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A dynamic genetic algorithm based on continuous neural networks for a kind of non-convex optimization problems
Authors:Qing Tao  Xin Liu  Meisheng Xue
Institution:

a Department of Automation, University of Science and Technology of China, Hefei 230027, PR China

b Department of Physics, Paobing Academy, Hefei 230031, PR China

Abstract:This paper presents a kind of dynamic genetic algorithm based on a continuous neural network, which is intrinsically the steepest decent method for constrained optimization problems. The proposed algorithm combines the local searching ability of the steepest decent methods with the global searching ability of genetic algorithms. Genetic algorithms are used to decide each initial point of the steepest decent methods so that all the initial points can be searched intelligently. The steepest decent methods are employed to decide the fitness of genetic algorithms so that some good initial points can be selected. The proposed algorithm is motivated theoretically and biologically. It can be used to solve a non-convex optimization problem which is quadratic and even more non-linear. Compared with standard genetic algorithms, it can improve the precision of the solution while decreasing the searching scale. In contrast to the ordinary steepest decent method, it can obtain global sub-optimal solution while lessening the complexity of calculation.
Keywords:Author Keywords: Genetic algorithm  Neural networks  The steepest decent method  Quadratic programming problems
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