Assessing parallel path cooling tower performance via artificial neural networks

•An Artificial Neural Network (ANN) was trained to invert the Merkel model to calculate the outlet water temperature of a forced-air evaporative cooling tower.•Calculation efficiency improved by approximately four orders of magnitude compared to inverting the Merkel model via simplex-based optimizat...

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Veröffentlicht in:Annals of nuclear energy 2023-11, Vol.192 (1), p.109993, Article 109993
Hauptverfasser: Katinas, Christopher, d'Entremont, Brian, Ray, William, Willis, Michael, Reichardt, Thomas
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Sprache:eng
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Zusammenfassung:•An Artificial Neural Network (ANN) was trained to invert the Merkel model to calculate the outlet water temperature of a forced-air evaporative cooling tower.•Calculation efficiency improved by approximately four orders of magnitude compared to inverting the Merkel model via simplex-based optimization.•Three case studies are provided to demonstrate the capability of improved computational speed. Real-time monitoring of a research nuclear reactor, a system in which all generated power is dissipated to the environment, can be performed via analysis of the heat rejection from the cooling system. Given an inlet water temperature and flow rate, the reactor power can be well-approximated from the outlet water temperature; however, the instrumentation to measure outlet conditions may not be robust or accurate. If we know how a cooling tower performs from historical data, but cannot measure the outlet temperature, a mathematical representation of the system can be inverted to obtain the outlet water temperature that describes the cooling capacity. Unfortunately, model inversion processes are computationally expensive. To address this, an artificial neural network (ANN) is implemented to assess the performance of a multi-cell cooling tower for a nuclear reactor. This approach leverages the Merkel model to obtain an extensive data set describing performance of the cooling tower cells throughout a wide array of potential operating conditions. The Merkel model is expressed as a function of four parameters: the inlet and outlet water temperatures, inlet air wet bulb temperature, and ratio of liquid-to-gas mass flow rates (L/G), which together provide a non-dimensional number indicative of cooling tower performance, called the Merkel integral. Computing a 4-dimensional data structure that describes finite combinations of the Merkel integral, an inverse model is then generated using an ANN to determine the cell outlet water temperature from the other three model parameters along with the computed Merkel integral. Compared to traditional model inversion methods, the ANN reduces the computational time by approximately 4 orders of magnitude, with effectively no sacrifice to solution accuracy, and could be applied for different cooling towers in the event the performance curve is known. Three use cases of the ANN are then reviewed: (1) determining the cell outlet water temperatures when gas flow at rated conditions (GFRC) is known, (2) performing the prior case without know
ISSN:0306-4549
1873-2100
DOI:10.1016/j.anucene.2023.109993