Short-Term Wind Characteristics Forecasting Using Stacked LSTM Networks

Dorsa Ziaei, N. Goudarzi
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引用次数: 1

Abstract

Onshore/offshore wind turbines play a vital role in addressing the increasing worldwide energy demand. Enhancing the wind power harnessing capability of turbines and extending the life expectancy of their components support further reductions in the final cost of wind energy. Data-driven techniques can complement existing physics-based approaches for complex problems such as wind farm wake modeling. In this paper, a deep learning model is developed to predict the local short-term wind characteristics. A data pre-processing pipeline that includes data cleaning and normalizing steps is developed to generate the training dataset. Time-series forecasting models based on long-short-term-memory (LSTM) and convLSTM are developed and trained for local short-term wind forecasting. The model is validated through experiments on three-year data from the National Renewable Energy Laboratory (NREL) database. The conducted experiments showed favorable performance based on root mean square error (RMSE) and R2 test scores. The R2 values for predicting 1-minute, 30-minute, and 1 hour, wind characteristics for both LSTM and convLSTM were above 0.92. The results are in agreement with the literature. They also demonstrate the effectiveness of the developed models for short-term wind forecasting compared to similar ones.
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基于堆叠LSTM网络的短期风特征预测
陆上/海上风力涡轮机在解决日益增长的全球能源需求方面发挥着至关重要的作用。提高涡轮机的风力发电能力,延长其组件的预期寿命,有助于进一步降低风能的最终成本。数据驱动技术可以补充现有的基于物理的复杂问题方法,如风电场尾流建模。本文建立了一种深度学习模型来预测局部短期风的特征。开发了包含数据清理和规范化步骤的数据预处理管道来生成训练数据集。建立并训练了基于长短期记忆(LSTM)和卷积LSTM的时间序列预报模型,用于局部短期风预报。该模型通过国家可再生能源实验室(NREL)数据库三年数据的实验验证。根据均方根误差(RMSE)和R2测试分数,所进行的实验显示出良好的性能。LSTM和convLSTM预测1分钟、30分钟和1小时风特征的R2值均在0.92以上。结果与文献一致。它们还证明了与同类模型相比,所开发的模型在短期风预报方面的有效性。
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