Please use this identifier to cite or link to this item: http://umt-ir.umt.edu.my:8080/handle/123456789/7019
Title: PREDICTION OF CARBON DIOXIDE EMISSIONS USING FUZZY LINEAR REGRESSION MODEL
Other Titles: A CASE OF DEVELOPED AND DEVELOPING COUNTRIES
Authors: LAZIM ABDULLAH
NOOR DALINA KHALID
Keywords: CO 2 emissions
predictive model
error analysis
economic variables
Issue Date: 2014
Publisher: Journal of Sustainability Science and Management
Abstract: Carbon dioxide (CO2) emissions have been continuously escalating in recent years. The escalating trend is consistent with the current economic activities and other uncertain variables such as demand and supply in businesses and energy needs. Linear model is one of the most commonly used methods to explain the relationship between CO2 emissions and the related economic variables. However, linear regression model fails to describe the relationship due to the variables’ uncertainty and vague information. As to overcome this problem, fuzzy linear regression model has been proposed in explaining the relationship. This paper aims to predict CO2 emissions using possibilistic fuzzy linear regression model by employing data from two countries. The prediction on the effciency of CO2 emissions for the United Kingdom (UK) and Malaysia was measured. The predictive models identifed population and Gross Domestic Products as the most effective predictors for the UK and Malaysia respectively. The root mean square errors of the UK and Malaysia predictive models were 2.895 and 1010.117 respectively. It shows that the CO2 emissions predictors of the UK are more effcient than Malaysia. Instead of crisp deterministic regression coeffcients, the fuzzy coeffcients with middle and spread values of fuzzy linear regression equations offer new contribution to describe the relationship between CO2 emissions and the related economic variables.
URI: http://hdl.handle.net/123456789/7019
ISSN: 18238556
Appears in Collections:Journal Articles

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