Decomposition Methods for Distributed Quadratic Programming with Application to Distributed Model Predictive Control

Giuliano Costantini, Ramin Rostami, D. Görges
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引用次数: 3

Abstract

This paper studies different decomposition techniques for coupled quadratic programming problems arising in Distributed Model Predictive Control (DMPC). Here the resulting global problem is not directly separable due to the dynamical coupling between the agents in the networked system. In the last decade, the Alternating Direction Method of Multipliers (ADMM) has been generally adopted as the standard optimization algorithm in the DMPC literature due to its fast convergence and robustness with respect to other algorithms as the dual decomposition method. The goal of this paper is to introduce a novel decomposition technique which with respect to ADMM can reduce the number of iterations required for convergence. A benchmark model is used at the end of the paper to numerically show these results under different coupling factors and network topologies. The proposed method is closely related to the Diagonal Quadratic Approximation (DQA) and its successor, the Accelerated Distributed Augmented Lagrangian (ADAL) method. In these algorithms the coupling constraint is relaxed by introducing an augmented Lagrangian and the resulting non-separable quadratic penalty term is approximated through a sequence of separable quadratic functions. This paper proposes a different separable approximation for the penalty term which leads to several advantages as a flexible communication scheme and an overall better convergence when the coupling is not excessively high.
分布式二次规划的分解方法及其在分布式模型预测控制中的应用
本文研究了分布式模型预测控制(DMPC)中耦合二次规划问题的不同分解技术。由于网络系统中各智能体之间的动态耦合,所得到的全局问题不能直接分离。在过去的十年中,由于ADMM相对于其他对偶分解算法具有快速收敛和鲁棒性,因此在DMPC文献中被普遍采用作为标准优化算法。本文的目标是介绍一种新的分解技术,该技术相对于ADMM可以减少收敛所需的迭代次数。本文最后利用一个基准模型对不同耦合因素和网络拓扑下的结果进行了数值模拟。该方法与对角二次逼近法(DQA)及其继承者加速分布增广拉格朗日法(ADAL)密切相关。在这些算法中,通过引入增广拉格朗日量来放宽耦合约束,并通过可分二次函数序列来逼近所得到的不可分二次惩罚项。本文对惩罚项提出了一种不同的可分离近似,该近似具有通信灵活的优点,并且在耦合不过高的情况下具有较好的收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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