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Nonparametric belief propagation for self-localization of sensor networks

机译:用于传感器网络自我定位的非参数置信传播

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Automatic self-localization is a critical need for the effective use of ad hoc sensor networks in military or civilian applications. In general, self-localization involves the combination of absolute location information (e.g., from a global positioning system) with relative calibration information (e.g., distance measurements between sensors) over regions of the network. Furthermore, it is generally desirable to distribute the computational burden across the network and minimize the amount of intersensor communication. We demonstrate that the information used for sensor localization is fundamentally local with regard to the network topology and use this observation to reformulate the problem within a graphical model framework. We then present and demonstrate the utility of nonparametric belief propagation (NBP), a recent generalization of particle filtering, for both estimating sensor locations and representing location uncertainties. NBP has the advantage that it is easily implemented in a distributed fashion, admits a wide variety of statistical models, and can represent multimodal uncertainty. Using simulations of small to moderately sized sensor networks, we show that NBP may be made robust to outlier measurement errors by a simple model augmentation, and that judicious message construction can result in better estimates. Furthermore, we provide an analysis of NBP's communications requirements, showing that typically only a few messages per sensor are required, and that even low bit-rate approximations of these messages can be used with little or no performance impact.
机译:自动自我定位是在军事或民用应用中有效使用ad hoc传感器网络的关键需求。通常,自定位涉及在网络区域上的绝对位置信息(例如,来自全球定位系统)与相对校准信息(例如,传感器之间的距离测量)的组合。此外,通常期望在整个网络上分配计算负担并使传感器之间的通信量最小化。我们证明了用于传感器定位的信息对于网络拓扑而言基本上是本地的,并使用此观察结果在图形模型框架内重新提出问题。然后,我们介绍并证明了非参数置信传播(NBP)(最近进行的粒子滤波)的实用性,它既用于估计传感器位置,又用于表示位置不确定性。 NBP的优点是可以轻松地以分布式方式实施,可以接受多种统计模型,并且可以表示多峰不确定性。通过对小型到中型传感器网络的仿真,我们表明可以通过简单的模型增强使NBP对异常的测量误差具有鲁棒性,并且明智的消息构造可以带来更好的估计。此外,我们对NBP的通信要求进行了分析,结果表明每个传感器通常只需要几条消息,并且即使这些消息的比特率较低,也可以使用而对性能的影响很小或没有。

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