Nonlinear models are known to provide excellent performance in real-world applications that often operate in non-ideal conditions. However, such applications often require online processing to be performed with limited computational resources. To address this problem, we propose a new class of efficient nonlinear models for online applications. The proposed algorithms are based on linear-in-the-parameters (LIP) nonlinear filters using functional link expansions. In order to make this class of functional link adaptive filters (FLAFs) efficient, we propose low-complexity expansions and frequency-domain adaptation of the parameters. Among this family of algorithms, we also define the partitioned-block frequency-domain FLAF, whose implementation is particularly suitable for online nonlinear modeling problems. We assess and compare frequency-domain FLAFs with different expansions providing the best possible tradeoff between performance and computational complexity. Experimental results prove that the proposed algorithms can be considered as an efficient and effective solution for online applications, such as the acoustic echo cancellation, even in the presence of adverse nonlinear conditions and with limited availability of computational resources.
翻译:已知非线性模型在通常非理想条件下运作的现实世界应用程序中提供极佳的性能;然而,此类应用程序往往需要以有限的计算资源进行在线处理;为解决这一问题,我们提议为在线应用程序提供新的一类高效的非线性模型;提议的算法以线性参数(LIP)非线性过滤器为基础,使用功能链接扩展;为了使这种功能链接的适应过滤器(FLAFs)有效,我们提议采用低兼容度扩展和频率-域内参数的适应。在这种算法的类别中,我们还定义了隔离区频率-域域域法(FLAFF),其实施特别适合在线非线性模型问题。我们评估并比较频性FLAF和不同的扩展,提供性能和计算复杂性之间的最佳可能的权衡。实验结果证明,拟议的算法可以被视为在线应用的高效和有效解决办法,例如取消声波回声,即使存在不利的非线性条件,而且计算资源也有限。