利用机器学习预测光伏发电-综述

Rachna, Ashutosh Kumar Singh
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摘要

世界环境危机;一方面实现零碳排放,另一方面电力需求的增加促使我们更好地利用地球上现有的非常规能源。太阳作为非传统能源生产清洁能源的主要来源,然而,天气条件、昼夜模式和季节对可再生能源的生产影响很大。在可再生能源生产的情况下,机器学习可以成为一个强大的工具,将我们从这种不确定性中拯救出来。本文全面回顾了通过跟踪太阳辐照度、温度和其他影响太阳能发电的参数来预测太阳能发电的各种机器学习技术。本文提供了以前使用的机器学习技术的见解,它们的好处,以及最适合用于预测太阳能发电的多级机器学习技术。此外,我们通过总结讨论的未来范围并提出可以在未来使用机器学习的发电预测领域使用的ML方法来结束我们的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Photovoltaic Power Generation using Machine Learning - A Review
The world environment crisis; leading towards zero carbon emission on one hand and the increase in electrical energy demand on the other hand has accelerated us to make better use of the non-conventional energy sources present on earth. Sun being the major source of non-conventional energy produces clean energy however, the weather conditions, day-night patterns, and seasons affect renewable energy production a lot. Machine learning can be a powerful tool to rescue us from this uncertainty in the case of renewable power production. This paper is a comprehensive review of various machine-learning techniques for predicting solar power generation by keeping track of solar irradiance, temperature, and other parameters that affect solar power generation. The paper provides insight into the ML techniques used previously, their benefits, and the best-suited multi-level ML techniques for the prediction of solar power generation. Further, we wind up our work by concluding the future scope of the discussion and proposing the ML methodologies that can be employed in the future in the field of power generation prediction using machine learning.
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