Decentralized fault tolerant source localization without sensor parameters in wireless sensor networks

IF 1 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Akram Hussain, Yuan Luo
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引用次数: 0

Abstract

In this paper, we study the source (event) localization problem in decentralized wireless sensor networks (WSNs) under faulty sensor nodes without knowledge of the sensor parameters. Source localization has many applications, such as localizing WiFi hotspots and mobile users. Some works in the literature localize the source by utilizing the knowledge or estimates of the fault probability of each sensor node or the region of influence of the source. However, this paper proposes two approaches: the hitting set and feature selection for estimating the source location without any knowledge of the sensor parameters under faulty sensor nodes in WSN. The proposed approaches provide better or comparable source localization performances. For the hitting set approach, we also derive a lower bound on the required number of samples. In addition, we extend the proposed methods for localizing multiple sources. Finally, we provide extensive simulations to illustrate the performances of the proposed methods against the centroid, maximum likelihood (ML), fault-tolerant ML (FTML), and subtract on negative add on positive (SNAP) estimators. The proposed approaches significantly outperform the centroid and maximum likelihood estimators for faulty sensor nodes while providing comparable or better performance to FTML or SNAP algorithm. In addition, we use real-world WiFi data set to localize the source in comparison to the support vector machine based estimator in the literature, where the proposed methods outperformed the estimator.

无线传感器网络中无需传感器参数的分散容错源定位
本文研究了分散式无线传感器网络(WSN)中,在不知道传感器参数的情况下,传感器节点出现故障时的源(事件)定位问题。源定位有很多应用,如定位 WiFi 热点和移动用户。文献中的一些作品通过利用每个传感器节点的故障概率或源影响区域的知识或估计值来定位源。然而,本文提出了两种方法:命中集和特征选择,用于在不了解 WSN 中故障传感器节点的传感器参数的情况下估计信号源位置。这两种方法都能提供更好或相当的源定位性能。对于命中集方法,我们还推导出了所需样本数量的下限。此外,我们还扩展了建议的多源定位方法。最后,我们提供了大量仿真,说明了所提方法与中心点、最大似然 (ML)、容错 ML (FTML) 和正负相减 (SNAP) 预估器的性能对比。对于故障传感器节点,所提出的方法明显优于中心点和最大似然估计法,同时与 FTML 或 SNAP 算法的性能相当或更好。此外,我们使用真实世界的 WiFi 数据集来定位信号源,与文献中基于支持向量机的估计器进行比较,发现所提出的方法优于该估计器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Performance Evaluation
Performance Evaluation 工程技术-计算机:理论方法
CiteScore
3.10
自引率
0.00%
发文量
20
审稿时长
24 days
期刊介绍: Performance Evaluation functions as a leading journal in the area of modeling, measurement, and evaluation of performance aspects of computing and communication systems. As such, it aims to present a balanced and complete view of the entire Performance Evaluation profession. Hence, the journal is interested in papers that focus on one or more of the following dimensions: -Define new performance evaluation tools, including measurement and monitoring tools as well as modeling and analytic techniques -Provide new insights into the performance of computing and communication systems -Introduce new application areas where performance evaluation tools can play an important role and creative new uses for performance evaluation tools. More specifically, common application areas of interest include the performance of: -Resource allocation and control methods and algorithms (e.g. routing and flow control in networks, bandwidth allocation, processor scheduling, memory management) -System architecture, design and implementation -Cognitive radio -VANETs -Social networks and media -Energy efficient ICT -Energy harvesting -Data centers -Data centric networks -System reliability -System tuning and capacity planning -Wireless and sensor networks -Autonomic and self-organizing systems -Embedded systems -Network science
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