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Nonlinear dynamical system identification using reduced Volterra models with generalised orthonormal basis functions

机译:非线性动力学系统识别使用具有广义正式基础函数的减少的Volterra模型

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Volterra models can be used to describe a wide class of nonlinear systems. However their practical use is limited due to the huge number of coefficients that need to be estimated even for simple SISO systems. Orthonormal basis functions, like distorted sine functions and Laguerre functions, have been proposed as a means to reduce the number of parameters. In linear system identification generalized orthonormal basis functions have been widely used to reduce the number of parameters one needs to estimate with very promising results. In this paper, we extend the use of generalized orthonormal basis functions to cover the nonlinear system identification and discuss the merits of such use. Finally, we give two examples on which we implement the proposed method, a CSTR system (SISO case) and a model IV fluid catalytic cracking unit (MIMO case).
机译:Volterra Models可用于描述一类广泛的非线性系统。 然而,它们的实际使用是有限的,因为即使对于简单的SISO系统也需要估计的大量系数。 正式的基础函数,如扭曲的正弦函数和Laguerre功能,作为减少参数数量的手段。 在线性系统识别广义正式基础函数已被广泛用于减少一个需要估计的参数数量,这是非常有前途的结果。 在本文中,我们延长了广义正式基础函数的使用,以涵盖非线性系统识别并讨论这种使用的优点。 最后,我们给出了两个实施例,我们实施了所提出的方法,CSTR系统(SISO CASE)和IV型流体催化裂化单元(MIMO壳)。

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