仿射投影与误差编码最小均方算法的凸组合

I. Ibarra, Jocelyne Rodriguez, E. Pichardo, J. Avalos, G. Avalos
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引用次数: 0

摘要

仿射投影(AP)算法提供了相对较好的收敛速度,可以通过增加投影阶数(L)来提高,然而,除了呈现高计算复杂度之外,它们的稳态失调与L的增加成正比,AP算法的凸组合已经被设计出来,试图解决失调问题,尽管代价是上述计算复杂度的两倍。为了在保持高收敛速度和提高稳态失调水平的同时,减少双AP组合计算复杂度的两倍增长,本文引入了一种AP算法与错误编码最小均方(ECLMS)算法的凸组合。在系统识别应用中对该算法进行了测试,结果表明,该算法的性能与双AP解决方案一样好,甚至更好,同时大大降低了计算复杂度。
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Convex Combination of Affine Projection and Error Coded Least Mean Square Algorithms
Affine Projection (AP) algorithms offer a relatively good convergence speed which can be increased by augmenting the projection order (L), however, in addition to presenting a high computational complexity, their steady-state misadjustment worsens in direct ratio to the rise of L. Convex combinations of AP algorithms have been devised in an attempt to address the misadjustment issue, albeit at the cost of doubling the aforementioned computational complexity. This work introduces the convex combination of an AP algorithm with an Error Coded Least Mean Square (ECLMS) algorithm, in order to reduce the twofold increase in computational complexity of dual AP combinations while retaining the high convergence speed and improving the steady-state misadjustment level. The proposed algorithm was tested in a system identification application, results demonstrate that the proposal performs as good or better than dual AP solutions, while considerably reducing computational complexity.
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