U-slot Loaded Half-Circled Microstrip Patch Antenna Analysis using XGBOOST Machine Learning Algorithm

Venkateshwar Reddy Vedipala, Avinash Reddy Radharapu, Arun Kumar Gajula, Sivani Sivani, Akshaya Akshaya
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Abstract

Half-circled U-slot loaded antenna is studied using the HFSS and Machine Learning (ML) algorithm. The proposed work is for predicting the resonance frequency of the U-slot loaded antennaby providing the dimensions of the antennas. The proposed antenna is designed for Wi-MAX application with operating frequency of 3.4 GHz. The HFSS tool is being used for designing and analyzing fractal antennasand generating the training data. Parametric analysis of the designed U-slot-loaded half-circled antenna is developed by altering the half-circle radius, length of the U-slot and width. The data set is then given to theXGBoostML algorithm for training the model. The XGBoost contains remarkably high processing speed and contains features like parallelization, cache optimization, and out-of-core computation which makes the perfect algorithm for predicting the resonance frequencies.U-slot loaded half-circled antenna offers a substantial size reduction, a wide impedance bandwidth, and a uniform radiation pattern on all sides.
基于XGBOOST机器学习算法的u槽加载半圆微带贴片天线分析
采用HFSS和机器学习算法对半圆u槽加载天线进行了研究。提出的工作是预测u型槽负载天线的谐振频率,提供天线的尺寸。该天线设计用于Wi-MAX应用,工作频率为3.4 GHz。HFSS工具被用于分形天线的设计和分析以及训练数据的生成。通过改变u型槽半圆半径、u型槽长度和宽度,对设计的u型槽半圆天线进行了参数化分析。然后将数据集交给xgboostml算法来训练模型。XGBoost具有非常高的处理速度,并包含并行化、缓存优化和核外计算等特性,这使得它成为预测共振频率的完美算法。u型槽加载半圈天线提供了大幅缩小尺寸,宽阻抗带宽和均匀的辐射方向图在所有方面。
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