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In this research, artificial neural networks, one of the most common branches of artificial intelligence, were used to evaluate the diameter of the cotton yarn. The necessary data were collected and practical tests were carried out. Then, an algori thm for the artificial neural network was established, which provides the possibility of determining the yarn diameter from the input variables, represented by the count and twist yarn. Where after the creation of many networks, one was selected which gave the lowest error rate.
research The aim of this is to find an explicit relationship between the strength of fibers, bundle and yarns. The CV values of the strength are given as well. This provides a relatively simple method for estimation of staple yarn strength, while a voiding some difficulties of an empirical method. The effects of important factors such as fiber length and thickness, twist and count of yarn are considered. The results are verified by published data in Mechanical Engineering of Textile Industries and Their Technologies, Faculty of Mechanical and Electrical Engineering, Damascus University. and also in Al-Kumasiah company in Damascus city. This research provides suggestions if we apply it it will help in estimating directly the yarn strength without manufacturing and suitable testing of the yarn.
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