Stochastic optimization can be used to generate optimal bidding strategies for virtual bidders in which the uncertain electricity prices are represented by using scenarios. This paper proposes a hybrid scenario generation method for electricity price using a seasonal autoregressive integrated moving average (SARIMA) model and historical data. The electricity price spikes are first identified by using an outlier detection method. Then, the historical data are decomposed into base and spike components. Next, the base and spike component scenarios are generated by using the SARIMA- and historical data-based methods, respectively. Finally, the electricity price scenarios are obtained by combining the base and spike component scenarios. Case stu...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
In this thesis a stochastic model for bid optimization and short-term productionscheduling has been ...
The short-term electricity markets in the United States have a two-settlement structure, which inclu...
The short-term electricity markets in the United States have a two-settlement structure, which inclu...
The short-term electricity markets in the United States have a two-settlement structure, which inclu...
Abstract-- During the last few years in the competitive energy market, participants have used stocha...
With an increasing number of ancillary services and energy markets, the decision making process for ...
ABSTRACT: Market agents with renewable resources face amplified uncertainty when forecasting energy ...
This study has developed a stochastic programming model that integrates the day-ahead optimal biddin...
Abstract: In current restructured wholesale power markets, the short length of time series for pric...
This study has developed a stochastic programming model that integrates the day-ahead optimal biddin...
The paper considers the problem of maximizing the profits of a retailer operating in the Italian el...
Virtual bidding provides a mechanism for financial players to participate in wholesale day-ahead (DA...
This paper addresses the scenario reduction for stochastic optimization applied to short-term tradin...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
In this thesis a stochastic model for bid optimization and short-term productionscheduling has been ...
The short-term electricity markets in the United States have a two-settlement structure, which inclu...
The short-term electricity markets in the United States have a two-settlement structure, which inclu...
The short-term electricity markets in the United States have a two-settlement structure, which inclu...
Abstract-- During the last few years in the competitive energy market, participants have used stocha...
With an increasing number of ancillary services and energy markets, the decision making process for ...
ABSTRACT: Market agents with renewable resources face amplified uncertainty when forecasting energy ...
This study has developed a stochastic programming model that integrates the day-ahead optimal biddin...
Abstract: In current restructured wholesale power markets, the short length of time series for pric...
This study has developed a stochastic programming model that integrates the day-ahead optimal biddin...
The paper considers the problem of maximizing the profits of a retailer operating in the Italian el...
Virtual bidding provides a mechanism for financial players to participate in wholesale day-ahead (DA...
This paper addresses the scenario reduction for stochastic optimization applied to short-term tradin...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
We present a data-driven framework for optimal scenario selection in stochastic optimization with ap...
In this thesis a stochastic model for bid optimization and short-term productionscheduling has been ...