Abstract

In the last decade, artificial neural networks have become very popular techniques for computing different performance parameters of microstrip antennas. The proposed work illustrates a knowledge-based neural networks model for predicting the appropriate shape and accurate size of the slot introduced on the radiating patch for achieving desired level of resonance, gain, directivity, antenna efficiency, and radiation efficiency for dual-frequency operation. By incorporating prior knowledge in neural model, the number of required training patterns is drastically reduced. Further, the neural model incorporated with prior knowledge can be used for predicting response in extrapolation region beyond the training patterns region. For validation, a prototype is also fabricated and its performance parameters are measured. A very good agreement is attained between measured, simulated, and predicted results.

Highlights

  • Modern wireless communication systems like satellite communication, radar communication, global positioning satellite (GPS) system, and so forth are demanding more accurate and efficient modeling schemes for microstrip antennas (MSAs)

  • A very good agreement is achieved between the results of knowledge-based neural networks (KBNN) model, measured results, and simulated results which support the effectiveness of the proposed work

  • An Multilayered perceptron (MLP) neural networks model with two hidden layers is shown in Figure 2 in which the structural configuration of the distributed neurons is mentioned as m ∗ n ∗ p ∗ q where m, n, p, and q- represent the number of neurons in the input layer, first hidden layer, second hidden layer, and in output layer, respectively

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Summary

Introduction

Modern wireless communication systems like satellite communication, radar communication, global positioning satellite (GPS) system, and so forth are demanding more accurate and efficient modeling schemes for microstrip antennas (MSAs). In the literature [4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34], neither a standard nor a knowledge-based neural model has been proposed for predicting the shape and size of a slot introduced on the radiating surface of the microstrip patch antenna. A very good agreement is achieved between the results of KBNN model, measured results, and simulated results which support the effectiveness of the proposed work

Geometry for Patterns Generation
Standard Neural Networks Modeling
Knowledge-Based Neural Modeling
Computed Results and Validation
Conflict of Interests
Conclusion
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