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Machine learning-based prediction methods for flow boiling in plate heat exchangers

机译:基于机器学习的流沸器中的预测方法

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The present paper describes novel machine learning-based prediction methods for local heat transfer coefficient and local frictional pressure gradient of flow boiling within plate heat exchangers. Plate heat exchangers are becoming a valuable alternative, and in most cases a preferred solution, compared to traditional tube-in-tube and shell-and-tube heat exchangers, as they provide higher flexibility, compactness and lower weight. Using a consolidated dataset from the open literature, the proposed machine learning-based prediction methods take system geometry and flow conditions, such as mass flow rate, saturation temperature, heat flux, etc., as input parameters to predict the local heat transfer coefficient and local frictional pressure gradient. Compared to non-linear regression-based methods previously reported, the new methods significantly improve the prediction accuracy and can be easily adopted to design and analyze thermal performance of two-phase cooling systems. Reliable, accurate and validated prediction methods allow critical two-phase cooling systems to be readily designed given geometric parameters and operating conditions.
机译:本文介绍了基于新型机器学习的局部传热系数预测方法,包括板式热交换器内流动沸腾的局部传热系数和局部摩擦压力梯度。板式热交换器正在成为有价值的替代方案,并且在大多数情况下,与传统的管内管和管道热交换器相比,优选的解决方案,因为它们提供更高的柔韧性,紧凑性和更低的重量。从开放文献中使用综合数据集,所提出的基于机器学习的预测方法采用系统几何和流量条件,如质量流量,饱和温度,热量通量等,作为输入参数,以预测局部传热系数和局部摩擦压力梯度。与先前报道的非线性回归的方法相比,新方法显着提高了预测精度,可以易于采用设计和分析两相冷却系统的热性能。可靠,准确和验证的预测方法允许临界两相冷却系统可容易地设计几何参数和操作条件。

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