Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring
This paper presents an image reconstruction method to monitor the temperature distribution of electric generator stators. The main objective is to identify insulation failures that may arise as hotspots in the structure. The method is based on temperature readings of fiber optic distributed sensors...
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doaj-5e477a833aad4239b1feb3dc998bf2c82020-11-24T22:31:24ZengMDPI AGSensors1424-82202016-09-01169142510.3390/s16091425s16091425Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator MonitoringJoão Paulo Bazzo0Daniel Rodrigues Pipa1Erlon Vagner da Silva2Cicero Martelli3Jean Carlos Cardozo da Silva4Graduate Program in Electrical and Computer Engineering (CPGEI)/Federal University of Technology-Parana, Curitiba 80230-901, BrazilGraduate Program in Electrical and Computer Engineering (CPGEI)/Federal University of Technology-Parana, Curitiba 80230-901, BrazilEngie Brasil Energia, Saudades do Iguaçu 85568-000, BrazilGraduate Program in Electrical and Computer Engineering (CPGEI)/Federal University of Technology-Parana, Curitiba 80230-901, BrazilGraduate Program in Electrical and Computer Engineering (CPGEI)/Federal University of Technology-Parana, Curitiba 80230-901, BrazilThis paper presents an image reconstruction method to monitor the temperature distribution of electric generator stators. The main objective is to identify insulation failures that may arise as hotspots in the structure. The method is based on temperature readings of fiber optic distributed sensors (DTS) and a sparse reconstruction algorithm. Thermal images of the structure are formed by appropriately combining atoms of a dictionary of hotspots, which was constructed by finite element simulation with a multi-physical model. Due to difficulties for reproducing insulation faults in real stator structure, experimental tests were performed using a prototype similar to the real structure. The results demonstrate the ability of the proposed method to reconstruct images of hotspots with dimensions down to 15 cm, representing a resolution gain of up to six times when compared to the DTS spatial resolution. In addition, satisfactory results were also obtained to detect hotspots with only 5 cm. The application of the proposed algorithm for thermal imaging of generator stators can contribute to the identification of insulation faults in early stages, thereby avoiding catastrophic damage to the structure.http://www.mdpi.com/1424-8220/16/9/1425generator stator temperaturedistributed temperature sensingsparse reconstruction algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
João Paulo Bazzo Daniel Rodrigues Pipa Erlon Vagner da Silva Cicero Martelli Jean Carlos Cardozo da Silva |
spellingShingle |
João Paulo Bazzo Daniel Rodrigues Pipa Erlon Vagner da Silva Cicero Martelli Jean Carlos Cardozo da Silva Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring Sensors generator stator temperature distributed temperature sensing sparse reconstruction algorithm |
author_facet |
João Paulo Bazzo Daniel Rodrigues Pipa Erlon Vagner da Silva Cicero Martelli Jean Carlos Cardozo da Silva |
author_sort |
João Paulo Bazzo |
title |
Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring |
title_short |
Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring |
title_full |
Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring |
title_fullStr |
Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring |
title_full_unstemmed |
Sparse Reconstruction for Temperature Distribution Using DTS Fiber Optic Sensors with Applications in Electrical Generator Stator Monitoring |
title_sort |
sparse reconstruction for temperature distribution using dts fiber optic sensors with applications in electrical generator stator monitoring |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2016-09-01 |
description |
This paper presents an image reconstruction method to monitor the temperature distribution of electric generator stators. The main objective is to identify insulation failures that may arise as hotspots in the structure. The method is based on temperature readings of fiber optic distributed sensors (DTS) and a sparse reconstruction algorithm. Thermal images of the structure are formed by appropriately combining atoms of a dictionary of hotspots, which was constructed by finite element simulation with a multi-physical model. Due to difficulties for reproducing insulation faults in real stator structure, experimental tests were performed using a prototype similar to the real structure. The results demonstrate the ability of the proposed method to reconstruct images of hotspots with dimensions down to 15 cm, representing a resolution gain of up to six times when compared to the DTS spatial resolution. In addition, satisfactory results were also obtained to detect hotspots with only 5 cm. The application of the proposed algorithm for thermal imaging of generator stators can contribute to the identification of insulation faults in early stages, thereby avoiding catastrophic damage to the structure. |
topic |
generator stator temperature distributed temperature sensing sparse reconstruction algorithm |
url |
http://www.mdpi.com/1424-8220/16/9/1425 |
work_keys_str_mv |
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