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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >A novel approach of design and analysis of fractal antenna using a neurocomputational method for reconfigurable RF MEMS antenna
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A novel approach of design and analysis of fractal antenna using a neurocomputational method for reconfigurable RF MEMS antenna

机译:利用神经计算方法设计和分析可重构RF MEMS天线的分形天线的新方法

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A mathematical neural approach/artificial neural network (ANN) for the design of a swastika-shaped reconfigurable antenna as a feedforward side is proposed. Further design parameter calculations using the reverse procedure of the above method is presented. Neural network computational is one of the optimization methods that could be considered to improve the performance of the device. In this paper, the proposed planar antenna up to the 2nd iteration is simulated using finite element method-based HFSS software. The developed ANN algorithm method allows the optimization of the antenna to be carried out by exchanging repetitive simulations and also provides reduced processing times while still retaining great accuracy as compared to traditional mathematical formulation. The simulated S-parameter (return loss) results of the proposed antenna are verified with the ANN and show good agreement. Furthermore, for proof of concept, the above proposed antenna as well as a swastika-shaped reconfigurable antenna (2nd iteration) with radio frequency microelectromechanical system switches are fabricated and tested using a vector network analyzer. The results presented here show that the antenna works well in the frequency range of 1.5 to 6.5 GHz and resonates on multiple bands. The novelty of the approach described here offers ease of designing the process using the ANN algorithm, maintaining the miniaturization of antenna size, multiband behavior, and utility of the antenna in the mobile terminal.
机译:提出了一种数学神经方法/人工神经网络(ANN),用于设计sw形可重构天线作为前馈侧。提出了使用上述方法的相反过程进行的进一步设计参数计算。神经网络计算是可以考虑用来提高设备性能的优化方法之一。在本文中,使用基于有限元方法的HFSS软件模拟了拟议的直至第二次迭代的平面天线。与传统的数学公式相比,开发的ANN算法方法可以通过交换重复的仿真来进行天线的优化,并且可以减少处理时间,同时仍然保持较高的精度。拟议天线的模拟S参数(回波损耗)结果已通过ANN进行了验证,并显示出良好的一致性。此外,为了进行概念验证,使用矢量网络分析仪制造并测试了上述天线以及带有射频微机电系统开关的十字形可重构天线(第二次迭代)。此处显示的结果表明,该天线在1.5至6.5 GHz的频率范围内工作良好,并在多个频带上谐振。这里描述的方法的新颖性使使用ANN算法的过程设计变得容易,并保持了天线尺寸的小型化,多频带性能以及移动终端中天线的实用性。

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