We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonlinear optimization in the presence of uncertainty. These methods aim to estimate an approximate gradient from a limited number of random input vector samples and corresponding objective function values. Ensemble methods usually employ Gaussian sampling to generate the input samples. It is known from the optimal design theory that the quality of sample-based approximations is affected by the distribution of the samples. We therefore evaluate six different sampling strategies to optimization of a high-dimensional analytical benchmark optimization problem, and, in a second example, to optimization of oil reservoir management strategies with and w...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
With an increase in the number of applications of ensemble optimization (EnOpt) for production optim...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We consider a technique to estimate an approximate gradient using an ensemble of randomly chosen con...
We consider a technique to estimate an approximate gradient using an ensemble of randomly chosen con...
In this dissertation we have investigated theoretical and numerical aspects of the Ensemble Optimiza...
In this dissertation we have investigated theoretical and numerical aspects of the Ensemble Optimiza...
Ensemble-based optimization has recently received great attention as a potentially powerful techniqu...
Increasing demand for energy, scarcity of conventional energy resources and lack of infrastructure f...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
With an increase in the number of applications of ensemble optimization (EnOpt) for production optim...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We consider a technique to estimate an approximate gradient using an ensemble of randomly chosen con...
We consider a technique to estimate an approximate gradient using an ensemble of randomly chosen con...
In this dissertation we have investigated theoretical and numerical aspects of the Ensemble Optimiza...
In this dissertation we have investigated theoretical and numerical aspects of the Ensemble Optimiza...
Ensemble-based optimization has recently received great attention as a potentially powerful techniqu...
Increasing demand for energy, scarcity of conventional energy resources and lack of infrastructure f...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
With an increase in the number of applications of ensemble optimization (EnOpt) for production optim...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...