Abstract—Stochastic unit commitment models typically handle uncertainties in forecast demand by considering a finite number of realizations from a stochastic process model for loads. Accurate evaluations of expectations or higher moments for the quantities of interest require a prohibitively large number of model evalu-ations. In this paper we propose an alternative approach based on using surrogate models valid over the range of the forecast uncertainty. We consider surrogate models based on Polynomial Chaos expansions, constructed using sparse quadrature meth-ods. Considering expected generation cost, we demonstrate the approach can lead to several orders of magnitude reduction in computational cost relative to using Monte Carlo sampling ...
We present a method to derive a surrogate model for wind farm control. The procedure is based on a s...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
A range of core operations and planning problems for the national electrical grid are naturally form...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
This dissertation presents stochastics-based methods enabling testing related to three different asp...
Nowadays computational models are used in virtually all fields of applied sciences and engineering t...
Complex computational models are used nowadays in all fields of applied sciences to predict the beha...
Stochastic simulators are computational models that produce different results when evaluated repeate...
In the context of uncertainty quantification, computational models are required to be repeatedly eva...
This paper aims to present a general-purpose Surrogate Model for the probabilistic analysis of power...
We present a parallel implementation of Lagrangian relaxation for solving stochastic unit commitment...
This paper is dedicated to the surrogate modeling of a particular type of computational model called...
A surrogate model approximates a computationally expensive solver. Polynomial Chaos is a method used...
relaxation for solving stochastic unit commitment subject to uncertainty in renewable power supply a...
We present a method to derive a surrogate model for wind farm control. The procedure is based on a s...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
A range of core operations and planning problems for the national electrical grid are naturally form...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
This dissertation presents stochastics-based methods enabling testing related to three different asp...
Nowadays computational models are used in virtually all fields of applied sciences and engineering t...
Complex computational models are used nowadays in all fields of applied sciences to predict the beha...
Stochastic simulators are computational models that produce different results when evaluated repeate...
In the context of uncertainty quantification, computational models are required to be repeatedly eva...
This paper aims to present a general-purpose Surrogate Model for the probabilistic analysis of power...
We present a parallel implementation of Lagrangian relaxation for solving stochastic unit commitment...
This paper is dedicated to the surrogate modeling of a particular type of computational model called...
A surrogate model approximates a computationally expensive solver. Polynomial Chaos is a method used...
relaxation for solving stochastic unit commitment subject to uncertainty in renewable power supply a...
We present a method to derive a surrogate model for wind farm control. The procedure is based on a s...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
A range of core operations and planning problems for the national electrical grid are naturally form...