ARTIFICIAL INTELLIGENCE AND NATURE-INSPIRED OPTIMIZATION ON INTEGRATIVE CAPACITY OF RENEWABLE ENERGY IN THE WESTERN BALKAN

Ivan Stevović, S. Kirin, Ivana Božić
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Abstract

Two artificial intelligence models for the integration of renewable energy sources are developed within this research to contribute to the European Green Plan realization. The review of renewable energy natural potential, on one hand, and installed capacity, on the other hand, in the Western Balkans and twenty-eight European countries is done within this research, as well as emissions. The analyses show that the European countries, sometimes even with lower natural potential in renewables, have installed much more renewable capacities than the Balkans countries with much higher natural potential. According to this, the first artificial intelligence model is developed based on multi-criteria linear regression analysis. This model relies on the correlation between the relevant regressors, i.e. relevant input variables for twenty-eight European countries and the same regressors for a particular Balkans country. Its goal is to find the maximum possible integrative renewable capacity in a Balkans’s country within the real socio-economic environment. The second artificial intelligence model is developed based on multi-criteria evolution genetic algorithms. Its goal is to find the maximum possible integrative renewable capacity within a real electric power system. Nature-inspired optimization is applied. From the framework of a given large number of generations, technical combinations of the degree of renewable energy sources integration, the best populations, i.e. combinations are selected. As nature selects from many generations and allows the best to survive and punishes the „weakˮ, in our case, „weak” combinations are those failing to meet the given conditions and limitations of the real electric power system. A new methodology is offered. Theoretical general formulas are given for both models. Developed models are tested on a numerical experiment of solar energy integration in the Serbia case study. Analyses of sensitivity prove that both models are applicable for all renewable energy sources and countries or regions.
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西巴尔干地区可再生能源综合发电能力的人工智能与自然优化
本研究开发了两种可再生能源整合的人工智能模型,为欧洲绿色计划的实现做出贡献。这项研究审查了西巴尔干和28个欧洲国家一方面是可再生能源的自然潜力,另一方面是装机容量,以及排放量。分析表明,欧洲国家,有时甚至可再生能源的自然潜力较低,比自然潜力高得多的巴尔干国家安装了更多的可再生能源。在此基础上,建立了第一个基于多准则线性回归分析的人工智能模型。该模型依赖于相关回归量之间的相关性,即28个欧洲国家的相关投入变量与一个特定巴尔干国家的相同回归量。其目标是在巴尔干国家的实际社会经济环境中找到最大可能的综合可再生能源能力。第二个人工智能模型是基于多准则进化遗传算法建立的。其目标是在一个真实的电力系统中找到最大可能的综合可再生能源容量。应用了自然启发的优化。从给定的大量代的框架内,技术组合的可再生能源的整合程度,选择最佳人口,即组合。正如大自然从许多代中选择并允许最好的生存并惩罚“弱的”,在我们的例子中,“弱”组合是那些不能满足实际电力系统给定条件和限制的组合。提出了一种新的方法。给出了两种模型的理论一般公式。以塞尔维亚为例,对所建立的模型进行了太阳能集成的数值试验。灵敏度分析表明,两种模型均适用于所有可再生能源和国家或地区。
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