This paper addresses novel consensus problems for multi-agent systems operating in an unreliable environment where adversaries are spreading. The dynamics of the adversarial spreading processes follows the susceptible-infected-recovered (SIR) model, where the infection induces faulty behaviors in the agents and affects their state values. Such a problem setting serves as a model of opinion dynamics in social networks where consensus is to be formed at the time of pandemic and infected individuals may deviate from their true opinions. To ensure resilient consensus among the noninfectious agents, the difficulty is that the number of infectious agents changes over time. We assume that a local policy maker announces the local level of infection in real-time, which can be adopted by the agent for its preventative measures. It is demonstrated that this problem can be formulated as resilient consensus in the presence of the socalled mobile malicious models, where the mean subsequence reduced (MSR) algorithms are known to be effective. We characterize sufficient conditions on the network structures for different policies regarding the announced infection levels and the strength of the epidemic. Numerical simulations are carried out for random graphs to verify the effectiveness of our approach.
翻译:本文论述在对手蔓延的不可靠环境中运作的多试剂系统的新共识问题。对抗性传播过程的动态遵循了易感染的恢复(SIR)模式,在这种模式下,感染会诱发代理人的错误行为并影响其国家价值观。这种问题设置可以作为社会网络舆论动态的模型,在这种网络中,在大流行病发生时将形成共识,受感染者可能偏离其真实观点。为确保非传染性代理人之间有弹性的共识,困难在于传染性制剂的数量随时间而变化。我们假设当地决策者实时宣布当地感染程度,而该媒介可以采用这种方式采取预防措施。事实证明,在所谓的移动恶意模式出现时,这一问题可以形成具有弹性的共识,因为已知平均的后继效应会减少(MSR)算法是有效的。我们为网络结构中关于已宣布的感染水平和该流行病强度的不同政策规定了充分的条件。进行数字模拟是为了进行随机图解,以核实我们的方法的有效性。