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On Learning for Fusion over Fading Channels in Wireless Sensor Networks

机译:关于在无线传感器网络中融合融合的研究

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In order to derive optimal/suboptimal fusion rules, in general, it is assumed that statistical properties of sensors' decisions are known to a fusion center in distributed detection for wireless sensor networks. However, if sensors are deployed to unknown environments, these statistical properties may not be available in advance and should be estimated by the fusion center. To address this problem, in this paper, we study unsupervised learning to estimate the values of the parameters that characterize statistical properties for wireless sensor networks employing a bandwidth efficient multiple access scheme, e.g., the type-based multiple access (TBMA), over Rayleigh fading channels (which would be realistic channels when there is no line-of-sight between sensors and fusion center). Through simulations, we can show that unsupervised learning can be used in deriving decision rules at the fusion center from decisions transmitted by sensors over wireless fading channels.
机译:为了获得最佳/次优融合规则,通常,假设传感器决策的统计特性是用于无线传感器网络的分布式检测中的融合中心。 但是,如果传感器部署到未知环境,则可能预先提供这些统计特性,并且应由融合中心估计。 为了解决这个问题,在本文中,我们研究了无监督的学习,以估计特征在于使用带宽有效多址方案的无线传感器网络的统计特性的参数的值,例如,基于类型的多址(TBMA),rayleigh 当传感器和融合中心之间没有视线时,衰落频道(这是现实的渠道)。 通过仿真,我们可以表明,可以在融合中心的决策规则从无线衰落通道传输的决策中导出融合中心的决策规则。

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