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Autori principali: Hafiz, Faizal, Swain, Akshya, Mendes, Eduardo
Natura: Preprint
Pubblicazione: 2019
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Accesso online:https://arxiv.org/abs/1901.01791
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author Hafiz, Faizal
Swain, Akshya
Mendes, Eduardo
author_facet Hafiz, Faizal
Swain, Akshya
Mendes, Eduardo
contents The present study proposes a new Orthogonal Floating Search framework for structure selection of nonlinear systems by adapting the existing floating search algorithms for feature selection. The proposed framework integrates the concept of orthogonal space and consequent Error-Reduction-Ratio (ERR) metric with the existing floating search algorithms. On the basis of this framework, three well-known feature selection algorithms have been adapted which include the classical Sequential Forward Floating Search (SFFS), Improved sequential Forward Floating Search (IFFS) and Oscillating Search (OS). This framework retains the simplicity of classical Orthogonal Forward Regression with ERR (OFR-ERR) and eliminates the nesting effect associated with OFR-ERR. The performance of the proposed framework has been demonstrated considering several benchmark non-linear systems. The results show that most of the existing feature selection methods can easily be tailored to identify the correct system structure of nonlinear systems.
format Preprint
id arxiv_https___arxiv_org_abs_1901_01791
institution arXiv
publishDate 2019
record_format arxiv
spellingShingle Orthogonal Floating Search Algorithms: From The Perspective of Nonlinear System Identification
Hafiz, Faizal
Swain, Akshya
Mendes, Eduardo
Systems and Control
The present study proposes a new Orthogonal Floating Search framework for structure selection of nonlinear systems by adapting the existing floating search algorithms for feature selection. The proposed framework integrates the concept of orthogonal space and consequent Error-Reduction-Ratio (ERR) metric with the existing floating search algorithms. On the basis of this framework, three well-known feature selection algorithms have been adapted which include the classical Sequential Forward Floating Search (SFFS), Improved sequential Forward Floating Search (IFFS) and Oscillating Search (OS). This framework retains the simplicity of classical Orthogonal Forward Regression with ERR (OFR-ERR) and eliminates the nesting effect associated with OFR-ERR. The performance of the proposed framework has been demonstrated considering several benchmark non-linear systems. The results show that most of the existing feature selection methods can easily be tailored to identify the correct system structure of nonlinear systems.
title Orthogonal Floating Search Algorithms: From The Perspective of Nonlinear System Identification
topic Systems and Control
url https://arxiv.org/abs/1901.01791