Title of article :
Multiple-page-mapping backpropagation neural network for constant tension control
Author/Authors :
Luo، نويسنده , , F.L.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1998
Abstract :
Constant tension control is widely
required in industrial applications. Because of
random tension interference, motor running speed
vibration usually occurs. Tension control is a way
to minimise the effect of random tension
interference, however, the tension modification
reference is another interference to the speed
control system. The rewinding roll drive of a
metal-film coating machine is a system with
multiple closed loops and multiple input and
output variables. Desired speed and tension
responses are difficult to achieve by implementing
conventional analogue proportional-plus-integral
(PI) control. The paper introduces an artificial
neural network algorithm that can successfully
isolate cross coupling between the speed and
tension control loops, and both loops can operate
quasi-independently. It overcomes the disadvantages
of traditional PI control systems. To
handle the variation of the rewinding roll
diameter, multiple pages of the network are
applied. This technique can treat a dynamic
nonlinear system as a quasistatic linear control
system. Therefore this method decouples the
speed and tension-control paths, and both control
paths can independently operate in a quasistatic
state. Simulation results show the effectiveness of
this control algorithm.
Keywords :
ANN algorithm , Film coating machine , Speed-control system , Tension control
Journal title :
IEE Proceedings Electric Power Applications
Journal title :
IEE Proceedings Electric Power Applications