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Set-membership filtering and a set-membership normalized LMS algorithm with an adaptive step size

机译:具有自适应步长的集合成员资格过滤和集合成员资格归一化LMS算法

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摘要

Set-membership identification (SMI) theory is extended to the more general problem of linear-in-parameters filtering by defining a set-membership specification, as opposed to a bounded noise assumption. This sets the framework for several important filtering problems that are not modeled by a "true" unknown system with bounded noise, such as adaptive equalization, to exploit the unique advantages of SMI algorithms. A recursive solution for set membership filtering is derived that resembles a variable step size normalized least mean squares (NLMS) algorithm. Interesting properties of the algorithm, such as asymptotic cessation of updates and monotonically non-increasing parameter error, are established. Simulations show significant performance improvement in varied environments with a greatly reduced number of updates.
机译:通过定义集合成员资格规范,集合成员身份识别(SMI)理论扩展到更广泛的参数线性滤波问题,这与有界噪声假设相反。这为一些重要的过滤问题设置了框架,这些问题没有通过带有限制噪声的“真实”未知系统建模,例如自适应均衡,以利用SMI算法的独特优势。推导了用于集成员资格过滤的递归解决方案,该解决方案类似于可变步长归一化最小均方(NLMS)算法。建立了算法有趣的属性,例如渐近停止更新和单调非递增参数错误。仿真显示,在各种环境中,更新数量大大减少,从而显着提高了性能。

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