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首页> 外文期刊>Internet of Things Journal, IEEE >Accurate 3-D Localization of Selected Smart Objects in Optical Internet of Underwater Things
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Accurate 3-D Localization of Selected Smart Objects in Optical Internet of Underwater Things

机译:精确的3-D定位在水下的光学互联网中所选智能对象

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摘要

Localization is a fundamental task for the optical Internet of Underwater Things (O-IoUT) to enable various applications, such as data tagging, routing, navigation, and maintaining link connectivity. The accuracy of the localization techniques for O-IoUT greatly relies on the location of the anchors. Therefore, recently, the localization techniques for O-IoUT which optimize the anchor's location have been proposed. However, the optimization of the anchors' location for all the smart objects in the network is not a useful solution. Indeed, in a network of densely populated smart objects, the data collected by some sensors are more valuable than the data collected from other sensors. Therefore, in this article, we propose a 3-D accurate localization technique by optimizing the anchor's location for a set of smart objects. Spectral graph partitioning is used to select the set of valuable sensors. The numerical results show that the proposed technique of optimizing anchor's location for a set of selected sensors provides a better location accuracy.
机译:本地化是对水下事物(O-IOUT)的光学互联网的基本任务,以实现各种应用,例如数据标记,路由,导航和维护链路连接。 O-IOUT的定位技术的准确性大大依赖于锚点的位置。因此,最近,已经提出了优化锚定位置的O-IOUT的本地化技术。但是,网络中所有智能对象的锚点位置的优化不是一个有用的解决方案。实际上,在一个密集地填充的智能对象的网络中,一些传感器收集的数据比从其他传感器收集的数据更有价值。因此,在本文中,我们通过优化一组智能对象的锚点位置来提出三维准确的本地化技术。光谱图分区用于选择一组有价值的传感器。数值结果表明,所提出的优化一组选定传感器的锚定位置的技术提供了更好的位置精度。

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