Mathematical decomposition technique applied to the probabilistic power flow problem

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Data

2011-05-31

Autores

Mauricio, Granada E. [UNESP]
Rider, Marcos J. [UNESP]
Mantovani, J. R S [UNESP]

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Resumo

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. © 2011 IEEE.

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Palavras-chave

decentralized coordination, Decomposition methods, MA-PPF, multi-area power systems, probabilistic power flow, Decentralized coordination, Multi area power systems, Probabilistic power flow, Algorithms, Computer simulation, Electric power transmission, Knowledge management, Monte Carlo methods, Power transmission, Probability distributions, Random variables, Thermoelectric power, Uncertainty analysis, Problem solving

Como citar

2010 IEEE/PES Transmission and Distribution Conference and Exposition: Latin America, T and D-LA 2010, p. 139-146.