TY - JOUR
T1 - Distributed continuous-time algorithms for nonsmooth extended monotropic optimization problems
AU - Zeng, Xianlin
AU - Yi, Peng
AU - Hong, Yiguang
AU - Xie, Lihua
N1 - Publisher Copyright:
Copyright © by SIAM. Unauthorized reproduction of this article is prohibited.
PY - 2018
Y1 - 2018
N2 - This paper studies distributed algorithms for the nonsmooth extended monotropic optimization problem, which is a general convex optimization problem with a certain separable structure. The considered nonsmooth objective function is the sum of local objective functions assigned to agents in a multiagent network, with local set constraints and affine equality constraints. Each agent only knows its local objective function, local set constraint, and the information exchanged between neighbors. To solve the constrained convex optimization problem, we propose two novel distributed continuous-time subgradient-based algorithms, with projected output feedback and derivative feedback, respectively. Moreover, we prove the convergence of proposed algorithms to the optimal solutions under some mild conditions and analyze convergence rates, with the help of the techniques of variational inequalities, decomposition methods, and differential inclusions. Finally, we give an example to illustrate the efficacy of the proposed algorithms.
AB - This paper studies distributed algorithms for the nonsmooth extended monotropic optimization problem, which is a general convex optimization problem with a certain separable structure. The considered nonsmooth objective function is the sum of local objective functions assigned to agents in a multiagent network, with local set constraints and affine equality constraints. Each agent only knows its local objective function, local set constraint, and the information exchanged between neighbors. To solve the constrained convex optimization problem, we propose two novel distributed continuous-time subgradient-based algorithms, with projected output feedback and derivative feedback, respectively. Moreover, we prove the convergence of proposed algorithms to the optimal solutions under some mild conditions and analyze convergence rates, with the help of the techniques of variational inequalities, decomposition methods, and differential inclusions. Finally, we give an example to illustrate the efficacy of the proposed algorithms.
KW - Decomposition methods
KW - Differential inclusions
KW - Distributed algorithms
KW - Extended monotropic optimization
KW - Nonsmooth convex functions
UR - http://www.scopus.com/inward/record.url?scp=85060535493&partnerID=8YFLogxK
U2 - 10.1137/17M1118609
DO - 10.1137/17M1118609
M3 - Article
AN - SCOPUS:85060535493
SN - 0363-0129
VL - 56
SP - 3973
EP - 3993
JO - SIAM Journal on Control and Optimization
JF - SIAM Journal on Control and Optimization
IS - 6
ER -