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Modelling complex investment decisions in Germany for renewables with different machine learning algorithms

机译:使用不同的机器学习算法为可再生能源在德国的复杂投资决策建模

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Investment decisions in renewable energies are known to be influenced by many diverse drivers, e.g. social, political, geographic, economic and psychological. Non-comprehensive models are problematic since missed interactions might introduce bias.We implement a robust modelling approach by (1) using a large data set with 1.4 million solar installations and (2) three different machine learning algorithms (deep neural networks, gradient boosting, random forests). Generalized linear models serve as baseline and comparison.A high prediction accuracy can be achieved on the county level with deep neural networks (adjusted R-2 = 0.86) and gradient boosting (adjusted R-2 = 0.87). The most important drivers are population per county, followed by type of urbanisation and social variables like unemployment, with varying degree of importance for the different machine-learning algorithms. Our approach points out both differences and agreements across methods and therefore a higher confidence in their interpretation.
机译:众所周知,可再生能源的投资决策受许多不同因素的影响,例如社会,政治,地理,经济和心理。非全面模型存在问题,因为错过的互动可能会引入偏差。我们通过以下方式实施一种可靠的建模方法:(1)使用具有140万个太阳能装置的大型数据集,以及(2)三种不同的机器学习算法(深度神经网络,梯度提升,随机森林)。广义线性模型用作基线和比较。使用深度神经网络(调整后的R-2 = 0.86)和梯度提升(调整后的R-2 = 0.87),可以在县级实现较高的预测准确性。最重要的驱动因素是每个县的人口,其次是城市化类型和诸如失业之类的社会变量,对于不同的机器学习算法而言,重要性各不相同。我们的方法指出了方法之间的差异和共识,因此对它们的解释具有更高的信心。

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