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RSS based Localization of Sensor Nodes by Learning Movement Model

机译:通过学习运动模型基于RSS的传感器节点定位

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摘要

Node Localization in Wireless Sensor Networks (WSNs) is widely used in many applications. Localization uses particle filter that provides higher network traffic due to continuous updates, which leads to high power consumption. The article presents a range-based localization for Mobile Nodes (MN) that builds up on Hidden Markov Model (HMM) algorithm. The proposed work is based on MN and the state is hidden in the Received Signal Strength (RSS) for outdoor applications. Hidden states uses explicit knowledge of the observation probability obtained from two-ray ground propagation model. HMM correlates these observations to predict the hidden states. The state transition and the observation of HMM help to estimate the most probable state sequence and the last state obtained is the predicted location. This work uses various mobility models for the movement of nodes. Varying the transmission range effectively controls the network connectivity. Results from simulation study have revealed the possible reduction of network traffic and power consumption with less estimation error. In addition, this work provides an efficient confidence interval for the estimation error.
机译:无线传感器网络(WSN)中的节点本地化已广泛用于许多应用程序中。本地化使用的粒子过滤器由于不断更新而提供了更高的网络流量,从而导致高功耗。本文介绍了基于隐马尔可夫模型(HMM)算法的移动节点(MN)基于范围的本地化。拟议的工作是基于MN的,该状态隐藏在户外应用的接收信号强度(RSS)中。隐藏状态使用从两射线地面传播模型获得的观测概率的显式知识。 HMM将这些观察结果关联起来以预测隐藏状态。状态转换和对HMM的观察有助于估计最可能的状态序列,而最后获得的状态是预测位置。这项工作使用各种移动性模型来移动节点。改变传输范围可以有效地控制网络连接。仿真研究的结果表明,在减少估计误差的情况下,可以减少网络流量和功耗。此外,这项工作为估计误差提供了有效的置信区间。

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