This paper proposes a data-driven chance-constrained optimal gas-power flow (OGPF) calculation method without any prior assumption on the distribution of uncertainties of wind power generation. The Gaussian mixture model is employed to fit the uncertainty distribution, where the Bayesian nonparametric Dirichlet process is adopted to tune the component number. To facilitate the online application of the proposed methods, an online-offline double-track distribution construction approach is established, where the frequency of training the relatively time-consuming Dirichlet process Gaussian mixture model can be reduced. On account of the quadratic gas consumption expression of gas-fired generators as well as the linear decision rule based unce...
The application of gas turbines and power to gas equipment deepens the coupling relationship between...
Inflexible combined heat and power (CHP) plants and uncertain wind power production result in excess...
Given the increased percentage of wind power in power systems, chance-constrained optimal power flow...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
International audienceWe propose a fully distributed algorithm to solve the Chance Constrained Optim...
The rapid uptake of natural gas-fired units in energy systems poses significant challenges in coordi...
Abstract The increasing adoption of gas-fired power plants directly strengthens the coupling between...
This article presents data-driven nonparametric joint chance constraints (JCCs) for ramp-constrained...
The mentality for a greener future with zero emissions is not a blurry thought far away from reality...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
A chance constrained AC optimal power flow is to find the optimal economic operation plan whose prob...
Currently, among renewable distributed generation systems, wind generators are receiving a great dea...
Currently, among renewable distributed generation systems, wind generators are receiving a great dea...
The traditional cumulant method (CM) for probabilistic optimal power flow (P-OPF) needs to perform l...
In this article, we present a data-driven nonparametric chance-constrained optimization for microgri...
The application of gas turbines and power to gas equipment deepens the coupling relationship between...
Inflexible combined heat and power (CHP) plants and uncertain wind power production result in excess...
Given the increased percentage of wind power in power systems, chance-constrained optimal power flow...
In this letter, we present a novel Gaussian Process Learning-based Probabilistic Optimal Power Flow ...
International audienceWe propose a fully distributed algorithm to solve the Chance Constrained Optim...
The rapid uptake of natural gas-fired units in energy systems poses significant challenges in coordi...
Abstract The increasing adoption of gas-fired power plants directly strengthens the coupling between...
This article presents data-driven nonparametric joint chance constraints (JCCs) for ramp-constrained...
The mentality for a greener future with zero emissions is not a blurry thought far away from reality...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
A chance constrained AC optimal power flow is to find the optimal economic operation plan whose prob...
Currently, among renewable distributed generation systems, wind generators are receiving a great dea...
Currently, among renewable distributed generation systems, wind generators are receiving a great dea...
The traditional cumulant method (CM) for probabilistic optimal power flow (P-OPF) needs to perform l...
In this article, we present a data-driven nonparametric chance-constrained optimization for microgri...
The application of gas turbines and power to gas equipment deepens the coupling relationship between...
Inflexible combined heat and power (CHP) plants and uncertain wind power production result in excess...
Given the increased percentage of wind power in power systems, chance-constrained optimal power flow...