2004
DOI: 10.1007/s00521-004-0407-2
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A neurocomputing model for real coded genetic algorithm with the minimal generation gap

Abstract: This paper proposes using neural networks (NN) to implement a real coded genetic algorithm (GA) with the center of gravity crossover (CGX) and the minimal generation gap (MGG) model. With all genetic operations of GA including selection, crossover, mutation and evaluation implemented with NN modules, this approach can realize in parallel genetic operations on the whole chromosome to achieve the maximum parallel realization potential of the MGG model of the GA. At the same time expensive hardware for field prog… Show more

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Cited by 5 publications
(1 citation statement)
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“…The x-and y-gradient coils were designed as a combination of a circular arc and third-order Bezier curve with the position and center angle optimized using a genetic algorithm with a minimal generation gap model (GA/MGG) [39,40]. The maximum number of turns was 30 and the coil gap was set to 120 mm.…”
Section: B Gradient Coil Designmentioning
confidence: 99%
“…The x-and y-gradient coils were designed as a combination of a circular arc and third-order Bezier curve with the position and center angle optimized using a genetic algorithm with a minimal generation gap model (GA/MGG) [39,40]. The maximum number of turns was 30 and the coil gap was set to 120 mm.…”
Section: B Gradient Coil Designmentioning
confidence: 99%