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Abstract:
There is a lot of research in genetic algorithm about structural optimization. But as far as the large multi-goal program concerned it here limited the application of genetic algorithm for the reason of its specialty and large calculation. In order to explore new resolution, the author proposed a combining algorithm for structural optimization, which is based on genetic algorithm and gradient algorithm: Use gradient algorithm to superpose, get a result, improve the herd of genetic algorithm with this result, then compare the superior one of genetic algorithm with the root of gradient algorithm, choose the best point to be the incipient point of the next step of super position. With this method, it can keep the best root of all the course, and also it can speed up searching, and keep the best global root. Numerical examples show that the combining algorithm possesses both the merit of genetic algorithm on strong global searching ability and gradient algorithm.
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Year: 2004
Volume: 3
Page: 2122-2126
Language: Chinese
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 6
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