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Consensus-based distributed particle filtering algorithms for cooperative blind equalization in receiver networks

机译:基于共识的分布式粒子滤波算法在接收机网络中的协同盲均衡

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We describe in this paper novel consensus-based distributed particle filtering algorithms which are applied to cooperative blind equalization of frequency-selective channels in a network with one transmitter and multiple receivers. The proposed algorithms employ parallel consensus averaging iterations to evaluate the product of some node-dependent quantities across the receiver network, thus eliminating the need for message broadcasts beyond each receiver's local neighborhood. Additionally, parallel minimum consensus iterations are used to assess the convergence of the quantized consensus averages and ensure accordingly the coherence of particle sets across the different network nodes. We verify via computer simulations that the consensus-based schemes exhibit a small performance gap compared to both centralized and communication-intensive broadcast solutions.
机译:我们在本文中描述了新颖的基于共识的分布式粒子滤波算法,该算法应用于具有一个发送器和多个接收器的网络中频率选择信道的协作盲均衡。所提出的算法采用并行共识平均迭代来评估整个接收器网络中一些与节点有关的数量的乘积,从而消除了在每个接收器本地附近传播消息的需求。另外,并行的最小共识迭代用于评估量化共识平均值的收敛性,并相应地确保跨不同网络节点的粒子集的相干性。我们通过计算机仿真验证,与集中式和通信密集型广播解决方案相比,基于共识的方案表现出较小的性能差距。

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