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Incremental LLE for Localization in Sensor Networks

机译:用于传感器网络本地化的增量式LLE

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摘要

Received signal strength indicator (RSSI) gives a coarse initial measure of the inter-node distance at a low cost without the need for additional equipment or complexity. This necessitates the need for a mechanism to obtain accurate node locations from the noisy RSSI distance estimates. In this paper, an iterative nonlinear manifold learning technique, incremental locally linear embedding (ILLE), has been proposed for accurate node localization. The ILLE considers the one-hop neighborhood around the anchor nodes, as a reference structure. This structure grows iteratively to localize all the remaining sensor nodes in the network. Simultaneous localization mechanism further reduces the computational complexity of localization. Experimental results show that the ILLE is able to localize the nodes accurately in both normal and simultaneous scenarios. The ILLE is found to have higher accuracy in the typical scenario as compared with the simultaneous scenario. Results also indicate that the ILLE is able to localize sensor nodes with an increased accuracy of around 12.36% as compared with the centralized LLE and also outperformed other existing similar localization techniques.
机译:接收信号强度指示器(RSSI)以低成本提供了节点间距离的粗略初始度量,而无需其他设备或复杂性。这就需要一种从嘈杂的RSSI距离估计中获得准确的节点位置的机制。本文提出了一种迭代非线性流形学习技术,即增量局部线性嵌入(ILLE),以实现精确的节点定位。 ILLE将锚节点周围的一跳邻域视为参考结构。该结构不断地增长以定位网络中所有其余的传感器节点。同时定位机制进一步降低了定位的计算复杂度。实验结果表明,ILLE能够在正常和同时发生的情况下准确定位节点。发现ILLE在典型方案中比同时方案具有更高的准确性。结果还表明,与集中式LLE相比,ILLE能够以大约12.36%的提高的精度定位传感器节点,并且性能优于其他现有的类似定位技术。

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