Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)

“Upstream oil and gas is the part of the petroleum industry that locates and produces crude oil and natural gas through a network of pumps and wells.” Few main problems in this field are inefficiencies and machine breakdown that occur when wells are not being optimally engaged, as well as prod...

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Main Author: MOHD SAMLAN, NUR NASHA AYUNI
Format: Final Year Project
Language:English
Published: IRC 2020
Subjects:
Online Access:http://utpedia.utp.edu.my/21812/1/23318_Nasha%20Ayuni.pdf
http://utpedia.utp.edu.my/21812/
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spelling my-utp-utpedia.218122021-09-24T09:56:14Z http://utpedia.utp.edu.my/21812/ Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data) MOHD SAMLAN, NUR NASHA AYUNI Q Science (General) “Upstream oil and gas is the part of the petroleum industry that locates and produces crude oil and natural gas through a network of pumps and wells.” Few main problems in this field are inefficiencies and machine breakdown that occur when wells are not being optimally engaged, as well as production that stops temporarily when parts and equipment fail and waiting to be repaired. Machine failure refers to any event in which it cannot fulfil its mission or task. It may also mean that the machine has stopped working, is not working properly, or does not meet target expectations. In addition, the machine mentioned here is referring to turbine generator in oil and gas industry or PETRONAS itself. Turbine generator is a connection of a shaft of a steam turbine or gas turbine engine connected to a high-speed electric generator to generate electricity. Turbine generators are a very important necessity for the oil and gas industry. These generators provide key energy sources to the industry, in particular to assist in drilling and digging. Drilling and digging procedures are key to these industries, and it takes a lot of energy to service heavy equipment. Somehow, the industry has been experiencing machine failure for years, resulting in interfering with the smoothness of their production and increase cost of repair after a breakdown. Hence, the purpose of this study is to predict the machine upcoming failure by utilizing predictive analytic on machine learning where the process involves linear regression algorithm, therefore to create a model on KNIME analytic platform. Upon measuring the accuracy of the predicted model, the result will be displayed as a dashboard for the user to monitor the condition of the machine state in Power Business Intelligence. IRC 2020-01 Final Year Project NonPeerReviewed application/pdf en http://utpedia.utp.edu.my/21812/1/23318_Nasha%20Ayuni.pdf MOHD SAMLAN, NUR NASHA AYUNI (2020) Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data). IRC, Universiti Teknologi PETRONAS. (Submitted)
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Electronic and Digitized Intellectual Asset
url_provider http://utpedia.utp.edu.my/
language English
topic Q Science (General)
spellingShingle Q Science (General)
MOHD SAMLAN, NUR NASHA AYUNI
Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)
description “Upstream oil and gas is the part of the petroleum industry that locates and produces crude oil and natural gas through a network of pumps and wells.” Few main problems in this field are inefficiencies and machine breakdown that occur when wells are not being optimally engaged, as well as production that stops temporarily when parts and equipment fail and waiting to be repaired. Machine failure refers to any event in which it cannot fulfil its mission or task. It may also mean that the machine has stopped working, is not working properly, or does not meet target expectations. In addition, the machine mentioned here is referring to turbine generator in oil and gas industry or PETRONAS itself. Turbine generator is a connection of a shaft of a steam turbine or gas turbine engine connected to a high-speed electric generator to generate electricity. Turbine generators are a very important necessity for the oil and gas industry. These generators provide key energy sources to the industry, in particular to assist in drilling and digging. Drilling and digging procedures are key to these industries, and it takes a lot of energy to service heavy equipment. Somehow, the industry has been experiencing machine failure for years, resulting in interfering with the smoothness of their production and increase cost of repair after a breakdown. Hence, the purpose of this study is to predict the machine upcoming failure by utilizing predictive analytic on machine learning where the process involves linear regression algorithm, therefore to create a model on KNIME analytic platform. Upon measuring the accuracy of the predicted model, the result will be displayed as a dashboard for the user to monitor the condition of the machine state in Power Business Intelligence.
format Final Year Project
author MOHD SAMLAN, NUR NASHA AYUNI
author_facet MOHD SAMLAN, NUR NASHA AYUNI
author_sort MOHD SAMLAN, NUR NASHA AYUNI
title Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)
title_short Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)
title_full Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)
title_fullStr Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)
title_full_unstemmed Predictive Analytic on Machine Failure by Utilizing Linear Regression (Historical Data)
title_sort predictive analytic on machine failure by utilizing linear regression (historical data)
publisher IRC
publishDate 2020
url http://utpedia.utp.edu.my/21812/1/23318_Nasha%20Ayuni.pdf
http://utpedia.utp.edu.my/21812/
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score 13.160551