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Non-stationary sparse system identification over adaptive sensor networks with cyclic cooperation

机译:循环合作的自适应传感器网络非平稳稀疏系统辨识

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in this paper we studied the performance of several distributed adaptive algorithms for non-stationary sparse system identification. Non-stationarity is a feature that is introduced to adaptive networks recently and makes the performance of them degraded. The performance analyses are carried out with the steady-state mean square deviation (MSD) criterion of adaptive algorithms. Some sparsity aware algorithms are considered in this paper which tested in non-stationary systems for the first time. It is presented and proved that the performance of incremental least means square/forth (ILMS/F) algorithm surpasses all other algorithms as non-stationarity grows. We hope that this work will inspire researchers to look for other advanced algorithms against systems that are both non-stationary and sparse.
机译:在本文中,我们研究了几种用于非平稳稀疏系统识别的分布式自适应算法的性能。非平稳性是最近引入到自适应网络中的一项功能,它会使它们的性能下降。使用自适应算法的稳态均方差(MSD)准则进行性能分析。本文考虑了一些稀疏感知算法,该算法首次在非平稳系统中进行了测试。提出并证明,随着非平稳性的增长,最小均方平方(ILMS / F)算法的性能优于所有其他算法。我们希望这项工作能激发研究人员针对非平稳且稀疏的系统寻找其他高级算法。

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