Use of autoassociative neural networks for sensor diagnostics

The new approach for sensor diagnostics is presented. The approach, Enhanced Autoassociative Neural Networks (E-AANN), adds enhancement to Autoassociative Neural Networks (AANN) developed by Kramer in 1992. This enhancement allows AANN to identify faulty sensors. E-AANN uses a secondary optimization...

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Bibliographic Details
Main Author: Najafi, Massieh
Other Authors: Culp, Charles
Format: Others
Language:en_US
Published: Texas A&M University 2005
Subjects:
Online Access:http://hdl.handle.net/1969.1/1392
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spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-13922013-01-08T10:37:36ZUse of autoassociative neural networks for sensor diagnosticsNajafi, MassiehSensor DiagnosticsAuto Associative Neural NetworkFault DetectionIntelligent SystemsNeural NetworkControlThe new approach for sensor diagnostics is presented. The approach, Enhanced Autoassociative Neural Networks (E-AANN), adds enhancement to Autoassociative Neural Networks (AANN) developed by Kramer in 1992. This enhancement allows AANN to identify faulty sensors. E-AANN uses a secondary optimization process to identify and reconstruct sensor faults. Two common types of sensor faults are investigated, drift error and shift or offset error. In the case of drift error, the sensor error occurs gradually while in the case of shift error, the sensor error occurs abruptly. EAANN catches these error types. A chiller model provided synthetic data to test the diagnostic approach under various noise level conditions. The results show that sensor faults can be detected and corrected in noisy situations with the E-AANN method described. In high noisy situations (10% to 20% noise level), E-AANN performance degrades. E-AANN performance in simple dynamic systems was also investigated. The results show that in simple dynamic situations, E-AANN identifies faulty sensors.Texas A&M UniversityCulp, CharlesLangari, Reza2005-02-17T21:00:14Z2005-02-17T21:00:14Z2003-122005-02-17T21:00:14ZBookThesisElectronic Thesistext1078350 byteselectronicapplication/pdfborn digitalhttp://hdl.handle.net/1969.1/1392en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Sensor Diagnostics
Auto Associative Neural Network
Fault Detection
Intelligent Systems
Neural Network
Control
spellingShingle Sensor Diagnostics
Auto Associative Neural Network
Fault Detection
Intelligent Systems
Neural Network
Control
Najafi, Massieh
Use of autoassociative neural networks for sensor diagnostics
description The new approach for sensor diagnostics is presented. The approach, Enhanced Autoassociative Neural Networks (E-AANN), adds enhancement to Autoassociative Neural Networks (AANN) developed by Kramer in 1992. This enhancement allows AANN to identify faulty sensors. E-AANN uses a secondary optimization process to identify and reconstruct sensor faults. Two common types of sensor faults are investigated, drift error and shift or offset error. In the case of drift error, the sensor error occurs gradually while in the case of shift error, the sensor error occurs abruptly. EAANN catches these error types. A chiller model provided synthetic data to test the diagnostic approach under various noise level conditions. The results show that sensor faults can be detected and corrected in noisy situations with the E-AANN method described. In high noisy situations (10% to 20% noise level), E-AANN performance degrades. E-AANN performance in simple dynamic systems was also investigated. The results show that in simple dynamic situations, E-AANN identifies faulty sensors.
author2 Culp, Charles
author_facet Culp, Charles
Najafi, Massieh
author Najafi, Massieh
author_sort Najafi, Massieh
title Use of autoassociative neural networks for sensor diagnostics
title_short Use of autoassociative neural networks for sensor diagnostics
title_full Use of autoassociative neural networks for sensor diagnostics
title_fullStr Use of autoassociative neural networks for sensor diagnostics
title_full_unstemmed Use of autoassociative neural networks for sensor diagnostics
title_sort use of autoassociative neural networks for sensor diagnostics
publisher Texas A&M University
publishDate 2005
url http://hdl.handle.net/1969.1/1392
work_keys_str_mv AT najafimassieh useofautoassociativeneuralnetworksforsensordiagnostics
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