Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms

The present research develops the parametric estimation of a second-order transfer function in its standard form, employing metaheuristic algorithms. For the estimation, the step response with a known amplitude is used. The main contribution of this research is a general method for obtaining a secon...

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Main Authors: Omar Rodríguez-Abreo, Juvenal Rodríguez-Reséndiz, Francisco Antonio Castillo Velásquez, Alondra Anahi Ortiz Verdin, Juan Manuel Garcia-Guendulain, Mariano Garduño-Aparicio
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/13/4529
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spelling doaj-7053931d06484bf8bd84b379dff75fe22021-07-15T15:45:51ZengMDPI AGSensors1424-82202021-07-01214529452910.3390/s21134529Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic AlgorithmsOmar Rodríguez-Abreo0Juvenal Rodríguez-Reséndiz1Francisco Antonio Castillo Velásquez2Alondra Anahi Ortiz Verdin3Juan Manuel Garcia-Guendulain4Mariano Garduño-Aparicio5Industrial Technologies Division, Universidad Politecnica de Queretaro, El Marques 76240, MexicoRed de Investigación OAC Optimización, Automatización y Control, El Marques 76240, MexicoIndustrial Technologies Division, Universidad Politecnica de Queretaro, El Marques 76240, MexicoIndustrial Technologies Division, Universidad Politecnica de Queretaro, El Marques 76240, MexicoIndustrial Technologies Division, Universidad Politecnica de Queretaro, El Marques 76240, MexicoRed de Investigación OAC Optimización, Automatización y Control, El Marques 76240, MexicoThe present research develops the parametric estimation of a second-order transfer function in its standard form, employing metaheuristic algorithms. For the estimation, the step response with a known amplitude is used. The main contribution of this research is a general method for obtaining a second-order transfer function for any order stable systems via metaheuristic algorithms. Additionally, the Final Value Theorem is used as a restriction to improve the velocity search. The tests show three advantages in using the method proposed in this work concerning similar research and the exact estimation method. The first advantage is that using the Final Value Theorem accelerates the convergence of the metaheuristic algorithms, reducing the error by up to 10 times in the first iterations. The second advantage is that, unlike the analytical method, it is unnecessary to estimate the type of damping that the system has. Finally, the proposed method is adapted to systems of different orders, managing to calculate second-order transfer functions equivalent to higher and lower orders. Response signals to the step of systems of an electrical, mechanical and electromechanical nature were used. In addition, tests were carried out with simulated signals and real signals to observe the behavior of the proposed method. In all cases, transfer functions were obtained to estimate the behavior of the system in a precise way before changes in the input. In all tests, it was shown that the use of the Final Value Theorem presents advantages compared to the use of algorithms without restrictions. Finally, it was revealed that the Gray Wolf Algorithm has a better performance for parametric estimation compared to the Jaya algorithm with an error up to 50% lower.https://www.mdpi.com/1424-8220/21/13/4529parameter estimationmetaheuristicGray Wolf OptimizerJaya algorithmtransfer function
collection DOAJ
language English
format Article
sources DOAJ
author Omar Rodríguez-Abreo
Juvenal Rodríguez-Reséndiz
Francisco Antonio Castillo Velásquez
Alondra Anahi Ortiz Verdin
Juan Manuel Garcia-Guendulain
Mariano Garduño-Aparicio
spellingShingle Omar Rodríguez-Abreo
Juvenal Rodríguez-Reséndiz
Francisco Antonio Castillo Velásquez
Alondra Anahi Ortiz Verdin
Juan Manuel Garcia-Guendulain
Mariano Garduño-Aparicio
Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms
Sensors
parameter estimation
metaheuristic
Gray Wolf Optimizer
Jaya algorithm
transfer function
author_facet Omar Rodríguez-Abreo
Juvenal Rodríguez-Reséndiz
Francisco Antonio Castillo Velásquez
Alondra Anahi Ortiz Verdin
Juan Manuel Garcia-Guendulain
Mariano Garduño-Aparicio
author_sort Omar Rodríguez-Abreo
title Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms
title_short Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms
title_full Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms
title_fullStr Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms
title_full_unstemmed Estimation of Transfer Function Coefficients for Second-Order Systems via Metaheuristic Algorithms
title_sort estimation of transfer function coefficients for second-order systems via metaheuristic algorithms
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-07-01
description The present research develops the parametric estimation of a second-order transfer function in its standard form, employing metaheuristic algorithms. For the estimation, the step response with a known amplitude is used. The main contribution of this research is a general method for obtaining a second-order transfer function for any order stable systems via metaheuristic algorithms. Additionally, the Final Value Theorem is used as a restriction to improve the velocity search. The tests show three advantages in using the method proposed in this work concerning similar research and the exact estimation method. The first advantage is that using the Final Value Theorem accelerates the convergence of the metaheuristic algorithms, reducing the error by up to 10 times in the first iterations. The second advantage is that, unlike the analytical method, it is unnecessary to estimate the type of damping that the system has. Finally, the proposed method is adapted to systems of different orders, managing to calculate second-order transfer functions equivalent to higher and lower orders. Response signals to the step of systems of an electrical, mechanical and electromechanical nature were used. In addition, tests were carried out with simulated signals and real signals to observe the behavior of the proposed method. In all cases, transfer functions were obtained to estimate the behavior of the system in a precise way before changes in the input. In all tests, it was shown that the use of the Final Value Theorem presents advantages compared to the use of algorithms without restrictions. Finally, it was revealed that the Gray Wolf Algorithm has a better performance for parametric estimation compared to the Jaya algorithm with an error up to 50% lower.
topic parameter estimation
metaheuristic
Gray Wolf Optimizer
Jaya algorithm
transfer function
url https://www.mdpi.com/1424-8220/21/13/4529
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