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Información de la Tesis Doctoral

Topics in bayesian inference applied to probabilistic power flow analysis

Carlos David Zuluaga Ríos

Dirigida por M.A. Álvarez-López

24 de julio de 2018

Resumen:

A probabilistic power flow (PPF) study is an essential tool for the analysis and planning of a power system when specific variables are considered as random variables with particular probability distributions. The most widely used method for solving the PPF problem is Monte Carlo simulation (MCS). Although MCS is accurate for obtaining the uncertainty of the state variables, it is also computationally expensive, since it relies on repetitive deterministic power flow solutions. On the other hand, MCS does not take into account the fact that previous knowledge of state variables might be available in terms of probability distributions. In this thesis, we frame the PPF as a probabilistic inference problem, and instead of repetitively solving optimization problems, we use Bayesian inference for computing posterior distributions over state variables. We specifically use prior distributions for the state variables, and a likelihood function that relates the observations to the state variables. We apply Bayes theorem to obtain the posterior distribution over the state variables. By using a Bayesian inference perspective, we can model the state variables as random variables, and we do not need to solve heavy computational optimization methods for computing posterior distributions over state variables.

Descriptores: Análisis Numérico, Probabilidad, Estadística, Ingeniería y Tecnología Eléctricas

Cita:
C.D. Zuluaga-Ríos (2018), Topics in bayesian inference applied to probabilistic power flow analysis. Pereira (Colombia).


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