Block-oriented Nonlinear System Identification pp 293-312 | Cite as
A Blind Approach to Identification of Hammerstein Systems
Chapter
Abstract
Hammerstein systems form a class of block-oriented nonlinear models, where a static nonlinearity precedes a linear dynamic system. There exist a large number of works on the topic of identification of Hammerstein systems in the literature. The methods of Hammerstein identification can be classified as the ten methods in Section 3.9 of [7] or the four groups in Chapter 1 of [8].
Keywords
Singular Value Decomposition Null Space Hammerstein Model Noise Dynamic Instrumental Variable Method
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