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Artificial intelligence-based design optimization of nonuniform microstrip line band pass filter

机译:基于人工智能的非均匀微带线带通滤波器设计优化

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摘要

Design optimization of many electromagnetic and multiphysics problems have multiscale issues that require a fast, efficient, and accurate surrogate-based model to be used. Recently, in microwave engineering field, artificial intelligence-based models are being used for modeling of complex microwave stages. In all the studies, the main aim is to form models inner structure parameters, by using the given data to predict the linear/nonlinear relationships between given inputs and outputs. Herein, a surrogate-based model of a nonuniform microstrip transmission line (NTL) with a typical application of design optimization of a band-pass filter for ISM band application using deep learning (DL) and meta-heuristic optimization has been presented. In order to have a computationally efficient and accurate optimization process, firstly a 3D EM unit element model of NTL has been designed. The training and test data sets are created based on different sampling methods. A DL regression model modified multilayer perceptron M2LP have been used for prediction of scattering parameters (S) of the NTL, with respect to the variation of geometrical design parameters. The proposed S-parameters will then be used to calculate the equivalent S-parameters of the cascading NTL to be used to calculate the NTL-based microstrip band-pass filter S-parameter response. The optimal design parameters of each line used in the filter design have been determined using a fast and powerful optimization algorithm differential evolutionary algorithm.
机译:设计优化许多电磁和多体外问题有多尺度问题,需要使用快速,高效,准确的基于代理的模型。最近,在微波工程领域,基于人工智能的模型用于复杂微波阶段的建模。在所有研究中,主要目的是通过使用给定数据来形成模型内部结构参数来预测给定输入和输出之间的线性/非线性关系。这里,已经介绍了使用深度学习(DL)和元启发式优化的用于ISM频带应用的带通滤波器的带通滤波器的典型设计优化的非均匀微带传输线(NTL)的代理基础型。为了具有计算上高效和准确的优化过程,首先设计了NTL的3D EM单元元件模型。培训和测试数据集是基于不同的采样方法创建的。 DL回归模型改进的多层Perceptron M2LP已经用于预测NTL的散射参数,关于几何设计参数的变化。然后将用于计算级联NTL的等效S参数以用于计算基于NTL的微带带通滤波器S参数响应的等效S参数。通过快速且强大的优化算法差分进化算法确定了过滤器设计中使用的每条线的最佳设计参数。

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