Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises

This study focused on the identification problems of two-input single-output system with moving average noises based on unsupervised learning methods applied to the input signals. The input signal to the autoregressive moving average model is proposed to be arriving from a source with continuous tec...

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Main Author: Khalid Abd El Mageed Hag ElAmin
Format: Article
Language:English
Published: Hindawi-Wiley 2020-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2020/2498487
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spelling doaj-1b9d3625430b45d1adc18e1923e8123a2020-11-30T09:11:23ZengHindawi-WileyComplexity1076-27871099-05262020-01-01202010.1155/2020/24984872498487Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average NoisesKhalid Abd El Mageed Hag ElAmin0College of Engineering and Information Technology, Buraydah Colleges, Buraydah 51418, Saudi ArabiaThis study focused on the identification problems of two-input single-output system with moving average noises based on unsupervised learning methods applied to the input signals. The input signal to the autoregressive moving average model is proposed to be arriving from a source with continuous technical and environmental changes as two separate featured input signals. These two input signals were grouped in a number of clusters using the K-means clustering algorithm. The clustered input signals were supplied to the model in an orderly fashion from cluster-1 up to cluster-K. To ensure that the output signal can be best predicted from the input signal which in turn leads to selecting good enough model for its intended use, the magnitude-squared coherence (MSC) measure is applied to the input/output signals in the cases of clustered and nonclustered inputs, which indicates best correlation coefficient when measured with clustered inputs. From collected input-output signals, we deduce a K-means clustering based recursive least squares method for estimating the parameter of autoregressive moving average system. The simulation results indicate that the suggested method is effective.http://dx.doi.org/10.1155/2020/2498487
collection DOAJ
language English
format Article
sources DOAJ
author Khalid Abd El Mageed Hag ElAmin
spellingShingle Khalid Abd El Mageed Hag ElAmin
Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises
Complexity
author_facet Khalid Abd El Mageed Hag ElAmin
author_sort Khalid Abd El Mageed Hag ElAmin
title Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises
title_short Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises
title_full Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises
title_fullStr Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises
title_full_unstemmed Clustering Input Signals Based Identification Algorithms for Two-Input Single-Output Models with Autoregressive Moving Average Noises
title_sort clustering input signals based identification algorithms for two-input single-output models with autoregressive moving average noises
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2020-01-01
description This study focused on the identification problems of two-input single-output system with moving average noises based on unsupervised learning methods applied to the input signals. The input signal to the autoregressive moving average model is proposed to be arriving from a source with continuous technical and environmental changes as two separate featured input signals. These two input signals were grouped in a number of clusters using the K-means clustering algorithm. The clustered input signals were supplied to the model in an orderly fashion from cluster-1 up to cluster-K. To ensure that the output signal can be best predicted from the input signal which in turn leads to selecting good enough model for its intended use, the magnitude-squared coherence (MSC) measure is applied to the input/output signals in the cases of clustered and nonclustered inputs, which indicates best correlation coefficient when measured with clustered inputs. From collected input-output signals, we deduce a K-means clustering based recursive least squares method for estimating the parameter of autoregressive moving average system. The simulation results indicate that the suggested method is effective.
url http://dx.doi.org/10.1155/2020/2498487
work_keys_str_mv AT khalidabdelmageedhagelamin clusteringinputsignalsbasedidentificationalgorithmsfortwoinputsingleoutputmodelswithautoregressivemovingaveragenoises
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