Published January 27, 2023 | Version v1
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Analysis of a Dataset for Modeling a Transport Conveyor

  • 1. National Technical University "Kharkiv Polytechnic Institute", Kharkiv, Ukraine
  • 2. Wroclaw University of Science and Technology, Wrocław, Poland

Description

The analysis of the works, which considered the use of neural networks for modeling a multi-section transport conveyor, was carried out. The prospects for the use of neural networks for the design of highly efficient control systems for the flow parameters of a  multi-section transport conveyor are studied. The problem that limits the use of neural networks for building control systems for the flow parameters of a multi-section transport conveyor is considered. The possibility of constructing generators for generating a data set for the process of training a neural network is being studied. A method for generating a data set based on experimentally 
obtained measurements of the instantaneous values of the input material flow as a result of the operation of industrial transport systems is proposed.  Using dimensionless variables,  a statistical analysis of a stochastic flow of material entering the input of the transport system was performed. An estimate of the correlation time of a stochastic process characterizing the input flow of  material is given.  The recommendations on choosing the type of correlation function for the model of the input material flow were confirmed. It is demonstrated that the input flow of material is a non-stationary stochastic process. Approximations for modeling the input flow of materials of the operating transport system are considered.

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