While most power system small-signal stability assessments rely on the reduced Jacobian, which depends non-linearly on the states, uncertain operating points introduce nontrivial hurdles in certifying the systems stability. In this paper, a novel probabilistic robust small-signal stability (PRS) framework is developed for the power system based on Gaussian process (GP) learning. The proposed PRS assessment provides a robust stability certificate for a state subspace, such as that specified by the error bounds of the state estimation, with a given probability. With such a PRS certificate, all inner points of the concerned subspace will be stable with at least the corresponding probability. To this end, behavior of the critical eigenvalue of ...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
Grid computing is an advanced technique for collaboratively solving complicated scientific problems ...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
In this article, we focus on the data-driven approach. The experimental data comes from the New Engl...
Abstract This paper proposes a probabilistic small-signal stability analysis method based on the pol...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
With the deregulation of power industry in many countries, the traditionally vertically integrated p...
This paper presents a Monte Carlo approach for probabilistic small signal stability (PSSS) analysis ...
The ever-increasing penetration of wind power generation and plug-in electric vehicles introduces st...
In this paper the two-point estimate (TPE) based method is proposed for probabilistic small signal s...
A so-called two-point estimation (TPE) method is presented in this paper for power system probabilis...
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Unc...
The assessment of power system stability is of great significance to the research in power system op...
This paper presents a method to analyze the first order eigenvalue sensitivity with respect to the o...
Deregulations and market practices in power industry have brought great challenges to the system pla...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
Grid computing is an advanced technique for collaboratively solving complicated scientific problems ...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...
In this article, we focus on the data-driven approach. The experimental data comes from the New Engl...
Abstract This paper proposes a probabilistic small-signal stability analysis method based on the pol...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
With the deregulation of power industry in many countries, the traditionally vertically integrated p...
This paper presents a Monte Carlo approach for probabilistic small signal stability (PSSS) analysis ...
The ever-increasing penetration of wind power generation and plug-in electric vehicles introduces st...
In this paper the two-point estimate (TPE) based method is proposed for probabilistic small signal s...
A so-called two-point estimation (TPE) method is presented in this paper for power system probabilis...
The load flow problem is fundamental to characterize the equilibrium behavior of a power system. Unc...
The assessment of power system stability is of great significance to the research in power system op...
This paper presents a method to analyze the first order eigenvalue sensitivity with respect to the o...
Deregulations and market practices in power industry have brought great challenges to the system pla...
The integration of distributed energy resources and increasing adoption of electric vehicles continu...
Grid computing is an advanced technique for collaboratively solving complicated scientific problems ...
This paper introduces a probabilistic machine learning framework for the uncertainty quantification ...