Consistency Error Modeling-based Localization in Sensor Networks

Jessica Feng, M. Potkonjak
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引用次数: 2

Abstract

We have developed a new error modeling and optimization-based localization approach for sensor networks in presence of distance measurement noise. The approach is solely based on the concept of consistency. The error models are constructed using non-parametric statistical techniques; they do not only indicate the most likely error, but also provide the likelihood distribution of particular errors occurring. The models are evaluated using the learn-and-test techniques and serve as the objective functions for the task of localization. The localization problem is formulated as task of maximizing consistency between measurements and calculated distances. We evaluated the approach in (i) both GPS-based and GPS-less scenarios; (ii) 1-D, 2-D and 3-D spaces, on sets of acoustic ranging-based distance measurements recorded by deployed sensor networks. The experimental evaluation indicates that localization of only a few centimeters is consistently achieved when the average and median distance measurement errors are more than a meter, even when the nodes have only a few distance measurements. The relative performance in terms of location accuracy compare favorably with respect to several state-of-the-art localization approaches. Finally, several insightful observations about the required conditions for accurate localization are deduced by analyzing the experimental results
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基于一致性误差建模的传感器网络定位
我们开发了一种新的误差建模和基于优化的定位方法,用于存在距离测量噪声的传感器网络。这种方法完全基于一致性的概念。采用非参数统计技术建立误差模型;它们不仅表明最可能发生的错误,而且还提供特定错误发生的可能性分布。使用学习-测试技术对模型进行评估,并作为定位任务的目标函数。定位问题被表述为最大化测量值和计算距离之间的一致性的任务。我们在(i)基于gps和无gps两种情况下评估了该方法;(ii) 1-D, 2-D和3-D空间,基于部署的传感器网络记录的基于声学测距的距离测量集。实验评估表明,当平均距离测量误差和中位数距离测量误差大于1米时,即使节点只有很少的距离测量,也能始终实现仅几厘米的定位。在定位精度方面的相对性能优于几种最先进的定位方法。最后,通过对实验结果的分析,得出了精确定位所需条件的几点见解
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