Unit commitment decisions made in the day-ahead market and during subsequent reliability assessments are critically based on forecasts of load. Tra- ditional, deterministic unit commitment is based on point or expectation-based load forecasts. In contrast, stochastic unit commitment relies on multiple load sce- narios, with associated probabilities, that in aggregate capture the range of likely load time-series. The shift from point-based to scenario-based forecasting necessi- tates a shift in forecasting technologies, to provide accurate inputs to stochastic unit commitment. In this paper, we discuss a novel scenario generation method- ology for load forecasting in stochastic unit commitment, with application to real data associated with t...
The massive integration of variable and limitedly predictable electricity generation from renewable ...
This paper proposes a data-driven affinely adjustable distributionally robust method for unit commit...
With the increasing penetration of renewable energy, it is difficult to schedule unit commitment (UC...
Uncertainties in the day-ahead forecasts for load and wind energy availability are considered in a r...
Abstract: Given increasing penetration of variable generation units, there is significant interest ...
Probabilistic wind power scenarios constitute a crucial input for stochastic day-ahead unit commitme...
Probabilistic wind power scenarios constitute a crucial input for stochastic day-ahead unit commitme...
A two-stage stochastic program is formulated for day-ahead commitment of thermal generating units to...
In this second portion of a two-part analysis of a scalable computa- tional approach to stochastic u...
Unit commitment decisions made in the day-ahead market and resource adequacy assessment processes ar...
© 2016 IEEE. In power systems rife with uncertainty, stochastic unit commitment (SUC) models may be ...
relaxation for solving stochastic unit commitment subject to uncertainty in renewable power supply a...
We present a parallel implementation of Lagrangian relaxation for solving stochastic unit commitment...
In power systems with high penetration of wind generation, probabilistic scenarios are generated for...
Abstract—A number of scenario reduction techniques have been proposed to make possible the practical...
The massive integration of variable and limitedly predictable electricity generation from renewable ...
This paper proposes a data-driven affinely adjustable distributionally robust method for unit commit...
With the increasing penetration of renewable energy, it is difficult to schedule unit commitment (UC...
Uncertainties in the day-ahead forecasts for load and wind energy availability are considered in a r...
Abstract: Given increasing penetration of variable generation units, there is significant interest ...
Probabilistic wind power scenarios constitute a crucial input for stochastic day-ahead unit commitme...
Probabilistic wind power scenarios constitute a crucial input for stochastic day-ahead unit commitme...
A two-stage stochastic program is formulated for day-ahead commitment of thermal generating units to...
In this second portion of a two-part analysis of a scalable computa- tional approach to stochastic u...
Unit commitment decisions made in the day-ahead market and resource adequacy assessment processes ar...
© 2016 IEEE. In power systems rife with uncertainty, stochastic unit commitment (SUC) models may be ...
relaxation for solving stochastic unit commitment subject to uncertainty in renewable power supply a...
We present a parallel implementation of Lagrangian relaxation for solving stochastic unit commitment...
In power systems with high penetration of wind generation, probabilistic scenarios are generated for...
Abstract—A number of scenario reduction techniques have been proposed to make possible the practical...
The massive integration of variable and limitedly predictable electricity generation from renewable ...
This paper proposes a data-driven affinely adjustable distributionally robust method for unit commit...
With the increasing penetration of renewable energy, it is difficult to schedule unit commitment (UC...