Back to Search Start Over

Correlation Model Development for Saybolt Colour of Condensates and Light Crude Oils

Authors :
Cheng Seong Khor
Shahrul Azman Zainal Abidin
Nur Zawani Rosman
Sarat C. Dass
Fatin Nadhirah Asallehan
Nur Nelly Sofia Nurazrin
Farah Syamim Anuar
Fatimah Mohd Hanafi
Jia Jia Leam
Source :
ASM Science Journal. 13:1-7
Publication Year :
2020
Publisher :
Academy of Sciences Malaysia, 2020.

Abstract

Saybolt colour or number is a measured physical property of petroleum condensates and light crude oils which can be used as a quality indicator. As an alternative approach to the laboratory-based colour measurement method, this work aims to determine the influential physical properties in predicting Saybolt colour by applying a regression modelling approach. Data available on Saybolt colour and several physical properties are obtained from assay reports for condensates and light crude oils of Malaysian oil and gas fields. Other unavailable but potentially influential properties are estimated using a commercial process simulation software, iCON. The properties identified as explanatory variables in this study are refractive index, kinematic viscosity at 40C, and characterization factor. This machine learning problem gives rise to applying multiple linear regression techniques based on a backward elimination approach in developing a correlation to predict Saybolt colour using the identified key properties of characterization factor, kinematic viscosity at 40C, and refractive index.

Details

ISSN :
26828901 and 18236782
Volume :
13
Database :
OpenAIRE
Journal :
ASM Science Journal
Accession number :
edsair.doi...........f6a2c14af6b24c43114d9bb6e9cd9dd2
Full Text :
https://doi.org/10.32802/asmscj.2020.434