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Modelling and prediction of antibacterial activity of knitted fabrics made from silver nanocomposite fibres using soft computing approaches

机译:用软计算方法对由银纳米复合纤维制成的针织织物抗菌活性的建模与预测

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摘要

Antibacterial activity of knitted fabrics has been modelled and predicted by using two soft computing approaches, namely artificial neural network (ANN) and adaptive network-based fuzzy inference system (ANFIS). Four parameters, namely proportion of polyester-silver nanocomposite fibres in yarn, yarn count (diameter), machine gauge and type of fabric (100% polyester or 50:50 polyester-cotton), were used as input parameters for predicting antibacterial activity of knitted fabrics. For each of the input parameters, two fuzzy sets (low and high) were considered to reduce the complexity of ANFIS model. The sixteen linguistic fuzzy rules trained by ANFIS were able to explain the relationship between input parameters and antibacterial activity. A comparison between ANN and ANFIS models has also been presented. Both the models predicted the antibacterial activity of knitted fabrics with very good prediction accuracy in the training and testing data sets with coefficient of determination greater than 0.92 and mean absolute prediction error less than 5%. The robustness of the prediction results against data partitioning between training and testing sets has also been investigated. It is found that prediction accuracy of both the models was quite robust with ANFIS showing better performance with lesser number of training data.
机译:通过使用两个软计算方法,即人工神经网络(ANN)和基于自适应网络的模糊推理系统(ANFIS),通过建模和预测针织织物的抗菌活性。四个参数,即纱线,纱线计数(直径),机床(直径),机床(100%涤纶或50:50涤纶棉)中的聚酯 - 银纳米复合纤维的比例用作预测针织抗菌活性的输入参数面料。对于每个输入参数,考虑了两个模糊组(低和高)以降低ANFIS模型的复杂性。 ANFIS培训的十六个语言模糊规则能够解释输入参数和抗菌活动之间的关系。 ANN和ANFIS模型的比较也呈现。这两种模型都预测了针织织物的抗菌活性,在训练中具有非常好的预测精度,并且测试数据集具有大于0.92的判定系数,并且指示绝对预测误差小于5%。还研究了预测结果对训练和测试集之间的数据分区的鲁棒性。结果发现,两种模型的预测准确性都具有较强的培训数据显示更好的性能。

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