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A Self-organizing Genetic Algorithm for UWB Microstrip Antenna Optimization Using a Machine Learning Technique

机译:基于机器学习技术的超宽带微带天线优化的自组织遗传算法

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This paper presents an application of a machine learning technique to enhance a multi-objective genetic algorithm to estimate fitness function behaviors from a set of experiments made in laboratory to analyze a microstrip antenna used in ultra-wideband (UWB) wireless devices. These function behaviors are related to three objectives: bandwidth, return loss and central frequency deviation. Each objective (modeled as dependent of an antenna slit dimensions Ls and Ws) is used inside an aggregate adaptive weighted fitness function that estimates the multi-objective behavior in the algorithm. The final results were compared with the ones obtained with a similar antenna modeled in a simulator program and with the ones of a real prototype antenna built from the optimal values obtained after the optimization. The final comparison has shown a promising gain for the designed antenna in the analyzed frequencies.
机译:本文介绍了一种机器学习技术的应用,该技术可增强多目标遗传算法,以从实验室进行的一组实验中估计适应度功能行为,以分析超宽带(UWB)无线设备中使用的微带天线。这些功能行为与三个目标有关:带宽,回波损耗和中心频率偏差。每个目标(建模为取决于天线缝隙尺寸Ls和Ws)在聚合自适应加权适应度函数内使用,该函数在算法中估计多目标行为。将最终结果与使用在模拟器程序中建模的相似天线所获得的结果以及根据优化后获得的最佳值构建的真实原型天线所获得的结果进行比较。最终的比较表明,在分析的频率下,设计天线的增益很有希望。

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