ALGORITHMS FOR SELECTING THE OPERATING MODE OF THE TECHNOLOGICAL PROCESS OF WAVEGUIDE PATHS INDUCTION BRAZING

  • Vadim Tynchenko Reshetnev Siberian State University of Science and Technology, Institute of Computer Science and Telecommunications, Information-Control Systems Department, Krasnoyarsk, Russian Federation; Siberian Federal University, School of Petroleum and Natural Gas Engineering, Department of Technological Machines and Equipment of Oil and Gas Complex, Krasnoyarsk, Russian Federation
  • Milov Anton Reshetnev Siberian State University of Science and Technology, Institute of Computer Science and Telecommunications, Information-Control Systems Department, Krasnoyarsk, Russian Federation
  • Vladislav Kukartsev Reshetnev Siberian State University of Science and Technology, Engineering and Economics Institute, Department of Information Economic Systems, Krasnoyarsk, Russian Federation; Siberian Federal University, Institute of Space and Information Technologies, Department of Computer Science, Krasnoyarsk, Russian Federation
  • Vladimir Bukhtoyarov Siberian Federal University, School of Petroleum and Natural Gas Engineering, Department of Technological Machines and Equipment of Oil and Gas Complex, Krasnoyarsk, Russian Federation; Reshetnev Siberian State University of Science and Technology, Institute of Computer Science and Telecommunications, Department of Information Technology Security, Krasnoyarsk, Russian Federation
  • Valeriya Tynchenko Siberian Federal University, Institute of Space and Information Technologies, Department of Computer Science, Krasnoyarsk, Russian Federation; Reshetnev Siberian State University of Science and Technology, Institute of Computer Science and Telecommunications, Department of Computer Science and Computer Engineering, Krasnoyarsk, Russian Federation
  • Kirill Bashmur Siberian Federal University, School of Petroleum and Natural Gas Engineering, Department of Technological Machines and Equipment of Oil and Gas Complex, Krasnoyarsk, Russian Federation
Keywords: neural networks, fuzzy controller, neuro-fuzzy controller, automated control system, induction brazing, waveguide paths, intellectual system

Abstract


The article presents the development of a method for selecting the operating mode of the induction brazing process based on intelligent methods. The use of intelligent methods is due to the presence of uncertain conditions caused by the complexity of the initial setting of the technological parameters of the induction brazing process, the error of measuring instruments, and the human factor. The use of smart methods will make it possible to reduce the impact of negative factors, remove uncertainty, and adequately perform the initial set of technological parameters for the induction brazing process. Artificial neural networks, the fuzzy controller and the neural fuzzy controller have been chosen as the smart methods in this work. The article gives a brief overview of the above methods, provides a rationale for the choice of intelligent methods, and also compares their effectiveness. Based on the results of the experimental efficiency check, the most suitable method for determining the choice of induction brazing process operation is proposed.

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Published
2021/01/19
Section
Original Scientific Paper