Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression

Real industrial processes usually are equipped with onboard control or diagnostic systems and limit to store a complicated model. Also, measurement samples from real processes are contaminated with noises of different statistical characteristics and are produced by one-by-one way. In this case, lear...

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Main Authors: Jing Yang, Yi Xu, Hai-Jun Rong, Shaoyi Du, Badong Chen
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8314663/
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spelling doaj-ddb4096f1a2a4ab9ba3c6eb74b2cea6d2021-03-29T20:40:21ZengIEEEIEEE Access2169-35362018-01-016160221603410.1109/ACCESS.2018.28155038314663Sparse Recursive Least Mean p-Power Extreme Learning Machine for RegressionJing Yang0https://orcid.org/0000-0002-0315-1686Yi Xu1Hai-Jun Rong2Shaoyi Du3Badong Chen4Institute of Control Engineering, Xi’an Jiaotong University, Xi’an, ChinaInstitute of Control Engineering, Xi’an Jiaotong University, Xi’an, ChinaState Key Laboratory for Strength and Vibration of Mechanical Structures, School of Aerospace, Xi’an Jiaotong University, Xi’an, ChinaInstitute of Artificial Intelligence and Robotics, Xi’an Jiaotong University, Xi’an, ChinaInstitute of Artificial Intelligence and Robotics, Xi’an Jiaotong University, Xi’an, ChinaReal industrial processes usually are equipped with onboard control or diagnostic systems and limit to store a complicated model. Also, measurement samples from real processes are contaminated with noises of different statistical characteristics and are produced by one-by-one way. In this case, learning algorithms with better learning performance and compact model for systems with noises of various statistics are necessary. This paper proposes a new online extreme learning machine (ELM) algorithm, namely, sparse recursive least mean p-power ELM (SRLMP-ELM). In SRLMP-ELM, a novel cost function, i.e., the sparse least mean p-power (SLMP) error criterion, provides a mechanism to update the output weights sequentially and automatically tune some parameters of the output weights to zeros. The SLMP error criterion aims to minimize the combination of the mean p-power of the errors and a sparsity penalty constraint of the output weights. For real industrial system requirements, the proposed on-line learning algorithm is able to provide more higher accuracy, compact model, and better generalization ability than ELM and online sequential ELM, whereas the non-Gaussian noises impact the processes, especially impulsive noises. Simulations are reported to demonstrate the performance and effectiveness of the proposed methods.https://ieeexplore.ieee.org/document/8314663/Sparse recursive least mean p-powerextreme learning machineonline sequential learningnon-gaussian noisesalpha-stable noises
collection DOAJ
language English
format Article
sources DOAJ
author Jing Yang
Yi Xu
Hai-Jun Rong
Shaoyi Du
Badong Chen
spellingShingle Jing Yang
Yi Xu
Hai-Jun Rong
Shaoyi Du
Badong Chen
Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression
IEEE Access
Sparse recursive least mean p-power
extreme learning machine
online sequential learning
non-gaussian noises
alpha-stable noises
author_facet Jing Yang
Yi Xu
Hai-Jun Rong
Shaoyi Du
Badong Chen
author_sort Jing Yang
title Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression
title_short Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression
title_full Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression
title_fullStr Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression
title_full_unstemmed Sparse Recursive Least Mean p-Power Extreme Learning Machine for Regression
title_sort sparse recursive least mean p-power extreme learning machine for regression
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Real industrial processes usually are equipped with onboard control or diagnostic systems and limit to store a complicated model. Also, measurement samples from real processes are contaminated with noises of different statistical characteristics and are produced by one-by-one way. In this case, learning algorithms with better learning performance and compact model for systems with noises of various statistics are necessary. This paper proposes a new online extreme learning machine (ELM) algorithm, namely, sparse recursive least mean p-power ELM (SRLMP-ELM). In SRLMP-ELM, a novel cost function, i.e., the sparse least mean p-power (SLMP) error criterion, provides a mechanism to update the output weights sequentially and automatically tune some parameters of the output weights to zeros. The SLMP error criterion aims to minimize the combination of the mean p-power of the errors and a sparsity penalty constraint of the output weights. For real industrial system requirements, the proposed on-line learning algorithm is able to provide more higher accuracy, compact model, and better generalization ability than ELM and online sequential ELM, whereas the non-Gaussian noises impact the processes, especially impulsive noises. Simulations are reported to demonstrate the performance and effectiveness of the proposed methods.
topic Sparse recursive least mean p-power
extreme learning machine
online sequential learning
non-gaussian noises
alpha-stable noises
url https://ieeexplore.ieee.org/document/8314663/
work_keys_str_mv AT jingyang sparserecursiveleastmeanppowerextremelearningmachineforregression
AT yixu sparserecursiveleastmeanppowerextremelearningmachineforregression
AT haijunrong sparserecursiveleastmeanppowerextremelearningmachineforregression
AT shaoyidu sparserecursiveleastmeanppowerextremelearningmachineforregression
AT badongchen sparserecursiveleastmeanppowerextremelearningmachineforregression
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