This paper addresses the scenario reduction for stochastic optimization applied to short-term trading of photovoltaic (PV) power. Stochastic optimization becomes a useful technique when leading with problems involving uncertainty. Short-term trading of PV power in electricity markets is an example of a problem involving a high level of uncertainty, namely uncertain parameters as PV power and market prices. As the level of uncertainty grows and the optimization problem becomes more complex, the need to reduce the number of scenarios becomes crucial without losing the representativeness of the original scenarios. Thus, in this paper is proposed an efficient scenario reduction algorithm based on backward method in order to obtain a profitable ...
We present a mathematical model for maximizing the benefit of a price-taker power producer who has t...
The rising share of intermittent renewable energy production in energy systems increasingly poses a ...
A major issue in the application of multistage stochastic programming to model the cost-optimal gene...
Recently, researchers have recognized the necessity of incorporating uncertainties into energy syste...
Premiums for renewable energy are being reduced as a consequence of the world economic crisis. This ...
This paper deals with the problem of coordinated trading of wind and photovoltaic systems in order t...
The design-operation optimization problem for an electricity retailer involves decisions about i) si...
Optimal bidding that considers different electricity market floors can increase the financial gains ...
We formulate and analyze a profit maximization problem for one participant (aggregator) in a multipe...
Abstract — Portfolio and risk management problems of power utilities may be modeled by multistage st...
International audienceIntermittent renewable energy sources (RES) generate variable power that canno...
This paper presents an optimal bid submission in a day-ahead electricity market for the problem of j...
Concentrating solar power (CSP) plants with thermal energy storage (TES) are emerging renewable tech...
In this paper a stochastic scenario-based model predictive control applied to molten salt storage sy...
With the deepening of electricity market (EM) reform and the high penetration of photovoltaic (PV) e...
We present a mathematical model for maximizing the benefit of a price-taker power producer who has t...
The rising share of intermittent renewable energy production in energy systems increasingly poses a ...
A major issue in the application of multistage stochastic programming to model the cost-optimal gene...
Recently, researchers have recognized the necessity of incorporating uncertainties into energy syste...
Premiums for renewable energy are being reduced as a consequence of the world economic crisis. This ...
This paper deals with the problem of coordinated trading of wind and photovoltaic systems in order t...
The design-operation optimization problem for an electricity retailer involves decisions about i) si...
Optimal bidding that considers different electricity market floors can increase the financial gains ...
We formulate and analyze a profit maximization problem for one participant (aggregator) in a multipe...
Abstract — Portfolio and risk management problems of power utilities may be modeled by multistage st...
International audienceIntermittent renewable energy sources (RES) generate variable power that canno...
This paper presents an optimal bid submission in a day-ahead electricity market for the problem of j...
Concentrating solar power (CSP) plants with thermal energy storage (TES) are emerging renewable tech...
In this paper a stochastic scenario-based model predictive control applied to molten salt storage sy...
With the deepening of electricity market (EM) reform and the high penetration of photovoltaic (PV) e...
We present a mathematical model for maximizing the benefit of a price-taker power producer who has t...
The rising share of intermittent renewable energy production in energy systems increasingly poses a ...
A major issue in the application of multistage stochastic programming to model the cost-optimal gene...