Fuzzy technologies in control systems of lifting and transport mechanisms

A. Sinyukov, T. Sinyukova, E. Y. Abdullazyanov, E. Gracheva, V. Meshcheryakov, S. Valtchev
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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.
提升和运输机构控制系统中的模糊技术
的目的。研究了保证升降和运输机构平稳启动和停止的问题。标准调节器不允许您通过改变指标来实现所需的结果,其精确值并不总是可用于测量。在这种系统中,控制信号通常与一定范围内的数据相对应。本文提出用基于模糊算法的控制器代替标准控制器。用不同类型的控制器对系统建模的过程允许您探索系统并确定最优的方法。为了解决这一问题,采用了MatLab Simulink环境下的数学建模方法。本文考虑了在起重和运输机构上使用各种调节器的可能性。针对模糊控制器的功能问题,建立了一个构成实际对象操作过程的规则库,并提出了最优功能算法。采用pid控制器和具有网络训练的神经网络控制器,考虑到处理器负载过高的可能性,在此基础上提出了监控器。考虑了使用ANFIS网络实施监管的可能性。使用基于神经网络技术原理的不同类型的控制器,无论是从确保运动稳定性的角度还是从系统可靠性的角度来看,都可以在提升和转向机构的控制中实现最佳性能。与PID型控制器相比,ANFIS网络的应用使波动减小了2.9倍,模糊型控制器的使用使波动减小了0.75倍。与使用ANFIS网络相比,使用神经控制器使速度形成过程的波动减少了约0.48倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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