This paper considers the optimal operation of an oil and gas production network by formulating it as an economic nonlinear model predictive control (NMPC) problem. Solving the associated nonlinear program (NLP) can be computationally expensive and time consuming. To avoid a long delay between obtaining updated measurement information and injecting the new inputs in the plant, we apply a sensitivity-based predictor-corrector path-following algorithm in an advanced-step NMPC framework. We demonstrate the proposed method on a gas-lift optimization case study and compare the performance of the path-following economic NMPC to a standard economic NMPC formulation
Optimization of the energy consumption at fluctuating short-term electricity markets is a promising ...
The chemical industry is a vital sector of the US economy. Maintaining optimal chemical process oper...
This thesis addresses important challenges that have to be overcome to facilitate a wider applicatio...
We present a sensitivity-based predictor-corrector path-following algorithm for fast nonlinear model...
We present a sensitivity-based predictor-corrector path-following algorithm for fast nonlinear model...
In this work, we present the control and optimization of a network consisting of two gas-lifted oil ...
As oil reserves become scarcer, oil production and recovery must be enhanced. The gas lift is one of...
The topic of this paper is the application of nonlinear model predictive control (NMPC) for optimizi...
As oil reserves become scarcer, oil production and recovery must be enhanced. The gas lift is one of...
The Daily Production Optimization (DPO) problem is the task of maximizing production of hydrocarbons...
<p>This dissertation addresses two issues that arise in the field of Nonlinear Model Predictive Cont...
This dissertation addresses two issues that arise in the field of Nonlinear Model Predictive Control...
Control and optimization of an oil production network based on gas-lift is a difficult task with cha...
We present a fast sensitivity-based nonlinear model predictive control (NMPC) algorithm, that can ha...
We present a fast sensitivity-based nonlinear model predictive control (NMPC) algorithm, that can ha...
Optimization of the energy consumption at fluctuating short-term electricity markets is a promising ...
The chemical industry is a vital sector of the US economy. Maintaining optimal chemical process oper...
This thesis addresses important challenges that have to be overcome to facilitate a wider applicatio...
We present a sensitivity-based predictor-corrector path-following algorithm for fast nonlinear model...
We present a sensitivity-based predictor-corrector path-following algorithm for fast nonlinear model...
In this work, we present the control and optimization of a network consisting of two gas-lifted oil ...
As oil reserves become scarcer, oil production and recovery must be enhanced. The gas lift is one of...
The topic of this paper is the application of nonlinear model predictive control (NMPC) for optimizi...
As oil reserves become scarcer, oil production and recovery must be enhanced. The gas lift is one of...
The Daily Production Optimization (DPO) problem is the task of maximizing production of hydrocarbons...
<p>This dissertation addresses two issues that arise in the field of Nonlinear Model Predictive Cont...
This dissertation addresses two issues that arise in the field of Nonlinear Model Predictive Control...
Control and optimization of an oil production network based on gas-lift is a difficult task with cha...
We present a fast sensitivity-based nonlinear model predictive control (NMPC) algorithm, that can ha...
We present a fast sensitivity-based nonlinear model predictive control (NMPC) algorithm, that can ha...
Optimization of the energy consumption at fluctuating short-term electricity markets is a promising ...
The chemical industry is a vital sector of the US economy. Maintaining optimal chemical process oper...
This thesis addresses important challenges that have to be overcome to facilitate a wider applicatio...