A design of ultra-short-term power prediction algorithm driven by wind turbine operation and maintenance data for LSTM-SA neural network

IF 1.9 4区 工程技术 Q4 ENERGY & FUELS
Hong-Qiang You, Renyuan Jia, Xiaolei Chen, Lingxiang Huang
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引用次数: 0

Abstract

Due to factors such as meteorology and geography, the generated power of wind turbines fluctuates frequently. In this way, power changes should be predicted in grid connection to take control measures in time. In this paper, an operation and maintenance data-driven LSTM-SA (long short-term memory with self-attention) prediction algorithm is designed to predict the ultra-short-term power of wind turbines. First, the wind turbine operation and maintenance data, including wind speed, blade deflection angle, yaw angle, humidity, and temperature, are subjected to feature selection by using the Pearson correlation coefficient method and the Lasso algorithm, thereby establishing the correlation between wind speed, blade deflection angle, and out power. Then, full-connect neural network is trained to establish a mapping model of wind speed, blade deflection angle, and out power. The power change rate k is calculated by the derivative of output power to wind speed. Finally, based on the historical power data and the power change rate k, the LSTM neural network power prediction model is trained to calculate the output power prediction value. In order to increase the training efficiency and reduce the delay, the self-attention mechanism is used to optimize the hidden layer of the LSTM model. The test results show that, compared with similar prediction algorithms, this algorithm has higher prediction accuracy, faster convergence speed, and better stability, which can solve the problem of accurately predicting ultra-short-term power when wind power training data is inadequate.
基于LSTM-SA神经网络的风电机组运维数据超短期功率预测算法设计
由于气象和地理等因素,风力发电机的发电量波动频繁。通过这种方式,应预测电网连接中的功率变化,以便及时采取控制措施。本文设计了一种运行和维护数据驱动的LSTM-SA(具有自注意的长短期记忆)预测算法来预测风力涡轮机的超短期功率。首先,使用Pearson相关系数法和Lasso算法对包括风速、叶片偏转角、偏航角、湿度和温度在内的风机运行和维护数据进行特征选择,从而建立风速、叶片偏转角和输出功率之间的相关性。然后,对全连接神经网络进行训练,建立风速、叶片偏转角和输出功率的映射模型。功率变化率k通过输出功率对风速的导数来计算。最后,基于历史功率数据和功率变化率k,训练LSTM神经网络功率预测模型来计算输出功率预测值。为了提高训练效率和减少延迟,使用自注意机制对LSTM模型的隐藏层进行优化。测试结果表明,与类似的预测算法相比,该算法具有更高的预测精度、更快的收敛速度和更好的稳定性,可以解决风电训练数据不足时超短期功率的准确预测问题。
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来源期刊
Journal of Renewable and Sustainable Energy
Journal of Renewable and Sustainable Energy ENERGY & FUELS-ENERGY & FUELS
CiteScore
4.30
自引率
12.00%
发文量
122
审稿时长
4.2 months
期刊介绍: The Journal of Renewable and Sustainable Energy (JRSE) is an interdisciplinary, peer-reviewed journal covering all areas of renewable and sustainable energy relevant to the physical science and engineering communities. The interdisciplinary approach of the publication ensures that the editors draw from researchers worldwide in a diverse range of fields. Topics covered include: Renewable energy economics and policy Renewable energy resource assessment Solar energy: photovoltaics, solar thermal energy, solar energy for fuels Wind energy: wind farms, rotors and blades, on- and offshore wind conditions, aerodynamics, fluid dynamics Bioenergy: biofuels, biomass conversion, artificial photosynthesis Distributed energy generation: rooftop PV, distributed fuel cells, distributed wind, micro-hydrogen power generation Power distribution & systems modeling: power electronics and controls, smart grid Energy efficient buildings: smart windows, PV, wind, power management Energy conversion: flexoelectric, piezoelectric, thermoelectric, other technologies Energy storage: batteries, supercapacitors, hydrogen storage, other fuels Fuel cells: proton exchange membrane cells, solid oxide cells, hybrid fuel cells, other Marine and hydroelectric energy: dams, tides, waves, other Transportation: alternative vehicle technologies, plug-in technologies, other Geothermal energy
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