In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow (GP-POPF) for solving POPF under renewable and load uncertainties of arbitrary distribution. The proposed method relies on a non-parametric Bayesian inference-based uncertainty propagation approach, called Gaussian Process (GP). We also suggest a new type of sensitivity called Subspace-wise Sensitivity, using observations on the interpretability of GP-POPF hyperparameters. The simulation results on 14-bus and 30-bus systems show that the proposed method provides reasonably accurate solutions when compared with Monte-Carlo Simulations (MCS) solutions at different levels of uncertain renewable penetration and load uncertainties. The proposed me...
This letter proposes a superior GPU-accelerated algorithm for probabilistic power flow (PPF) based o...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Unc...
This paper proposes a novel analytical solution framework for power flow (PF) solutions in active di...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
This paper applies a generative deep learning model, namely a Variational Autoencoder, on probabilis...
This project proposes a probabilistic load flow approach based on Gaussian process regression. The o...
The increase in distributed generation (DG) and variable load mandates system operators to perform d...
This paper proposes a data-driven chance-constrained optimal gas-power flow (OGPF) calculation metho...
The increase in distributed generation (DG) and variable load mandates system operators to perform d...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
A probabilistic power flow (PPF) study is an essential tool for the analysis and planning of a power...
While most power system small-signal stability assessments rely on the reduced Jacobian, which depen...
This letter proposes a superior GPU-accelerated algorithm for probabilistic power flow (PPF) based o...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Unc...
This paper proposes a novel analytical solution framework for power flow (PF) solutions in active di...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
This paper applies a generative deep learning model, namely a Variational Autoencoder, on probabilis...
This project proposes a probabilistic load flow approach based on Gaussian process regression. The o...
The increase in distributed generation (DG) and variable load mandates system operators to perform d...
This paper proposes a data-driven chance-constrained optimal gas-power flow (OGPF) calculation metho...
The increase in distributed generation (DG) and variable load mandates system operators to perform d...
In a power system with high penetration of variable Renewable Energy Sources (vRES), the high uncert...
In this paper, the authors apply a surrogate model-based method for probabilistic power flow (PPF) i...
A probabilistic power flow (PPF) study is an essential tool for the analysis and planning of a power...
While most power system small-signal stability assessments rely on the reduced Jacobian, which depen...
This letter proposes a superior GPU-accelerated algorithm for probabilistic power flow (PPF) based o...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...