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Wind power forecasting of an offshore wind turbine based on high-frequency SCADA data and deep learning neural network

机译:基于高频SCADA数据和深度学习神经网络的海上风力涡轮机的风力推测

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摘要

Accurate wind power forecasting is essential for efficient operation and maintenance (O&M) of wind power conversion systems. Offshore wind power predictions are even more challenging due to the multifaceted systems and the harsh environment in which they are operating. In some scenarios, data from Supervisory Control and Data Acquisition (SCADA) systems are used for modern wind turbine power forecasting. In this study, a deep learning neural network was constructed to predict wind power based on a very high-frequency SCADA database with a sampling rate of 1-s. Input features were engineered based on the physical process of offshore wind turbines, while their linear and non-linear correlations were further investigated through Pearson product-moment correlation coefficients and the deep learning algorithm, respectively. Initially, eleven features were used in the predictive model, which are four wind speeds at different heights, three measured pitch angles of each blade, average blade pitch angle, nacelle orientation, yaw error, and ambient temperature. A comparison between different features shown that nacelle orientation, yaw error, and ambient temperature can be reduced in the deep learning model. The simulation results showed that the proposed approach can reduce the computational cost and time in wind power forecasting while retaining high accuracy.
机译:精确的风力预测对于风电转换系统的高效运行和维护(O&M)至关重要。由于多方面的系统和它们正在运行的恶劣环境,海上风电预测更具挑战性。在某些情况下,来自监督控制和数据采集(SCADA)系统的数据用于现代风力涡轮机电力预测。在这项研究中,构建了一种深入学习的神经网络,以预测基于具有1-S采样率的非常高频SCADA数据库的风力。基于海上风力涡轮机的物理过程设计了输入特征,同时通过Pearson Product-Morease Conelelation系数和深度学习算法进一步研究了它们的线性和非线性相关性。最初,在预测模型中使用11个特征,其是不同高度的四个风速,每个刀片的三个测量的俯仰角,平均叶片桨距角,机舱取向,偏航误差和环境温度。在深度学习模型中,不同特征之间的比较显示为机舱取向,偏航误差和环境温度。仿真结果表明,该方法可以降低风力预测中的计算成本和时间,同时保持高精度。

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