Comparing Energy Demand Estimation Using Artificial Algae Algorithm: The Case of Turkey

A. Beşkirli, M. Beşkirli, Huseyin Hakli, Harun Uguz
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引用次数: 10

Abstract

Energy demand estimation is an important issue in terms of the economy and resources of a country. In this study, an Artificial Algae Algorithm (AAA) was used to estimate Turkey’s long-term energy demand. The AAA is a fast, powerful and effective evolutionary optimization technique used to solve continuous optimization problems. Two different equations (linear and exponential) were used for the energy demand estimation by considering the relationship between the increase in economic indicators and the increase in energy consumption in Turkey. Turkey’s long-term energy demand was estimated from 2006 to 2025 with the AAA method by using gross national product (GNP) and information about imports, exports and population. The AAA method was compared to other methods in published literature to show its success when applied to the energy demand problem. It was found that the results obtained by the proposed method were more robust and successful than those of the other methods.
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用人工藻类算法比较能源需求估算:以土耳其为例
能源需求估算是一个关系到国家经济和资源的重要问题。在本研究中,使用人工藻类算法(AAA)来估计土耳其的长期能源需求。AAA是一种快速、强大、有效的进化优化技术,用于解决连续优化问题。考虑到土耳其经济指标的增加与能源消耗增加之间的关系,使用了两个不同的方程(线性和指数)来估计能源需求。土耳其从2006年到2025年的长期能源需求,采用AAA方法,使用国民生产总值(GNP)和有关进口、出口和人口的信息。将AAA方法与已发表文献中的其他方法进行了比较,以显示其在解决能源需求问题时的成功。结果表明,与其他方法相比,该方法具有更好的鲁棒性和有效性。
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