In the context of real-time optimization, modifier-adaptation schemes use estimates of the plant gradients to achieve plant optimality despite plant-model mismatch. Plant feasibility is guaranteed upon convergence, but not at the successive operating points computed by the algorithm prior to convergence. This paper presents a strategy for guaranteeing rigorous constraint satisfaction of all iterates in the presence of plant-model mismatch and uncertainty in the gradient estimates. The proposed strategy relies on constructing constraint upper-bounding functions that are robust to the gradient uncertainty that results when the gradients are estimated by finite differences from noisy measurements. The performance of the approach is illustrated...
Typical model-based optimization approaches cannot handle plant-model mismatch, therefore the use of...
Modifier adaptation is a real-time optimization (RTO) methodology that uses plant gradient estimates...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...
In the context of static real-time optimization (RTO) of uncertain plants, the standard modifier-ada...
This paper presents an overview of the recent developments of modifier-adaptation schemes for real-t...
Real-Time Optimization (RTO) via modifier adaptation is a class of methods for which measurements ar...
Real-Time Optimization (RTO) via modifier adaptation is a class of methods for which measurements ar...
This paper presents an overview of the recent developments of modifier-adaptation schemes for real-t...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
This paper deals with the real-time optimization of uncertain plants and proposes an approach based ...
Iterative real-time optimization schemes that employ modifier adaptation add bias and gradient corre...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
In order to deal with plant-model mismatch, iterative process optimization schemes use some adaptati...
This paper presents an overview of the recent developments of modifier-adaptationschemes for real-ti...
Typical model-based optimization approaches cannot handle plant-model mismatch, therefore the use of...
Modifier adaptation is a real-time optimization (RTO) methodology that uses plant gradient estimates...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...
In the context of static real-time optimization (RTO) of uncertain plants, the standard modifier-ada...
This paper presents an overview of the recent developments of modifier-adaptation schemes for real-t...
Real-Time Optimization (RTO) via modifier adaptation is a class of methods for which measurements ar...
Real-Time Optimization (RTO) via modifier adaptation is a class of methods for which measurements ar...
This paper presents an overview of the recent developments of modifier-adaptation schemes for real-t...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
This paper deals with the real-time optimization of uncertain plants and proposes an approach based ...
Iterative real-time optimization schemes that employ modifier adaptation add bias and gradient corre...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
In order to deal with plant-model mismatch, iterative process optimization schemes use some adaptati...
This paper presents an overview of the recent developments of modifier-adaptationschemes for real-ti...
Typical model-based optimization approaches cannot handle plant-model mismatch, therefore the use of...
Modifier adaptation is a real-time optimization (RTO) methodology that uses plant gradient estimates...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...