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首页> 外文期刊>Analog Integrated Circuits and Signal Processing >Design of a novel wideband microstrip diplexer using artificial neural network
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Design of a novel wideband microstrip diplexer using artificial neural network

机译:使用人工神经网络设计一种新型宽带微带双工器

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摘要

In this paper, we use an artificial neural network (ANN) to design a compact microstrip diplexer with wide fractional bandwidths (FBW) for wideband applications. For this purpose, a multilayer perceptron neural network model trained with the back-propagation algorithm is used. First, a novel resonator consists of coupled lines loaded by similar patch cells is proposed. Then, using the proposed ANN model, two mathematical equations for S-11 and S-21 are obtained to achieve the best configuration of the proposed bandpass filters and tune their resonant frequencies. Finally, using the obtained bandpass filters, a high-performance microstrip diplexer is created. The first channel of the diplexer is from 1.47 GHz up to 1.74 GHz with a wide FBW of 16.8%. The second channel is expanded from 2 to 2.23 GHz with a fractional bandwidth of 11%. In comparison with the previous designs, our diplexer has the most compact size. Moreover, the insertion losses at both channels are improved so that they are 0.1 dB and 0.16 dB at the lower and upper channels, respectively. Both channels are flat with a maximum group delay of 2.6 ns, which makes it suitable for high data rate communication links. To validate the designing method and simulation results, the presented diplexer is fabricated and measured.
机译:在本文中,我们使用人工神经网络(ANN)来设计具有宽带应用的宽分数带宽(FBW)的紧凑型微路边。为此目的,使用用背带算法训练的多层Perceptron神经网络模型。首先,提出了一种新的谐振器由由类似的贴片电池加载的耦合线组成。然后,使用所提出的ANN模型,获得了用于S-11和S-21的两条数学方程以实现所提出的带通滤波器的最佳配置并调谐其谐振频率。最后,使用所获得的带通滤波器,创建高性能微路边的双工器。双工器的第一通道从1.47GHz高达1.74GHz,宽的FBW为16.8%。第二频道从2到2.23GHz扩展,分数带宽为11%。与以前的设计相比,我们的双工器具有最紧凑的尺寸。此外,两个通道处的插入损耗得到改善,使得它们在下部和上通道处是0.1dB和0.16dB。两个通道都是平的,最大组延迟为2.6 ns,这使其适用于高数据速率通信链路。为了验证设计方法和仿真结果,所提出的双工器是制造和测量的。

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