状态空间最小平均第四算法

Arif Ahmed, M. Moinuddin, U. M. Al-Saggaf
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引用次数: 4

摘要

通常用于估计目的的自适应滤波器在进行实时估计时需要很高的计算能力。因此,本文提出了一种基于状态空间模型的计算量小而有效的估计算法。该算法已成功应用于基于线性和非线性状态空间模型的估计问题。我们研究了几个例子,通过与现有的几种存在非高斯噪声即均匀噪声的算法进行比较,来证明我们的算法的新颖性。具体来说,将状态空间归一化最小均二乘法和卡尔曼滤波与我们的算法进行了比较。
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State space least mean fourth algorithm
Adaptive filters generally employed for estimation purposes require high computational power when it comes to real time estimation. Therefore, in this paper we propose a computationally light yet effective estimation algorithm based on state space model. Our algorithm has been employed successfully in linear and non linear state space model based estimation problems.We investigate few examples to demonstrate the novelty of our algorithm by comparison with few existing algorithms in presence of non Gaussian noise namely uniform noise. More specifically, the state space normalized least mean squares and the Kalman filter has been compared with our algorithm.
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