Function approximation from input and output data is one of the most investigated problems in signal processing. This problem has been tackled with various signal processing and machine learning methods. Although tensors have a rich history upon numerous disciplines, tensor-based estimation has recently become of particular interest in system identification. In this paper we focus on the problem of adaptive nonlinear system identification solved with interpolated tensor methods. We introduce three novel approaches where we combine the existing tensor-based estimation techniques with multidimensional linear interpolation. To keep the reduced complexity, we stick to the concept where the algorithms employ a Wiener or Hammerstein structure and the tensors are combined with the well-known LMS algorithm. The update of the tensor is based on a stochastic gradient decent concept. Moreover, an appropriate step size normalization for the update of the tensors and the LMS supports the convergence. Finally, in several experiments we show that the proposed algorithms almost always clearly outperform the state-of-the-art methods with lower or comparable complexity.
翻译:输入和输出数据的功能近似性是信号处理中调查最多的问题之一。 这个问题已经通过各种信号处理和机器学习方法得到解决。 虽然数个数个数个数在多个学科上有着丰富的历史, 但基于数个数的估算最近对系统识别特别感兴趣。 在本文件中, 我们侧重于通过内插的粒子方法解决的适应性非线性系统识别问题。 我们引入了三种新颖的方法, 即我们将现有的以数种为基础的估算技术与多层面线性内插结合起来。 为了保持复杂性的降低, 我们坚持了算法使用维纳或汉默斯坦结构以及高压器与众所周知的LMS算法相结合的概念。 高压值的更新是基于一个分层梯度的梯度体面概念。 此外, 用于更新数个数组和LMS的适当的步尺寸正常化支持了趋同。 最后, 我们在若干实验中显示, 提议的算法几乎总是明显地超越了复杂程度较低或相似的状态方法。