Title of article :
Optimizing sliver quality using Artificial Neural Networks in ring spinning
Author/Authors :
Abd-Ellatif, Samar Ahmed Mohsen Alexandria University - Faculty of Engineering - Textile Department, Egypt
From page :
637
To page :
642
Abstract :
Sliver evenness is a very important parameter affecting the quality of the yarn produced. Therefore, controlling the sliver evenness is of major importance. Auto-levelers mounted on modern Drawing Frames should be accurately adjusted to help to achieve this task. The Leveling Action Point (LAP) is one of the important auto-leveling parameters which highly influence the evenness of the slivers produced. Its adjustment is therefore of a crucial importance. In this research work, Artificial Neural Networks are applied to predict the optimum value of the LAP under different productions and material conditions. Five models are developed and tested for their ability to predict the optimum value of the LAP from the most influencing fiber and process parameters. As a final step, a statistical multiple regression model was developed to conduct a comparison between the performance of the developed Artificial Neural Network model and the currently applied statistical techniques.
Keywords :
Sliver , Neural Networks , Backpropagation , Quality , Optimization
Journal title :
Alexandria Engineering Journal
Journal title :
Alexandria Engineering Journal
Record number :
2540284
Link To Document :
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