Influence of the optimization methods on neural state estimation quality of the drive system with elasticity

Neural Comput Appl. 2014;24(6):1327-1340. doi: 10.1007/s00521-013-1348-4. Epub 2013 Feb 16.

Abstract

The paper deals with the implementation of optimized neural networks (NNs) for state variable estimation of the drive system with an elastic joint. The signals estimated by NNs are used in the control structure with a state-space controller and additional feedbacks from the shaft torque and the load speed. High estimation quality is very important for the correct operation of a closed-loop system. The precision of state variables estimation depends on the generalization properties of NNs. A short review of optimization methods of the NN is presented. Two techniques typical for regularization and pruning methods are described and tested in detail: the Bayesian regularization and the Optimal Brain Damage methods. Simulation results show good precision of both optimized neural estimators for a wide range of changes of the load speed and the load torque, not only for nominal but also changed parameters of the drive system. The simulation results are verified in a laboratory setup.

Keywords: Bayesian regularization; Electrical drive; Neural networks; Optimal Brain Damage method; State estimation; Training methods; Two-mass system.