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A Neural Network to Predict the Temperature Distribution in Hermetic Refrigeration Compressors

机译:一种神经网络,预测气密制冷压缩机温度分布

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The understanding of heat transfer interactions in refrigeration compressors is of fundamental importance to characterize their overall performance. Certain temperatures, such as those of the motor, oil, shell, and at suction and discharge chambers, have strong influence on the compressor electrical consumption and reliability. Experimental and numerical approaches have been successfully employed to characterize the thermal profile of compressors under different operating conditions. This paper presents a multi-layered feed-forward neural network developed to predict the main temperatures of a hermetic reciprocating compressor. Such a model can be used for different compressor layouts without major modifications, being a fast method for estimating temperatures without the solution of the compression cycle. Predictions of the neural network were compared with experimental data and numerical results from comprehensive thermodynamic simulations, and good agreement was observed in a wide range of evaporating and condensing temperatures. The neural network was found to predict the temperature distribution with sufficient accuracy for compressor analysis and development.
机译:制冷压缩机中传热相互作用的理解是对其整体性能表征的基本重要性。某些温度,例如电动机,油,壳和抽吸和排出室的温度对压缩机的电消耗和可靠性有很大影响。已经成功地使用实验和数值方法来在不同的操作条件下表征压缩机的热曲线。本文介绍了一种开发的多层前馈神经网络,以预测密封往复式压缩机的主要温度。这种模型可用于不同的压缩机布局而无需重大修改,是一种快速估算温度,而不会溶解压缩循环。将神经网络的预测与实验数据进行比较,来自综合热力学模拟的数值结果,并且在广泛的蒸发和冷凝温度下观察到良好的一致性。发现神经网络预测压缩机分析和发育的充分精度的温度分布。

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