Abstract

ABSTRACT Textile finishing is the last stage to improve fabric aesthetic characteristic and impart functional properties, but at the same time it can produce some undesirable effects like shade change and variation in mechanical properties of fabric. These shade variations are undesirable and create major losses for the textile industry. These losses are related to rework and reprocessing of dyed fabric after finishing. To cope this issue, dyers are making decision on trial and error bases, therefore, this work has been conducted to quantify the shade change value. In this research work, an artificial intelligence-based system is developed to foresee the behavior of color before finishing. Color, shade percentage, finish type, finish concentration, and 31 reflectance values in the visible range 400–700 nm were selected as input for the training of artificial neural networks. The five networks were trained individually for the Δ color coordinates (△L, △a, △b, △C and △h). The networks were tested and cross-validated with 85% accuracy. The developed models were executed for the predictions of △L, △a, △b, △C, and △h with mean absolute errors 0.0765, 0.0869, 0.1528, 0.0829 and 0.1626, respectively. Mean absolute error values are showing a close correlation between actual and predicted values.

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