2006
DOI: 10.1007/s00521-006-0069-3
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Wavelet networks for nonlinear system modeling

Abstract: This study presents a nonlinear systems and function learning by using wavelet network. Wavelet networks are as neural network for training and structural approach. But, training algorithms of wavelet networks is required a smaller number of iterations when the compared with neural networks. Gaussianbased mother wavelet function is used as an activation function. Wavelet networks have three main parameters; dilation, translation, and connection parameters (weights). Initial values of these parameters are rando… Show more

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Cited by 54 publications
(30 citation statements)
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“…However, most of the wavelet basis are redundant and should be eliminated, thus Orthogonal Least Square (OLS) algorithm [21] is introduced to select the most important ones, and the size of basis could be determined by some well known approaches such as AIC and FPE [4]. This method has been successfully applied in researches on WN [6,7,22].…”
Section: Determination Of Nonlinear Parametersmentioning
confidence: 99%
See 1 more Smart Citation
“…However, most of the wavelet basis are redundant and should be eliminated, thus Orthogonal Least Square (OLS) algorithm [21] is introduced to select the most important ones, and the size of basis could be determined by some well known approaches such as AIC and FPE [4]. This method has been successfully applied in researches on WN [6,7,22].…”
Section: Determination Of Nonlinear Parametersmentioning
confidence: 99%
“…Recently, nonlinear system identification by wavelet networks is attracting a growing interest [4][5][6], not only due to the universal approximation ability of WNs, but also for the efficient constructive methods, both for determining the parameters and for choosing network structure [7]. However, similar with NNs, most of WNs are used as black-box methods, which emphasize on the input-output representation ability and neglect some properties of the highly successful linear black-box modeling, such as the linear structure and simplicity [8].…”
Section: Introductionmentioning
confidence: 99%
“…A wavelet is a waveform of effectively limited duration that has an average value of zero and localized properties hence a random initialization may lead to wavelons with a value of zero. Also random initialization affects the speed of training and may lead to a local minimum of the loss function, [16]. In [2] the wavelons are initialized at the center of the input dimension of each input vector x i .…”
Section: Wavelet Neural Network For Multivariate Process Modelingmentioning
confidence: 99%
“…J. Yao, Song, Zhang, & Cheng, 2000), in time series prediction, (Cao, et al, 1995;Chen, Yang, & Dong, 2006;Cristea, Tuduce, & Cristea, 2000), signal classification and compression, (Kadambe & Srinivasan, 2006;Pittner, Kamarthi, & Gao, 1998;Subasi, Alkan, Koklukaya, & Kiymik, 2005), signal denoising, (Z. Zhang, 2007), static, dynamic (Allingham, West, & Mees, 1998;Oussar & Dreyfus, 2000;Oussar, Rivals, Presonnaz, & Dreyfus, 1998;Pati & Krishnaprasad, 1993;Postalcioglu & Becerikli, 2007; Q. Zhang & Benveniste, 1992), and nonlinear modeling, (Billings & Wei, 2005), nonlinear static function approximation, (Jiao, Pan, & Fang, 2001;Szu, Telfer, & Kadambe, 1992;Wong & Leung, 1998), to mention the most important.…”
Section: Introductionmentioning
confidence: 99%