1 research outputs found

    Minimum Entropy Approach For Robot Manipulator

    No full text
    In this paper, a new algorithm for an adaptive PI controller for nonlinear systems subject to stochastic non- Gaussian disturbance is studied. The minimum entropy control is applied to decrease the closed-loop tracking error on an ILC basis. The key issue here is to divide the control horizon into a number of equal time intervals called batches. Within each interval, there are a �xed number of sample points. The design procedure is divided into two main algorithms, within each batch and between any two adjacent batches. A D-type ILC law is employed to tune the PI controller coef�cients between two adjacent batches. However, within each batch, the PI coef�cients are �xed. A suf�cient condition is established to guarantee the stability of the closed-loop system. An analysis of the ILC convergence is carried out. Two-link robot manipulator example is included to demonstrate the use of the control algorithm, and satisfactory results are obtained
    corecore