Application of ANNs in Evaluation of Microwave Pyramidal Absorber Performance

Authors

  • M. Agatonović Department of Telecommunications Faculty of Electronic Engineering, University of Niš, 18 000 Niš, Serbia
  • Z. Marinković Department of Telecommunications Faculty of Electronic Engineering, University of Niš, 18 000 Niš, Serbia
  • V. Marković Department of Telecommunications Faculty of Electronic Engineering, University of Niš, 18 000 Niš, Serbia

Keywords:

Application of ANNs in Evaluation of Microwave Pyramidal Absorber Performance

Abstract

To evaluate the overall anechoic chamber performance it is necessary to determine reflectivity of the absorbers. As manufacturer specifications usually give only information about frequency dependent reflection coefficient at normal incidence of EM waves, a time-consuming electromagnetic analysis is necessary to calculate the reflection coefficient at off-normal incident angles. In this paper, an efficient alternative approach to obtain the reflection coefficient at offnormal incidence is proposed. It is based on artificial neural networks trained to model the absorber reflectivity dependence on the frequency and incident angle of horizontally and vertically polarized electromagnetic waves. The model has been developed for pyramidal absorbers at low microwave frequencies (0.4 GHz–1 GHz).

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Published

2022-05-02

How to Cite

[1]
M. . Agatonović, Z. . Marinković, and V. . Marković, “Application of ANNs in Evaluation of Microwave Pyramidal Absorber Performance”, ACES Journal, vol. 27, no. 4, pp. 326–333, May 2022.

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