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首页> 外文期刊>Signal and Information Processing over Networks, IEEE Transactions on >Distributed Constrained Recursive Nonlinear Least-Squares Estimation: Algorithms and Asymptotics
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Distributed Constrained Recursive Nonlinear Least-Squares Estimation: Algorithms and Asymptotics

机译:分布式约束递归非线性最小二乘估计:算法和渐近性

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This paper focuses on recursive nonlinear least-squares parameter estimation in multiagent networks, where the individual agents observe sequentially over time an independent and identically distributed time-series consisting of a nonlinear function of the true but unknown parameter corrupted by noise. A distributed recursive estimator of the consensus+innovations type, namely CIWNLS , is proposed, in which the agents update their parameter estimates at each observation sampling epoch in a collaborative way by simultaneously processing the latest locally sensed information (innovations) and the parameter estimates from other agents (consensus) in the local neighborhood conforming to a prespecified interagent communication topology. Under rather weak conditions on the connectivity of the interagent communication and a global observability criterion, it is shown that, at every network agent, CIWNLS leads to consistent parameter estimates. Furthermore, under standard smoothness assumptions on the local observation functions, the distributed estimator is shown to yield order-optimal convergence rates, i.e., as far as the order of pathwise convergence is concerned, the local parameter estimates at each agent are as good as the optimal centralized nonlinear least-squares estimator that requires access to all the observations across all the agents at all times. To benchmark the performance of the CIWNLS estimator with that of the centralized nonlinear least-squares estimator, the asymptotic normality of the estimate sequence is established, and the asymptotic covariance of the distributed estimator is evaluated.
机译:本文着重于多主体网络中的递归非线性最小二乘参数估计,其中各个主体随时间顺序观察一个独立且分布均匀的时间序列,该时间序列由被噪声破坏的真实但未知参数的非线性函数组成。提出了一种共识+创新类型的分布式递归估计器,即CIWNLS,其中,代理通过协作方式,通过同时处理最新的本地感知信息(创新)和来自本地邻居中的其他代理(共识)符合预先指定的代理间通信拓扑。结果表明,在代理间通信的连通性和全局可观察性标准的条件很弱的条件下,在每个网络代理中,CIWNLS会导致一致的参数估计。此外,在局部观测函数的标准平滑度假设下,分布式估计量显示出阶次最优收敛速度,即,就路径收敛的阶数而言,每个代理的局部参数估计与最佳的集中式非线性最小二乘估计器,需要始终访问所有代理上的所有观察值。为了将CIWNLS估计器的性能与集中式非线性最小二乘估计器的性能进行基准比较,建立了估计序列的渐近正态性,并评估了分布估计器的渐近协方差。

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