Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle

This thesis introduces the application of time-domain Hybrid Fault Detection (HFD) methods for application in a quadrotor Micro Aerial Vehicle (MAV). The application aims to solve one of the main problems of the quadrotor, which is its inability to reach the exact target location that the user inten...

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Main Author: Chan, Shi Jing
Format: Thesis
Language:English
Published: 2018
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Online Access:http://umpir.ump.edu.my/id/eprint/24600/1/Hybrid%20fault%20detection%20using%20kalman%20filter%20and%20neural%20network%20for%20quadrotor%20micro%20aerial%20vehicle.pdf
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spelling my-ump-ir.246002021-11-10T00:57:58Z Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle 2018-07 Chan, Shi Jing TK Electrical engineering. Electronics Nuclear engineering This thesis introduces the application of time-domain Hybrid Fault Detection (HFD) methods for application in a quadrotor Micro Aerial Vehicle (MAV). The application aims to solve one of the main problems of the quadrotor, which is its inability to reach the exact target location that the user intended. The problem may be due to a faulty signal happened in the sensor or the actuator side or both, causing the quadrotor unable to complete the task given. Among the reasons of the faulty signal are the occurrences of signal in quadrotor, in the sensor or actuator side, as well as possible communication problem. When actuator fault, sensor fault or both faults occur, the controllers cannot function well and hence its performance reduce. At the initial control design stage of quadrotor, it is usually designed under the assumption that no faults would occur in quadrotors. The Faulty Detection (FD) method is therefore crucial to ensure quadrotor system can work properly and efficiently. The proposed method for the fault detection in this study uses hybrid technique which combines the extended kalman filter and artificial neural network (ANN). Two classes of approaches are analysed: the fault system identification approach ANN and the observer-based approach using the extended kalman filter. The extended kalman filter recognizes data from the sensors of the system and indicates the residuals of the system in the sensor reading. Residuals prediction is based on the fault magnitude and the time occurrence of fault. The information will then be fed to ANN, which consists of a bank of parameter estimation that generates the failure state. ANN is an algorithm that is used to determine the fault condition and determine its severity in the quadrotor system. ANN is designed based on nonlinear autoregressive network with exogenous inputs (NARX) scheme so that it can be trained to generate output based on the simulation behaviours of the quadrotor. The different fault locations are used as input vectors for training an artificial neural network (ANN). The result of the residual signal before filtration and after filtration showed that Kalman-ANN is able to identify single fault as well as multiple faults. For all individual faults including the multiple fault detection, the accuracy of the detection is 78.89 percent. It can be conclude that the newly proposed hybrid FD method in this thesis is able to accurately detect the location fault, for both the sensor and actuator faults simultaneous in the quadrotor. 2018-07 Thesis http://umpir.ump.edu.my/id/eprint/24600/ http://umpir.ump.edu.my/id/eprint/24600/1/Hybrid%20fault%20detection%20using%20kalman%20filter%20and%20neural%20network%20for%20quadrotor%20micro%20aerial%20vehicle.pdf pdf en public masters Universiti Malaysia Pahang Faculty of Electrical and Electronics Engineering
institution Universiti Malaysia Pahang Al-Sultan Abdullah
collection UMPSA Institutional Repository
language English
topic TK Electrical engineering
Electronics Nuclear engineering
spellingShingle TK Electrical engineering
Electronics Nuclear engineering
Chan, Shi Jing
Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
description This thesis introduces the application of time-domain Hybrid Fault Detection (HFD) methods for application in a quadrotor Micro Aerial Vehicle (MAV). The application aims to solve one of the main problems of the quadrotor, which is its inability to reach the exact target location that the user intended. The problem may be due to a faulty signal happened in the sensor or the actuator side or both, causing the quadrotor unable to complete the task given. Among the reasons of the faulty signal are the occurrences of signal in quadrotor, in the sensor or actuator side, as well as possible communication problem. When actuator fault, sensor fault or both faults occur, the controllers cannot function well and hence its performance reduce. At the initial control design stage of quadrotor, it is usually designed under the assumption that no faults would occur in quadrotors. The Faulty Detection (FD) method is therefore crucial to ensure quadrotor system can work properly and efficiently. The proposed method for the fault detection in this study uses hybrid technique which combines the extended kalman filter and artificial neural network (ANN). Two classes of approaches are analysed: the fault system identification approach ANN and the observer-based approach using the extended kalman filter. The extended kalman filter recognizes data from the sensors of the system and indicates the residuals of the system in the sensor reading. Residuals prediction is based on the fault magnitude and the time occurrence of fault. The information will then be fed to ANN, which consists of a bank of parameter estimation that generates the failure state. ANN is an algorithm that is used to determine the fault condition and determine its severity in the quadrotor system. ANN is designed based on nonlinear autoregressive network with exogenous inputs (NARX) scheme so that it can be trained to generate output based on the simulation behaviours of the quadrotor. The different fault locations are used as input vectors for training an artificial neural network (ANN). The result of the residual signal before filtration and after filtration showed that Kalman-ANN is able to identify single fault as well as multiple faults. For all individual faults including the multiple fault detection, the accuracy of the detection is 78.89 percent. It can be conclude that the newly proposed hybrid FD method in this thesis is able to accurately detect the location fault, for both the sensor and actuator faults simultaneous in the quadrotor.
format Thesis
qualification_level Master's degree
author Chan, Shi Jing
author_facet Chan, Shi Jing
author_sort Chan, Shi Jing
title Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
title_short Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
title_full Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
title_fullStr Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
title_full_unstemmed Hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
title_sort hybrid fault detection using kalman filter and neural network for quadrotor micro aerial vehicle
granting_institution Universiti Malaysia Pahang
granting_department Faculty of Electrical and Electronics Engineering
publishDate 2018
url http://umpir.ump.edu.my/id/eprint/24600/1/Hybrid%20fault%20detection%20using%20kalman%20filter%20and%20neural%20network%20for%20quadrotor%20micro%20aerial%20vehicle.pdf
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