首页> 外文会议>Information Processing in Sensor Networks, 2006. IPSN 2006. The Fifth International Conference on >A space-time diffusion scheme for peer-to-peer least-squares estimation
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A space-time diffusion scheme for peer-to-peer least-squares estimation

机译:对等最小二乘估计的时空扩散方案

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We consider a sensor network in which each sensor takes measurements, at various times, of some unknown parameters, corrupted by independent Gaussian noises. Each node can take a finite or infinite number of measurements, at arbitrary times (i.e., asynchronously). We propose a space-time diffusion scheme that relies only on peer-to-peer communication, and allows every node to asymptotically compute the global maximum-likelihood estimate of the unknown parameters. At each iteration, information is diffused across the network by a temporal update step and a spatial update step. Both steps update each node's state by a weighted average of its current value and locally available data: new measurements for the time update, and neighbors' data for the spatial update. At any time, any node can compute a local weighted least-squares estimate of the unknown parameters, which converges to the global maximum-likelihood solution. With an infinite number of measurements, these estimates converge to the true parameter values in the sense of mean-square convergence. We show that this scheme is robust to unreliable communication links, and works in a network with dynamically changing topology.
机译:我们考虑一个传感器网络,其中每个传感器在不同时间对一些未知参数进行测量,这些参数会受到独立的高斯噪声的破坏。每个节点可以在任意时间(即异步)进行有限或无限数量的测量。我们提出了一种时空扩散方案,该方案仅依赖对等通信,并允许每个节点渐近计算未知参数的全局最大似然估计。在每次迭代中,信息通过时间更新步骤和空间更新步骤在网络上分散。这两个步骤均通过其当前值和本地可用数据的加权平均值来更新每个节点的状态:用于时间更新的新度量,以及用于空间更新的邻居数据。在任何时候,任何节点都可以计算未知参数的局部加权最小二乘估计,从而收敛到全局最大似然解。通过无限次的测量,这些均值在均方收敛的意义上收敛到真实的参数值。我们证明了该方案对于不可靠的通信链路具有鲁棒性,并且可以在拓扑结构动态变化的网络中工作。

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