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A spatiotemporal probabilistic model‐based temperature‐augmented probabilistic load flow considering PV generations

机译:考虑PV生成的基于时空概率模型的温度增量概率潮流

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摘要

The probabilistic steady-state forecasting of a PV-integrated power system requires a suitable forecasting model capable of accurately characterizing the uncertainties and correlations among multivariate inputs. The critical and foremost difficulties in the development of such a model include the accurate representation of the characterizing features such as complex nonstationary pattern, non-Gaussianity, and spatial and temporal correlations. This paper aims at developing an improved high-dimensional multivariate spatiotemporal model through enhanced preprocessing, transformation techniques, principal component analysis, and a suitable time series model that is capable of accurately modeling the trend in the variance of uncertain inputs. The proposed model is applied to the probabilistic load flow carried out on the modified Indian utility 62-bus transmission system using temperature-augmented system model for an operational planning study. A detailed discussion of various results has indicated the effectiveness of the proposed model in capturing the aforesaid characterizing features of uncertain inputs.
机译:光伏集成电力系统的概率稳态预测需要一个合适的预测模型,该模型能够准确地表征多变量输入之间的不确定性和相关性。开发这种模型的关键和最重要的困难包括准确表征特征,例如复杂的非平稳模式,非高斯性以及时空相关性。本文旨在通过增强的预处理,转换技术,主成分分析和合适的时间序列模型来开发改进的高维多元时空模型,该模型能够准确地模拟不确定输入方差中的趋势。所提出的模型适用于使用温度增强系统模型进行改进的印度公用事业62总线输电系统上进行的概率潮流,用于运营计划研究。对各种结果的详细讨论表明,提出的模型在捕获不确定输入的上述特征时是有效的。

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