Artificial Neural Network Analysis of Sierpinski Gasket Fractal Antenna: A Low Cost Alternative to Experimentation

B. S. Dhaliwal, S. S. Pattnaik
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引用次数: 15

Abstract

Artificial neural networks due to their general-purpose nature are used to solve problems in diverse fields. Artificial neural networks (ANNs) are very useful for fractal antenna analysis as the development of mathematical models of such antennas is very difficult due to complex shapes and geometries. As such empirical approach doing experiments is costly and time consuming, in this paper, application of artificial neural networks analysis is presented taking the Sierpinski gasket fractal antenna as an example. The performance of three different types of networks is evaluated and the best network for this type of applications has been proposed. The comparison of ANN results with experimental results validates that this technique is an alternative to experimental analysis. This low cost method of antenna analysis will be very useful to understand various aspects of fractal antennas.
Sierpinski衬垫分形天线的人工神经网络分析:一种低成本的实验替代方法
人工神经网络由于其通用性而被用于解决各种领域的问题。人工神经网络对于分形天线的分析是非常有用的,因为分形天线的形状和几何形状非常复杂,很难建立数学模型。本文以Sierpinski衬垫分形天线为例,介绍了人工神经网络分析的应用。对三种不同类型网络的性能进行了评估,并提出了适合这类应用的最佳网络。人工神经网络结果与实验结果的比较验证了该技术是一种替代实验分析的方法。这种低成本的天线分析方法将对了解分形天线的各个方面非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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