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A Hybrid Differential Evolution Self-Organizing-Map Algorithm for Optimization of Expensive Black-box Functions

机译:混合差分进化自组织映射算法用于优化黑盒功能

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A hybrid optimization algorithm, DE-SOM, which is a combination of Differential Evolution (DE) and Self Organizing Maps (SOM) is introduced. SOM, an unsupervised learning algorithm, is used to accelerate the convergence of DE. We compare the performance of DE, DE-SOM and Genetic Algorithm (GA) on a suite of 15 widely used benchmark functions. A subset of these benchmark functions are used in higher dimensional (10-D and 30-D) tests. DE-SOM outperforms both DE and GA across all benchmark functions in the test suite by obtaining the same quality of solutions with lower number of function evaluations. In test cases where GA converged with lesser function evaluations, the DE-SOM function value was more optimal. Similar results were obtained for higher dimensional benchmark functions. We also demonstrate the usefulness of this algorithm using an airfoil optimization example problem that involves design for maximum aerodynamic efficiency.
机译:介绍了一种混合优化算法DE-SOM,它是差分进化(DE)和自组织映射(SOM)的组合。 SOM是一种无监督的学习算法,用于加速DE的收敛。我们在一套15种广泛使用的基准功能上比较了DE,DE-SOM和遗传算法(GA)的性能。这些基准功能的子集用于更高维度的测试(10维和30维)。通过获得功能评估次数更少的相同质量的解决方案,DE-SOM在测试套件中的所有基准测试功能上均胜过DE和GA。在GA收敛但功能评估次数较少的测试案例中,DE-SOM功能值更为理想。对于高维基准函数,也获得了相似的结果。我们还使用机翼优化示例问题论证了该算法的有效性,该问题涉及涉及最大空气动力学效率的设计。

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