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Artificial neural network analysis of liquid desiccant dehumidification system

机译:液体干燥剂除湿系统的人工神经网络分析

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摘要

The dehumidification process involves simultaneous heat and mass transfer and reliable transfer coefficients are required in order to analyze the system. This has been proved to be difficult and many assumptions are made to simplify the analysis. The present research proposes the use of ANN based model in order to simulate the relationship between inlet and outlet parameters of the dehumidifier. For the analysis, randomly packed dehumidifier with lithium chloride as the liquid desiccant is chosen. A multilayer ANN is used to investigate the performance of dehumidifier. For training ANN models, data is obtained from analytical equations. Eight parameters are used as inputs to the ANN, namely: air and desiccant flow rates, air and desiccant inlet temperatures, air inlet humidity, desiccant inlet concentration, dimensionless temperature ratio, and inlet temperature of the cooling water. The outputs of the ANN are the water condensation rate and the outlet desiccant concentration as well as its temperature. ANN predictions for these parameters are validated well with experimental values available in the literature with R2 value in the range of 0.9251-0.9660. This study shows that liquid desiccant dehumidification system can be alternatively modeled using ANN with a reasonable degree of accuracy.
机译:除湿过程需要同时进行传热和传质,因此需要可靠的传热系数才能分析系统。已经证明这是困难的,并且进行了许多假设以简化分析。本研究提出使用基于ANN的模型来模拟除湿机入口和出口参数之间的关系。为了进行分析,选择了以氯化锂为液体干燥剂的无规则包装除湿机。多层人工神经网络用于研究除湿机的性能。对于训练ANN模型,可从解析方程中获取数据。八个参数用作ANN的输入,即:空气和干燥剂的流速,空气和干燥剂的入口温度,空气入口的湿度,干燥剂的入口浓度,无量纲的温度比以及冷却水的入口温度。 ANN的输出是水的冷凝率,出口干燥剂的浓度以及温度。这些参数的ANN预测已得到文献中可用的实验值的很好验证,R2值在0.9251-0.9660范围内。这项研究表明,液体干燥剂除湿系统可以替代地使用ANN进行建模,并具有一定的准确度。

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