Estimation of high energy steam piping degradation using hybrid recurrent neural networks

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dc.contributor.author Van Niekerk, Johannes Lodewikus
dc.contributor.author Heyns, P.S. (Philippus Stephanus)
dc.contributor.author Hindley, M.P.
dc.contributor.author Erasmus, C.
dc.date.accessioned 2020-11-26T09:07:26Z
dc.date.available 2020-11-26T09:07:26Z
dc.date.issued 2020-09
dc.description.abstract The degradation of high energy piping systems is very complex to simulate due to the many variables that influence the useful lives of such systems. Estimation of the extent of degradation is however important in the maintenance planning process. In this research the use of data driven machine learning techniques to deal with this complex problem is investigated. A hybrid recurrent neural network is created that consists of a combined recurrent neural network and a feed forward neural network. The hybrid model is trained on historical data that has been captured over a six-year time period. The following variables related to piping system components are used as inputs to the machine learning model: operating temperature and pressure time history, distance to the closest anchor point, distances to neighbouring supports, elevation survey readings, as well as the last known creep damage measurements on the component. The model is created in Python using the Tensorflow library. A recurrent neural networks (RNN) is employed, namely the gated recurrent unit (GRU). The adaptive movement estimation optimization algorithm, called Adam, is used to optimize the machine learning model. The trained model is able to predict the degradation classification of a component with an accuracy of up to 92% on the training dataset and up to 55% on the validation data set. When using this model to predict components with high creep damage, more than 400 voids per a hit rate of 25% is achieved. The current system employed at operating power stations shows a historic hit rate of 14%. This is a significant increase in performance and could be used to compile more efficient inspection plans. The model is successful in recognising patterns within the data and offers an automated way to parse large data sets that consist of a temporal and static data mixture simultaneously. Conventional data driven models are only able to look at either temporal data or static data. This suggests a generic approach to make objective decisions on similar complex data driven problems and its application is not limited to this particular problem. The methods applied in this research are expected to perform even better on problems where the frequency of data collection is higher than what is used in this research. en_ZA
dc.description.department Mechanical and Aeronautical Engineering en_ZA
dc.description.librarian hj2020 en_ZA
dc.description.uri http://www.elsevier.com/locate/ijpvp en_ZA
dc.identifier.citation Van Niekerk, J.L., Heyns, P.S., Hindley, M.P. et al. 2020, 'Estimation of high energy steam piping degradation using hybrid recurrent neural networks', International Journal of Pressure Vessels and Piping, vol. 186, art. 104127, pp. 1-10. en_ZA
dc.identifier.issn 0308-0161 (print)
dc.identifier.issn 1879-3541 (online)
dc.identifier.other 10.1016/j.ijpvp.2020.104127
dc.identifier.uri http://hdl.handle.net/2263/77183
dc.language.iso en en_ZA
dc.publisher Elsevier en_ZA
dc.rights © 2020 Elsevier Ltd. All rights reserved. Notice : this is the author’s version of a work that was accepted for publication in International Journal of Pressure Vessels and Piping. Changes resulting from the publishing process, such as peer review, editing, corrections, structural formatting, and other quality control mechanisms may not be reflected in this document. A definitive version was subsequently published in International Journal of Pressure Vessels and Piping , vol. 186, art. 104127, pp. 1-10, 2020. doi : 10.1016/j.ijpvp.2020.104127. en_ZA
dc.subject Recurrent neural network (RNN) en_ZA
dc.subject Gated recurrent unit (GRU) en_ZA
dc.subject Machine learning en_ZA
dc.subject High pressure pipework en_ZA
dc.subject Condition based maintenance en_ZA
dc.subject Creep degradation estimation en_ZA
dc.subject Power plant en_ZA
dc.subject Pipe elevation survey en_ZA
dc.subject Long short-term memory (LSTM) en_ZA
dc.subject.other Engineering, built environment and information technology articles SDG-04
dc.subject.other SDG-04: Quality education
dc.subject.other Engineering, built environment and information technology articles SDG-07
dc.subject.other SDG-07: Affordable and clean energy
dc.subject.other Engineering, built environment and information technology articles SDG-08
dc.subject.other SDG-08: Decent work and economic growth
dc.subject.other Engineering, built environment and information technology articles SDG-09
dc.subject.other SDG-09: Industry, innovation and infrastructure
dc.subject.other Engineering, built environment and information technology articles SDG-12
dc.subject.other SDG-12: Responsible consumption and production
dc.subject.other Engineering, built environment and information technology articles SDG-13
dc.subject.other SDG-13: Climate action
dc.title Estimation of high energy steam piping degradation using hybrid recurrent neural networks en_ZA
dc.type Preprint Article en_ZA


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