Machine learning for condition monitoring in hydropower plants using a neural network

The hydro power industry stands for new challenges due to a more fluctuating production fromwind and solar power. This requires more regulation of the production in the hydro powerstations, which increases maintenance demands. An oil leakage has not only consequencessuch as downtimes and maintenance...

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Main Author: Stark, Tina
Format: Others
Language:English
Published: Luleå tekniska universitet, Institutionen för teknikvetenskap och matematik 2019
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:ltu:diva-75303
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spelling ndltd-UPSALLA1-oai-DiVA.org-ltu-753032019-08-13T04:27:38ZMachine learning for condition monitoring in hydropower plants using a neural networkengStark, TinaLuleå tekniska universitet, Institutionen för teknikvetenskap och matematik2019Machine learninghydropowercondition monitoringneural networkKaplanturbinefeedforwardnetEngineering and TechnologyTeknik och teknologierThe hydro power industry stands for new challenges due to a more fluctuating production fromwind and solar power. This requires more regulation of the production in the hydro powerstations, which increases maintenance demands. An oil leakage has not only consequencessuch as downtimes and maintenance costs, but also an environmental impact. Skellefte ̊aKraft is working towards reaching a condition based maintenance. Therefore, the purpose ofthis master thesis is to develop a model using a feedforward neural network to predict the oillevel in the control system of a Kaplan turbine and map which sensor signals that are required.The thesis will cover data from two hydro power stations, Grytfors and B ̊atfors, each ofwhich has two units, G1 and G2. Due to limitations of the database Skellefte ̊a Kraft areusing, the data has minute resolution and covers two months, December and January. Themodel is developed in MATLAB using their Deep Learning toolbox and the neural networkfeedforwardnet. Before training and testing the model, an optimization was done. Grytforshas a full range of sensor signals while B ̊atfors has half the amount and therefore, the datafor Grytfors was used in the optimization. A grid search was done to optimize the hyperpa-rameters using cross validation. To map which input parameters that are required a featureselection was done.From the result of the feature selection, power, accumulator levels 1 and 2 and pressurewere chosen as the input parameters for Grytfors. For B ̊atfors, all of the the existing sensorsignals were used instead. The model is then trained and tested for the two different powerstations. For Grytfors, the predicted oil level follows the pattern of the real oil level but thetest error is around 15-20 liter. Four different tests were done for B ̊atfors. The two firstfor unit 1, the third for unit 2 and the fourth on both units to investigate the potential of ageneral model for one power station. For B ̊atfors, the first two tests have test errors of around4-6 liters. The third and fourth tests have test errors of around 1.5 liter. In the first twotests, the December data contains a potential refill sequence and in the third test, for unit2, the data contains start and stop sequences. The results showed the importance of havingcomprehensive training data. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:ltu:diva-75303application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Machine learning
hydropower
condition monitoring
neural network
Kaplan
turbine
feedforwardnet
Engineering and Technology
Teknik och teknologier
spellingShingle Machine learning
hydropower
condition monitoring
neural network
Kaplan
turbine
feedforwardnet
Engineering and Technology
Teknik och teknologier
Stark, Tina
Machine learning for condition monitoring in hydropower plants using a neural network
description The hydro power industry stands for new challenges due to a more fluctuating production fromwind and solar power. This requires more regulation of the production in the hydro powerstations, which increases maintenance demands. An oil leakage has not only consequencessuch as downtimes and maintenance costs, but also an environmental impact. Skellefte ̊aKraft is working towards reaching a condition based maintenance. Therefore, the purpose ofthis master thesis is to develop a model using a feedforward neural network to predict the oillevel in the control system of a Kaplan turbine and map which sensor signals that are required.The thesis will cover data from two hydro power stations, Grytfors and B ̊atfors, each ofwhich has two units, G1 and G2. Due to limitations of the database Skellefte ̊a Kraft areusing, the data has minute resolution and covers two months, December and January. Themodel is developed in MATLAB using their Deep Learning toolbox and the neural networkfeedforwardnet. Before training and testing the model, an optimization was done. Grytforshas a full range of sensor signals while B ̊atfors has half the amount and therefore, the datafor Grytfors was used in the optimization. A grid search was done to optimize the hyperpa-rameters using cross validation. To map which input parameters that are required a featureselection was done.From the result of the feature selection, power, accumulator levels 1 and 2 and pressurewere chosen as the input parameters for Grytfors. For B ̊atfors, all of the the existing sensorsignals were used instead. The model is then trained and tested for the two different powerstations. For Grytfors, the predicted oil level follows the pattern of the real oil level but thetest error is around 15-20 liter. Four different tests were done for B ̊atfors. The two firstfor unit 1, the third for unit 2 and the fourth on both units to investigate the potential of ageneral model for one power station. For B ̊atfors, the first two tests have test errors of around4-6 liters. The third and fourth tests have test errors of around 1.5 liter. In the first twotests, the December data contains a potential refill sequence and in the third test, for unit2, the data contains start and stop sequences. The results showed the importance of havingcomprehensive training data.
author Stark, Tina
author_facet Stark, Tina
author_sort Stark, Tina
title Machine learning for condition monitoring in hydropower plants using a neural network
title_short Machine learning for condition monitoring in hydropower plants using a neural network
title_full Machine learning for condition monitoring in hydropower plants using a neural network
title_fullStr Machine learning for condition monitoring in hydropower plants using a neural network
title_full_unstemmed Machine learning for condition monitoring in hydropower plants using a neural network
title_sort machine learning for condition monitoring in hydropower plants using a neural network
publisher Luleå tekniska universitet, Institutionen för teknikvetenskap och matematik
publishDate 2019
url http://urn.kb.se/resolve?urn=urn:nbn:se:ltu:diva-75303
work_keys_str_mv AT starktina machinelearningforconditionmonitoringinhydropowerplantsusinganeuralnetwork
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