We propose a new dynamic average consensus algorithm that is robust to information-sharing noise arising from differential-privacy design. Not only is dynamic average consensus widely used in cooperative control and distributed tracking, it is also a fundamental building block in numerous distributed computation algorithms such as multi-agent optimization and distributed Nash equilibrium seeking. We propose a new dynamic average consensus algorithm that is robust to persistent and independent information-sharing noise added for the purpose of differential-privacy protection. In fact, the algorithm can ensure both provable convergence to the exact average reference signal and rigorous epsilon-differential privacy (even when the number of iterations tends to infinity), which, to our knowledge, has not been achieved before in average consensus algorithms. Given that channel noise in communication can be viewed as a special case of differential-privacy noise, the algorithm can also be used to counteract communication imperfections. Numerical simulation results confirm the effectiveness of the proposed approach.
翻译:我们提出了一种新的动态平均共识算法,它对于因差异-隐私设计而产生的信息分享噪音是十分有力的。它不仅在合作控制和分布跟踪中广泛使用动态平均共识,而且也是多种分布式计算算法,如多剂优化和分布式纳什均衡寻求中的一个基本构件。我们提出了一种新的动态平均协商一致算法,它对于为差异-隐私保护目的添加的持久和独立的信息共享噪音是强有力的。事实上,该算法可以确保与准确的平均参考信号和严格的普西隆差异性隐私(即使迭代数趋向无限化)有可证实的趋同性。 据我们所知,在平均共识算法中,这些均没有实现。鉴于频道通信中的噪音可被视为差异-隐私噪音的特殊案例,因此该算法也可以用来抵消通信的缺陷。数字模拟结果证实了拟议方法的有效性。