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Localization algorithm in wireless sensor networks based on semi-supervised manifold learning and its application

机译:基于半监督流形学习的无线传感器网络定位算法及其应用

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摘要

Localization of mobile nodes in wireless sensor network gets more and more important, because many applications need to locate the source of incoming measurements as precise as possible. Many previous approaches to the location-estimation problem need know the theories and experiential signal propagation model and collect a large number of labeled samples. So, these approaches are coarse localization because of the inaccurate model, and to obtain such data requires great effort. In this paper, a semi-supervised manifold learning is used to estimate the locations of mobile nodes in a wireless sensor network. The algorithm is used to compute a subspace mapping function between the signal space and the physical space by using a small amount of labeled data and a large amount of unlabeled data. This mapping function can be used online to determine the location of mobile nodes in a sensor network based on the signals received. We use independent development nodes to setup the network in metallurgical industry environment, outdoor and indoor. Experimental results show that we can achieve a higher accuracy with much less calibration effort as compared with RADAR localization systems.
机译:无线传感器网络中移动节点的定位变得越来越重要,因为许多应用程序需要尽可能精确地定位输入测量的源。解决位置估计问题的许多先前方法都需要了解理论和经验性信号传播模型,并收集大量标记样本。因此,由于模型不准确,这些方法是粗略的定位,要获得此类数据需要付出很大的努力。在本文中,使用半监督流形学习来估计无线传感器网络中移动节点的位置。该算法用于通过使用少量标记数据和大量未标记数据来计算信号空间和物理空间之间的子空间映射函数。可以在线使用此映射功能,根据收到的信号确定移动节点在传感器网络中的位置。我们使用独立的开发节点在室外和室内的冶金行业环境中建立网络。实验结果表明,与RADAR定位系统相比,我们可以用更少的校准工作来获得更高的精度。

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