Development of a robust intelligent controller for a semi-active car suspension system

In pursuite of comfortable driving in unpaved and off-roads, intelligent methods are used to improve the suspension systems in the vehicles. Semi-active suspension systems outperformed passive and active suspension systems because it contains an intelligent actuator that can give the appropriate...

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Main Author: Abas, Hesham Ahmed Abdul Mutleba
Format: Thesis
Language:English
Published: 2022
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Online Access:http://psasir.upm.edu.my/id/eprint/104057/1/FK%202022%20100%20IR.pdf
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spelling my-upm-ir.1040572023-07-07T02:21:33Z Development of a robust intelligent controller for a semi-active car suspension system 2022-08 Abas, Hesham Ahmed Abdul Mutleba In pursuite of comfortable driving in unpaved and off-roads, intelligent methods are used to improve the suspension systems in the vehicles. Semi-active suspension systems outperformed passive and active suspension systems because it contains an intelligent actuator that can give the appropriate force to dissipate unwanted vibration using intelligent and real-time controllers. This research examines Magneto-rheological (MR) fluid damper with a Fuzzy-PID controller, one of the most extensively intelligent semi-active suspension system's actuators researched. However, the Fuzzy logic algorithm used in the Fuzzy-PID controller cannot be wholly considered as a real-time controller; since it is fuzzy rules are designed offline and according to a previous knowledge base, which may not cope with the instant, unexpected vibrations that may occur. Commonly, the Fuzzy rules are optimized using offline optimization methods such as Differential Evolutionary (DE), Particle Swarms Optimization (PSO), or Artificial Neural Network (ANN) algorithms. In this research, Differential Evolution (DE) algorithm is modified to enhance the Fuzzy logic output gains to increase the performance of PID portion of the Fuzzy-PID controller. To ensure stability and robustness of the developed system, an active force controller (AFC) was added and tested to validate the final AFC-Fuzzy-DE-PID controller. The developed AFC-Fuzzy-DE-PID model was tested in two manners, first by simulation using MATLAB Simulink with sinusoidal and random disturbances. Then the model was tested experimentally in a quarter car test rig using different disturbances by means of a pneumatic actuator as an excitation. The test rig was developed at the control lab, Faculty Of Engineering in UPM. Results of the simulation tests for the developed controller showed that it has improved the vehicle's ride comfort by 23% - 62% better than the Fuzzy-DE-PID controller and both the Fuzzy-PID and the passive system, respectively, in sinusoidal disturbance condition. While in the random disturbance, the AFC-Fuzzy-DE-PID improved the vehicle's ride comfort by 48%, 83%, and 27% better than the Fuzzy-DE-PID, Fuzzy-PID, and the passive system, respectively. In the experimental tests on sinusoidal disturbance, the AFC-Fuzzy-DE-PID improved the ride comfort by range of 0.4% - 2% better than the Fuzzy-DE-PID, range of 6%-14% better than the Fuzzy-PID, and range of 30%-51% better than the passive system. While on the random disturbance of the experimental test, the ride comfort improved 1%, 3%, and 4% better than the Fuzzy-DE-PID, Fuzzy- PID, and the passive system, respectively. By using this developed controller in any other real-time application, it will improve the performance to the highest levels without the need for a previous knowledge base for designing a real-time Fuzzy-PID controller. Intelligent control systems Fuzzy systems Fuzzy automata 2022-08 Thesis http://psasir.upm.edu.my/id/eprint/104057/ http://psasir.upm.edu.my/id/eprint/104057/1/FK%202022%20100%20IR.pdf text en public doctoral Universiti Putra Malaysia Intelligent control systems Fuzzy systems Fuzzy automata As'arry, Azizan
institution Universiti Putra Malaysia
collection PSAS Institutional Repository
language English
advisor As'arry, Azizan
topic Intelligent control systems
Fuzzy systems
Fuzzy automata
spellingShingle Intelligent control systems
Fuzzy systems
Fuzzy automata
Abas, Hesham Ahmed Abdul Mutleba
Development of a robust intelligent controller for a semi-active car suspension system
description In pursuite of comfortable driving in unpaved and off-roads, intelligent methods are used to improve the suspension systems in the vehicles. Semi-active suspension systems outperformed passive and active suspension systems because it contains an intelligent actuator that can give the appropriate force to dissipate unwanted vibration using intelligent and real-time controllers. This research examines Magneto-rheological (MR) fluid damper with a Fuzzy-PID controller, one of the most extensively intelligent semi-active suspension system's actuators researched. However, the Fuzzy logic algorithm used in the Fuzzy-PID controller cannot be wholly considered as a real-time controller; since it is fuzzy rules are designed offline and according to a previous knowledge base, which may not cope with the instant, unexpected vibrations that may occur. Commonly, the Fuzzy rules are optimized using offline optimization methods such as Differential Evolutionary (DE), Particle Swarms Optimization (PSO), or Artificial Neural Network (ANN) algorithms. In this research, Differential Evolution (DE) algorithm is modified to enhance the Fuzzy logic output gains to increase the performance of PID portion of the Fuzzy-PID controller. To ensure stability and robustness of the developed system, an active force controller (AFC) was added and tested to validate the final AFC-Fuzzy-DE-PID controller. The developed AFC-Fuzzy-DE-PID model was tested in two manners, first by simulation using MATLAB Simulink with sinusoidal and random disturbances. Then the model was tested experimentally in a quarter car test rig using different disturbances by means of a pneumatic actuator as an excitation. The test rig was developed at the control lab, Faculty Of Engineering in UPM. Results of the simulation tests for the developed controller showed that it has improved the vehicle's ride comfort by 23% - 62% better than the Fuzzy-DE-PID controller and both the Fuzzy-PID and the passive system, respectively, in sinusoidal disturbance condition. While in the random disturbance, the AFC-Fuzzy-DE-PID improved the vehicle's ride comfort by 48%, 83%, and 27% better than the Fuzzy-DE-PID, Fuzzy-PID, and the passive system, respectively. In the experimental tests on sinusoidal disturbance, the AFC-Fuzzy-DE-PID improved the ride comfort by range of 0.4% - 2% better than the Fuzzy-DE-PID, range of 6%-14% better than the Fuzzy-PID, and range of 30%-51% better than the passive system. While on the random disturbance of the experimental test, the ride comfort improved 1%, 3%, and 4% better than the Fuzzy-DE-PID, Fuzzy- PID, and the passive system, respectively. By using this developed controller in any other real-time application, it will improve the performance to the highest levels without the need for a previous knowledge base for designing a real-time Fuzzy-PID controller.
format Thesis
qualification_level Doctorate
author Abas, Hesham Ahmed Abdul Mutleba
author_facet Abas, Hesham Ahmed Abdul Mutleba
author_sort Abas, Hesham Ahmed Abdul Mutleba
title Development of a robust intelligent controller for a semi-active car suspension system
title_short Development of a robust intelligent controller for a semi-active car suspension system
title_full Development of a robust intelligent controller for a semi-active car suspension system
title_fullStr Development of a robust intelligent controller for a semi-active car suspension system
title_full_unstemmed Development of a robust intelligent controller for a semi-active car suspension system
title_sort development of a robust intelligent controller for a semi-active car suspension system
granting_institution Universiti Putra Malaysia
publishDate 2022
url http://psasir.upm.edu.my/id/eprint/104057/1/FK%202022%20100%20IR.pdf
_version_ 1776100400983703552