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Application of probabilistic deep learning models to simulate thermal power plant processes

Deep learning has gained traction in thermal engineering due to its applications to process simulations, the deeper insights it can provide and its abilities to circumvent the shortcomings of classic thermodynamic simulation approaches by capturing complex inter-dependencies. This works sets out to...

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Main Author: Raidoo, Renita Anand
Other Authors: Laubscher, Ryno
Format: Thesis
Language:English
Published: Department of Mechanical Engineering 2023
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access_status_str Open Access
author Raidoo, Renita Anand
author2 Laubscher, Ryno
author_browse Laubscher, Ryno
Raidoo, Renita Anand
author_facet Laubscher, Ryno
Raidoo, Renita Anand
author_sort Raidoo, Renita Anand
collection Thesis
description Deep learning has gained traction in thermal engineering due to its applications to process simulations, the deeper insights it can provide and its abilities to circumvent the shortcomings of classic thermodynamic simulation approaches by capturing complex inter-dependencies. This works sets out to apply probabilistic deep learning to power plant operations using historic plant data. The first study presented, entails the development of a steady-state mixture density network (MDN) capable of predicting effective heat transfer coefficients (HTC) for the various heat exchanger components inside a utility scale boiler. Selected directly controllable input features, including the excess air ratio, steam temperatures, flow rates and pressures are used to predict the HTCs. In the second case study, an encoder-decoder mixturedensity network (MDN) is developed using recurrent neural networks (RNN) for the prediction of utility-scale air-cooled condenser (ACC) backpressure. The effects of ambient conditions and plant operating parameters, such as extraction flow rate, on ACC performance is investigated. In both case studies, hyperparameter searches are done to determine the best performing architectures for these models. Comparisons are drawn between the MDN model versus standard model architecture in both case studies. The HTC predictor model achieved 90% accuracy which equates to an average error of 4.89 W m2K across all heat exchangers. The resultant time-series ACC model achieved an average error of 3.14 kPa, which translate into a model accuracy of 82%.
format Thesis
id oai:open.uct.ac.za:11427/37790
institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:33:49.949Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2023
publishDateRange 2023
publishDateSort 2023
publisher Department of Mechanical Engineering
publisherStr Department of Mechanical Engineering
record_format dspace
source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/37790 Application of probabilistic deep learning models to simulate thermal power plant processes Raidoo, Renita Anand Laubscher, Ryno Air-cooled condensers Natural convection boilers Time-series prediction Deep learning Mixture density networks Recurrent neural networks Deep learning has gained traction in thermal engineering due to its applications to process simulations, the deeper insights it can provide and its abilities to circumvent the shortcomings of classic thermodynamic simulation approaches by capturing complex inter-dependencies. This works sets out to apply probabilistic deep learning to power plant operations using historic plant data. The first study presented, entails the development of a steady-state mixture density network (MDN) capable of predicting effective heat transfer coefficients (HTC) for the various heat exchanger components inside a utility scale boiler. Selected directly controllable input features, including the excess air ratio, steam temperatures, flow rates and pressures are used to predict the HTCs. In the second case study, an encoder-decoder mixturedensity network (MDN) is developed using recurrent neural networks (RNN) for the prediction of utility-scale air-cooled condenser (ACC) backpressure. The effects of ambient conditions and plant operating parameters, such as extraction flow rate, on ACC performance is investigated. In both case studies, hyperparameter searches are done to determine the best performing architectures for these models. Comparisons are drawn between the MDN model versus standard model architecture in both case studies. The HTC predictor model achieved 90% accuracy which equates to an average error of 4.89 W m2K across all heat exchangers. The resultant time-series ACC model achieved an average error of 3.14 kPa, which translate into a model accuracy of 82%. 2023-04-20T11:13:20Z 2023-04-20T11:13:20Z 2022 2023-04-18T09:33:03Z Master Thesis Masters MSc http://hdl.handle.net/11427/37790 eng application/pdf Department of Mechanical Engineering Faculty of Engineering and the Built Environment
spellingShingle Air-cooled condensers
Natural convection boilers Time-series prediction
Deep learning
Mixture density networks
Recurrent neural networks
Raidoo, Renita Anand
Application of probabilistic deep learning models to simulate thermal power plant processes
thesis_degree_str Master's
title Application of probabilistic deep learning models to simulate thermal power plant processes
title_full Application of probabilistic deep learning models to simulate thermal power plant processes
title_fullStr Application of probabilistic deep learning models to simulate thermal power plant processes
title_full_unstemmed Application of probabilistic deep learning models to simulate thermal power plant processes
title_short Application of probabilistic deep learning models to simulate thermal power plant processes
title_sort application of probabilistic deep learning models to simulate thermal power plant processes
topic Air-cooled condensers
Natural convection boilers Time-series prediction
Deep learning
Mixture density networks
Recurrent neural networks
url http://hdl.handle.net/11427/37790
work_keys_str_mv AT raidoorenitaanand applicationofprobabilisticdeeplearningmodelstosimulatethermalpowerplantprocesses