Title :
Multiscale Asymmetric Orthogonal Wavelet Kernel for Linear Programming Support Vector Learning and Nonlinear Dynamic Systems Identification
Author :
Zhao Lu ; Jing Sun ; Butts, Ken
Author_Institution :
Dept. of Electr. Eng., Tuskegee Univ., Tuskegee, AL, USA
Abstract :
Support vector regression for approximating nonlinear dynamic systems is more delicate than the approximation of indicator functions in support vector classification, particularly for systems that involve multitudes of time scales in their sampled data. The kernel used for support vector learning determines the class of functions from which a support vector machine can draw its solution, and the choice of kernel significantly influences the performance of a support vector machine. In this paper, to bridge the gap between wavelet multiresolution analysis and kernel learning, the closed-form orthogonal wavelet is exploited to construct new multiscale asymmetric orthogonal wavelet kernels for linear programming support vector learning. The closed-form multiscale orthogonal wavelet kernel provides a systematic framework to implement multiscale kernel learning via dyadic dilations and also enables us to represent complex nonlinear dynamics effectively. To demonstrate the superiority of the proposed multiscale wavelet kernel in identifying complex nonlinear dynamic systems, two case studies are presented that aim at building parallel models on benchmark datasets. The development of parallel models that address the long-term/mid-term prediction issue is more intricate and challenging than the identification of series-parallel models where only one-step ahead prediction is required. Simulation results illustrate the effectiveness of the proposed multiscale kernel learning.
Keywords :
linear programming; nonlinear control systems; regression analysis; support vector machines; wavelet transforms; complex nonlinear dynamic system; kernel learning; linear programming support vector learning; multiscale asymmetric orthogonal wavelet kernel; nonlinear dynamic system identification; nonlinear dynamic systems approximation; series-parallel model; support vector classification; support vector machine; support vector regression; wavelet multiresolution analysis; Computational modeling; Kernel; Linear programming; Nonlinear dynamical systems; Support vector machines; Vectors; Wavelet analysis; Linear programming support vector regression; NARX model; model sparsity; multiscale orthogonal wavelet kernel; parallel model; type-II raised cosine wavelet;
Journal_Title :
Cybernetics, IEEE Transactions on
DOI :
10.1109/TCYB.2013.2279834