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Integrated Machine Learning and Enhanced Statistical Approach-Based Wind Power Forecasting in Australian Tasmania Wind Farm

机译:澳大利亚塔斯马尼亚风电场综合机学习及增强统计方法风电预测

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This paper develops an integrated machine learning and enhanced statistical approach for wind power interval forecasting. A time-series wind power forecasting model is formulated as the theoretical basis of our method. The proposed model takes into account two important characteristics of wind speed: the nonlinearity and the time-changing distribution. Based on the proposed model, six machine learning regression algorithms are employed to forecast the prediction interval of the wind power output. The six methods are tested using real wind speed data collected at a wind station in Australia. For wind speed forecasting, the long short-term memory (LSTM) network algorithm outperforms other five algorithms. In terms of the prediction interval, the five nonlinear algorithms show superior performances. The case studies demonstrate that combined with an appropriate nonlinear machine learning regression algorithm, the proposed methodology is effective in wind power interval forecasting.
机译:本文开发了一体化机器学习和增强的风电间隔预测统计方法。将时间序列风电预测模型作为我们方法的理论基础。所提出的模型考虑了风速的两个重要特征:非线性和时变分布。基于所提出的模型,采用六种机器学习回归算法来预测风力输出的预测间隔。使用在澳大利亚的风电台收集的真正风速数据测试了六种方法。对于风速预测,长短短期内存(LSTM)网络算法优于其他五种算法。就预测间隔而言,五种非线性算法显示出优异的性能。案例研究表明,结合适当的非线性机器学习回归算法,所提出的方法在风电间隔预测中有效。

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