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Improved evolutionary optimization from genetically adaptive multimethod search

机译:遗传自适应多方法搜索的改进进化优化

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摘要

In the last few decades, evolutionary algorithms have emerged as a revolutionary approach for solving search and optimization problems involving multiple conflicting objectives. Beyond their ability to search intractably large spaces for multiple solutions, these algorithms are able to maintain a diverse population of solutions and exploit similarities of solutions by recombination. However, existing theory and numerical experiments have demonstrated that it is impossible to develop a single algorithm for population evolution that is always efficient for a diverse set of optimization problems. Here we show that significant improvements in the efficiency of evolutionary search can be achieved by running multiple optimization algorithms simultaneously using new concepts of global information sharing and genetically adaptive offspring creation. We call this approach a multialgorithm, genetically adaptive multiobjective, or AMALGAM, method, to evoke the image of a procedure that merges the strengths of different optimization algorithms. Benchmark results using a set of well known multiobjective test problems show that AMALGAM approaches a factor of 10 improvement over current optimization algorithms for the more complex, higher dimensional problems. The AMALGAM method provides new opportunities for solving previously intractable optimization problems.
机译:在过去的几十年中,进化算法已经成为解决涉及多个冲突目标的搜索和优化问题的一种革命性方法。这些算法除了能够搜索难以解决的巨大空间以寻找多个解决方案之外,还能够维持各种解决方案并通过重组利用解决方案的相似性。但是,现有的理论和数值实验表明,不可能开发出一种针对种群进化的算法,该算法对于各种各样的优化问题始终有效。在这里,我们表明,通过使用全局信息共享和遗传适应后代创建的新概念,同时运行多个优化算法,可以实现进化搜索效率的显着提高。我们称这种方法为多算法,遗传自适应多目标或AMALGAM方法,以唤起融合了不同优化算法优势的过程图像。使用一组众所周知的多目标测试问题进行的基准测试结果表明,对于更复杂,更高维度的问题,AMALGAM比当前的优化算法提高了10倍。 AMALGAM方法为解决以前难以解决的优化问题提供了新的机会。

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