Haque Md Ashraful, Rahman Md Afzalur, Al-Bawri Samir Salem, Yusoff Zubaida, Sharker Adiba Haque, Abdulkawi Wazie M, Saha Dipon, Paul Liton Chandra, Zakariya M A
Department of Electrical and Electronic Engineering, Universiti Teknologi PETRONAS, 32610, Seri Iskandar, Perak, Malaysia.
Department of Electrical and Electronic Engineering, Daffodil International University, Birulia, Dhaka, Bangladesh.
Sci Rep. 2023 Aug 3;13(1):12590. doi: 10.1038/s41598-023-39730-1.
In this study, we present our findings from investigating the use of a machine learning (ML) technique to improve the performance of Quasi-Yagi-Uda antennas operating in the n78 band for 5G applications. This research study investigates several techniques, such as simulation, measurement, and an RLC equivalent circuit model, to evaluate the performance of an antenna. In this investigation, the CST modelling tools are used to develop a high-gain, low-return-loss Yagi-Uda antenna for the 5G communication system. When considering the antenna's operating frequency, its dimensions are [Formula: see text]. The antenna has an operating frequency of 3.5 GHz, a return loss of [Formula: see text] dB, a bandwidth of 520 MHz, a maximum gain of 6.57 dB, and an efficiency of almost 97%. The impedance analysis tools in CST Studio's simulation and circuit design tools in Agilent ADS software are used to derive the antenna's equivalent circuit (RLC). We use supervised regression ML method to create an accurate prediction of the frequency and gain of the antenna. Machine learning models can be evaluated using a variety of measures, including variance score, R square, mean square error, mean absolute error, root mean square error, and mean squared logarithmic error. Among the nine ML models, the prediction result of Linear Regression is superior to other ML models for resonant frequency prediction, and Gaussian Process Regression shows an extraordinary performance for gain prediction. R-square and var score represents the accuracy of the prediction, which is close to 99% for both frequency and gain prediction. Considering these factors, the antenna can be deemed an excellent choice for the n78 band of a 5G communication system.
在本研究中,我们展示了通过研究使用机器学习(ML)技术来提高用于5G应用的在n78频段工作的准八木 - 宇田天线性能的研究结果。本研究调查了多种技术,如仿真、测量和RLC等效电路模型,以评估天线的性能。在这项研究中,使用CST建模工具为5G通信系统开发了一种高增益、低回波损耗的八木 - 宇田天线。考虑到天线的工作频率,其尺寸为[公式:见原文]。该天线的工作频率为3.5 GHz,回波损耗为[公式:见原文]dB,带宽为520 MHz,最大增益为6.57 dB,效率近97%。利用CST Studio中的阻抗分析工具和安捷伦ADS软件中的电路设计工具来推导天线的等效电路(RLC)。我们使用监督回归ML方法来准确预测天线的频率和增益。可以使用多种指标评估机器学习模型,包括方差得分、R平方、均方误差、平均绝对误差、均方根误差和均方对数误差。在九个ML模型中,线性回归的预测结果在谐振频率预测方面优于其他ML模型,而高斯过程回归在增益预测方面表现出色。R平方和方差得分代表预测的准确性,频率和增益预测的准确性均接近99%。考虑到这些因素,该天线可被视为5G通信系统n78频段的理想选择。