This article presents data-driven nonparametric joint chance constraints (JCCs) for ramp-constrained economic dispatch. Power generated by renewable sources, such as solar farms, is modeled as an uncertain parameter that may not belong to any parametric class of probability functions. Thus, transmission line flow limitation, which time-independent constraints, are formulated as nonparametric JCCs joint over unknown cumulative distribution functions of renewable generation sources. In addition, thermal units\u27 time-dependent spinning reserve constraints are modeled as nonparametric JCCs joint over scheduling time periods. An approach is presented based on a multivariate kernel density estimator to convert economic dispatch with data-driven...
This paper proposes a data-driven chance-constrained optimal gas-power flow (OGPF) calculation metho...
Optimization provides critical support for the operation of electric power systems. As power systems...
This paper introduces an empirical approach to dispatch resources in real-time power system operatio...
Uncertainty modeling has a significant role in power system scheduling and operation. This paper pre...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
In this article, we present a data-driven nonparametric chance-constrained optimization for microgri...
Increasing penetration levels of renewables have transformed how power systems are operated. High le...
We develop a two-stage stochastic program for energy and reserve dispatch of a joint power and gas s...
With the increasing penetration of wind power, the uncertainty associated with it brings more challe...
We consider the problem of look-ahead economic dispatch (LAED) with uncertain renewable energy gener...
In light of a reliable and resilient power system under extreme weather and natural disasters, netwo...
This paper proposes a probabilistic energy and reserve co-dispatch (PERD) model to address the stron...
A chance constrained AC optimal power flow is to find the optimal economic operation plan whose prob...
High levels of clean renewable energy are being integrated into the power systems as a result of rec...
In this paper a probabilistic economic dispatch model considering thermal units (fuel generators), p...
This paper proposes a data-driven chance-constrained optimal gas-power flow (OGPF) calculation metho...
Optimization provides critical support for the operation of electric power systems. As power systems...
This paper introduces an empirical approach to dispatch resources in real-time power system operatio...
Uncertainty modeling has a significant role in power system scheduling and operation. This paper pre...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
In this article, we present a data-driven nonparametric chance-constrained optimization for microgri...
Increasing penetration levels of renewables have transformed how power systems are operated. High le...
We develop a two-stage stochastic program for energy and reserve dispatch of a joint power and gas s...
With the increasing penetration of wind power, the uncertainty associated with it brings more challe...
We consider the problem of look-ahead economic dispatch (LAED) with uncertain renewable energy gener...
In light of a reliable and resilient power system under extreme weather and natural disasters, netwo...
This paper proposes a probabilistic energy and reserve co-dispatch (PERD) model to address the stron...
A chance constrained AC optimal power flow is to find the optimal economic operation plan whose prob...
High levels of clean renewable energy are being integrated into the power systems as a result of rec...
In this paper a probabilistic economic dispatch model considering thermal units (fuel generators), p...
This paper proposes a data-driven chance-constrained optimal gas-power flow (OGPF) calculation metho...
Optimization provides critical support for the operation of electric power systems. As power systems...
This paper introduces an empirical approach to dispatch resources in real-time power system operatio...