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Evaluation of dimensionality reduction methods applied to numerical weather models for solar radiation forecasting

机译:降维方法在数值天气模型中的太阳辐射预报评估

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The interest in solar radiation prediction has increased greatly in recent times among the scientific community. In this context, Machine Learning techniques have shown their ability to learn accurate prediction models. The aim of this paper is to go one step further and automatically achieve interpretability during the learning process by performing dimensionality reduction on the input variables. To this end, three non standard multivariate feature selection approaches are applied, based on the adaptation of strong learning algorithms to the feature selection task, as well as a battery of classic dimensionality reduction models. The goal is to obtain robust sets of features that not only improve prediction accuracy but also provide more interpretable and consistent results. Real data from the Weather Research and Forecasting model, which produces a very large number of variables, is used as the input. As is to be expected, the results prove that dimensionality reduction in general is a useful tool for improving performance, as well as easing the interpretability of the results. In fact, the proposed non standard methods offer important accuracy improvements and one of them provides with an intuitive and reduced selection of features and mesoscale nodes (around 10% of the initial variables centered on three specific nodes).
机译:最近,科学界对太阳辐射预测的兴趣大大增加。在这种情况下,机器学习技术已显示出学习准确的预测模型的能力。本文的目的是更进一步,通过对输入变量进行降维,在学习过程中自动实现可解释性。为此,基于强大的学习算法对特征选择任务的适应以及一系列经典的降维模型,应用了三种非标准的多元特征选择方法。目标是获得功能强大的功能集,这些功能集不仅可以提高预测准确性,还可以提供更可解释和一致的结果。来自“天气研究和预报”模型的实际数据会产生大量变量,将其用作输入。可以预料,结果证明降维通常是改善性能以及简化结果可解释性的有用工具。实际上,所提出的非标准方法提供了重要的精度改进,其中一种方法提供了特征和中尺度节点的直观且减少的选择(大约10%的初始变量集中在三个特定节点上)。

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