IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK

Pump-controlled motors (PCM) are the preferred power elements in most applications because of their high maximum operating efficiency. The dynamics of such hydraulic systems are highly nonlinear and the system may be subjected to non-smooth and discontinuous nonlinearities. Aside from the nonlinear...

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Main Authors: Amjad Jalil Humadi, Ayad Qasim Hussein
Format: Article
Language:English
Published: University of Baghdad 2011-06-01
Series:Journal of Engineering
Subjects:
Online Access:https://joe.uobaghdad.edu.iq/index.php/main/article/view/2941
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author Amjad Jalil Humadi
Ayad Qasim Hussein
author_facet Amjad Jalil Humadi
Ayad Qasim Hussein
author_sort Amjad Jalil Humadi
collection DOAJ
description Pump-controlled motors (PCM) are the preferred power elements in most applications because of their high maximum operating efficiency. The dynamics of such hydraulic systems are highly nonlinear and the system may be subjected to non-smooth and discontinuous nonlinearities. Aside from the nonlinear nature of hydraulic dynamics, hydraulic servo systems also have large extent of model uncertainties such as uncompensated friction forces variation of system parameters and external disturbances. The conventional Proportional, Integral and Derivative (PID) controller can not cope with hydraulic system nonlinearities and could not compensate its variation of parameters. Therefore, a radial basis neural network has been suggested to control the speed response of PCM. The structure of radial basis neural network (RBNN) controller is simple and efficient in control purposes. The design of control surface based on radial basis function (RBF) controller has been considered. The performance of PID and RBF controllers has been assessed based on the improvement in speed behavior and their capabilities to compensate the changes in system parameters (load and bulk of modulus). Also, the effect of tuning of the radial basis parameters on the dynamic response has been studied. Results showed that the RBF controller is more robust and shows typical results compared to classical PID controller. Moreover, a further improvement in speed dynamic can be obtained with appropriate tuning of RBF parameters.
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spelling doaj.art-cccc77a4b773415f8f3c1302975ae6ac2024-02-18T09:48:27ZengUniversity of BaghdadJournal of Engineering1726-40732520-33392011-06-01170310.31026/j.eng.2011.03.17IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORKAmjad Jalil HumadiAyad Qasim Hussein Pump-controlled motors (PCM) are the preferred power elements in most applications because of their high maximum operating efficiency. The dynamics of such hydraulic systems are highly nonlinear and the system may be subjected to non-smooth and discontinuous nonlinearities. Aside from the nonlinear nature of hydraulic dynamics, hydraulic servo systems also have large extent of model uncertainties such as uncompensated friction forces variation of system parameters and external disturbances. The conventional Proportional, Integral and Derivative (PID) controller can not cope with hydraulic system nonlinearities and could not compensate its variation of parameters. Therefore, a radial basis neural network has been suggested to control the speed response of PCM. The structure of radial basis neural network (RBNN) controller is simple and efficient in control purposes. The design of control surface based on radial basis function (RBF) controller has been considered. The performance of PID and RBF controllers has been assessed based on the improvement in speed behavior and their capabilities to compensate the changes in system parameters (load and bulk of modulus). Also, the effect of tuning of the radial basis parameters on the dynamic response has been studied. Results showed that the RBF controller is more robust and shows typical results compared to classical PID controller. Moreover, a further improvement in speed dynamic can be obtained with appropriate tuning of RBF parameters. https://joe.uobaghdad.edu.iq/index.php/main/article/view/2941Hydrostatic transmission, PID controller, radial basis neural network controller.
spellingShingle Amjad Jalil Humadi
Ayad Qasim Hussein
IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK
Journal of Engineering
Hydrostatic transmission, PID controller, radial basis neural network controller.
title IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK
title_full IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK
title_fullStr IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK
title_full_unstemmed IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK
title_short IMPROVEMENT OF A HYDROSTATIC TRANSMISSION CONTROL SYSTEM PERFORMENCE USING RADIAL BASIS NEURAL NETWORK
title_sort improvement of a hydrostatic transmission control system performence using radial basis neural network
topic Hydrostatic transmission, PID controller, radial basis neural network controller.
url https://joe.uobaghdad.edu.iq/index.php/main/article/view/2941
work_keys_str_mv AT amjadjalilhumadi improvementofahydrostatictransmissioncontrolsystemperformenceusingradialbasisneuralnetwork
AT ayadqasimhussein improvementofahydrostatictransmissioncontrolsystemperformenceusingradialbasisneuralnetwork