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Location Verification for Emerging Wireless Vehicular Networks

机译:新兴无线车辆网络的位置验证

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The work reported here utilizes the best aspects of information theory and deep-learning concepts so as to provide, for the first time, a solution for a real-world location verification system (LVS) in the context of vehicular networks. it is well established that global positioning system coordinates supplied by vehicles will be a vital component of such emerging networks. This supplied location information, if erroneous and not verified, can seriously degrade the overall system performance and lead to significant safety issues. A number of location verification protocols and systems have been developed to address this important problem but all have operational constraints and performance limitations due to their requirement for ideal static channel conditions and assumed threat models. In this article, we remove such limitations by designing a neural-network-based LVS (NN-LVS) that can accommodate a priori unknown channel conditions and unknown threat models. Under most channel conditions, the NN-LVS shows a performance improvement of 50%, or more, relative to other LVSs. We also derive a new information-theoretic bound on the total error for an LVS and show how this new bound allows for a useful tradeoff in learning-time versus verification-performance for the NN-LVS. We demonstrate an improved performance for the NN-LVS within the context of vehicular networks using time of arrival measurements of the vehicles' transmitted signals measured at multiple verifying base stations. The work reported here, we believe, paves the way to the actual deployment in real-world conditions of LVSs for emerging vehicular networks.
机译:这里报告的工作利用信息理论和深度学习概念的最佳方面,以便首次提供真实世界定位验证系统(LVS)的解决方案。很好地确定,车辆提供的全球定位系统坐标将成为这种新兴网络的重要组成部分。此提供的位置信息如果错误且未验证,可以严重降低整体系统性能并导致严重的安全问题。已经开发了许多位置验证协议和系统来解决这一重要问题,但由于他们对理想静态信道条件和假设威胁模型的要求,所有这些都具有运行限制和性能限制。在本文中,我们通过设计基于神经网络的LVS(NN-LVS)来消除这些限制,该限制可以容纳先验未知的信道条件和未知的威胁模型。在大多数信道条件下,NN-LV相对于其他LVSS显示50%或更多的性能提高。我们还在LVS的总误差中获得了新的信息 - 理论界限,并展示了该新绑定如何在NN-LVS的学习时间与验证性能方面允许有用的权衡。我们在使用在多个验证基站上测量的车辆的透射信号的到达时间测量,我们在车辆网络的背景下展示了NN-LV的性能。我们认为,在这里报告的工作,为新出现的车辆网络的LVSS实际情况下铺平了途径。

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