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首页> 外文期刊>International Journal of Heat and Mass Transfer >Application of neural networks to predict the transient performance of a Run-Around Membrane Energy Exchanger for yearly non-stop operation
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Application of neural networks to predict the transient performance of a Run-Around Membrane Energy Exchanger for yearly non-stop operation

机译:神经网络在预测每年不间断运行的全能膜式能量交换器的瞬态性能中的应用

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摘要

Application of soft computing methods (i.e. neural networks and genetic algorithms) for modeling and controlling the dynamic and transient behavior of systems has been increasing during the last decade. In this study, a neural network (NN) model is developed to predict the transient heat and moisture trans fer performances (i.e., the sensible and latent effectivenesses) of a novel HVAC energy exchanger, called the Run-Around Membrane Energy Exchanger (RAMEE), which is able to transfer both heat and moisture between exhaust and supply air streams. The training data set for the NN model covers a wide range of outdoor conditions and system parameters and is produced using a Transient Numerical Model (TNM) that has been experimentally validated for some transient applications. Two separate NNs (one for sen sible and one for latent energy transfer) each with 12 inputs and one output, are selected to represent the RAMEE. The ability of NN models to predict the performance of a given RAMEE design in different cli mates is numerically validated. The mean absolute difference (MAD) between the results of TNM and NN models for different locations are 0.5 ℃ for the sensible model and 0.2 gv/kga for the latent model, which indicates satisfactory agreement for energy exchange calculations. These NN models are very fast and easy to use therefore, they might be used for design purposes or estimating the annual energy sav ings in different buildings with continuous operation and a RAMEE in their HVAC system.
机译:在过去的十年中,用于建模和控制系统的动态和瞬态行为的软计算方法(即神经网络和遗传算法)的应用不断增加。在这项研究中,开发了一个神经网络(NN)模型来预测新型HVAC换热器,即周转膜能量交换器(RAMEE)的瞬态热和湿气传递性能(即,有效的和潜在的有效性)。 ,它能够在排气和送风之间传递热量和水分。 NN模型的训练数据集涵盖了广泛的室外条件和系统参数,并使用经过瞬态数值模型(TNM)生成的,该模型已通过实验验证用于某些瞬态应用。选择两个分别具有12个输入和一个输出的NN(一个用于感知,一个用于潜能传递)来表示RAMEE。数值模型验证了神经网络模型预测给定RAMEE设计在不同气候下的性能的能力。 TNM模型和NN模型在不同位置的结果之间的平均绝对差(MAD)对于敏感模型为0.5℃,对于潜在模型为0.2 gv / kga,这表明能量交换计算令人满意。这些NN模型非常快速且易于使用,因此,它们可用于设计目的或通过连续运行并在其HVAC系统中使用RAMEE来估算不同建筑物中的年度节能量。

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