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Adaptive identification of sparse systems with variable sparsity

机译:稀疏性稀疏系统的自适应辨识

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In the context of system identification, it is shown that sometimes the level of sparseness in the system impulse response can vary greatly depending on the time-varying nature of the system. When the response is strongly sparse, convergence of the conventional approach such as least mean square (LMS) is poor. The recently proposed, compressive sensing based sparsity-aware ZA-LMS algorithm performs satisfactorily in strongly sparse environments, but is shown to perform worse than the conventional LMS when sparseness of the impulse response reduces. We propose an algorithm which works well both in sparse and non-sparse circumstances and adapts dynamically to the level of sparseness, using a convex combination based approach. The proposed algorithm is supported by simulation results that show its robustness against variable sparsity.
机译:在系统识别的情况下,表明系统脉冲响应中的稀疏程度有时会根据系统随时间变化的性质而变化很大。当响应非常稀疏时,传统方法(例如最小均方(LMS))的收敛性很差。最近提出的基于压缩感知的稀疏感知ZA-LMS算法在强稀疏环境中的性能令人满意,但是当脉冲响应的稀疏性降低时,其性能比常规LMS差。我们提出了一种基于凸组合的方法,该算法在稀疏和非稀疏情况下均能很好地工作,并且可以动态地适应稀疏性的水平。仿真结果表明了该算法对可变稀疏性的鲁棒性。

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