Randomization-based Machine Learning methods for prediction are currently a hot topic in Artificial Intelligence, due to their excellent performance in many prediction problems, with a bounded computation time. The application of randomization-based approaches to renewable energy prediction problems has been massive in the last few years, including many different types of randomization-based approaches, their hybridization with other techniques and also the description of new versions of classical randomization-based algorithms, including deep and ensemble approaches. In this paper we review the most important characteristics of randomization-based machine learning approaches and their application to renewable energy prediction problems. We describe the most important methods and algorithms of this family of modeling methods, and perform a critical literature review, examining prediction problems related to solar, wind, marine/ocean and hydro-power renewable sources. We support our critical analysis with an extensive experimental study, comprising real-world problems related to solar, wind and hydro-power energy, where randomization-based algorithms are found to achieve superior results at a significantly lower computational cost than other modeling counterparts. We end our survey with a prospect of the most important challenges and research directions that remain open this field, along with an outlook motivating further research efforts in this exciting research field.
翻译:过去几年来,对可再生能源预测问题应用了大量基于随机的方法,包括许多不同类型的随机方法,这些方法与其他技术的混合,以及描述传统随机算法的新版本,包括深层和共通方法。在本文件中,我们审查了随机机械学习方法的最重要特点及其对可再生能源预测问题的应用。我们描述了这一类模型方法的最重要方法和算法,并进行了重要的文献审查,审查了与太阳能、风能、海洋/海洋和水电可再生能源有关的预测问题。我们支持我们进行批判性分析,进行广泛的实验研究,其中包括与太阳能、风能和水电能源有关的现实世界问题,发现随机算法以比其他模型高得多的计算成本取得优异的结果。我们结束我们的调查,展望最重要的挑战,研究方向仍然是开放的实地,同时进行进一步的实地研究。