Fault diagnose based on pattern recognition

The purpose of the final year project is equipping the students the ability to solve the real life problem individually, enabling them to apply what they have learned in university. Students also need to collaborate with professors and other students, through which they have learned the art of effec...

Full description

Bibliographic Details
Main Author: Luo, Wen Jie
Other Authors: Luo Ming
Format: Final Year Project (FYP)
Language:English
Published: 2015
Subjects:
Online Access:http://hdl.handle.net/10356/63868
_version_ 1811691932153282560
author Luo, Wen Jie
author2 Luo Ming
author_facet Luo Ming
Luo, Wen Jie
author_sort Luo, Wen Jie
collection NTU
description The purpose of the final year project is equipping the students the ability to solve the real life problem individually, enabling them to apply what they have learned in university. Students also need to collaborate with professors and other students, through which they have learned the art of effective communication. The purpose of this project is to develop a fault diagnose algorithm to classify the type of fault for electrical equipment. First, the indicator for the electrical equipment, Partial Discharge (PD) is introduced. Partial discharge as an indicator for the health level of the equipment is affected by a series of the variables, the relationship between PD and these variables is discussed in the literature review. Two methods for extracting PD in introduced in this report as well. The modern method, non-intrusive method is emphasis in this project, the raw data collected for the project is come from this method. The artificial neural network as an approach designed by human to simulate the function of the human brains has been growing fast in recent years. The machine learning is a powerful tool in solving the problems that cannot be expressed in steps by steps [1], such as pattern recognition, classification, series prediction, and data mining. The most common neural network model is feedforward backpropagation network which is the one implemented in this project. The more details of this model will be discussed in this report. In this project, I have successfully developed a feedforward backpropagation network that is based on the visual studio for the fault classification. The historical data is used to train the network, new testing data is presented to the network for prediction. The benchmark data and testing data have shown a high accuracy of the prediction, which is up to 90%. The real data give a slightly low prediction, which is around 70%. Considering that more improvement can be done in the future, as better algorithm can be implemented, we can foresee a higher accuracy in the future. In conclusion, artificial neural network is a good model in the equipment diagnosis.
first_indexed 2024-10-01T06:27:44Z
format Final Year Project (FYP)
id ntu-10356/63868
institution Nanyang Technological University
language English
last_indexed 2024-10-01T06:27:44Z
publishDate 2015
record_format dspace
spelling ntu-10356/638682023-07-07T17:46:45Z Fault diagnose based on pattern recognition Luo, Wen Jie Luo Ming Wang Dan Wei School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering The purpose of the final year project is equipping the students the ability to solve the real life problem individually, enabling them to apply what they have learned in university. Students also need to collaborate with professors and other students, through which they have learned the art of effective communication. The purpose of this project is to develop a fault diagnose algorithm to classify the type of fault for electrical equipment. First, the indicator for the electrical equipment, Partial Discharge (PD) is introduced. Partial discharge as an indicator for the health level of the equipment is affected by a series of the variables, the relationship between PD and these variables is discussed in the literature review. Two methods for extracting PD in introduced in this report as well. The modern method, non-intrusive method is emphasis in this project, the raw data collected for the project is come from this method. The artificial neural network as an approach designed by human to simulate the function of the human brains has been growing fast in recent years. The machine learning is a powerful tool in solving the problems that cannot be expressed in steps by steps [1], such as pattern recognition, classification, series prediction, and data mining. The most common neural network model is feedforward backpropagation network which is the one implemented in this project. The more details of this model will be discussed in this report. In this project, I have successfully developed a feedforward backpropagation network that is based on the visual studio for the fault classification. The historical data is used to train the network, new testing data is presented to the network for prediction. The benchmark data and testing data have shown a high accuracy of the prediction, which is up to 90%. The real data give a slightly low prediction, which is around 70%. Considering that more improvement can be done in the future, as better algorithm can be implemented, we can foresee a higher accuracy in the future. In conclusion, artificial neural network is a good model in the equipment diagnosis. Bachelor of Engineering 2015-05-19T08:23:37Z 2015-05-19T08:23:37Z 2015 2015 Final Year Project (FYP) http://hdl.handle.net/10356/63868 en Nanyang Technological University 78 p. application/pdf
spellingShingle DRNTU::Engineering::Electrical and electronic engineering
Luo, Wen Jie
Fault diagnose based on pattern recognition
title Fault diagnose based on pattern recognition
title_full Fault diagnose based on pattern recognition
title_fullStr Fault diagnose based on pattern recognition
title_full_unstemmed Fault diagnose based on pattern recognition
title_short Fault diagnose based on pattern recognition
title_sort fault diagnose based on pattern recognition
topic DRNTU::Engineering::Electrical and electronic engineering
url http://hdl.handle.net/10356/63868
work_keys_str_mv AT luowenjie faultdiagnosebasedonpatternrecognition