## Abstract This article describes a novel implementation of the dualβmode (DM) control utilizing a neural network inverse model on a multivariable process (a steel pickling process). This process is highly nonlinear with variableβinteraction, and is multivariable in nature, hence an accurately non
Neural network based model predictive control for a steel pickling process
β Scribed by Paisan Kittisupakorn; Piyanuch Thitiyasook; M.A. Hussain; Wachira Daosud
- Publisher
- Elsevier Science
- Year
- 2009
- Tongue
- English
- Weight
- 684 KB
- Volume
- 19
- Category
- Article
- ISSN
- 0959-1524
No coin nor oath required. For personal study only.
β¦ Synopsis
A multi-layer feedforward neural network model based predictive control scheme is developed for a multivariable nonlinear steel pickling process in this paper. In the acid baths three variables under controlled are the hydrochloric acid concentrations. The baths exhibit the normal features of an industrial system such as nonlinear dynamics and multi-effects among variables. In the modeling, multiple input, singleoutput recurrent neural network subsystem models are developed using input-output data sets obtaining from mathematical model simulation. The Levenberg-Marquardt algorithm is used to train the process models. In the control (MPC) algorithm, the feedforward neural network models are used to predict the state variables over a prediction horizon within the model predictive control algorithm for searching the optimal control actions via sequential quadratic programming. The proposed algorithm is tested for control of a steel pickling process in several cases in simulation such as for set point tracking, disturbance, model mismatch and presence of noise. The results for the neural network model predictive control (NNMPC) overall show better performance in the control of the system over the conventional PI controller in all cases.
π SIMILAR VOLUMES
The paper describes the design of a neural network based model predictive controller for controlling the interface level in a flotation column. For the system identification, the tailings valve opening is subjected to a pseudo-random ternary signal and response of the interface level is recorded ove