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Efficient Estimation of Interrupted Energy with Time-Varying Load Models for Distribution Systems Planning Studies

机译:随着时间改变的负荷模型进行分配系统计划研究的时变量的高效估计

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In electric power distribution systems planning studies, significant computational challenge is introduced when estimating customer interrupted energy which is generally referred as Expected Energy Not Supplied (EENS) index. In this paper, a computationally efficient technique for calculating EENS by considering time-varying load models (TVLM) is presented. The proposed technique is based on an advanced Monte Carlo (MC) method called the Multilevel Monte Carlo (MLMC), coupled with the Euler-Maruyama discretisation scheme for numerical solution of stochastic differential equation (SDE). In the traditional planning practice, an average constant load for a specific customer type is utilized in EENS estimation by ignoring different customer sectors TVLM. The proposed improvement of the practice is to consider typical daily load curves of different sectors to achieve better accuracy in the estimation of EENS. The proposed method is applied to the benchmark Roy Billinton Test System (RBTS) consisting of networks with five load buses and seven different customer sectors. The results show that the distribution systems with different load models produce dissimilar results. Also, the proposed method produces almost the same results as MC method and it is several times faster than original MC method.
机译:在电力分配系统计划研究中,当估计客户中断能量时,引入了显着的计算挑战,这通常被称为未提供预期的能量(Eens)指数。本文介绍了通过考虑时变负载模型(TVLM)来计算Eens的计算上有效技术。所提出的技术基于称为多级蒙特卡罗(MLMC)的先进的蒙特卡罗(MC)方法,与随机微分方程(SDE)的数值解的欧拉 - 玛鲁山分散方案相结合。在传统的规划实践中,通过忽略不同的客户扇区TVLM,在Eens估计中使用特定客户类型的平均恒定负载。拟议的做法改进是考虑不同部门的典型日常负荷曲线,以在估计Eens估算中实现更好的准确性。该提出的方法应用于基准Roy Billinton测试系统(RBT),包括具有五个负载总线和七个不同客户行业的网络。结果表明,具有不同负载模型的分配系统产生不同的结果。此外,所提出的方法几乎与MC方法产生了几乎相同的结果,并且比原始MC方法快几倍。

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