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Compact Microstrip Dual-Band Bandpass Filters Design Using Genetic-Algorithm Techniques

机译:使用遗传算法技术的紧凑型微带双频带通滤波器设计

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An optimization scheme based on hybrid-coded genetic-algorithm (GA) techniques is presented to design compact dual-band bandpass filters with microstrip lines. A representation scheme is proposed to represent an arbitrary microstrip circuit as a set of data structures. Each data structure in the set describes a simple two-port network with the corresponding connection method and electrical parameters. The optimization algorithm based on conventional GAs is then applied to simultaneously search for the appropriate circuit topology and the corresponding electrical parameters with dual-band characteristic. Two examples are designed and implemented to validate the proposed algorithm. In the first example, the 3-dB fractional bandwidth of the low and high bands is 35percent and 17percent, respectively. It has return losses larger than 10 dB from 2.14 to 2.96 and 5.14 to 6.06 GHz. In the second example, the 3-dB fractional bandwidth of the low and high bands is 9.9percent and 7.9percent, respectively. The return losses are larger than 10 dB from 3.37 to 3.64 and 5.27 to 5.62 GHz. The sizes of the proposed filters are nearly half as small as those of the filters presented before. All the studies are completed on a computer with a 2.4-GHz microprocessor, and the computing time of two examples is 6 and 3 min, respectively.
机译:提出了一种基于混合编码遗传算法(GA)技术的优化方案,以设计具有微带线的紧凑型双频带带通滤波器。提出了一种表示方案,以将任意微带电路表示为一组数据结构。集合中的每个数据结构都描述了一个简单的两端口网络,并带有相应的连接方法和电气参数。然后将基于常规GA的优化算法应用于同时搜索适当的电路拓扑和具有双频特性的相应电参数。设计并实现了两个示例来验证所提出的算法。在第一个示例中,低频段和高频段的3 dB分数带宽分别为35%和17%。从2.14至2.96和5.14至6.06 GHz,它的回波损耗大于10 dB。在第二个示例中,低频段和高频段的3 dB分数带宽分别为9.9%和7.9%。从3.37至3.64和5.27至5.62 GHz,回波损耗大于10 dB。所提出的过滤器的尺寸几乎是之前介绍的过滤器的一半。所有研究都在带有2.4 GHz微处理器的计算机上完成,两个示例的计算时间分别为6分钟和3分钟。

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