机器学习方法在沸腾建模和预测中的应用:综述

M.M. Rashidi , M. Alhuyi Nazari , C. Harley , E. Momoniat , I. Mahariq , N. Ali
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引用次数: 4

摘要

沸腾是指由液体向蒸汽相变而发生的传热机制。与单相传热机制相比,该机制具有在较低温差下传热速率高的优点。考虑到两相传热模拟的复杂性,由于这一现象涉及到各种参数,应用人工神经网络等智能方法可能有助于对这类传热机理进行建模。本文综述了利用机器学习方法对池沸腾传热进行建模的研究,并对其研究成果进行了反映。根据所回顾的工作结果,可以得出结论,使用智能方法可以准确预测池沸腾传热,在某些情况下R2约为0.99。此外,通过应用这些方法,可以预测利用纳米流体或多孔介质情况下的传热。这些模型的准确性和适用范围受考虑的输入、应用的方法和所采用的函数等因素的影响。为相应的智能方法选择合适的参数值,可以提高建模精度。
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Applications of machine learning methods for boiling modeling and prediction: A comprehensive review

Boiling refers to the heat transfer mechanism that occurs due to the phase transition from liquid to vapor. In comparison with single phase heat transfer, this mechanism has several advantages such as much higher rate at lower temperature differences. Regarding the complexities of two phase heat transfer simulation, due to the involvement of various parameters in this phenomenon, applying intelligent methods such as artificial neural networks could be useful for modeling this type of heat transfer mechanism. In the present article, studies on the modeling of pool boiling heat transfer utilizing machine learning methods have been reviewed, and their findings are reflected. According to the outcomes of the reviewed works, it can be concluded that using intelligent methods can provide accurate predictions of pool boiling heat transfer with a R2 of around 0.99 in some cases. In addition, by applying these methods it would be possible to predict the heat transfer in cases of utilizing nanofluids or porous media. The exactness and applicability range of these models is influenced by several elements such as the considered inputs, applied methods and employed functions. Using an appropriate method with optimal parameter values for the relevant intelligent method would lead to higher precision in modeling.

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