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Selection of Sensors for Efficient Transmitter Localization

机译:选择有效发射器本地化的传感器

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We address the problem of localizing an (illegal) transmitter using a distributed set of sensors. Our focus is on developing techniques that perform the transmitter localization in an efficient manner, wherein the efficiency is defined in terms of the number of sensors used to localize. Localization of illegal transmitters is an important problem which arises in many important applications, e.g., in patrolling of shared spectrum systems for any unauthorized users. Localization of transmitters is generally done based on observations from a deployed set of sensors with limited resources, thus it is imperative to design techniques that minimize the sensors' energy resources. In this paper, we design greedy approximation algorithms for the optimization problem of selecting a given number of sensors in order to maximize an appropriately defined objective function of localization accuracy. The obvious greedy algorithm delivers a constant-factor approximation only for the special case of two hypotheses (potential locations). For the general case of multiple hypotheses, we design a greedy algorithm based on an appropriate auxiliary objective function - and show that it delivers a provably approximate solution for the general case. We develop techniques to significantly reduce the time complexity of the designed algorithms, by incorporating certain observations and reasonable assumptions. We evaluate our techniques over multiple simulation platforms, including an indoor as well as an outdoor testbed, and demonstrate the effectiveness of our designed techniques - our techniques easily outperform prior and other approaches by up to 50-60% in large-scale simulations.
机译:我们解决了使用分布式传感器定位(非法)发射机的问题。我们的重点是开发以有效方式执行发射机本地化的技术,其中效率是根据用于本地化的传感器的数量来定义。非法发射机的本地化是许多重要应用中出现的重要问题,例如,在任何未经授权的用户的共享频谱系统巡逻中。发射机的定位通常是基于从有限的资源的部署传感器组的观察完成的,因此它必须设计最小化传感器能量资源的技术。在本文中,我们设计了贪婪近似算法,用于选择给定数量的传感器的优化问题,以便最大化本地化精度的适当定义的目标函数。显而易见的贪婪算法仅为两个假设(潜在位置)的特殊情况提供恒因子近似。对于多个假设的一般情况,我们基于适当的辅助目标函数设计一种贪婪算法 - 并表明它为常规情况提供了可提供的近似解。我们通过结合某些观察和合理的假设来开发技术以显着降低设计算法的时间复杂性。我们评估了多个仿真平台的技术,包括室内以及室外测试平台,并展示了我们设计技术的有效性 - 我们的技术在大规模模拟中可以在高达50-60%的情况下实现高达50-60%的技术。

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