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Ensemble learning for forecasting main meteorological parameters

机译:Ensemble学习预测主要气象参数

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The significant role of predicting weather conditions in daily life, the new era of innovative machine learning approaches along with the availability of high volumes of data and high computer performance capabilities, creates increasing perspectives for novel improved short-range forecasting of main meteorological parameters. Among the various algorithms for forecasting parameters, ensemble learning approaches are able to generate simple models which provide accurate predictions for regression problems. The advantage of ensembles with respect to single models is that they perform remarkably well for a variety of problems. The main aim of this ongoing research is to provide some preliminary assessment of the applicability of ensemble learning for wind speed forecasting. In this work, forecasting results of a single and two ensemble models are presented and compared.
机译:预测日常生活中天气条件的重要作用,创新机器学习方法的新时代以及高卷数据和高计算机性能能力的可用性,创造了对新颖的主要气象参数的改进的短程预测的越来越多的视角。在用于预测参数的各种算法中,集合学习方法能够生成简单的模型,其为回归问题提供准确的预测。关于单一模型的合奏的优势在于它们对各种问题进行非常好。该持续研究的主要目的是提供一些初步评估集合学习对风速预测的适用性。在这项工作中,提出并比较了单一和两个集合模型的预测结果。

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