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An Asynchronous Consensus-Based Algorithm for Estimation From Noisy Relative Measurements

机译:基于异步共识的噪声相对测量估计算法

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In this paper, we address the problem of optimal estimating the position of each agent in a network from relative noisy vectorial distances with its neighbors by means of only local communication and bounded complexity, independent of network size and topology. We propose a consensus-based algorithm with the use of local memory variables which allows asynchronous implementation, has guaranteed exponential convergence to the optimal solution under simple deterministic and randomized communication protocols, and requires minimal packet transmission. In the randomized scenario, we then study the rate of convergence in expectation of the estimation error and we argue that it can be used to obtain upper and lower bound for the rate of converge in mean square. In particular, we show that for regular graphs, such as Cayley, Ramanujan, and complete graphs, the convergence rate in expectation has the same asymptotic degradation of memoryless asynchronous consensus algorithms in terms of network size. In addition, we show that the asynchronous implementation is also robust to delays and communication failures. We finally complement the analytical results with some numerical simulations, comparing the proposed strategy with other algorithms which have been recently proposed in the literature.
机译:在本文中,我们解决了仅通过本地通信和有限的复杂度,独立于网络规模和拓扑结构,从与邻居之间的相对嘈杂矢量距离中最佳估计网络中每个代理位置的问题。我们提出了一种使用本地内存变量的基于共识的算法,该算法允许异步实现,在简单的确定性和随机化通信协议下,已保证指数收敛到最优解决方案,并且需要最少的数据包传输。然后,在随机情况下,我们根据估计误差研究收敛速度,并认为可以用来求均方收敛速度的上限和下限。特别是,我们显示出对于规则图(例如Cayley,Ramanujan和完整图),期望的收敛速度在网络大小方面具有与无记忆异步共识算法相同的渐近退化。此外,我们证明了异步实现对于延迟和通信失败也很健壮。最后,通过一些数值模拟对分析结果进行补充,将所提出的策略与文献中最近提出的其他算法进行比较。

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