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Enhanced Gradient Tracking Algorithms for Distributed Quadratic Optimization via Sparse Gain Design

机译:通过稀疏增益设计增强了分布式二次优化的增强梯度跟踪算法

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In this paper we propose a new control-oriented design technique to enhance the algorithmic performance of the distributed gradient tracking algorithm. We focus on a scenario in which agents in a network aim to cooperatively minimize the sum of convex, quadratic cost functions depending on a common decision variable. By leveraging a recent system-theoretical reinterpretation of the considered algorithmic framework as a closed-loop linear dynamical system, the proposed approach generalizes the diagonal gain structure associated to the existing gradient tracking algorithms. Specifically, we look for closed-loop gain matrices that satisfy the sparsity constraints imposed by the network topology, without however being necessarily diagonal, as in existing gradient tracking schemes. We propose a novel procedure to compute stabilizing sparse gain matrices by solving a set of nonlinear matrix inequalities, based on the solution of a sequence of approximate linear versions of such inequalities. Numerical simulations are presented showing the enhanced performance of the proposed design compared to existing gradient tracking algorithms.
机译:在本文中,我们提出了一种新的控制导向的设计技术,提高了分布式梯度跟踪算法的算法性能。我们专注于网络中的代理的旨在根据公共决策变量协同地最小化凸,二次成本函数的总和。通过利用最近的系统理论重新诠释所考虑的算法框架作为闭环线性动态系统,所提出的方法概括了与现有梯度跟踪算法相关联的对角线增益结构。具体地,我们寻找满足网络拓扑所强加的稀疏限制的闭环增益矩阵,而不必在现有的梯度跟踪方案中。我们提出了一种新的程序,通过求解一组非线性矩阵不等式来计算稳定稀疏增益矩阵,基于这种不等式的近似线性版本的溶解。提出了数值模拟,示出了与现有梯度跟踪算法相比提高了所提出的设计的性能。

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