation research and management sciences in last few years. The various improvement occurs in it year by year, and researches has been done over genetic algorithm to improve its limitation and to process well. In view of this, this paper present a state-of-the-art survey of application of GA technique in engineering with focus on system power optimization using GA in last few years to understand what changes has been done till now and its improvement of various papers that are searched. The scope of the paper is centered between the years 2000-2016.