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The optimal design and analysis of wideband second-order microwave integrator

Published online by Cambridge University Press:  08 February 2019

Usha Gautam*
Affiliation:
Department of ECE, Netaji Subhas Institute of Technology, New-Delhi, India
Tarun Kumar Rawat
Affiliation:
Department of ECE, Netaji Subhas Institute of Technology, New-Delhi, India
*
Author for correspondence: Email: Usha Gautam, [email protected]

Abstract

The implementation of stable, accurate, and wideband second-order microwave integrators (SOMIs) is presented in this paper. These designs of SOMIs are obtained by using different combinations of transmission line sections and shunt stubs in cascading. Particle swarm optimization (PSO), cuckoo search algorithm (CSA), and gravitational search algorithm (GSA) are applied to obtain the optimal values of the characteristic impedances of these line elements to approximate the magnitude response of ideal second-order integrator (SOI). The performance measure criteria for the proposed SOMIs are carried out based on magnitude response, absolute magnitude error, phase response, convergence rate, pole-zero plot, and improvement graph. The simulation results and statistical analysis demonstrate that GSA surpasses the PSO and CSA to approximate the ideal SOI in all state-of-the-art, that is eligible for wide-band microwave integrator. The designed SOMI is compact in size and suitable to cover microwave applications. The magnitude errors for the proposed SOMIs GSA based are as low as 4.9954 and 3.6573, respectively. The structure of the designed SOMI is implemented in the form of microstrip line on RT/Duroid substrate with dielectric constant 2.2 and having height 0.762 mm. The simulated and measured magnitude result agrees well with the ideal one in the frequency range of 3–15 GHz.

Type
Research Papers
Copyright
Copyright © Cambridge University Press and the European Microwave Association 2019 

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