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A robust variable step-size LMS algorithm using error-data normalization adaptive filter applications

机译:使用误差数据归一化的鲁棒可变步长LMS算法自适应滤波器应用

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This paper introduces a new variable step-size LMS algorithm in which the step-size is dependent on both data and error normalization. With an appropriate choice of the value of the fixed step-size and the ratio between error and data normalization in the proposed algorithm, a trade-off between speed of convergence and misadjustment can be achieved. The performance of the algorithm is compared with other LMS-based algorithms in several input environments. Computer simulation results demonstrate substantial improvements in the speed of convergence of the proposed algorithm in a stationary environment over other algorithms with the same small level of misadjustment. In addition, the proposed algorithm shows superior tracking capability when the system is subjected to an abrupt disturbance. For a nonstationary environment, the performance of the algorithm is equivalent to other time-varying step-size algorithms.
机译:本文介绍了一种新的可变步长LMS算法,其中步长取决于数据和错误归一化。与固定步长的值,并在该算法的错误和数据归一化的比例的适当选择,折衷收敛和失调的速度之间可以实现的。在几种输入环境中,将该算法的性能与其他基于LMS的算法进行了比较。计算机仿真结果表明,与其他算法相比,该算法在固定环境中的收敛速度有了实质性的提高,而其他算法的失调水平相同。另外,当系统遭受突然干扰时,所提出的算法显示出优异的跟踪能力。对于非平稳环境,该算法的性能等效于其他随时间变化的步长算法。

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