Resilient Consensus Based on Evidence Theory and Weight Correction

Valeria Bonagura, Camilla Fioravanti, G. Oliva, S. Panzieri
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Abstract

In recent years, the security and resilience of distributed algorithms have become a feature of the utmost importance, especially for applications dealing with sensitive data or critical infrastructures. In this paper, we develop a robust weighted distributed consensus algorithm based on agents’ reputations. By resorting to Evidence Theory, our algorithm is able to evaluate the reputation of each communication link in the graph and to update it over time, following the evolution of each node’s behavior. Moreover, our approach is able to detect the presence of malicious or faulty nodes that vary their propensity to adhere to the correct consensus strategy over time. Finally, the reputation evaluation process is reinforced at each step by a novel weight correction algorithm, which improves the efficacy of recognizing corrupted nodes and is able to reduce their influence on past history. A simulation campaign completes the paper and demonstrates its effectiveness experimentally.
基于证据理论和权重修正的弹性共识
近年来,分布式算法的安全性和弹性已成为最重要的特征,特别是对于处理敏感数据或关键基础设施的应用程序。在本文中,我们开发了一种基于代理声誉的鲁棒加权分布式共识算法。通过诉诸证据理论,我们的算法能够评估图中每个通信链接的声誉,并随着时间的推移更新它,遵循每个节点行为的演变。此外,我们的方法能够检测到恶意或错误节点的存在,这些节点会随着时间的推移而改变其坚持正确共识策略的倾向。最后,通过一种新的权重校正算法在每一步加强声誉评估过程,提高了识别腐败节点的效率,并能够减少它们对过去历史的影响。仿真实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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