ISSN: 2226-3624
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Balance between electricity production and consumption plays an important role for future strategic plan of a region. From this point of view, the concerning region should be aware of and forecast future production-consumption cycle and balance them. In this research, Northern-Iraq situation is taken into consideration to elaborate electricity energy consumption and compare with the generation. Competitive models such as Winters Additive and Box-Jenkins are considered to choose best model for the elaboration.
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(Demir, 2014)
Demir, A. (2014). Elaboration of Electricity Energy for Production-Consumption Relation of Northern-Iraq for the Future Expectations. International Journal of Academic Research in Economics and Management Sciences, 3(5), 90–95.
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