Abstract:
A self-tuning controller for a class of processes with predictable dynamics variations using model predictive scheme is presented in this paper. The self-tuning controlle...Show MoreMetadata
Abstract:
A self-tuning controller for a class of processes with predictable dynamics variations using model predictive scheme is presented in this paper. The self-tuning controller design is based on the optimization of a cost function subject to constraints over a finite prediction horizon in time, and, it uses a neural process model. The performance of this new self-tuning controller is substantiated by experiments on a pH control system. Simulation results show how the model predictive scheme is involved in the self-tuning control of nonlinear systems.
Published in: 2005 International Conference on Control and Automation
Date of Conference: 26-29 June 2005
Date Added to IEEE Xplore: 14 November 2005
Print ISBN:0-7803-9137-3
ISSN Information:
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- IEEE Keywords
- Index Terms
- Self-tuning Controller ,
- Control System ,
- Cost Function ,
- Control Design ,
- Nonlinear Systems ,
- Neural Model ,
- Prediction Horizon ,
- pH Control ,
- Controller Tuning ,
- Neural Network ,
- Acetic Acid ,
- Nonlinear Function ,
- Chemical Processes ,
- Hidden Layer ,
- Tuning Parameter ,
- Multilayer Perceptron ,
- Adaptive Control ,
- Radial Basis Function ,
- Control Loop ,
- Predictive Control ,
- Use Of Neural Networks ,
- Forward Simulation ,
- High Nonlinearity ,
- Node Weights ,
- Presence Of Control ,
- Expert Supervision ,
- Dead Time ,
- Real Control ,
- Neural Control ,
- Nonlinear Dynamics
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Self-tuning Controller ,
- Control System ,
- Cost Function ,
- Control Design ,
- Nonlinear Systems ,
- Neural Model ,
- Prediction Horizon ,
- pH Control ,
- Controller Tuning ,
- Neural Network ,
- Acetic Acid ,
- Nonlinear Function ,
- Chemical Processes ,
- Hidden Layer ,
- Tuning Parameter ,
- Multilayer Perceptron ,
- Adaptive Control ,
- Radial Basis Function ,
- Control Loop ,
- Predictive Control ,
- Use Of Neural Networks ,
- Forward Simulation ,
- High Nonlinearity ,
- Node Weights ,
- Presence Of Control ,
- Expert Supervision ,
- Dead Time ,
- Real Control ,
- Neural Control ,
- Nonlinear Dynamics