We propose to post-process the results of a scenario based stochastic program by projecting its decisions on a parameterized space of policies. By doing so the risk of overfitting to the set of scenarios used in the stochastic program is reduced. A proper choice of the structure of the space of policies allows one to exploit them in the context of novel scenarios, be it for Monte-Carlo based value estimation or for use in real-life conditions. These ideas are presented in the context of planning the exploitation of electric energy resources or for evaluating the economic value of a portfolio of assets
This paper investigates how the choice of stochastic approaches and distribution assumptions impacts...
We present a single stage stochastic mixed integer linear model for determining the optimal mix of d...
Abstract. We present a dynamic multistage stochastic programming model for the cost-optimal generati...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
We present a mathematical model for maximizing the benefit of a price-taker power producer who has t...
A major issue in the application of multistage stochastic programming to model the cost-optimal gene...
Tesis para optar al grado de Magíster en Ciencias de la Ingeniería, Mención Matemáticas AplicadasMem...
In this chapter, we present stochastic methodologies for energy-efficient technology investment plan...
The article of record as published may be found at https://doi.org/10.1002/nav.1041We present a stoc...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
Electricity bought and sold on the deregulated Nordic power market is dominated by hydro power. Howe...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
A challenging aspect of applying stochastic programming in a dynamic setting is to construct a set o...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
Abstract — This paper proposes a stochastic model based on Monte-Carlo simulation to assess the expe...
This paper investigates how the choice of stochastic approaches and distribution assumptions impacts...
We present a single stage stochastic mixed integer linear model for determining the optimal mix of d...
Abstract. We present a dynamic multistage stochastic programming model for the cost-optimal generati...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
We present a mathematical model for maximizing the benefit of a price-taker power producer who has t...
A major issue in the application of multistage stochastic programming to model the cost-optimal gene...
Tesis para optar al grado de Magíster en Ciencias de la Ingeniería, Mención Matemáticas AplicadasMem...
In this chapter, we present stochastic methodologies for energy-efficient technology investment plan...
The article of record as published may be found at https://doi.org/10.1002/nav.1041We present a stoc...
A power generation system comprising thermal and pumped-storage hydro plants is considered. Two kind...
Electricity bought and sold on the deregulated Nordic power market is dominated by hydro power. Howe...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
A challenging aspect of applying stochastic programming in a dynamic setting is to construct a set o...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
Abstract — This paper proposes a stochastic model based on Monte-Carlo simulation to assess the expe...
This paper investigates how the choice of stochastic approaches and distribution assumptions impacts...
We present a single stage stochastic mixed integer linear model for determining the optimal mix of d...
Abstract. We present a dynamic multistage stochastic programming model for the cost-optimal generati...