Forecast Error Modeling for Microgrid Operation Considering Correlation among Distributed Generators Using Gaussian Process Regression

Y. Yoo, Seokheon Cho, Sung-Geun Song, R. Rao
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Abstract

Small-scale and self-sustainable grids known as microgrid (MG) are a key element for future power systems with a high penetration of renewable generators. The uncertainty of renewable power generation in systems such as photovoltaic (PV) and wind turbine needs to be compensated with balancing devices. The balancing devices can be an Energy Storage System (ESS) or conventional thermal fossil-fuel generators with enhanced flexibility. The uncertainty of renewable generators can be statistically analyzed for cost-effective assessment and operation of those compensating devices. Multiple uncertainty factors can be investigated and modeled as a joint probability distribution function (PDF) considering the temporal correlation among themselves. Several uncertainty factors with different marginal distributions and scales can be integrated as multivariate probability distribution by transforming them into normal distribution using rank correlation. As the number of uncertainty factors considered in a microgrid increases, it leads to much more complexity to in defining the conditional probability distribution generated from a joint PDF. In this paper, a method to model the distribution of net-load forecast error is proposed considering the correlation among uncertainty factors. A data-driven Gaussian process regression is introduced to train and validate conditional PDF among uncertainty factors, which are transformed into normal distribution without losing intrinsic marginal distribution. The conditional density function based on the proposed method has better suitability to estimate distribution of netload error. The conditional density function based on the proposed method shows better suitability for estimation of net load error distribution.
考虑分布式发电机组相关性的微电网运行预测误差高斯过程回归模型
被称为微电网(MG)的小型和自我可持续的电网是可再生能源发电机高度渗透的未来电力系统的关键要素。光伏发电、风力发电等可再生能源发电系统的不确定性需要通过平衡装置进行补偿。平衡装置可以是储能系统(ESS)或具有增强灵活性的传统热化石燃料发电机。对可再生能源发电机组的不确定性进行统计分析,为补偿装置的经济性评估和运行提供依据。考虑多个不确定性因素之间的时间相关性,可以研究多个不确定性因素,并将其建模为一个联合概率分布函数。将具有不同边际分布和尺度的不确定性因子,利用秩相关将其转化为正态分布,可以整合为多元概率分布。随着微电网中不确定因素数量的增加,联合概率分布生成的条件概率分布的定义变得更加复杂。本文提出了一种考虑不确定性因素间相关性的净负荷预测误差分布建模方法。引入数据驱动的高斯过程回归,训练和验证不确定因素之间的条件概率分布,将不确定因素转化为正态分布而不损失内在边际分布。基于该方法的条件密度函数对估计网络负荷误差分布具有较好的适用性。基于该方法的条件密度函数对净负荷误差分布的估计具有较好的适用性。
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