基于机器学习的低尺度偶极子天线自举聚合优化

Pavan Mohan Neelamraju, Pranav Pothapragada, G. Rana, D. Chaturvedi, Rupesh Kumar
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引用次数: 0

摘要

偶极天线是常用的射频设备。由于它们的效率、稳定的性能和灵活性,它们获得了良好的声誉。不同的优化策略,如粒子群优化、差分进化和机器学习算法已被用于设计偶极子天线。这有助于创建完整的设备配置文件并提高其效率。由于现代天线在拓扑结构和性能要求方面的复杂性,标准的天线设计方法繁琐且不能保证产生有效的结果。在广泛使用的策略中,机器学习(ML)算法由于其外推设备尺寸和材料轮廓的能力而迅速发展。尽管基于机器学习的设计优化是传统天线设计方法的补充,但天线设计优化仍然面临一些困难。考虑到当前天线的规格越来越严格,现有的机器学习方法在解决各种天线设计问题方面的有效性和优化能力是天线设计优化中需要关注的根本难点。在我们目前的工作中,机器学习算法在阐明设备配置文件中的次要趋势方面的能力进行了测试。结合线性回归、支持向量回归和决策树回归算法,提出了一种自举聚合模型。根据天线的馈电长度、偶极子半径和偶极子长度,利用串联模型对反射系数、指向性、效率和工作频率等参数进行优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Low-Scale Dipole Antenna Optimization using Bootstrap Aggregation
Dipole antennae are commonly used radio frequency devices. They gained good prominence as a result of their efficiency, consistent performance and flexibility. Different optimization strategies such as particle swarm optimization, differential evolution and Machine Learning algorithms have been utilized in the past to design dipole antennae. This helps in creating a complete device profile and increases its efficacy. Due to the complexity of modern antennas in terms of topology and performance requirements, standard antenna design approaches are tedious and cannot be guaranteed to produce effective results. Out of the strategies that are widely being utilized, Machine Learning (ML) algorithms evolved rapidly due to their capabilities in extrapolating the dimensional and material profiles of the device. Antenna design optimization still faces several difficulties, even though machine learning-based design optimization complements traditional antenna design methodologies. The effectiveness and optimization capabilities of available ML approaches to address a wide range of antenna design problems, considering the increasingly strict specifications of current antennas, are the fundamental difficulties in antenna design optimization which need to be focused on. In our current work, the capability of ML algorithms in elucidating minor trends in device profiles is tested. A bootstrap aggregation model is proposed, concatenating Linear Regression, Support Vector Regression and Decision Tree Regression algorithms. The concatenated model was used to optimize the parameters of reflection coefficient, directivity, efficiency and operating frequency, depending on the feed length, dipole radius and dipole length of the antenna.
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