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An approximate gradient algorithm for constrained distributed convex optimization

机译:约束分布凸优化的一种近似梯度算法

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摘要

In this paper, we propose an approximate gradient algorithm for the multi-agent convex optimization problem with constraints. The agents cooperatively compute the minimum of the sum of the local objective functions which are subject to a global inequality constraint and a global constraint set. Instead of each agent can get exact gradient, as discussed in the literature, we only use approximate gradient with some computation or measurement errors. The gradient accuracy conditions are presented to ensure the convergence of the approximate gradient algorithm. Finally, simulation results demonstrate good performance of the approximate algorithm.
机译:本文针对具有约束的多智能体凸优化问题提出了一种近似梯度算法。代理协同计算受全局不等式约束和全局约束集约束的局部目标函数之和的最小值。如文献中所述,不是每个代理都能获得精确的梯度,而是仅使用具有某些计算或测量误差的近似梯度。提出了梯度精度条件,以确保近似梯度算法的收敛性。最后,仿真结果证明了近似算法的良好性能。

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