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Distributed Probabilistic ATC Assessment by Optimality Conditions Decomposition and LHS Considering Intermittent Wind Power Generation

机译:考虑间歇性风力发电的最优条件分解和LHS分布式概率ATC评估

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摘要

This paper investigates a probabilistic assessment of available transfer capability (ATC) by optimality condition decomposition (OCD) techniques and latin hypercube sampling (LHS) method in power systems with penetration of wind energy resources. First, the ATC assessment is mathematically formulated as a non-linear optimal power flow problem. Then, an iterative decomposition-coordination methodology based on OCD techniques is conducted for distributed assessment of the ATC. In order to estimate the probability density function and empirical cumulative density function under wind power fluctuations, LHS method is utilized for obtaining samples of the integrated wind power sources. Next, wind power samples are appended into the proposed decomposition-coordination approach to provide a fast LHS-based Monte Carlo (MC) simulation of the ATC at the current system state. In order to provide a preliminary approximation of the range variation of the ATC before executing the MC technique, OCD-based distributed computations of the average-case, best-case, and worst-case scenarios subjected to wind power variations are developed by following three approaches: first, assuming that the average-case of the ATC occurs at the mean power output of integrated wind farms, second, adding box-constraints related to the power output of each wind farm in order to estimate the best-case scenario, and third, developing an iterative sensitivity-based scheme to estimate the worst-case scenario. Numerical experiments in the standard IEEE 118-bus system demonstrate the correctness of the proposed distributed probabilistic ATC assessment.
机译:本文研究了最优条件分解(OCD)技术和拉丁超立方抽样(LHS)方法在风能资源渗透的电力系统中的可用传输能力(ATC)的概率评估。首先,ATC评估在数学上被公式化为非线性最优潮流问题。然后,基于OCD技术的迭代分解协调方法被用于ATC的分布式评估。为了估计风电波动下的概率密度函数和经验累积密度函数,利用LHS方法获得了集成风电源的样本。接下来,将风电样本附加到建议的分解协调方法中,以在当前系统状态下提供基于LHS的ATC的快速仿真。为了在执行MC技术之前提供ATC范围变化的初步近似值,通过遵循以下三个方面,开发了基于OCD的平均情况,最佳情况和最坏情况下受风功率变化影响的分布式计算方法方法:首先,假设ATC的平均情况发生在集成风电场的平均功率输出上,其次,添加与每个风电场的功率输出相关的箱式约束,以估计最佳情况。第三,开发基于迭代敏感性的方案来估计最坏情况。在标准IEEE 118总线系统中的数值实验证明了所提出的分布式概率ATC评估的正确性。

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