Motivated by the needs of resiliency, scalability, and plug-and-play operation, distributed decision-making is becoming increasingly prevalent. The problem of achieving consensus in a multi-agent system is at the core of distributed decision-making. In this article, we study the problem of achieving average consensus over a directed multi-agent network when the communication links are corrupted with noise. We propose an algorithm where each agent updates its estimates based on the local mixing of information and adds its weighted noise-free initial information to its updates during every iteration. We demonstrate that with appropriately designed weights the agents achieve consensus under additive communication noise. We establish that when the communication links are noiseless the proposed algorithm moves towards consensus at a geometric rate. Under communication noise, we prove that the agent estimates reach a consensus value almost surely. We present numerical experiments to corroborate the efficacy of the proposed algorithm under different noise realizations and various algorithm parameters.
翻译:基于恢复能力、可扩缩性以及插头和游戏操作的需要,分布式决策正在变得越来越普遍。在多试剂系统中达成共识的问题是分布式决策的核心。在本条中,我们研究了在通信联系被噪音破坏时,在定向多试剂网络上达成共识的问题。我们提出了一个算法,其中每个代理商根据当地信息混杂情况更新其估计数,并在每次迭代期间更新其加权无噪音的初步信息。我们证明,在设计适当重量的情况下,代理商在添加式通信噪音下达成共识。我们确定,在通信联系无噪音时,拟议的算法以几何速度走向共识。在通信噪音下,我们证明,代理商估计几乎可以肯定地达到协商一致值。我们提出数字实验,以证实在不同噪音认识和各种算法参数下拟议的算法的有效性。