General Lyapunov Stability and Its Application to Time-Varying Convex OptimizationOACSTPCDEI
General Lyapunov Stability and Its Application to Time-Varying Convex Optimization
In this article,a general Lyapunov stability theory of nonlinear systems is put forward and it contains asymptotic/finite-time/fast finite-time/fixed-time stability.Especially,a more accu-rate estimate of the settling-time function is exhibited for fixed-time stability,and it is still extraneous to the initial conditions.This can be applied to obtain less conservative convergence time of the practical systems without the information of the initial con-ditions.As an application,the given fixed-time stability theorem is used to resolve time-varying(TV)convex optimization problem.By the Newton's method,two classes of new dynamical systems are constructed to guarantee that the solution of the dynamic sys-tem can track to the optimal trajectory of the unconstrained and equality constrained TV convex optimization problems in fixed time,respectively.Without the exact knowledge of the time derivative of the cost function gradient,a fixed-time dynamical non-smooth system is established to overcome the issue of robust TV convex optimization.Two examples are provided to illustrate the effectiveness of the proposed TV convex optimization algo-rithms.Subsequently,the fixed-time stability theory is extended to the theories of predefined-time/practical predefined-time stability whose bound of convergence time can be arbitrarily given in advance,without tuning the system parameters.Under which,TV convex optimization problem is solved.The previous two exam-ples are used to demonstrate the validity of the predefined-time TV convex optimization algorithms.
Zhibao Song;Ping Li
College of Mathematics and Systems Science,Shandong University of Science and Technology,Qingdao 266590,China
Fixed-time stabilitynonlinear systempredefined-time stabilitytime-varying(TV)convex optimization
《自动化学报(英文版)》 2024 (011)
2316-2326 / 11
This work was supported in part by the National Natural Science Foundation of China(62203281).
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