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EM-based channel estimation from crowd-sourced RSSI samples corrupted by noise and interference

机译:从受噪声和干扰破坏的众包RSSI样本中基于EM的信道估计

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We propose a method for estimating channel parameters from RSSI measurements and the lost packet count, which can work in the presence of losses due to both interference and signal attenuation below the noise floor. This is especially important in the wireless networks, such as vehicular, where propagation model changes with the density of nodes. The method is based on Stochastic Expectation Maximization, where the received data is modeled as a mixture of distributions (no/low interference and strong interference), incomplete (censored) due to packet losses. The PDFs in the mixture are log-Gamma, according to the commonly accepted model for wireless signal and interference power expressed in dBm. This approach leverages the loss count as additional information, hence outperforming maximum likelihood estimation, which does not use this information (ML-), for a small number of received RSSI samples. Hence, it allows inexpensive on-line channel estimation from ad-hoc collected data. The method also outperforms ML- on uncensored data mixtures, as ML- assumes that samples are from a single-mode PDF.
机译:我们提出了一种根据RSSI测量和丢失数据包计数来估计信道参数的方法,该方法可以在由于干扰和低于本底噪声而产生的信号衰减导致的丢失情况下工作。这在诸如车载之类的无线网络中尤其重要,在无线网络中,传播模型随节点的密度而变化。该方法基于随机期望最大化,其中将接收到的数据建模为分布(无/低干扰和强干扰),由于数据包丢失而导致的不完整(经过审查)的混合。根据普遍接受的无线信号和干扰功率(以dBm为单位)模型,混合物中的PDF为对数伽马。这种方法利用损失计数作为附加信息,因此对于少量接收到的RSSI样本,其性能优于最大似然估计,后者不使用此信息(ML-)。因此,它允许根据临时收集的数据进行廉价的在线信道估计。由于ML-假设样本来自单模PDF,因此该方法也优于ML-的未经审查的数据混合。

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