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Continuous-Time Distributed Subgradient Algorithm for Convex Optimization With General Constraints

机译:一种凸优化与一般约束的连续分布分布分布分布仿性算法

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摘要

The distributed convex optimization problem is studied in this paper for any fixed and connected network with general constraints. To solve such an optimization problem, a new type of continuous-time distributed subgradient optimization algorithm is proposed based on the Karuch-Kuhn-Tucker condition. By using tools from nonsmooth analysis and set-valued function theory. it is proved that the distributed convex optimization problem is solved on a network of agents equipped with the designed algorithm. For the case that the objective function is convex but not strictly convex, it is proved that the states of the agents associated with optimal variables could converge to an optimal solution of the optimization problem. For the case that the objective function is strictly convex, it is further shown that the states of agents associated with optimal variables could converge to the unique optimal solution. Finally, some simulations are performed to illustrate the theoretical analysis.
机译:本文研究了分布式凸优化问题,用于任何具有一般约束的固定和连接的网络。为了解决这样的优化问题,基于Karuch-Kuhn-Tucker条件提出了一种新型的连续时间分布式子效应优化算法。通过使用NonsMooth分析和设定值函数理论的工具。事实证明,分布式凸优化问题求解在配备设计算法的代理网络上。对于目标函数是凸的但没有严格凸起的情况,证明了与最佳变量相关的代理的状态可以收敛到优化问题的最佳解决方案。对于目标函数严格凸起的情况,还表明与最佳变量相关的代理状态可以收敛到独特的最佳解决方案。最后,执行一些模拟以说明理论分析。

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