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Optimization and prediction of ultra-fine glass fiber felt process parameters based on artificial neural network

机译:基于人工神经网络的超细玻璃纤维毡工艺参数的优化与预测

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Ultra-fine glass fiber felt (fiber diameter ?3?μm) is prepared by the flame blowing process with superior thermal insulation and sound insulation. It is widely used in construction and aerospace by improving its uniformity and fiber diameter to further enhance its thermal and acoustic insulation properties. In this article, the purpose is further to create a smart manufacturing system using artificial neural network to provide analysis, judgment, and optimization for the manufacture of aerospace-grade ultra-fine glass fiber felt. When there were 11 neurons in the hidden layer, both the relative error Z values of the uniformity and the fiber diameter were the smallest, which were 0.0382 and 0.0073, respectively. So the structure 3?[11]1–2 with the back-propagation training algorithm was the most adaptive model, which was proved by comparing the mean relative error. In addition, after comparison with the measured data, the predicted and measured values are very similar and the error between them is small, so this structure has been confirmed to have a high accuracy. Finally, three-dimensional planes for the predicted uniformity and fiber diameter as a function of each process parameters are established. The predictive quality was pretty satisfactory, which can be applied to predict new data in the same knowledge domain.
机译:通过具有优异的隔热和隔音的火焰吹塑方法,制备超细玻璃纤维毡(纤维直径Δ3≤μm)。它通过提高其均匀性和纤维直径来广泛用于建筑和航空航天,以进一步增强其热和声学绝缘性。在本文中,目的进一步创建了使用人工神经网络的智能制造系统,以提供用于制造航空航天级超细玻璃纤维毡的分析,判断和优化。当隐藏层中有11个神经元时,均匀性和纤维直径的相对误差 z值分别为0.0382和0.0073。因此,具有背部传播训练算法的结构3?[11] 1-2是最适应性的模型,通过比较平均相对误差来证明。另外,与测量数据进行比较后,预测和测量值非常相似,并且它们之间的误差很小,因此已经确认该结构具有高精度。最后,建立了作为每个工艺参数的函数的预测均匀性和纤维直径的三维平面。预测质量非常令人满意,可以应用于预测相同知识域中的新数据。

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