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Formation Detection with Wireless Sensor Networks

机译:无线传感器网络的地层检测

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摘要

We consider the problem of detecting the formation of a set of wireless sensor nodes based on the pairwise measurements of signal strength corresponding to all transmitter/receiver pairs. We assume that formations take values in a discrete set and develop a composite hypothesis testing approach which uses a Generalized Likelihood Test (GLT) as the decision rule. The GLT distinguishes between a set of probability density function (pdf) families constructed using a custom pdf interpolation technique. The GLT is compared with the simple Likelihood Test (LT). We also adapt one prevalent supervised learning approach, Multiple Support Vector Machines (MSVMs), and compare it with our probabilistic methods. Due to the highly variant measurements from the wireless sensor nodes, and these methods' different adaptability to multiple observations, our analysis and experimental results suggest that GLT is more accurate and suitable for formation detection. The formation detection problem has interesting applications in posture detection with Wireless Body Area Networks (WBANs), which is extremely useful in health monitoring and rehabilitation. Another valuable application we explore concerns autonomous robot systems.
机译:我们考虑基于对应于所有发射器/接收器对的信号强度的成对测量来检测一组无线传感器节点的形成的问题。我们假设编队采用离散集合中的值,并开发一种使用通用似然检验(GLT)作为决策规则的复合假设检验方法。 GLT区分了使用自定义pdf插值技术构造的一组概率密度函数(pdf)系列。将GLT与简单的似然测试(LT)进行比较。我们还采用了一种流行的监督学习方法,即多支持向量机(MSVM),并将其与我们的概率方法进行了比较。由于来自无线传感器节点的测量值变化很大,并且这些方法对多种观测的适应性不同,因此我们的分析和实验结果表明,GLT更准确且适合于地层探测。地层检测问题在无线人体局域网(WBAN)的姿态检测中具有有趣的应用,在健康监测和康复中非常有用。我们探索的另一个有价值的应用涉及自主机器人系统。

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