Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder

Maintenance is the process of preserving the good condition of a system to ensure its reliability and availability to perform specific operations. The way maintenance is nowadays performed in industry is changing thanks to the increasing availability of data and condition assessment methods. Soft se...

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Main Authors: Martí de Castro-Cros, Stefano Rosso, Edgar Bahilo, Manel Velasco, Cecilio Angulo
Format: Article
Language:English
Published: MDPI AG 2021-04-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/8/2708
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spelling doaj-7beb03980dbd498bb1a03613007bc6712021-04-12T23:04:04ZengMDPI AGSensors1424-82202021-04-01212708270810.3390/s21082708Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in AutoencoderMartí de Castro-Cros0Stefano Rosso1Edgar Bahilo2Manel Velasco3Cecilio Angulo4Intelligent Data Science and Artificial Intelligence Research Centre (IDEAI), Automatic Control Department, Campus Nord, Universitat Politècnica de Catalunya, Carrer de Jordi Girona, 1, 3, 08034 Barcelona, SpainDigihub Barcelona, Siemens Energy S.L., Carrer Lluís Muntadas, 4, 08940 Barcelona, SpainSiemens Energy S.L., Slottsvägen 2-6, 612 31 Finspang, SweedenIntelligent Data Science and Artificial Intelligence Research Centre (IDEAI), Automatic Control Department, Campus Nord, Universitat Politècnica de Catalunya, Carrer de Jordi Girona, 1, 3, 08034 Barcelona, SpainIntelligent Data Science and Artificial Intelligence Research Centre (IDEAI), Automatic Control Department, Campus Nord, Universitat Politècnica de Catalunya, Carrer de Jordi Girona, 1, 3, 08034 Barcelona, SpainMaintenance is the process of preserving the good condition of a system to ensure its reliability and availability to perform specific operations. The way maintenance is nowadays performed in industry is changing thanks to the increasing availability of data and condition assessment methods. Soft sensors have been widely used over last years to monitor industrial processes and to predict process variables that are difficult to measured. The main objective of this study is to monitor and evaluate the condition of the compressor in a particular industrial gas turbine by developing a soft sensor following an autoencoder architecture. The data used to monitor and analyze its condition were captured by several sensors located along the compressor for around five years. The condition assessment of an industrial gas turbine compressor reveals significant changes over time, as well as a drift in its performance. These results lead to a qualitative indicator of the compressor behavior in long-term performance.https://www.mdpi.com/1424-8220/21/8/2708artificial intelligenceautoencodersoft sensorcondition assessmentgas turbine
collection DOAJ
language English
format Article
sources DOAJ
author Martí de Castro-Cros
Stefano Rosso
Edgar Bahilo
Manel Velasco
Cecilio Angulo
spellingShingle Martí de Castro-Cros
Stefano Rosso
Edgar Bahilo
Manel Velasco
Cecilio Angulo
Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder
Sensors
artificial intelligence
autoencoder
soft sensor
condition assessment
gas turbine
author_facet Martí de Castro-Cros
Stefano Rosso
Edgar Bahilo
Manel Velasco
Cecilio Angulo
author_sort Martí de Castro-Cros
title Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder
title_short Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder
title_full Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder
title_fullStr Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder
title_full_unstemmed Condition Assessment of Industrial Gas Turbine Compressor Using a Drift Soft Sensor Based in Autoencoder
title_sort condition assessment of industrial gas turbine compressor using a drift soft sensor based in autoencoder
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-04-01
description Maintenance is the process of preserving the good condition of a system to ensure its reliability and availability to perform specific operations. The way maintenance is nowadays performed in industry is changing thanks to the increasing availability of data and condition assessment methods. Soft sensors have been widely used over last years to monitor industrial processes and to predict process variables that are difficult to measured. The main objective of this study is to monitor and evaluate the condition of the compressor in a particular industrial gas turbine by developing a soft sensor following an autoencoder architecture. The data used to monitor and analyze its condition were captured by several sensors located along the compressor for around five years. The condition assessment of an industrial gas turbine compressor reveals significant changes over time, as well as a drift in its performance. These results lead to a qualitative indicator of the compressor behavior in long-term performance.
topic artificial intelligence
autoencoder
soft sensor
condition assessment
gas turbine
url https://www.mdpi.com/1424-8220/21/8/2708
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AT stefanorosso conditionassessmentofindustrialgasturbinecompressorusingadriftsoftsensorbasedinautoencoder
AT edgarbahilo conditionassessmentofindustrialgasturbinecompressorusingadriftsoftsensorbasedinautoencoder
AT manelvelasco conditionassessmentofindustrialgasturbinecompressorusingadriftsoftsensorbasedinautoencoder
AT cecilioangulo conditionassessmentofindustrialgasturbinecompressorusingadriftsoftsensorbasedinautoencoder
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