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A truncated Gaussian mixture model for distributions of wind power ramping features

机译:截断的高斯混合模型用于风电斜率分布的分布

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Wind power ramps (WPRs) are significantly impacting the power balance of the system operations. Better understanding the statistical characteristics of ramping features would help power system operators better manage these extreme events. Toward this end, this paper develops an analytical truncated Gaussian mixture model (TGMM) to fit the probability distributions of different ramping features. The non-linear least square method with the Trust-Region algorithm is adopted to optimize the tunable parameters of mixture components; the optimal number of mixture components is adaptively solved by minimizing the Euclidean distance to the actual probability distribution. A sign function is utilized to truncate the original GMM distribution and obtain the final TGMM. The cumulative distribution function (CDF) of TGMM is analytically derived. Numerical simulations on publically available wind power data show that the parametric TGMM can accurately characterize the irregular and multimodal distributions of each ramping feature.
机译:风电斜坡(WPR)严重影响系统运行的功率平衡。更好地理解斜坡功能的统计特性将有助于电力系统运营商更好地管理这些极端事件。为此,本文开发了一种分析截断的高斯混合模型(TGMM),以适应不同渐变特征的概率分布。采用非线性最小二乘方法结合Trust-Region算法对混合组分的可调参数进行优化。通过最小化到实际概率分布的欧几里得距离来自适应地解决混合分量的最佳数量。符号函数用于截断原始GMM分布并获得最终的TGMM。 TGMM的累积分布函数(CDF)通过分析得出。对公开获得的风能数据的数值模拟表明,参数TGMM可以准确地表征每个斜坡特征的不规则分布和多峰分布。

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