Although textile production is heavily automation-based, it is viewed as
a virgin area with regard to Industry 4.0. When the developments are
integrated into the textile sector, efficiency is expected to increase.
When data mining and machine learning studies are examined in textile
sector, it is seen that there is a lack of data sharing related to
production process in enterprises because of commercial concerns and
confidentiality. In this study, a method is presented about how to
simulate a production process and how to make regression from the time
series data with machine learning. The simulation has been prepared for
the annual production plan, and the corresponding faults based on the
information received from textile glove enterprise and production data
have been obtained. Data set has been applied to various machine
learning methods within the scope of supervised learning to compare the
learning performances. The errors that occur in the production process
have been created using random parameters in the simulation. In order to
verify the hypothesis that the errors may be forecast, various machine
learning algorithms have been trained using data set in the form of time
series. The variable showing the number of faulty products could be
forecast very successfully. When forecasting the faulty product
parameter, the random forest algorithm has demonstrated the highest
success. As these error values have given high accuracy even in a
simulation that works with uniformly distributed random parameters,
highly accurate forecasts can be made in real-life applications as well