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Modeling of liquid desiccant cooling and dehumidification system based on artificial neural network

机译:基于人工神经网络的液体干燥剂除湿除湿系统建模

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Liquid desiccant dehumidification system (LDDS) has emerged as an energy-efficient approach for air dehumidification. In this paper, a simple model for the liquid desiccant cooling and dehumidification air conditioning (LDCDAC) system is proposed. The model is built by using artificial neural network (ANN) to describe the cooling, dehumidification and regeneration performance of the LDCDAC system. The system outlet parameters, such as chilled water temperature, air temperature and humidity, can be calculated directly from the inlet parameters. A multilayer neural network is adopted, and the ANN model is trained by the experimental data collected under different operating conditions. The model predictions of the heat and mass transfer rates are compared with the experimental values. The results indicate that the model predicting errors are within ±8%. The proposed model can be used in control and optimization applications of the LDCDAC system.
机译:液体干燥剂除湿系统(LDDS)已成为一种高效的空气除湿方法。本文提出了一种简单的液体干燥剂除湿空调系统(LDCDAC)模型。该模型是使用人工神经网络(ANN)建立的,用于描述LDCDAC系统的冷却,除湿和再生性能。系统出口参数,例如冷冻水温度,空气温度和湿度,可以直接从入口参数中计算得出。采用了多层神经网络,并通过在不同工况下收集的实验数据对神经网络模型进行训练。将传热和传质速率的模型预测与实验值进行比较。结果表明,该模型的预测误差在±8%以内。该模型可用于LDCDAC系统的控制和优化应用。

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