并行自适应状态空间滤波及其实现

W. Steenaart, J.Y. Zhang
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引用次数: 0

摘要

介绍了一种自适应递归状态空间算法及其实现。采用最小均方自适应算法实现自适应状态空间滤波,滤波器参数的梯度直接由状态方程导出。为了降低计算复杂度,采用了一种二阶截面的并行形式。给出了自适应状态空间滤波器在稳定性监测、舍入噪声和收敛速率方面的性能。通过仿真实例说明了采用自适应状态空间滤波可以改善舍入噪声性能。稳定性监测很简单,因为每个部分都是一个二阶滤波器。在实时应用中,建议使用VLSI阵列处理器
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Parallel-form adaptive state-space filtering and its implementation
Introduces an adaptive recursive state-space algorithm and its implementation. The adaptive state-space filtering is realized by using the least mean square adaptation algorithm and the gradients for filter parameters are derived directly from the state equations. To reduce the computational complexity, a parallel form of second-order sections is used. The performance of adaptive state-space filters, in terms of stability monitoring, roundoff noise and convergence rate, is given. A possible roundoff noise performance improvement by using adaptive state-space filtering is shown using simulation examples. The stability monitoring is simple since each section is a second-order filter. VLSI array processors are suggested for real-time applications.<>
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