The steady-state performance of a parametrically or structurally uncertain system can be optimized using iterative real-time optimization methods such as modifier adaptation. Here, we extend a recently proposed second-order modifier-adaptation scheme in two important directions. First, we accelerate its convergence, that is, we reduce the number of potentially time-consuming and suboptimal transitions to intermediate steady states by appropriate filtering. Second, we propose an adaptation strategy to reduce conservatism and prevent divergence that could arise from the unknown curvature of the steady-state system performance. Moreover, we combine these two innovations in the unconstrained and convex case and propose a modified acceleration m...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
The subject of real-time, steady-state optimization under significant uncertainty is addressed in th...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...
This paper presents an overview of the recent developments of modifier-adaptation schemes for real-t...
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...
In the context of static real-time optimization (RTO) of uncertain plants, the standard modifier-ada...
This paper proposes a set of distributed real-time optimisation schemes for the steady-state optimis...
Typical model-based optimization approaches cannot handle plant-model mismatch, therefore the use of...
Iterative real-time optimization schemes that employ modifier adaptation add bias and gradient corre...
This paper presents an overview of the recent developments of modifier-adaptationschemes for real-ti...
In the context of real-time optimization, modifier-adaptation schemes use estimates of the plant gra...
In the context of real-time optimization, modifier-adaptation schemes update the model-based optimiz...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
The subject of real-time, steady-state optimization under significant uncertainty is addressed in th...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...
This paper presents an overview of the recent developments of modifier-adaptation schemes for real-t...
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...
In the context of static real-time optimization (RTO) of uncertain plants, the standard modifier-ada...
This paper proposes a set of distributed real-time optimisation schemes for the steady-state optimis...
Typical model-based optimization approaches cannot handle plant-model mismatch, therefore the use of...
Iterative real-time optimization schemes that employ modifier adaptation add bias and gradient corre...
This paper presents an overview of the recent developments of modifier-adaptationschemes for real-ti...
In the context of real-time optimization, modifier-adaptation schemes use estimates of the plant gra...
In the context of real-time optimization, modifier-adaptation schemes update the model-based optimiz...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
For good performance in practice, real-time optimization schemes need to be able to deal with the in...
The subject of real-time, steady-state optimization under significant uncertainty is addressed in th...
AbstractIn model-based real-time optimization, plant-model mismatch can be handled by applying bias-...