Fj. Lin et al., Robust control of linear synchronous motor servodrive using disturbance observer and recurrent neural network compensator, IEE P-EL PO, 147(4), 2000, pp. 263-272
Robust control of a permanent magnet (PM) linear synchronous motor (LSM) se
rvodrive is achieved by using a disturbance observer and a recurrent neural
network (RNN) compensator. An integral-proportional (TP) controller is int
roduced to control the mover position of the LSM. The IP position controlle
r is designed according to the estimated mover parameters to match the time
-domain command tracking specifications. A disturbance observer is implemen
ted and the observed disturbance force is fed forward to increase the robus
tness of the LSM servodrive. Moreover, to increase the control performance
of the LSM servodrive under the occurrence of large disturbance, a RNN comp
ensator is proposed to reduce the influence of parameter variations and ext
ernal disturbances of the LSM servodrive system as a force controller. In a
ddition, a dynamic backpropagation algorithm is developed to train the RNN
online using the delta adaptation law. The effectiveness of the proposed co
ntrol schemes is demonstrated by some simulated and experimental results.