Author_Institution :
Dept. of Electr. & Comput. Eng., Texas Univ., Austin, TX, USA
Abstract :
In this study, digital higher-order spectral analysis and frequency-domain Volterra system models are utilized to yield a practical methodology for the identification of weakly nonlinear time-invariant systems up to third order. The primary focus is on consideration of random excitation of nonlinear systems and, thus, the approach makes extensive use of higher-order spectral analysis to determine the frequency-domain Volterra kernels, which correspond to linear, quadratic, and cubic transfer functions. Although the Volterra model is nonlinear in terms of its input, it is linear in terms of its unknown transfer functions. Thus, a least squares approach is used to determine the optimal (in a least squares sense) set of linear, quadratic, and cubic transfer functions. Of particular practical note, is the fact that the approach of this paper is valid for non-Gaussian, as well as Gaussian, random excitation. It may also be utilized for multitone inputs. The complexity of the problem addressed in this paper arises from two principal causes: (1) the necessity to work in a 3D frequency space to describe cubically nonlinear systems, and (2) the necessity to characterize the non-Gaussian random excitation by computing higher-order spectral moments up to sixth order. A detailed description of the approach used to determine the nonlinear transfer functions, including considerations necessary for digital implementation, is presented
Keywords :
frequency-domain analysis; identification; least squares approximations; series (mathematics); spectral analysis; transfer functions; 3D frequency space; Gaussian excitation; cubic transfer functions; cubically nonlinear system identification; digital higher-order spectral analysis; frequency-domain Volterra kernels; frequency-domain Volterra system models; higher-order spectral moments; least squares approach; linear transfer functions; multitone inputs; nonGaussian excitation; quadratic transfer functions; random excitation; weakly nonlinear time-invariant systems; Frequency domain analysis; Frequency measurement; Kernel; Least squares methods; Nonlinear systems; Power engineering computing; Power system modeling; Signal processing; Spectral analysis; Transfer functions;