应用数学分解技术求解概率潮流问题

Granada E. Mauricio, M. J. Rider, J. Mantovani
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引用次数: 3

摘要

本文提出了一个基于一阶最优条件分解的框架,并将其应用于多区域电力系统中协调分散的概率潮流问题的求解。分解框架的目的是通过迭代地解决与电力系统的每个区域相关的较小子问题的过程来解决问题。这种策略允许对特定地区感兴趣的变量进行概率分析,而不需要明确了解其他相互关联地区的网络数据,只需要交换与地区之间联络线相关的边界信息。采用了一种有效的概率分析方法,考虑了n个系统负载的不确定性。建议使用一种特殊情况下的点估计方法,称为两点估计方法(TPM),而不是传统的基于蒙特卡罗模拟的方法。TPM的主要特点是,它只需要解析2n功率流就可以获得任意随机变量的行为。提出了一种区域间迭代协调算法。该算法以分散的方式解决了多区域PPF问题,保证了各个区域的独立运行,并将分解框架和TPM适当地结合起来。采用IEEE RTS-96系统验证了该方法的有效性和有效性,并通过蒙特卡罗仿真对结果进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical decomposition technique applied to the probabilistic power flow problem
In this paper a framework based on the decomposition of the first-order optimality conditions is described and applied to solve the Probabilistic Power Flow (PPF) problem in a coordinated but decentralized way in the context of multi-area power systems. The purpose of the decomposition framework is to solve the problem through a process of solving smaller subproblems, associated with each area of the power system, iteratively. This strategy allows the probabilistic analysis of the variables of interest, in a particular area, without explicit knowledge of network data of the other interconnected areas, being only necessary to exchange border information related to the tie-lines between areas. An efficient method for probabilistic analysis, considering uncertainty in n system loads, is applied. The proposal is to use a particular case of the point estimate method, known as Two-Point Estimate Method (TPM), rather than the traditional approach based on Monte Carlo simulation. The main feature of the TPM is that it only requires resolve 2n power flows for to obtain the behavior of any random variable. An iterative coordination algorithm between areas is also presented. This algorithm solves the Multi-Area PPF problem in a decentralized way, ensures the independent operation of each area and integrates the decomposition framework and the TPM appropriately. The IEEE RTS-96 system is used in order to show the operation and effectiveness of the proposed approach and the Monte Carlo simulations are used to validation of the results.
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