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Energy analysis of single-stage LiBr-water vapour absorption refrigeration system using artificial neural network approach

机译:基于人工神经网络的单级溴化锂-水蒸气吸收式制冷系统能量分析

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摘要

In this study, artificial neural network (ANN) has been used as a new approach for carrying out the energy analysis of a single-stage absorption refrigeration cycle with water-lithium bromide as the working fluid pair. Energy analysis of an absorption system is a very complicated process mainly because of the limited experimental data and analytical functions required for calculating the thermodynamic properties of fluid pairs, which usually involves the solution of complex differential equations. Instead of complex differential equation and limited experimental data, faster and simpler solutions were obtained by using equations derived from the ANN model. As seen from the results obtained, the calculated thermodynamic properties are within acceptable results. Thermodynamic properties of each point in the cycle are calculated using related equations of the state. Heat How rate of each component in the cycle and some performance parameters are calculated from the first law analysis. The results show that a high coefficient of performance value is obtained at high generator and evaporator temperatures and also at low condenser and absorber temperatures.
机译:在这项研究中,人工神经网络(ANN)已被用作以水-溴化锂为工作液对的单级吸收式制冷循环进行能量分析的新方法。吸收系统的能量分析是一个非常复杂的过程,主要是因为计算流体对的热力学性质所需的实验数据和分析功能有限,通常涉及复杂的微分方程的求解。代替复杂的微分方程式和有限的实验数据,通过使用从ANN模型派生的方程式,可以获得更快,更简单的解决方案。从获得的结果可以看出,计算的热力学性质在可接受的结果之内。使用状态的相关方程式计算循环中每个点的热力学性质。从第一定律分析中计算出循环中各成分的热效率以及一些性能参数。结果表明,在较高的发生器和蒸发器温度以及较低的冷凝器和吸收器温度下,可以获得较高的性能系数。

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