This paper investigates how the choice of stochastic approaches and distribution assumptions impacts strategic investment decisions in energy planning problems. We formulate a two-stage stochastic programming model assuming different distributions for the input parameters and show that there is significant discrepancy among the associated stochastic solutions and other robust solutions published in the literature. To remedy this sensitivity issue, we propose a combined machine learning and distributionally robust optimization (DRO) approach which produces more robust and stable strategic investment decisions with respect to uncertainty assumptions. DRO is applied to deal with ambiguous probability distributions and Machine Learning is used ...
The problem of controlling energy systems (generation, transmission, storage, investment) introduces...
In this thesis, we consider optimal hedging decisions for an electricity producer. In addition to ac...
Tesis para optar al grado de Magíster en Ciencias de la Ingeniería, Mención Matemáticas AplicadasMem...
Long-term planning for energy systems is often based on deterministic economic optimization and fore...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
Decisions are often made in an uncertain environment. For example, in power system operations, decis...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
In order to protect the environment and address fossil fuel scarcity, renewable energy is increasing...
In this chapter, we present stochastic methodologies for energy-efficient technology investment plan...
Long-term planning for energy systems is often based on deterministic economic optimization and fore...
Endogenous and exogenous uncertainties exert significant influences on energy planning. In this stud...
Uncertainty complicates the optimization model of distributed energy systems, it is a challenge to a...
Abstract Uncertainty is often present in environmental and energy economics. Tra-ditional approaches...
Long-term planning for energy systems is often based on deter-ministic economic optimization and for...
This thesis concerns distributionally robust Markov decision processes for multistage stochastic pro...
The problem of controlling energy systems (generation, transmission, storage, investment) introduces...
In this thesis, we consider optimal hedging decisions for an electricity producer. In addition to ac...
Tesis para optar al grado de Magíster en Ciencias de la Ingeniería, Mención Matemáticas AplicadasMem...
Long-term planning for energy systems is often based on deterministic economic optimization and fore...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
Decisions are often made in an uncertain environment. For example, in power system operations, decis...
We give the reader a tour of good energy optimization models that explicitly deal with uncertainty. ...
In order to protect the environment and address fossil fuel scarcity, renewable energy is increasing...
In this chapter, we present stochastic methodologies for energy-efficient technology investment plan...
Long-term planning for energy systems is often based on deterministic economic optimization and fore...
Endogenous and exogenous uncertainties exert significant influences on energy planning. In this stud...
Uncertainty complicates the optimization model of distributed energy systems, it is a challenge to a...
Abstract Uncertainty is often present in environmental and energy economics. Tra-ditional approaches...
Long-term planning for energy systems is often based on deter-ministic economic optimization and for...
This thesis concerns distributionally robust Markov decision processes for multistage stochastic pro...
The problem of controlling energy systems (generation, transmission, storage, investment) introduces...
In this thesis, we consider optimal hedging decisions for an electricity producer. In addition to ac...
Tesis para optar al grado de Magíster en Ciencias de la Ingeniería, Mención Matemáticas AplicadasMem...