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Support Vector Driven Genetic Algorithm for the Design of Circular Polarized Microstrip Antenna

机译:支持向量驱动遗传算法在圆极化微带天线设计中的应用

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摘要

In this paper, a hybrid soft computing method for designing specific microstrip antenna is presented. Evolutionary algorithm such as genetic algorithm (GA) is one of the promising ways of finding global optimum solution from a multivariate nonlinear feature space. Being a stochastic iterative algorithm, it requires much computation power when the function to be optimized is complex and time consuming. Various meta-modelling techniques such as neural network, response surface methods, kriging, etc. can be used to model the process under optimization in order to reduce the computational expenses. In this paper, we investigate one such technique – support vector regression (SVR) – to model the complex analytical process. The model, thus obtained, is used for optimization using genetic algorithms. This approach is demonstrated for the design of circular polarized microstrip antenna at 2.6 GHz band. The results of SVR model are compared with other meta-models generated with neural network and response surface methodology.
机译:本文提出了一种用于设计特定微带天线的混合软计算方法。诸如遗传算法(GA)的进化算法是从多元非线性特征空间中寻找全局最优解的有前途的方法之一。作为一种随机迭代算法,当要优化的功能复杂且耗时时,它需要大量的计算能力。可以使用各种元建模技术(例如神经网络,响应面方法,克里金法等)对优化下的过程进行建模,以减少计算费用。在本文中,我们研究了一种这样的技术-支持向量回归(SVR)-对复杂的分析过程进行建模。由此获得的模型被用于使用遗传算法的优化。这种方法在2.6 GHz频段的圆极化微带天线设计中得到了证明。将SVR模型的结果与通过神经网络和响应面方法生成的其他元模型进行比较。

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