Title of article
Nonlinear identification and control of a heat exchanger: A neural network approach
Author/Authors
Bittanti، نويسنده , , S. and Piroddi، نويسنده , , L.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1997
Pages
19
From page
135
To page
153
Abstract
In this paper the potentials of neural networks-based control techniques are explored by applying a nonlinear generalized minimum variance control methodology to a simulated application example. In particular, reference is made to the control problem of regulating the output temperature of a liquid-satured steam heat exchanger by acting on the liquid flow-rate. Due to the non-minimum phase characteristic of the dynamics of the process, a simple inverting minimum variance controller is unsuitable. On the other hand, an effective solution is provided by a detuned model reference approach, which introduces a penalization factor in the control variable. A steady-state off-set error problem, caused by the neural network approximations, is tackled by means of an hybrid control structure, which combines a nonlinear integral action block with a neural controller. A comparison analysis is made to show the effectiveness of the proposed neural control schemes with respect to classical linear controllers.
Journal title
Journal of the Franklin Institute
Serial Year
1997
Journal title
Journal of the Franklin Institute
Record number
1541104
Link To Document