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Investigating the sustainability of renewable energy - An empirical analysis of European Union countries using a hybrid of projection pursuit fuzzy clustering model and accelerated genetic algorithm based on real coding

机译:调查可再生能源的可持续性 - 利用实际编码的投影追求模糊聚类模型及加速遗传算法对欧盟国家的实证分析

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Renewable energy sustainability plays a significant role in ensuring energy security, improving environment and promoting sustainable development of economic and social. This paper focuses on assessing and analyzing the sustainability and influencing factors of 27 EU countries' renewable energy. By DPSIR-Four-Dimensional indicators system, four sustainability dimensions of energy, economy, society and environment are considered and integrated. To deal with the randomness and fuzziness of multi-dimensional metadata, and to conduct assessment without standard, we develop a nonlinear multi-factor assessment model (projection pursuit fuzzy clustering model with accelerated genetic algorithm based on real coding). The results show that the CO2 emissions, energy productivity, non-renewable energy emission intensity, energy dependence, electricity price and policy support are closer related to the renewable energy sustainability. The strongest sustainability countries are Denmark and Sweden. From the overall analysis, time-series analysis shows that general sustainable level is a wave of growth. The geographical analysis shows that the countries with better sustainable development are mainly located in the central region, showing a belt distribution from north to south. The Sustainability decreases from the middle to the sides. (c) 2020 Elsevier Ltd. All rights reserved.
机译:可再生能源可持续性在确保能源安全,改善环境和促进经济和社会的可持续发展方面发挥着重要作用。本文侧重于评估和分析27个欧盟国家可再生能源的可持续性和影响因素。通过DPSIR-四维指标系统,考虑和整合了四个能源,经济,社会和环境的可持续性尺寸。为了处理多维元数据的随机性和模糊性,并在没有标准的情况下进行评估,我们开发非线性多因素评估模型(基于实际编码的加速遗传算法投影追求模糊聚类模型)。结果表明,二氧化碳排放量,能源生产率,不可再生能源发射强度,能源依赖性,电价和政策支持更接近可再生能源可持续性。最强的可持续发展国家是丹麦和瑞典。从整体分析中,时间序列分析表明,一般可持续水平是一股增长浪潮。地理分析表明,拥有更好的可持续发展的国家主要位于中部地区,展示了北向南的皮带分布。可持续性从中间到两侧减少。 (c)2020 elestvier有限公司保留所有权利。

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