For economic nonlinear model predictive control and dynamic real-time optimization fast and accurate models are necessary. Consequently, the use of dynamic surrogate models to mimic complex rigorous models is increasingly coming into focus. For dynamic systems, the focus so far had been on identifying a system's behavior surrounding a steady-state operation point. In this contribution, we propose a novel methodology to adaptively sample rigorous dynamic process models to generate a dataset for building dynamic surrogate models. The goal of the developed algorithm is to cover an as large as possible area of the feasible region of the original model. To demonstrate the performance of the presented framework it is applied on a dynamic model of...
Nonlinear dynamic analysis serves an increasingly important role in process systems engineering rese...
Abstract Surrogate models play a vital role in overcoming the computational challenge...
This paper presents the application of self-optimizing concepts for more efficient generation of ste...
This work proposes a methodology for multivariate dynamic modeling and multistep-ahead prediction of...
<p>Dynamic optimization problems directly incorporate detailed dynamic models as constraints within ...
The classic design- and simulation methodologies, that are constituting today’s engineer main tools,...
Funder: Chinese Scholarship CouncilFunder: Cambridge Trust; Id: http://dx.doi.org/10.13039/501100003...
Description of nonlinear active devices is very complex, and depends on many input variables. Theref...
Data-driven models are essential tools for the development of surrogate models that can be used for ...
Optimal control; dynamic optimization; surrogate based optimization; kriging; system identificationT...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
AbstractThis paper presents a sequential dynamic optimization methodology applicable to solve the op...
The increasing amount of variables to be accounted for in chemical processes optimization and the ne...
The increasingly competitive and continuously changing world economy has made it necessary to exploi...
Dynamic models describe many operations and processes that take place in several disciplines, includ...
Nonlinear dynamic analysis serves an increasingly important role in process systems engineering rese...
Abstract Surrogate models play a vital role in overcoming the computational challenge...
This paper presents the application of self-optimizing concepts for more efficient generation of ste...
This work proposes a methodology for multivariate dynamic modeling and multistep-ahead prediction of...
<p>Dynamic optimization problems directly incorporate detailed dynamic models as constraints within ...
The classic design- and simulation methodologies, that are constituting today’s engineer main tools,...
Funder: Chinese Scholarship CouncilFunder: Cambridge Trust; Id: http://dx.doi.org/10.13039/501100003...
Description of nonlinear active devices is very complex, and depends on many input variables. Theref...
Data-driven models are essential tools for the development of surrogate models that can be used for ...
Optimal control; dynamic optimization; surrogate based optimization; kriging; system identificationT...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
AbstractThis paper presents a sequential dynamic optimization methodology applicable to solve the op...
The increasing amount of variables to be accounted for in chemical processes optimization and the ne...
The increasingly competitive and continuously changing world economy has made it necessary to exploi...
Dynamic models describe many operations and processes that take place in several disciplines, includ...
Nonlinear dynamic analysis serves an increasingly important role in process systems engineering rese...
Abstract Surrogate models play a vital role in overcoming the computational challenge...
This paper presents the application of self-optimizing concepts for more efficient generation of ste...