Application of Artificial Neural Network Base Enhanced MLP Model for Scattering Parameter Prediction of Dual-band Helical Antenna

Authors

  • Ahmet Uluslu Department of Electronics and Automation Istanbul University-Cerrahpaşa, Istanbul, 34500, Turkey

DOI:

https://doi.org/10.13052/2023.ACES.J.380504

Keywords:

ANN, design modeling, dual-band, enhanced algorithm, Helical Antenna

Abstract

Many design optimization problems have problems that seek fast, efficient and reliable based solutions. In such cases, artificial intelligence-based modeling is used to solve costly and complex problems. This study is based on the modeling of a multiband helical antenna using the Latin hypercube sampling (LHS) method using a reduced data enhanced multilayer perceptron (eMLP). The proposed helical antenna is dual-band and has resonance frequencies of 2.4 GHz and 2.75 GHz. The enhanced structure of the artificial neural network (ANN) was tested using 4 different training algorithms and a maximum of 10 different MLP architectures to determine the most suitable model in a simple and quick way. Then, performance comparison with other ANN networks was made to confirm the success of the model. Considering the high cost of antenna simulations, it is clear that the proposed model will save a lot of time. In addition, thanks to the selected sampling model, a wide range of modeling can be done with minimum data. When the target and prediction data are compared, it is seen that these data overlap to a large extent. As a result of the study, it was seen that the ANN modeling and the 125 samples used, were as accurate as an electromagnetic (EM) simulator for other input parameters in a wide range selected.

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Author Biography

Ahmet Uluslu, Department of Electronics and Automation Istanbul University-Cerrahpaşa, Istanbul, 34500, Turkey

Ahmet Uluslu received his Ph.D. from Istanbul Yıldız Technical University Electronics and Communication Engineering Department in 2020. He completed his master’s degree at the Department of Electromagnetic Fields and Microwave Techniques from the same university. He is currently working as an associate professor at Istanbul University-Cerrahpaşa Electronics and Automation Department. His current research areas are microwave circuits, especially optimization techniques of microwave circuits, antenna design optimization-modeling, surrogate-based optimization and artificial intelligence algorithm applications.

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Published

2023-05-31

How to Cite

[1]
A. . Uluslu, “Application of Artificial Neural Network Base Enhanced MLP Model for Scattering Parameter Prediction of Dual-band Helical Antenna”, ACES Journal, vol. 38, no. 05, pp. 316–324, May 2023.