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Authors: Yasnitsky L., Goldobin M.     Published in № 1(109) 31 january 2024 year
Rubric: Researching of processes and systems

Neural network forecasting of defects in the production of metallurgical products

The paper is devoted to the current problem of reducing the percentage of defective products produced at serial steelmaking plants. To study the patterns of defect formation, a neural network was created that predicts the formation of defects such as “crack” in castings produced by the open-hearth method. To train the neural network, statistical data on the chemical composition of ore raw materials and the corresponding values of the percentage of defects were used. The data was taken under the conditions of an ongoing serial production process, which led to a high degree of noise in the information both on the chemical composition of the ore raw material and on the mechanical properties based on the results of its heat treatment. Outliers of statistical information were detected and removed using the original author’s neural network technique. A neural network model for controlling thermophysical and chemical-energy-technological processes of thermal processing of ore raw materials was created on the basis of a perceptron-type neural network with sigmoid activation functions. By conducting virtual computer experiments on a neural network model, some important dependences of the probability of formation of the defects under study on the content of manganese, phosphorus, silicon, chromium and sulfur were identified. Based on the identified dependencies, practical recommendations have been developed to reduce the percentage of defects by adjusting the chemical composition of ore raw materials. Despite the relatively low accuracy of the developed neural network model, the application of the practical recommendations obtained made it possible to reduce the percentage of defective products manufactured in a large-scale production process by 2.51 times.

Key words

ore raw materials, chemical composition, defective castings, open-hearth furnace, thermophysical and chemical-energy technological processes, neural network, control, forecasting

The author:

Yasnitsky L.

Degree:

Dr. Sci. (Eng.), Professor, Professor of Applied Mathematics and Informatics Department, Perm State National Research University; Professor of Information Technology in Business Department, National Research University Higher School of Economics in Perm

Location:

Perm, Russia

The author:

Goldobin M.

Degree:

Leading Engineer, Technical Control Department, JSC “ODK-Perm Motors”

Location:

Perm, Russia