The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Uncertain power injections such as those due to demand variations and intermittent renewable resources will change the system's equilibrium unexpectedly, and thus potentially jeopardizing the system's reliability and stability. Understanding load flow solutions under uncertainty becomes imperative to ensure the seamless operation of a power system. In this work, we propose a non-parametric probabilistic load flow (NP-PLF) technique based on the Gaussian Process (GP) learning to understand the power system behavior under uncertainty for better operational decisions. The technique can provide ``\textit{semi-explicit}'' form of load flow solutions ...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
Increasing decentralized and renewable power production, which is mainly installed in distribution n...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
This paper proposes a novel analytical solution framework for power flow (PF) solutions in active di...
This project proposes a probabilistic load flow approach based on Gaussian process regression. The o...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
Because of uncertainties of renewable generation resources and load, efficient tools are required fo...
In a realistic, future distribution grid planning and operation all uncertainties have to be incorpo...
This paper reviews the development of the probabilistic load flow (PLF) techniques. Applications of ...
Probabilistic load flow (PLF) calculation, as a fundamental tool to analyze transmission system beha...
Abstract—The environmental need to curb distribution network losses and utilize renewable energy sou...
Most of Probabilistic Load Flow (PLF) studies with consideration of generation and load uncertaintie...
The power flow techniques are of great importance for the modern distribution network expansion plan...
Rising penetration of renewable resources in power systems through integration of distributed genera...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
Increasing decentralized and renewable power production, which is mainly installed in distribution n...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
This paper proposes a novel analytical solution framework for power flow (PF) solutions in active di...
This project proposes a probabilistic load flow approach based on Gaussian process regression. The o...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
Because of uncertainties of renewable generation resources and load, efficient tools are required fo...
In a realistic, future distribution grid planning and operation all uncertainties have to be incorpo...
This paper reviews the development of the probabilistic load flow (PLF) techniques. Applications of ...
Probabilistic load flow (PLF) calculation, as a fundamental tool to analyze transmission system beha...
Abstract—The environmental need to curb distribution network losses and utilize renewable energy sou...
Most of Probabilistic Load Flow (PLF) studies with consideration of generation and load uncertaintie...
The power flow techniques are of great importance for the modern distribution network expansion plan...
Rising penetration of renewable resources in power systems through integration of distributed genera...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
Increasing decentralized and renewable power production, which is mainly installed in distribution n...