DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES
One of the methods to determine the quality of petroleum condensates and crude oils before processing in refineries is by determining their Saybolt colour or number. The main focus of this work is to develop a statistically-significant correlation that relates Saybolt number with other pre-determine...
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my-utp-utpedia.200402019-12-16T10:03:37Z http://utpedia.utp.edu.my/20040/ DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES Mohd Hanafi, Fatimah One of the methods to determine the quality of petroleum condensates and crude oils before processing in refineries is by determining their Saybolt colour or number. The main focus of this work is to develop a statistically-significant correlation that relates Saybolt number with other pre-determined physical properties of condensates. The motivation is to obviate the time taken to determine the Saybolt number of condensates which is usually conducted through laboratory analysis. We apply analytics available in business productivity tools such as Excel Data Analysis and R to analyze the applicability of various multiple linear regression models in determining suitable regressors to predict Saybolt colour over a wide range of condensate types. Another outcome of the study is to identify issues to be addressed before conducting extensive statistical analysis. IRC 2019-05 Final Year Project NonPeerReviewed application/pdf en http://utpedia.utp.edu.my/20040/1/FYPII_Dissertation_Fatimah_22006.pdf Mohd Hanafi, Fatimah (2019) DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES. IRC, Universiti Teknologi PETRONAS. (Submitted) |
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One of the methods to determine the quality of petroleum condensates and crude oils before processing in refineries is by determining their Saybolt colour or number. The main focus of this work is to develop a statistically-significant correlation that relates Saybolt number with other pre-determined physical properties of condensates. The motivation is to obviate the time taken to determine the Saybolt number of condensates which is usually conducted through laboratory analysis. We apply analytics available in business productivity tools such as Excel Data Analysis and R to analyze the applicability of various multiple linear regression models in determining suitable regressors to predict Saybolt colour over a wide range of condensate types. Another outcome of the study is to identify issues to be addressed before conducting extensive statistical analysis. |
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Final Year Project |
author |
Mohd Hanafi, Fatimah |
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Mohd Hanafi, Fatimah DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES |
author_facet |
Mohd Hanafi, Fatimah |
author_sort |
Mohd Hanafi, Fatimah |
title |
DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES |
title_short |
DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES |
title_full |
DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES |
title_fullStr |
DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES |
title_full_unstemmed |
DEVELOPMENT OF SAYBOLT NUMBER CORRELATION FOR CONDENSATES |
title_sort |
development of saybolt number correlation for condensates |
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IRC |
publishDate |
2019 |
url |
http://utpedia.utp.edu.my/20040/1/FYPII_Dissertation_Fatimah_22006.pdf http://utpedia.utp.edu.my/20040/ |
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