Neural Network Classification of the Unknotted Joints of Yarn Ends
Research and development
Author:
- Lewandowski Stanisław
Institute of Textile Engineering and Polymer Materials, University of Bielsko-Biala, Bielsko-Biała, Poland
 Full text | Abstract: The artificial neural network elaborated in this research enabled to recognise and multicriterially classify the unknotted joints of yarn ends. Worsted weaving woollen yarn with a linear mass of 15 tex was used as an example. A 10-step quality scale was applied in order to increase the accuracy of recognition and classification of joints. Such a neural network
design can be applied for the quality classification of such joints, as well as in other fields of the textile industry. |
Tags: neural network, classification scale, unknotted joints, spliced yarn ends, wool yarn.
Citation: Lewandowski S.; Neural Network Classification of the Unknotted Joints of Yarn Ends. FIBRES & TEXTILES in Eastern Europe 2011, Vol. 19, No. 3 (86) pp. 37-43.
Published in issue no 3 (86) / 2011, pages 37–43.