Multi-Parameter Adaptive Neural Network Control and Generalization for
Servo Systems
Abstract
In this paper, a trajectory tracking control strategy based on radial
basis function neural network (RBFNN) learning control is proposed for
servo systems. A multi-parameter adaptive RBFNN is first constructed
with update rate design. Subsequently, weight generalization rules are
introduced to achieve high-precision tracking of test trajectories based
on learned knowledge without retraining. Furthermore, for trajectory
magnification scenarios, a specific generation algorithm is designed,
which is combined with the generalization rules and achieves
high-precision tracking of magnified trajectories that are not included
in the training data. Experiment results demonstrate that the proposed
method can achieve high-precision tracking of test trajectories and
generalization to similar trajectories.