通过合作学习提高LMS算法的性能

R. Das, B. K. Das, M. Chakraborty
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引用次数: 1

摘要

为了在收敛速度和超均方误差(EMSE)方面获得更好的性能,两个自适应滤波器并联工作的组合已经被一些研究者所考虑。其中突出的包括凸组合(组合权重因子在[0 1]范围内,但总和为1),仿射组合(组合权重因子不受任何范围约束,但总和仍为1)和无约束模型组合(使用另一种自适应算法组合组成滤波器的输出)。在本文中,我们提出了一种使用两个自适应滤波器来获得更好性能的新方法,即使用合作学习方法。为此,我们采用了一个基于LMS的自适应滤波器,该滤波器使用更大的步长,因此以更高的EMSE为代价具有更快的收敛速度。使用的另一个过滤器使用LMS算法的修改版本,它使用的步长要小得多,但在权重更新关系中有一个额外的更新项,这有助于从更快的过滤器学习其过滤器权重信息。学习发生在瞬态阶段,而在稳态阶段,两个滤波器几乎相互独立。在权值更新递归中存在学习组件使滤波器收敛得更快,而较小的步长则确保更少的稳态EMSE。这些说法得到了理论和详细的模拟研究的支持。
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Improving the performance of the LMS algorithm via cooperative learning
Combination of two adaptive filters working in parallel for achieving better performance both in term of convergence speed and excess mean square error (EMSE) has been considered by several researchers in recent past. Prominent among these include convex combination (where combinational weight factors are within the range [0 1], while summing up to one), affine combination (where the combinational weight factors are free from any range constraint, while still summing up to one) and unconstrained model combination (where the output of constituent filters are combined using another adaptive algorithm). In this paper, we propose a novel way of using two adaptive filters for achieving better performance, using the cooperative learning approach. For this, we employ one LMS based adaptive filter that uses a larger step size and thus has a faster rate of convergence at the expense of higher EMSE. The other filter employed uses a modified version of the LMS algorithm, which employs a much lesser step size, but has one extra update term in the weight update relation that helps in learning from the faster filter its filter weight information. The learning takes place during the transient phase, while, in the steady state, two filters become almost independent of each other. Presence of the learning component in the weight update recursion enables the filter to converge much faster while a smaller step size ensures much less steady state EMSE. The claims are supported by theoretical as well as detailed simulation studies.
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