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A Copula Enhanced Convolution for Uncertainty Aggregation

机译:不确定性汇总的Copula增强卷积

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A promising approach to managing the uncertainty of renewables is probabilistic forecasting. However, a key challenge associated with the integration of probabilistic forecast into real-world applications is to estimate the distribution of the aggregation of several correlated variables given their individual distributions. This study presents a copula enhanced convolution technique that accounts for cross-variable correlations. The method approximates the distributions of the convolved variables with piecewise polynomial functions and the correlations are represented with copula functions, which are then discretized and factorized for better computation performance. The method is demonstrated by applying it to the convolution of two correlated variables as well as multiple correlated variables. Our results indicate the copula enhancement effectively improve the results by reducing deviations from the actual distributions in the case of net load forecasting in California.
机译:解决可再生能源不确定性的一种有前途的方法是概率预测。但是,将概率预测集成到实际应用程序中的一个关键挑战是在给定各个相关变量各自的分布的情况下估计它们的集合的分布。这项研究提出了一种copula增强的卷积技术,该技术解决了交叉变量的相关性。该方法用分段多项式函数近似卷积变量的分布,并用copula函数表示相关性,然后对它们进行离散化和分解以提高计算性能。通过将其应用于两个相关变量以及多个相关变量的卷积来证明该方法。我们的结果表明,在加利福尼亚州进行净负荷预测时,copula增强可以通过减少与实际分布的偏差来有效地改善结果。

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