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Título
Analytical Fuzzy Predictive Control Applied to Wastewater Treatment Biological Processes
Autor(es)
Palabras clave
Fuzzy predictive control law
Fuzzy identification
Wastewater treatment biological process
Predictive functional control
Intelligent predictive control
Clasificación UNESCO
1203 Ciencia de los ordenadores
1203.17 Informática
1203.04 Inteligencia Artificial
1206.01 Construcción de Algoritmos
1207.02 Sistemas de Control
3305.30 Alcantarillado y depuración de Aguas
Fecha de publicación
2019
Editor
WILEY
Citación
Vallejo LLamas, Pedro M., Vega, Pastora, Analytical Fuzzy Predictive Control Applied to Wastewater Treatment Biological Processes, Complexity, 2019, 5720185, 29 pages, 2019. https://doi.org/10.1155/2019/5720185
Resumen
[EN]A novel control fuzzy predictive control law is proposed and successfully applied to a wastewater treatment process in this paper. The proposed control law allows us to evaluate the control signal in an analytical way, each sampling time being a nonlinear and fuzzy alternative to other classic predictive controllers. The control law is based on the formalization of the internal fuzzy predictive model of the process as linear time-varying state space equations that are updated every discrete time instant to take into account the nonlinearity effects due to disturbance action and changes in the operating point with time. The model is then used to evaluate the predictions, and, taking them as a starting point and considering them as a paradigm of the predictive functional control strategy, a control law, it is derived in an analytical and explicit way by imposing on the outputs of the follow-up of certain reference trajectories previously established. The work presented here addresses the application of this particular strategy of intelligent predictive control to the case of an activated sludge wastewater treatment process successfully in a simulation environment of a real plant taking into account real data for the disturbance records. Such a process is multivariable, nonlinear, time varying, and difficult to control due to its biological nature. The proposed control law can be straightforwardly used within a dual-mode MPC scheme to handle constraints, as a nonlinear and fuzzy alternative to the classic state feedback control law.
URI
ISSN
1076-2787
DOI
10.1155/2019/5720185
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