A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines
Predictive health monitoring of micro gas turbines can significantly increase the availability and reduce the operating and maintenance costs. Methods for predictive health monitoring are typically developed for large-scale gas turbines and have often focused on single systems. In an effort to enabl...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Elsevier
2021-06-01
|
Series: | Energy and AI |
Subjects: | |
Online Access: | http://www.sciencedirect.com/science/article/pii/S2666546821000185 |
id |
doaj-8f97c59595744a30b5d5fe745f259fcc |
---|---|
record_format |
Article |
spelling |
doaj-8f97c59595744a30b5d5fe745f259fcc2021-06-21T04:26:07ZengElsevierEnergy and AI2666-54682021-06-014100064A data-driven approach for predicting long-term degradation of a fleet of micro gas turbinesTomas Olsson0Enislay Ramentol1Moksadur Rahman2Mark Oostveen3Konstantinos Kyprianidis4Corresponding author.; Division Digital Systems, Industrial Systems, RISE Research Institutes of Sweden, Stora Gatan 36, Västerås 722 12, SwedenDepartment of Financial Mathematics, Fraunhofer Institute for Industrial Mathematics ITWM, Fraunhofer-Platz 1, Kaiserslautern 67663, GermanySchool of Business, Society and Engineering, Mälardalen University, Västerås 721 23, SwedenMicro Turbine Technology B.V., Esp 310, Eindhoven 5633 AE, The NetherlandsSchool of Business, Society and Engineering, Mälardalen University, Västerås 721 23, SwedenPredictive health monitoring of micro gas turbines can significantly increase the availability and reduce the operating and maintenance costs. Methods for predictive health monitoring are typically developed for large-scale gas turbines and have often focused on single systems. In an effort to enable fleet-level health monitoring of micro gas turbines, this work presents a novel data-driven approach for predicting system degradation over time. The approach utilises operational data from real installations and is not dependent on data from a reference system. The problem was solved in two steps by: 1) estimating the degradation from time-dependent variables and 2) forecasting into the future using only running hours. Linear regression technique is employed both for the estimation and forecasting of degradation. The method was evaluated on five different systems and it is shown that the result is consistent (r>0.8) with an existing method that computes corrected values based on data from a reference system, and the forecasting had a similar performance as the estimation model using only running hours as an input.http://www.sciencedirect.com/science/article/pii/S2666546821000185Fleet monitoringMicro gas turbineMachine learningHealth monitoringPredictive maintenancePower generation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Tomas Olsson Enislay Ramentol Moksadur Rahman Mark Oostveen Konstantinos Kyprianidis |
spellingShingle |
Tomas Olsson Enislay Ramentol Moksadur Rahman Mark Oostveen Konstantinos Kyprianidis A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines Energy and AI Fleet monitoring Micro gas turbine Machine learning Health monitoring Predictive maintenance Power generation |
author_facet |
Tomas Olsson Enislay Ramentol Moksadur Rahman Mark Oostveen Konstantinos Kyprianidis |
author_sort |
Tomas Olsson |
title |
A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines |
title_short |
A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines |
title_full |
A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines |
title_fullStr |
A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines |
title_full_unstemmed |
A data-driven approach for predicting long-term degradation of a fleet of micro gas turbines |
title_sort |
data-driven approach for predicting long-term degradation of a fleet of micro gas turbines |
publisher |
Elsevier |
series |
Energy and AI |
issn |
2666-5468 |
publishDate |
2021-06-01 |
description |
Predictive health monitoring of micro gas turbines can significantly increase the availability and reduce the operating and maintenance costs. Methods for predictive health monitoring are typically developed for large-scale gas turbines and have often focused on single systems. In an effort to enable fleet-level health monitoring of micro gas turbines, this work presents a novel data-driven approach for predicting system degradation over time. The approach utilises operational data from real installations and is not dependent on data from a reference system. The problem was solved in two steps by: 1) estimating the degradation from time-dependent variables and 2) forecasting into the future using only running hours. Linear regression technique is employed both for the estimation and forecasting of degradation. The method was evaluated on five different systems and it is shown that the result is consistent (r>0.8) with an existing method that computes corrected values based on data from a reference system, and the forecasting had a similar performance as the estimation model using only running hours as an input. |
topic |
Fleet monitoring Micro gas turbine Machine learning Health monitoring Predictive maintenance Power generation |
url |
http://www.sciencedirect.com/science/article/pii/S2666546821000185 |
work_keys_str_mv |
AT tomasolsson adatadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT enislayramentol adatadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT moksadurrahman adatadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT markoostveen adatadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT konstantinoskyprianidis adatadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT tomasolsson datadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT enislayramentol datadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT moksadurrahman datadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT markoostveen datadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines AT konstantinoskyprianidis datadrivenapproachforpredictinglongtermdegradationofafleetofmicrogasturbines |
_version_ |
1721368894805901312 |