Iatrou M, Berger T W, Marmarelis V Z
Department of Biomedical Engineering, University of Southern California, Los Angeles, CA 90089-1451, USA.
IEEE Trans Neural Netw. 1999;10(2):327-39. doi: 10.1109/72.750563.
This paper introduces a novel neural-network architecture that can be used to model time-varying Volterra systems from input-output data. The Volterra systems constitute a very broad class of stable nonlinear dynamic systems that can be extended to cover nonstationary (time-varying) cases. This novel architecture is composed of parallel subnets of three-layer perceptrons with polynomial activation functions, with the output of each subnet modulated by an appropriate time function that gives the summative output its time-varying characteristics. The paper shows the equivalence between this network architecture and the class of time-varying Volterra systems, and demonstrates the range of applicability of this approach with computer-simulated examples and real data. Although certain types of nonstationarities may not be amenable to this approach, it is hoped that this methodology will provide the practical tools for modeling some broad classes of nonlinear, nonstationary systems from input-output data, thus advancing the state of the art in a problem area that is widely viewed as a daunting challenge.
本文介绍了一种新型神经网络架构,该架构可用于根据输入输出数据对时变沃尔泰拉系统进行建模。沃尔泰拉系统构成了一类非常广泛的稳定非线性动态系统,可扩展到涵盖非平稳(时变)情况。这种新型架构由具有多项式激活函数的三层感知器的并行子网组成,每个子网的输出由适当的时间函数调制,该时间函数赋予求和输出时变特性。本文展示了这种网络架构与一类时变沃尔泰拉系统之间的等效性,并通过计算机模拟示例和实际数据证明了该方法的适用范围。尽管某些类型的非平稳性可能不适用于此方法,但希望这种方法将为从输入输出数据对一些广泛的非线性、非平稳系统进行建模提供实用工具,从而推动这个被广泛视为艰巨挑战的问题领域的技术发展。