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Ultra-short-term Interval Prediction of Wind Farm Cluster Power Based on LASSO

机译:基于LASSO的风电场群功率的超短周期预测。

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Efficient and accurate power prediction of wind farm cluster is an effective method to improve the safety and reliability of power system for large-scale wind power. In this paper, the probabilistic prediction model of regional wind power is studied. The nonparametric method based on least absolute shrinkage and selection operator (LASSO) is used for the ultra-short-term probabilistic prediction. In this paper, the prediction model of nonlinear quantile regression (NQR) model based on quantile regression (QR) and extreme learning machine (ELM) is studied. Then, LASSO is utilized to shrink the output weights for the sparsity. The penalty of LASSO can prevent the overfitting and improve the performance of prediction intervals (PIs), without the reduction of computational efficiency. With the actual dataset of the wind farms in northeast China, the PIs performance is verified, compared with other well-established benchmarks.
机译:风电场集群的高效和准确功率预测是提高大型风电系统的安全性和可靠性的有效方法。本文研究了区域风电的概率预测模型。基于最小绝对收缩和选择操作员(套索)的非参数方法用于超短短期概率预测。本文研究了基于定量回归(QR)和极端学习机(ELM)的非线性分位数回归(NQR)模型的预测模型。然后,套索用于缩小稀疏性的输出权重。套索的惩罚可以防止过度装箱和提高预测间隔(PIS)的性能,而不会降低计算效率。随着中国东北地区风电场的实际数据集,与其他良好的基准相比,验证了PIS性能。

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