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Data-driven modeling of band-pass filter for sub-5G applications

机译:Sub-5G应用带通滤波器的数据驱动建模

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摘要

Radiofrequency noise is one of the challenging problems in the design of high-performance wireless communication systems, for which microstrip band-pass filters are one of the most commonly used design solutions for this challenge. However, for having high-performance designs. usage of a 3D Electromagnetic simulation tool is a must in which the computation efficiency of the whole design optimization process might not be acceptable or even feasible. An efficient solution is utilization of AI-based algorithms to create data-driven surrogate models of the handled problem. In this paper, for achieving design optimization of an edge-coupled band-pass filter AI-based algorithms have been used to create a data-driven surrogate model. To achieve this, by using a 3D full-wave simulator a data set for the aimed bandpass filter is generated. Then a series of state-of-the-art regression algorithms, Support Vector Regression Machine, MultiLayer Perceptron, Ensemble Learning, Gaussian Process Regression, and Convolutional Neural Network have been used to create a data-driven surrogate model for the aimed filter design. In the third step, the obtained data-driven surrogate model is used to assist an optimization process directed by the Bayesian optimization technique to optimally determine geometrical design parameters of the desired band-pass filter for sub-5G applications at frequency of 3.4 GHz. The obtained results of the surrogate model are compared with experimental results and found to be in high agreement level. Furthermore, the performance of the optimally designed filter is compared with the counterpart designs in literature. Thus, based on the obtained results, it can be said that the proposed surrogate-assisted optimization process is not only an efficient method in terms of computational costs but also is an efficient method to obtain high-performance microwave filter designs.
机译:射频噪声是高性能无线通信系统设计中具有挑战性的问题之一,为此,微带带通滤波器是应对这一挑战最常用的设计解决方案之一。但是,对于具有高性能设计。使用3D电磁仿真工具是必须的,因为整个设计优化过程的计算效率可能不可接受,甚至不可行。一个有效的解决方案是利用基于人工智能的算法来创建所处理问题的数据驱动的代理模型。为了实现边缘耦合带通滤波器的设计优化,使用了基于AI的算法来创建数据驱动的代理模型。为此,通过使用 3D 全波模拟器,可以生成目标带通滤波器的数据集。然后,使用一系列最先进的回归算法,支持向量回归机,多层感知器,集成学习,高斯过程回归和卷积神经网络,为目标滤波器设计创建数据驱动的代理模型。第三步,利用得到的数据驱动代理模型,辅助贝叶斯优化技术指导的优化过程,以最佳方式确定3.4 GHz频率下Sub-5G应用所需带通滤波器的几何设计参数。将代理模型的结果与实验结果进行对比,发现其一致性较高。此外,还比较了优化设计的滤波器的性能与文献中的对应设计。因此,基于所获得的结果,可以说所提出的代理辅助优化过程不仅在计算成本方面是一种有效的方法,而且是获得高性能微波滤波器设计的有效方法。

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