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Prediction of heat transfer and air permeability properties of light weight nonwovens using artificial intelligence

机译:利用人工智能预测轻质非织造布的传热和透气性

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摘要

Effects of pore sizes and distribution of pore sizes of light weight spunlace nonwovens on the heat transfer and air permeability of these fabrics have been studied. Image analysis has been applied to extract the geometrical features of the cross-section of spunlace samples (pore sizes and distribution of pore sizes) at the different layers in the thickness direction. A neural network model is also developed for the prediction of heat transfer and air permeability with respects to structural properties of light weight nonwovens. Results show that the increase in pore sizes and distribution factor of pore sizes increases the air flow rate and heat transfer properties of the nonwoven fabrics respectively. The neural network model also predicts the air permeability and heat transfer of nonwovens in terms of the measured geometrical properties.
机译:研究了轻质水刺无纺布的孔径和孔径分布对这些织物传热和透气性的影响。图像分析已应用于提取水刺样品横截面在厚度方向上不同层的几何特征(孔径和孔径分布)。还开发了一种神经网络模型,用于预测轻质非织造布的传热和透气性。结果表明,孔径的增加和孔径分布因子的增加分别提高了非织造织物的空气流速和传热性能。神经网络模型还根据测得的几何特性预测非织造材料的透气性和传热。

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