Automation of composition and optimisation of multicomponent predictive systems (MCPSs) made of a number of preprocessing steps and predictive models is a challenging problem that has been addressed in recent works. However, one of the current challenges is how to adapt these systems in dynamic environments where data is changing over time. In this work we propose a hybrid approach combining different adaptation strategies with the Bayesian optimisation techniques for parametric, structural and hyperparameter optimisation of entire MCPSs. Experiments comparing different adaptation strategies have been performed on 7 datasets from real chemical production processes. Experimental analysis shows that optimisation of entire MCPSs as a method of...
Due to the economically sensitive condition of the chemical and petroleum industries, we can no long...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
Existing adaptive predictive methods often use multiple adaptive mechanisms as part of their coping ...
In recent years, there has been an increasing interest in extracting valuable information from large...
Composition and parameterization of multicomponent predictive systems (MCPSs) consisting of chains o...
© 2004-2012 IEEE. Composition and parameterization of multicomponent predictive systems (MCPSs) cons...
Automatic composition and parametrisation of multicomponent predictive systems (MCPSs) consisting of...
Chemical process operation optimization aims at obtaining the optimal operating set-points by real-t...
Predictive modelling is a complex process that requires a number of steps to transform raw data into...
AbstractPredictive modelling is a complex process that requires a number of steps to transform raw d...
Model predictive control provides the optimal operation for chemical processes by explicitly account...
This work proposes a Data-Based MultiParametric-Model Predictive Control (DBMPMPC) methodology, whic...
This paper investigates a new class of modifier-adaptation schemes to overcome plant-model mismatch ...
In the chemical process industry, the decision-making hierarchy is inherently model-based. The scale...
This work proposes a methodology for multivariate dynamic modeling and multistep-ahead prediction of...
Due to the economically sensitive condition of the chemical and petroleum industries, we can no long...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
Existing adaptive predictive methods often use multiple adaptive mechanisms as part of their coping ...
In recent years, there has been an increasing interest in extracting valuable information from large...
Composition and parameterization of multicomponent predictive systems (MCPSs) consisting of chains o...
© 2004-2012 IEEE. Composition and parameterization of multicomponent predictive systems (MCPSs) cons...
Automatic composition and parametrisation of multicomponent predictive systems (MCPSs) consisting of...
Chemical process operation optimization aims at obtaining the optimal operating set-points by real-t...
Predictive modelling is a complex process that requires a number of steps to transform raw data into...
AbstractPredictive modelling is a complex process that requires a number of steps to transform raw d...
Model predictive control provides the optimal operation for chemical processes by explicitly account...
This work proposes a Data-Based MultiParametric-Model Predictive Control (DBMPMPC) methodology, whic...
This paper investigates a new class of modifier-adaptation schemes to overcome plant-model mismatch ...
In the chemical process industry, the decision-making hierarchy is inherently model-based. The scale...
This work proposes a methodology for multivariate dynamic modeling and multistep-ahead prediction of...
Due to the economically sensitive condition of the chemical and petroleum industries, we can no long...
Worst-case and stochastic optimization schemes are used to safely operate chemical processes, with o...
Existing adaptive predictive methods often use multiple adaptive mechanisms as part of their coping ...