Emiliano Dall'Anese, Andrea Simonetto, et al.
IEEE SPM
We address the solution of time-varying optimization problems characterized by the sum of a time-varying strongly convex function and a time-invariant nonsmooth convex function. We design an online algorithmic framework based on prediction-correction, which employs splitting methods to solve the sampled instances of the time-varying problem. We describe the prediction-correction scheme and two splitting methods, the forward-backward and the Douglas-Rachford. Then by using a result for generalized equations, we prove convergence of the generated sequence of approximate optimizers to a neighborhood of the optimal solution trajectory. Simulation results for a leader following formation in robotics assess the performance of the proposed algorithm.
Emiliano Dall'Anese, Andrea Simonetto, et al.
IEEE SPM
Amirhossein Ajalloeian, Andrea Simonetto, et al.
ACC 2020
François Gonze, Andrea Simonetto, et al.
ATM 2017
Emiliano Dall'arnese, Andrey Bernstein, et al.
GlobalSIP 2017