This paper studies distributed diffusion adaptation over clustered multi-task networks in the presence of impulsive interferences and Byzantine attacks. We develop a robust resilient diffusion least mean Geman-McClure-estimation (RDLMG) algorithm based on the cost function used by the Geman-McClure estimator, which can reduce the sensitivity to large outliers and make the algorithm robust under impulsive interferences. Moreover, the mean sub-sequence reduced method, in which each node discards the extreme value information of cost contributions received from its neighbors, can make the network resilient against Byzantine attacks. In this regard, the proposed RDLMG algorithm ensures that all normal nodes converge to their ideal states with cooperation among nodes. A statistical analysis of the RDLMG algorithm is also carried out in terms of mean and mean-square performances. Numerical results evaluate the proposed RDLMG algorithm in applications to multi-target localization and multi-task spectrum sensing.
翻译:本文研究根据Geman-Mccclure估计仪(RDLMG)使用的成本函数,在脉冲干扰和拜占庭攻击的情况下,将扩散适应分散在多任务网络上。我们根据Geman-Mccclure估计仪(RDLMG)使用的成本函数,开发了一种强韧性最小的传播能力最小的Geman-McClure估计仪(RDLMG)算法(RDLMG)算法(RDLMG)算法(RDLMG),该算法可以降低对大输出器的敏感度,并在脉冲干扰下使算法变得强大。此外,平均次序列递减法(在这种方法中,每个节弃弃弃其邻居提供的成本的极端价值信息)可以使网络抵御拜占庭攻击。在这方面,拟议的RDLMG算法(RDLMG)算法(RDLMG)可以确保所有正常的节点在节点定位和多任务频谱遥感应用中与理想状态汇合。