Average consensus protocols emerge with a central role in distributed systems and decision-making such as distributed information fusion, distributed optimization, distributed estimation, and control. A key advantage of these protocols is that agents exchange and reveal their state information only to their neighbors. Yet, it can raise privacy concerns in situations where the agents' states contain sensitive information. In this paper, we propose a novel (noiseless) privacy preserving distributed algorithms for multi-agent systems to reach an average consensus. The main idea of the algorithms is that each agent runs a (small) network with a crafted structure and dynamics to form a network of networks (i.e., the connection between the newly created networks and their interconnections respecting the initial network connections). Together with a re-weighting of the dynamic parameters dictating the inter-agent dynamics and the initial states, we show that it is possible to ensure that the value of each node converges to the consensus value of the original network. Furthermore, we show that, under mild assumptions, it is possible to craft the dynamics such that the design can be achieved in a distributed fashion. Finally, we illustrate the proposed algorithm with examples.
翻译:平均共识协议在分布式系统和决策(如分布式信息聚合、分布式优化、分布式估计和控制)中产生中心作用。这些协议的一个主要优势是代理商交换和向邻居披露其状态信息。然而,它可以在代理商国家包含敏感信息的情况下引起隐私关切。在本文件中,我们提议为多试剂系统提供一个新颖的(无新奇的)隐私保护分布式算法,以达到平均共识。算法的主要理念是每个代理商都运行一个(小型)网络,拥有精心构思的结构和动态,以形成一个网络网络网络(即新创建的网络之间的联系及其与初始网络连接的互联关系)。最后,我们用实例来说明拟议的算法。