Distributed Optimization for Quadratic Cost Functions With Quantized Communication and Finite-Time Convergence

IF 4 3区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Apostolos I. Rikos;Andreas Grammenos;Evangelia Kalyvianaki;Christoforos N. Hadjicostis;Themistoklis Charalambous;Karl H. Johansson
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Abstract

In this article, we propose two distributed iterative algorithms that can be used to solve the distributed optimization problem for quadratic local cost functions over large-scale networks in finite time. The first algorithm exhibits synchronous operation while the second one exhibits asynchronous operation. Both algorithms operate exclusively with quantized values. This means that the information stored, processed, and exchanged between neighboring nodes is subject to deterministic uniform quantization. The algorithms rely on event-driven updates in order to reduce energy consumption, communication bandwidth, network congestion, and/or processor usage. Finally, once the algorithms converge, nodes distributively terminate their operation. We prove that our algorithms converge in a finite number of iterations to the exact optimal solution depending on the quantization level, and we present applications of our algorithms to, first, optimal task scheduling for data centers, and second, global model aggregation for distributed federated learning. We provide simulations of these applications to illustrate the operation, performance, and advantages of the proposed algorithms. In addition, it is shown that our proposed algorithms compare favorably to algorithms in the current literature.
二次成本函数的分布式优化与量化通信和有限时间收敛
在本文中,我们提出了两种分布式迭代算法,可用于在有限时间内解决大规模网络上二次局部代价函数的分布式优化问题。第一种算法显示同步操作,第二种算法显示异步操作。这两种算法都只处理量子化的值。这意味着相邻节点之间存储、处理和交换的信息服从确定性的统一量化。这些算法依赖于事件驱动的更新,以减少能耗、通信带宽、网络拥塞和/或处理器使用。最后,一旦算法收敛,节点分布式地终止它们的操作。我们证明了我们的算法在有限次数的迭代中收敛到精确的最优解,这取决于量化级别,并且我们提出了我们的算法的应用,首先,数据中心的最优任务调度,其次,分布式联邦学习的全局模型聚合。我们提供了这些应用程序的模拟,以说明所提出算法的操作、性能和优点。此外,我们提出的算法与现有文献中的算法相比具有优势。
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来源期刊
IEEE Transactions on Control of Network Systems
IEEE Transactions on Control of Network Systems Mathematics-Control and Optimization
CiteScore
7.80
自引率
7.10%
发文量
169
期刊介绍: The IEEE Transactions on Control of Network Systems is committed to the timely publication of high-impact papers at the intersection of control systems and network science. In particular, the journal addresses research on the analysis, design and implementation of networked control systems, as well as control over networks. Relevant work includes the full spectrum from basic research on control systems to the design of engineering solutions for automatic control of, and over, networks. The topics covered by this journal include: Coordinated control and estimation over networks, Control and computation over sensor networks, Control under communication constraints, Control and performance analysis issues that arise in the dynamics of networks used in application areas such as communications, computers, transportation, manufacturing, Web ranking and aggregation, social networks, biology, power systems, economics, Synchronization of activities across a controlled network, Stability analysis of controlled networks, Analysis of networks as hybrid dynamical systems.
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