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Development of a process modelling methodology and condition monitoring platform for air-cooled condensers

Air-cooled condensers (ACCs) are a type of dry-cooling technology that has seen an increase in implementation globally, particularly in the power generation industry, due to its low water consumption. Unfortunately, ACC performance is susceptible to changing ambient conditions, such as dry bulb temp...

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Main Author: Haffejee, Rashid Ahmed
Other Authors: Laubscher, Ryno
Format: Thesis
Language:English
Published: Department of Mechanical Engineering 2021
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access_status_str Open Access
author Haffejee, Rashid Ahmed
author2 Laubscher, Ryno
author_browse Haffejee, Rashid Ahmed
Laubscher, Ryno
author_facet Laubscher, Ryno
Haffejee, Rashid Ahmed
author_sort Haffejee, Rashid Ahmed
collection Thesis
description Air-cooled condensers (ACCs) are a type of dry-cooling technology that has seen an increase in implementation globally, particularly in the power generation industry, due to its low water consumption. Unfortunately, ACC performance is susceptible to changing ambient conditions, such as dry bulb temperatures, wind direction, and wind speeds. This can result in performance reduction under adverse ambient conditions, which leads to increased turbine back pressures and in turn, a decrease in generated electricity. Therefore, this creates a demand to monitor and predict ACC performance under changing ambient conditions. This study focuses on modelling a utility-scale ACC system at steady-state conditions applying a 1-D network modelling approach and using a component-level discretization approach. This approach allowed for each cell to be modelled individually, accounting for steam duct supply behaviour, and for off-design conditions to be investigated. The developed methodology was based on existing empirical correlations for condenser cells and adapted to model double-row dephlegmators. A utility-scale 64-cell ACC system based in South Africa was selected for this study. The thermofluid network model was validated using site data with agreement in results within 1%; however, due to a lack of site data, the model was not validated for off-design conditions. The thermofluid network model was also compared to the existing lumped approach and differences were observed due to the steam ducting distribution. The effect of increasing ambient air temperature from 25 35  −  C C was investigated, with a heat rejection rate decrease of 10.9 MW and a backpressure increase of 7.79 kPa across the temperature range. Condensers' heat rejection rate decreased with higher air temperatures, while dephlegmators' heat rejection rate increased due to the increased outlet vapour pressure and flow rates from condensers. Off-design conditions were simulated, including hot air recirculation and wind effects. For wind effects, the developed model predicted a decrease in heat rejection rate of 1.7 MW for higher wind speeds, while the lumped approach predicted an increase of 4.9 . MW For practicality, a data-driven surrogate model was developed through machine learning techniques using data generated by the thermofluid network model. The surrogate model predicted systemlevel ACC performance indicators such as turbine backpressure and total heat rejection rate. Multilayer perceptron neural networks were developed in the form of a regression network and binary classifier network. For the test sets, the regression network had an average relative error of 0.3%, while the binary classifier had a 99.85% classification accuracy. The surrogate model was validated to site data over a 3 week operating period, with 93.5% of backpressure predictions within 6% of site data backpressures. The surrogate model was deployed through a web-application prototype which included a forecasting tool to predict ACC performance based on a weather forecast.
format Thesis
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:33:51.607Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2021
publishDateRange 2021
publishDateSort 2021
publisher Department of Mechanical Engineering
publisherStr Department of Mechanical Engineering
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/33706 Development of a process modelling methodology and condition monitoring platform for air-cooled condensers Haffejee, Rashid Ahmed Laubscher, Ryno Air-cooled condenser Dry-cooling 1-D thermofluid network modelling Two-phase flow Machine learning Data-driven surrogate modelling Neural networks Air-cooled condensers (ACCs) are a type of dry-cooling technology that has seen an increase in implementation globally, particularly in the power generation industry, due to its low water consumption. Unfortunately, ACC performance is susceptible to changing ambient conditions, such as dry bulb temperatures, wind direction, and wind speeds. This can result in performance reduction under adverse ambient conditions, which leads to increased turbine back pressures and in turn, a decrease in generated electricity. Therefore, this creates a demand to monitor and predict ACC performance under changing ambient conditions. This study focuses on modelling a utility-scale ACC system at steady-state conditions applying a 1-D network modelling approach and using a component-level discretization approach. This approach allowed for each cell to be modelled individually, accounting for steam duct supply behaviour, and for off-design conditions to be investigated. The developed methodology was based on existing empirical correlations for condenser cells and adapted to model double-row dephlegmators. A utility-scale 64-cell ACC system based in South Africa was selected for this study. The thermofluid network model was validated using site data with agreement in results within 1%; however, due to a lack of site data, the model was not validated for off-design conditions. The thermofluid network model was also compared to the existing lumped approach and differences were observed due to the steam ducting distribution. The effect of increasing ambient air temperature from 25 35  −  C C was investigated, with a heat rejection rate decrease of 10.9 MW and a backpressure increase of 7.79 kPa across the temperature range. Condensers' heat rejection rate decreased with higher air temperatures, while dephlegmators' heat rejection rate increased due to the increased outlet vapour pressure and flow rates from condensers. Off-design conditions were simulated, including hot air recirculation and wind effects. For wind effects, the developed model predicted a decrease in heat rejection rate of 1.7 MW for higher wind speeds, while the lumped approach predicted an increase of 4.9 . MW For practicality, a data-driven surrogate model was developed through machine learning techniques using data generated by the thermofluid network model. The surrogate model predicted systemlevel ACC performance indicators such as turbine backpressure and total heat rejection rate. Multilayer perceptron neural networks were developed in the form of a regression network and binary classifier network. For the test sets, the regression network had an average relative error of 0.3%, while the binary classifier had a 99.85% classification accuracy. The surrogate model was validated to site data over a 3 week operating period, with 93.5% of backpressure predictions within 6% of site data backpressures. The surrogate model was deployed through a web-application prototype which included a forecasting tool to predict ACC performance based on a weather forecast. 2021-08-05T09:12:16Z 2021-08-05T09:12:16Z 2021 2021-08-05T09:10:55Z Master Thesis Masters MSc http://hdl.handle.net/11427/33706 eng application/pdf Department of Mechanical Engineering Faculty of Engineering and the Built Environment
spellingShingle Air-cooled condenser
Dry-cooling
1-D thermofluid network modelling
Two-phase flow
Machine learning
Data-driven surrogate modelling
Neural networks
Haffejee, Rashid Ahmed
Development of a process modelling methodology and condition monitoring platform for air-cooled condensers
thesis_degree_str Master's
title Development of a process modelling methodology and condition monitoring platform for air-cooled condensers
title_full Development of a process modelling methodology and condition monitoring platform for air-cooled condensers
title_fullStr Development of a process modelling methodology and condition monitoring platform for air-cooled condensers
title_full_unstemmed Development of a process modelling methodology and condition monitoring platform for air-cooled condensers
title_short Development of a process modelling methodology and condition monitoring platform for air-cooled condensers
title_sort development of a process modelling methodology and condition monitoring platform for air cooled condensers
topic Air-cooled condenser
Dry-cooling
1-D thermofluid network modelling
Two-phase flow
Machine learning
Data-driven surrogate modelling
Neural networks
url http://hdl.handle.net/11427/33706
work_keys_str_mv AT haffejeerashidahmed developmentofaprocessmodellingmethodologyandconditionmonitoringplatformforaircooledcondensers