Forecasting of Wind Turbine Output Power Using Machine learning

H. Rashid, Waqar Haider, C. Batunlu
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引用次数: 9

Abstract

Most of the countries around the world are facing huge environmental impact, and the most promising solution to mitigate these is the use of renewable energy, especially wind power. Though, the use of offshore wind energy is rapidly increasing to meet the elevating electricity demand. The researchers and policymakers have become aware of the importance of providing near accurate prediction of output power. Wind energy is tied to variabilities of weather patterns, especially wind speed, which are irregular in climates with erratic weather conditions. In this paper, we predicted the output power of the wind turbines using the random forest regressor algorithm. The SCADA data is collected for two years from a wind farm located in France. The model is trained using the data from 2017. The wind direction, wind speed and outdoor temperature are used as input parameters to predict output power. We test our model for two different capacity factors. The estimated mean absolute errors for the proposed model in this study were 3.6% and 7.3% for and 0.2 capacity factors, respectively. The proposed model in this study offers an efficient method to predict the output power of wind turbine with preferably low error.
利用机器学习预测风力发电机输出功率
世界上大多数国家都面临着巨大的环境影响,而缓解这些影响的最有希望的解决方案是使用可再生能源,尤其是风能。尽管如此,海上风能的使用正在迅速增加,以满足不断增长的电力需求。研究人员和政策制定者已经意识到提供接近准确的输出功率预测的重要性。风能与天气模式的变化有关,尤其是风速,在不稳定的天气条件下,风速是不规则的。本文采用随机森林回归算法对风力发电机组的输出功率进行预测。SCADA数据是从位于法国的一个风电场收集了两年的数据。该模型使用2017年的数据进行训练。以风向、风速和室外温度为输入参数预测输出功率。我们针对两种不同的容量因素测试了我们的模型。对于容量因子和0.2容量因子,本研究提出的模型的估计平均绝对误差分别为3.6%和7.3%。本文提出的模型为预测风力机输出功率提供了一种有效的方法,且误差较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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