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A Distributed Algorithm for Nonconvex Quadratically Constrained Programs ?

机译:一种分布式算法,用于非耦合二次约束程​​序

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This paper considers nonconvex quadratically constrained programs over undirected connected graphs. We focus on problems whose quadratic constraint forms have sparse hessians, i.e., each constraint only involves a small subset of variables. We present both centralized and distributed treatment of the problem, where the centralized method is used as a benchmark with which we compare the performance of the proposed distributed algorithm. Towards this objective, we derive a lower bound on the optimal value of the problem using a semidefinite relaxation. Then, we develop a decentralized algorithm based on proximal gradient ADMM that exploits the structure of the constraints to distribute the computations among the graph nodes. Indeed, the proposed algorithm does away with a central node. Each node updates its local variables via solving a simple subproblem, then communicate with its immediate neighbors. An application of this work is the AC optimal power flow problem in power networks for which we provide preliminary numerical results to validate our findings.
机译:本文考虑了非连接的二次约束程​​序,通过无向连接图。我们专注于二次约束形式具有稀疏Hessians的问题,即,每个约束仅涉及一个小变量子集。我们展示了对问题的集中和分布式处理,其中集中式方法用作基准,我们比较所提出的分布式算法的性能。对于这种目标,我们使用Semidefinite弛豫来获得问题的最佳价值下限。然后,我们基于近端渐变ADMM开发一种分散的算法,该梯度ADMM利用约束的结构来分发图形节点之间的计算。实际上,所提出的算法与中央节点消失。每个节点通过求解一个简单的子问题更新其本地变量,然后与其立即邻居通信。这项工作的应用是电力网络中的AC最佳功率流问题,我们提供初步数值结果以验证我们的研究结果。

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