Title :
Neural network compensation of gear backlash hysteresis in position-controlled mechanisms
Author :
Seidl, David R. ; Lam, Sui-lun ; Putman, Jerry A. ; Lorenz, Robert D.
Author_Institution :
UNICO, Franksville, WI, USA
Abstract :
This paper demonstrates that artificial neural networks can be used to identify and compensate for hysteresis caused by gear backlash in precision position-controlled mechanisms. A major contribution of this research is that physical analysis of the system nonlinearities and optimal control are used to design the neural network structure. Network sizing and initializing problems are thus eliminated. This physically meaningful, modular approach facilitates the integration of this neural network with existing controllers; thus, initial performance matches that of existing control approaches and then is improved by refining the parameter estimates via further learning. The neural network operates by recognizing backlash and switching to a control which moves smoothly through the backlash when the torque transmitted to the output shaft must be reversed
Keywords :
compensation; control system analysis; control system synthesis; electric machines; learning (artificial intelligence); machine control; machine theory; neurocontrollers; nonlinear control systems; optimal control; parameter estimation; position control; artificial neural networks; control design; electric machine; gear backlash hysteresis; learning; neural network compensation; optimal control analysis; output shaft torque transmission; parameter estimates; performance; precision position control; system nonlinearities; Artificial neural networks; Automatic control; Friction; Gears; Hysteresis motors; Intelligent networks; Neural networks; Parameter estimation; Shafts; Torque;
Journal_Title :
Industry Applications, IEEE Transactions on