通过自适应LMS凸组合实现多植物标识

J. Arenas-García, M. Martínez‐Ramón, V. Gómez-Verdejo, A. Figueiras-Vidal
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引用次数: 24

摘要

最小均方算法(LMS)以其鲁棒性和简单性成为一种非常流行的自适应滤波算法。关于LMS滤波器的一个困难是它们在跟踪能力和精度之间固有的折衷,这是由自适应步骤的固定值选择所强加的。提出了一个快速LMS滤波器(高自适应步长)和一个慢LMS滤波器(低自适应步长)的自适应凸组合来打破这种平衡。我们建议推广这一思想,将多个LMS滤波器与不同的自适应步骤相结合。为了提高基本方案的性能,有必要进一步加快程序。已经进行了一些模拟工作,以证明这种方法在识别以不同速率变化的植物时的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple plant identifier via adaptive LMS convex combination
The least mean square (LMS) algorithm has become a very popular algorithm for adaptive filtering due to its robustness and simplicity. A difficulty concerning LMS filters is their inherent compromise between tracking capabilities and precision, that is imposed by the selection of a fixed value for the adaption step. An adaptive convex combination of one fast LMS filter (high adaption step) and one slow LMS filter (low adaption step) was proposed as a way to break this balance. We propose to generalize this idea, combining multiple LMS filters with different adaption steps. Additional speeding up procedures are necessary to improve the performance of the basic scheme. Some simulation work has been carried out to show the appropriateness of this approach when identifying plants that vary at different rates.
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