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A New Hybrid Approach to Forecast Wind Power for Large Scale Wind Turbine Data Using Deep Learning with TensorFlow Framework and Principal Component Analysis

机译:一种新的混合方法来预测大规模风力涡轮机数据的风电,利用TensoRFLOW框架和主成分分析

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摘要

Wind power forecasting plays a vital role in renewable energy production. Accurately forecasting wind energy is a significant challenge due to the uncertain and complex behavior of wind signals. For this purpose, accurate prediction methods are required. This paper presents a new hybrid approach of principal component analysis (PCA) and deep learning to uncover the hidden patterns from wind data and to forecast accurate wind power. PCA is applied to wind data to extract the hidden features from wind data and to identify meaningful information. It is also used to remove high correlation among the values. Further, an optimized deep learning algorithm with a TensorFlow framework is used to accurately forecast wind power from significant features. Finally, the deep learning algorithm is fine-tuned with learning error rate, optimizer function, dropout layer, activation and loss function. The algorithm uses a neural network and intelligent algorithm to predict the wind signals. The proposed idea is applied to three different datasets (hourly, monthly, yearly) gathered from the National Renewable Energy Laboratory (NREL) transforming energy database. The forecasting results show that the proposed research can accurately predict wind power using a span ranging from hours to years. A comparison is made with popular state of the art algorithms and it is demonstrated that the proposed research yields better predictions results.
机译:风电预测在可再生能源生产中起着至关重要的作用。由于风信号的不确定和复杂性,准确预测风能是一个重大挑战。为此目的,需要准确的预测方法。本文提出了一种新的组分分析(PCA)的混合方法,深入学习,揭示来自风数据的隐藏模式,并预测准确的风力。 PCA应用于风数据以从风数据中提取隐藏的功能,并识别有意义的信息。它还用于消除值之间的高相关。此外,利用TensoRFlow框架的优化深度学习算法用于精确地预测来自重要特征的风力。最后,深度学习算法采用学习错误率,优化功能,丢失层,激活和损耗功能进行微调。该算法使用神经网络和智能算法来预测风信号。该拟议的想法适用于三个不同的数据集(每小时,每月,每年,每年,来自国家可再生能源实验室(NRER)转型能源数据库。预测结果表明,拟议的研究可以使用数小时到几年的跨度准确地预测风力。通过艺术算法的流行状态进行了比较,并证明了所提出的研究产生更好的预测结果。

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