The use of neural nets to simulate the spinning process.

In a previous paper, a description was given of how the spinnability of a given fibre quality on a rotor- or a ring-spinning machine can be predicted with a reliability of 95% by means of a neural network. This paper goes further. It describes how yarn properties can be deduced from fibre properties and spinning-machine settings. In other words, a description is given of how to construct, train, and use a neural network in order to simulate the spinning process (predict yarn properties) on both rotor- and ring-spinning machines with an accuracy of over 95%.