Affiliation:
1. Lipetsk State Technical University
2. Kazan State Power Engineering University
3. New University of Lisbon
Abstract
THE PURPOSE. The study is devoted to the problems of ensuring the smooth start and stop of lifting and transport mechanisms. Standard regulators do not allow you to achieve the desired results with changing indicators, the exact values of which are not always available for measurement. Control signals, in such systems, usually correspond to data from a certain range. The paper proposes to replace the standard controller with a controller based on fuzzy algorithms. The process of modeling a system with different types of controllers allows you to explore systems and identify the most optimal of.METHODS. To solve the problem, the methods of mathematical modeling in the MatLab Simulink environment were used.RESULTS. The article considers the possibility of using various kinds of regulators on lifting and transport mechanisms. For the functioning of the fuzzy type controller, a rule base has been developed that forms the process of operation of a real object, with an optimal functioning algorithm. Systems with a PID-type controller, with a neural network-type controller with network training, with the possibility of its adjustment for further use, are implemented, the probability of high processor load is taken into account, on the basis of which a supervisor is proposed. The possibility of using ANFIS networks for the implementation of regulators is considered.CONCLUSION. The use of different types of controllers operating on the principle of neural network technologies makes it possible to achieve optimal performance in the control of lifting and turning mechanisms, both from the standpoint of ensuring the stability of movement, and from the standpoint of system reliability. Compared with the PID type controller, the application of the ANFIS network reduced the fluctuation by 2.9 times, and the use of the fuzzy type controller reduced the fluctuation by 0,75 times. The use of a neural controller compared to the use of the ANFIS network gives a decrease in the fluctuation of the speed formation process by about 0.48 times.
Publisher
Kazan State Power Engineering University
Subject
Pharmacology (medical),Complementary and alternative medicine,Pharmaceutical Science
Reference16 articles.
1. Langraf SV, Sapozhnikov AI, Glazyrin AS, et al. Dynamics of an electric drive with a fuzzy controller. Izvestiya Tomsk Polytechnic University. 2010;316(4):168-173.
2. Sinyukova TV, Sinyukov AV, Gracheva EI, et al. Neirosetevye tekhnologii v sistemakh upravleniya mekhanizmami peremeshcheniya gruzov Izvestiya vysshikh uchebnykh zavedenii. Problemy ehnergetiki. 2022;24(2):107-118.
3. Sinyukova TV, Sentsov EV, Sinyukov AV. Neural Network Speed Observers. 2019 1st International Conference on Control Systems, Mathematical Modelling, Automation and Energy Efficiency, SUMMA 2019. 2019. pp. 320-324.
4. Sinyukova TV, Gladyshev VE, Sinyukov AV. Methods for Reducing Electromechanical Oscillations in Conveyor Control Systems. 1st International Conference on Control Systems, Mathematical Modelling, Automation and Energy Efficiency, SUMMA 2019. – 2019. pp. 435-439.
5. Buyankin V.M. Ehlementy iskusstvennogo intellekta v sistemakh upravleniya ehlektroprivodom s nechetkoi logikoi. Tendentsii razvitiya nauki i obrazovaniya. –2020;60;2(8-13).
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