Journal of Forest Economics > Vol 27 > Issue 1

The relationship between woody biomass consumption and economic growth: Nonlinear ARDL and causality

Melike Bildirici, Yıldız Technical University, Turkey, melikebildirici@gmail.com , Fulya Ozaksoy, Dogus University, Turkey, fulyaozaksoy@gmail.com
 
Suggested Citation
Melike Bildirici and Fulya Ozaksoy (2017), "The relationship between woody biomass consumption and economic growth: Nonlinear ARDL and causality", Journal of Forest Economics: Vol. 27: No. 1, pp 60-69. http://dx.doi.org/10.1016/j.jfe.2017.01.002

Publication Date: 0/4/2017
© 0 2017 Melike Bildirici, Fulya Ozaksoy
 
Subjects
 
Keywords
African countriesWoody biomass energy consumptionEconomic growthGranger causalityNARDLARDLForecast error variance decomposition
 

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In this article:
Introduction 
Literature review 
Woody biomass energy consumption in Sub-Saharan africa 
Data and econometric methodology 
Econometric results 
Conclusion and economic policy implications 

Abstract

In this paper, the structure of the relationship between woody biomass energy consumption and real per Capita GDP was analyzed in the period of 1980–2012 for the selected African countries by ARDL (Autoregressive Distributed Lag), nonlinear ARDL, Granger causality and forecast error variance decomposition methods. After a symmetric relationship between woody biomass energy consumption and economic growth was determined by the nonlinear ARDL (NARDL) model, ARDL and Granger Causality methods were applied. According to results of the Granger Causality method, there is a unidirectional causality running from economic growth to woody biomass energy consumption for Botswana, Cameroon, Uganda, and Zambia and from woody biomass energy consumption to economic growth for Burkina Faso, Malawi, Central African Republic, Namibia, Côte d’Ivoire, Djibouti, Gabon and Zimbabwe. The bidirectional causality was supported for Kenya, Lesotho, Madagascar and Togo. Lastly, forecast error variance decomposition method was applied to support the results obtained from Granger Causality method. The forecast error variance decomposition results of real per Capita GDP and woody biomass energy consumption showed that woody biomass energy and real per Capita GDP made the important contribution to the forecast error variance of itself and each other.

DOI:10.1016/j.jfe.2017.01.002