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首页> 外文期刊>International Journal of Refrigeration >Data driven assessment of a small scale evaporative condenser based on a combined artificial neural network with design of experiment approach
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Data driven assessment of a small scale evaporative condenser based on a combined artificial neural network with design of experiment approach

机译:基于组合人工神经网络的小型蒸发冷凝器的数据驱动评估,实验方法设计

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The performance of evaporative condensers depends on operating parameters such as the state of ambient air and circulating water (environmental) and the condition of the refrigerant fluid (operational). The equipment behavior can be analyzed in a laboratory environment with the aid of Design of Experiment DoE tools, which effectively assists in the identification of trends and couplings, but the procedure depends on data collected in a controlled manner. The aim of this paper is to analyze the behavior of a small-scale evaporative condenser tested in the laboratory environment with the aid of DoE, based on an uncontrolled experimental dataset. A data driven approach is applied to the problem by creating an neural network algorithm capable of reproducing the equipment behavior as if it were obtained from controlled factors, with coefficients of determination of 0.973 and 0.988 for the heat reject (q)over dot(cond) and the overall heat transfer coefficient U-cond. General functions for these outputs are obtained out from a factorial 2(k) DoE approach, allowing to identify the environmental air wet bulb temperature T-wb,( in) as the most relevant parameter for the (q) over bar (cond )prediction and (m)over dot(sw) and (T-wb, (in,) (m)( )over dot(air)) as the most relevant ones concerning U(cond )prediction. The errors from these prediction functions are calculated to be 3.48% and 3.69% respectively, with coefficient of determination of 0.793 and 0.752. The proposed data driven metamodels showed to be useful tools to represent and simulate complex systems in a much easier way, concerning both their mathematical implementation and computational running time. (C) 2020 Elsevier Ltd and IIR. All rights reserved.
机译:蒸发冷凝器的性能取决于操作参数,例如环境空气和循环水(环境)的状态和制冷剂流体(操作)的状况。借助实验DOE工具的设计,可以在实验室环境中分析设备行为,从而有效地有助于识别趋势和耦合,但程序取决于以受控方式收集的数据。本文的目的是通过基于不受控制的实验数据集分析在实验室环境中测试的小型蒸发冷凝器的行为。通过创建一种能够再现设备行为的神经网络算法来应用数据驱动方法,因为它是从受控因素获得的,而在点(COND)上的热拒绝(Q)的测定系数为0.973和0.988和整体传热系数U-Cond。这些输出的一般功能是从因子2(k)DOE方法中获得的,允许将环境空气湿灯泡温度T-WB,(IN)识别为(Q)上的最相关参数(COND)预测(m)通过点(sw)和(t-wb,(in,)(m)(m)(m)(m)(m)),作为关于U(COND)预测的最相关的。从这些预测功能的误差分别计算为3.48%和3.69%,测定系数为0.793和0.752。所提出的数据驱动元模型显示,以更容易的方式表示和模拟复杂系统的有用工具,涉及其数学实现和计算运行时间。 (c)2020 Elsevier Ltd和IIR。版权所有。

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