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Distributed Recursive Least-Squares: Stability and Performance Analysis

机译:分布式递归最小二乘:稳定性和性能分析

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The recursive least-squares (RLS) algorithm has well-documented merits for reducing complexity and storage requirements, when it comes to online estimation of stationary signals as well as for tracking slowly-varying nonstationary processes. In this paper, a distributed recursive least-squares (D-RLS) algorithm is developed for cooperative estimation using ad hoc wireless sensor networks. Distributed iterations are obtained by minimizing a separable reformulation of the exponentially-weighted least-squares cost, using the alternating-minimization algorithm. Sensors carry out reduced-complexity tasks locally, and exchange messages with one-hop neighbors to consent on the network-wide estimates adaptively. A steady-state mean-square error (MSE) performance analysis of D-RLS is conducted, by studying a stochastically-driven ‘averaged’ system that approximates the D-RLS dynamics asymptotically in time. For sensor observations that are linearly related to the time-invariant parameter vector sought, the simplifying independence setting assumptions facilitate deriving accurate closed-form expressions for the MSE steady-state values. The problems of mean- and MSE-sense stability of D-RLS are also investigated, and easily-checkable sufficient conditions are derived under which a steady-state is attained. Without resorting to diminishing step-sizes which compromise the tracking ability of D-RLS, stability ensures that per sensor estimates hover inside a ball of finite radius centered at the true parameter vector, with high-probability, even when inter-sensor communication links are noisy. Interestingly, computer simulations demonstrate that the theoretical findings are accurate also in the pragmatic settings whereby sensors acquire temporally-correlated data.
机译:递归最小二乘(RLS)算法在减少静态复杂度和存储要求方面具有公认的优点,可用于在线估计固定信号以及跟踪缓慢变化的非平稳过程。本文提出了一种分布式递归最小二乘(D-RLS)算法,用于使用ad hoc无线传感器网络进行协同估计。使用交替最小化算法,通过最小化指数加权的最小二乘成本的可重整形式来获得分布式迭代。传感器在本地执行降低复杂性的任务,并与一跳邻居交换消息以自适应地同意网络范围的估计。通过研究随机驱动的“平均”系统对D-RLS动态进行时间渐近逼近,对D-RLS进行了稳态均方误差(MSE)性能分析。对于与寻求的时不变参数向量线性相关的传感器观测,简化的独立性设置假设有助于推导MSE稳态值的精确闭合形式表达式。还研究了D-RLS的均值和MSE感官稳定性问题,并得出了易于检查的充分条件,在此条件下可获得稳态。在不减小递减步长大小而损害D-RLS跟踪能力的情况下,稳定性确保即使每个传感器之间的通信链路都存在时,每个传感器也可以高概率地将每个传感器的估计值悬停在以真实参数矢量为中心的有限半径的球内。吵。有趣的是,计算机仿真表明,理论发现在实用的环境下也是准确的,传感器可以通过这些环境来获取时间相关的数据。

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