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Probabilistic wind power ramp forecasting based on a scenario generation method

机译:基于场景生成方法的概率风电斜率预测

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Wind power ramps (WPRs) are particularly important in the management and dispatch of wind power and currently drawing the attention of balancing authorities. With the aim to reduce the impact of WPRs for power system operations, this paper develops a probabilistic ramp forecasting method based on a large number of simulated scenarios. An ensemble machine learning technique is first adopted to forecast the basic wind power forecasting scenario and calculate the historical forecasting errors. A continuous Gaussian mixture model (GMM) is used to fit the probability distribution function (PDF) of forecasting errors. The cumulative distribution function (CDF) is analytically deduced. The inverse transform method based on Monte Carlo sampling and the CDF is used to generate a massive number of forecasting error scenarios. An optimized swinging door algorithm is adopted to extract all the WPRs from the complete set of wind power forecasting scenarios. The probabilistic forecasting results of ramp duration and start-time are generated based on all scenarios. Numerical simulations on publicly available wind power data show that within a predefined tolerance level, the developed probabilistic wind power ramp forecasting method is able to predict WPRs with a high level of sharpness and accuracy.
机译:风力发电坡道(WPR)在风力发电的管理和调度中尤其重要,目前引起了平衡管理机构的注意。为了减少WPR对电力系统运行的影响,本文开发了一种基于大量模拟场景的概率斜坡预测方法。首先采用集成机器学习技术来预测基本的风能预测场景并计算历史预测误差。连续高斯混合模型(GMM)用于拟合预测误差的概率分布函数(PDF)。累积分布函数(CDF)可以通过分析得出。基于蒙特卡洛采样和CDF的逆变换方法用于生成大量的预测误差场景。采用优化的旋转门算法从整套风电预测场景中提取所有WPR。根据所有场景生成斜坡持续时间和开始时间的概率预测结果。对公开可用的风能数据的数值模拟表明,在预定义的公差水平内,已开发的概率风能斜率预测方法能够以很高的清晰度和准确性来预测WPR。

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