概率最优潮流的一种新的数据驱动拟蒙特卡罗算法

Attoti Bharath Krishna, A. Abhyankar
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引用次数: 0

摘要

概率最优潮流(POPF)帮助系统操作员进行基于风险的决策。非侵入性和使用整个确定性模型的能力等特征使得基于样本的技术(如准蒙特卡罗(QMC))适合求解POPF。然而,QMC广泛应用的缺点包括其不均匀的精度,波动的收敛速度,以及缺乏质量度量。为此,我们提出了一个数据驱动的非参数QMC框架,用于准确有效地求解具有复杂不确定性和相关不确定性的POPF。提出的方法采用均匀实验设计(UD)作为QMC抽样方法。该框架基于copula视角,直接在高斯空间中计算合适的相关矩阵,降低了计算成本。此外,我们建议混合差异(MD)作为一种度量,可以帮助研究人员在不需要耗时的模拟的情况下为POPF选择合适的QMC样本集。对一个改进的39总线系统的案例研究结果表明,与现有的QMC方法相比,所提出的基于ud的QMC方法减少了计算工作量,同时提供了准确的POPF结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Data-Driven Quasi-Monte Carlo for Probabilistic Optimal Power Flow
Probabilistic optimal power flow (POPF) assists system operators in risk-based decision-making. Characteristics like non-intrusive nature and the ability to employ the whole deterministic model make sample-based techniques like Quasi-Monte Carlo (QMC) suitable for solving POPF. However, the downsides of QMC’s broad application include its uneven accuracy, fluctuating rate of convergence, and absence of a quality metric. To that aim, we present a data-driven nonparametric QMC framework for solving POPF with complex and correlated uncertainties accurately and efficiently. The proposed methodology employs the uniform experimental design (UD) as a QMC sampling approach. The suggested framework, based on the copula perspective, directly calculates the appropriate correlation matrix in Gaussian space, decreasing the computing cost. Furthermore, we suggest mixture discrepancy (MD) as a metric that can assist researchers in choosing the appropriate QMC sample set for POPF without the need for time-consuming simulation. Results from the case study on a modified 39-bus system reveal that the proposed UD-based QMC reduces computing effort while providing accurate POPF results compared to current QMC approaches.
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