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Source-location privacy full protection in wireless sensor networks

机译:源 - 位置隐私在无线传感器网络中全面保护

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In many scenarios, the locations of monitored targets need to be reported by source nodes, but should remain anonymous in wireless sensor networks. Source-location privacy protection is an important research topic. Many schemes have been designed based on different adversarial models. In this paper, a scheme named Source-location Privacy Full Protection (SPFP) is proposed. We consider a more practical adversarial model a smart adversary which is a combination of global and local models. To defend against the new adversary, first, we design a lightweight message sharing scheme that is based on congruence equations. Second, each message is mapped to a set of shares. The short lengths of the shares enable them to be processed and transmitted in an energy-efficient manner. The correctness and security of the scheme are proved in theorems. In addition, the proposed message sharing scheme can tolerate the unreliability of the sensor nodes and provides a more reliable data transmission mechanism for networks. Third, the source node constructs a cloud around itself based on the shares and dummy packages to hide its location. The radio actions of the nodes in the cloud are carefully arranged to conceal the real shares from the adversaries and render the nodes in the cloud statistically indistinguishable. Last, a random routing algorithm is seamlessly integrated into our scheme to deliver the real shares from the fake source nodes to the sink node, where the original message is reconstructed based on the received shares. The simulation results illustrate that our scheme can provide adequate protection of source-location privacy with a slight increase in energy consumption. (C) 2018 Elsevier Inc. All rights reserved.
机译:在许多情况下,需要通过源节点报告受监控目标的位置,但应在无线传感器网络中保持匿名。源地点隐私保护是一个重要的研究主题。基于不同的对抗模型设计了许多方案。本文提出了一种名为源地点隐私全保护(SPFP)的方案。我们考虑一个更实际的对手模型是一个智能对手,它是全球和本地模型的组合。为了捍卫新的对手,首先,我们设计了一种基于同一条等程的轻量级信息共享方案。其次,每条消息都映射到一组共享。股票的短长度使其能够以节能的方式处理和传输。证明了该方案的正确性和安全性。此外,所提出的消息共享方案可以容忍传感器节点的不可靠性,并为网络提供更可靠的数据传输机制。第三,源节点根据股份和伪装包构建云端,以隐藏其位置。云中节点的无线电动作被仔细安排,以隐藏来自对手的真实份额,并使云中的节点统计上无法区分。最后,随机路由算法无缝地集成到我们的方案中,以将真实股份从伪源节点传送到宿节点,其中基于所接收的共享重建原始消息。仿真结果表明,我们的方案可以提供足够的源地隐私保护,能耗略有增加。 (c)2018年Elsevier Inc.保留所有权利。

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