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. In this paper, we introduce a different perspective for the PPF problem. 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 variab...
This paper proposes a probabilistic power flow (PPF) method considering continuous and discrete vari...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
The increasing penetration of renewable energy sources has introduced great uncertainties and challe...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
The simulation of uncertainties due to renewable and load forecasts is becoming more and more import...
This paper introduces the basis-adaptive sparse polynomial chaos (BASPC) expansion to perform the pr...
In this paper a framework based on the decomposition of the first-order optimality conditions is des...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
The increasing uncertainties grid operator have to face in their every-day work lead to the necessit...
A method for solving a probabilistic power flow that deals with the uncertainties of (i) wind genera...
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Unc...
The deepening penetration of renewable resources, such as wind and photovoltaic solar, has introduc...
Stochastic nature of some input variables dictates the requisite of probabilistic analysis in power ...
This paper proposes a probabilistic power flow (PPF) method considering continuous and discrete vari...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
The increasing penetration of renewable energy sources has introduced great uncertainties and challe...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
The simulation of uncertainties due to renewable and load forecasts is becoming more and more import...
This paper introduces the basis-adaptive sparse polynomial chaos (BASPC) expansion to perform the pr...
In this paper a framework based on the decomposition of the first-order optimality conditions is des...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
The increasing uncertainties grid operator have to face in their every-day work lead to the necessit...
A method for solving a probabilistic power flow that deals with the uncertainties of (i) wind genera...
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Unc...
The deepening penetration of renewable resources, such as wind and photovoltaic solar, has introduc...
Stochastic nature of some input variables dictates the requisite of probabilistic analysis in power ...
This paper proposes a probabilistic power flow (PPF) method considering continuous and discrete vari...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
The increasing penetration of renewable energy sources has introduced great uncertainties and challe...