Predicting saturation for a new fabric using artificial intelligence (fuzzy logic): experimental part
DOI:
https://doi.org/10.56294/dm2024251Keywords:
Weaving, Fuzzy logic, Modelling, Saturation Index, WeaveabilityAbstract
Weaving saturation can have harmful consequences, such as problems with loom performance, accelerated wear of mechanical parts and loss of raw materials. To avoid these problems, when designing and creating new fabrics, the densities and yarn qualities must be carefully matched with the weaves to ensure successful testing. To facilitate this task, this study focuses on the development of a practical fuzzy logic model for predicting the saturation of new fabrics. An experimental part was carried out to validate this fuzzy model. The fabric samples used in this study came from three different types of weaves, namely plain, twill and satin. These samples also included five weft counts (Nm) and eight different densities. The results obtained using the fuzzy logic model developed were compared with experimental values. The prediction results were satisfactory and precise, demonstrating the effectiveness of the fuzzy logic model developed. The mean absolute error of the calculated fuzzy model was 1,97 %. It was therefore confirmed that this fuzzy model was both fast and reliable for predicting the saturation of new fabric
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Copyright (c) 2024 Mhammed El Bakkali, Redouane Messnaoui, Mustapha Elkhaoudi, Omar Cherkaoui, Aziz Soulhi (Author)
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