A deep learning model for controlling the galvanizing process in a production line

Fiorilla, Salvatore (2022) A deep learning model for controlling the galvanizing process in a production line. [Laurea magistrale], Università di Bologna, Corso di Studio in Informatica [LM-DM270]
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Abstract

In the industry of steelmaking, the process of galvanizing is a treatment which is applied to protect the steel from corrosion. The air knife effect (AKE) occurs when nozzles emit a steam of air on the surfaces of a steel strip to remove excess zinc from it. In our work we formalized the problem to control the AKE and we implemented, with the R&D dept.of MarcegagliaSPA, a DL model able to drive the AKE. We call it controller. It takes as input the tuple <t,h,s,c>: a tuple of the physical conditions of the process line (t,h,s) with the target value of the zinc coating (c); and generates the expected tuple of <p,d> (pres and dist) to drive the mechanical nozzles towards the (c). According to the requirements we designed the structure of the network. We collected and explored the data set of the historical data of the smart factory. Finally, we designed the loss function as sum of three components: the minimization between the coating addressed by the network and the target value we want to reach; and two weighted minimization components for both pressure and distance. In our solution we construct a second module, named coating net, to predict the coating of zinc <c> resulting from the AKE when the conditions <t,h,s,p,d> are applied to the prod. line. Its structure is made by a linear and a deep nonlinear “residual” component learned by empirical observations. The predictions made by the coating nets are used as ground truth in the loss function of the controller. By tuning the weights of the different components of the loss function, it is possible to train models with slightly different optimization purposes. In the tests we compared the regularization of different strategies with the standard one in condition of optimal estimation for both; the overall accuracy is ± 3 g/m^2 dal target for all of them. Lastly, we analyze how the controller modeled the current solutions with the new logic: the sub-optimal values of pres and dist can be optimize of 50% and 20%.

Abstract
Tipologia del documento
Tesi di laurea (Laurea magistrale)
Autore della tesi
Fiorilla, Salvatore
Relatore della tesi
Correlatore della tesi
Scuola
Corso di studio
Indirizzo
Curriculum C: Sistemi e reti
Ordinamento Cds
DM270
Parole chiave
Industry 4.0,Hot-Dip Galvanizing Process,Air-knife process,Neural Networks,Deep Learning
Data di discussione della Tesi
12 Ottobre 2022
URI

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