Applying adaptive wavelet neural network and sliding mode control for
tracking control of MEMS gyroscope
Abstract
In this paper, an algorithm applying adaptive wavelet neural
network(AWNN) and sliding mode control(SMC) is proposed, investigated
and exploited for tracking control of microelectromechanical(MEMS)
gyroscope. Such an AWNN model can be regarded as a special radius basis
function neural network, and utilizes Mexican hat function as activation
function. Besides, Taylor expansion is used for analyzing activation
radius which is considered as an adaptive variable. The parameters of
MEMS gyroscope model are hard to obtain in engineering application,
thus, AWNN and SMC are designed for approximating the uncertain function
of MEMS gyroscope and the unknown asymmetrical dead zone in control
scheme. The weights updating laws and the activation radius adaptive
laws in AWNN are derived from the Lyapunov stability analysis, which
result in the control error converging to the desired value and the
weights and activation radius converging to its real value. Computer
simulation results substantiate the theoretical analysis and further
demonstrate the efficacy of such an algorithm combining with AWNN and
SMC for MEMS gyroscope control.