Development of an intelligent control system for the process of preparation and water transfer in the cooling circuit of an ammonia station

Автор: E.A. Muravyova, A.V. Kochenkov

Журнал: Nanotechnologies in Construction: A Scientific Internet-Journal @nanobuild-en

Рубрика: System solutions for technological problems

Статья в выпуске: 4 Vol.13, 2021 года.

Бесплатный доступ

Introduction. In the modern socio-economic and geopolitical development of Russia, the development of industry comes to the fore. Among the many industries, ammonia stations play the most important role. The main regularities of the process of pumping and preparing water. The process consists of six stages, this article discusses the automation of stages 1 and 2: for water treatment and pumping it out with pumps H1 and H2 from the tank P2. Products in the form of purified water are the most important criteria for subsequent production at an ammonia plant, therefore, increased requirements are imposed on the quality of finished products, including the quality of purification of the water used with the help of nanofilters. The required quality cannot be achieved without control the process in an automated mode. Development of a neural network. To control the converters frequency values during the preparation and pumping of water, an artificial neural network must be used. Its development was carried out in the Matlab environment in the Neural Network Toolbox package, input and output data were defined for this, data processing and preparation were performed, as well as the choice of the type and architecture of the neural network. The architecture of the Layer Recurrent neural network, the process of its construction and training in Matlab is described. Testing of neural networks. During testing of the Layer Recurrent network for the degree of their training, the smallest error was obtained for 30 neurons in the hidden layer. The proximity to the set values indicates the applicability of the network for controlling the parameters of frequency converters. Development of the neural network controller model in the Simulink package. The simulation of the control system in the Simulink package using a neural network controller with the Layer Recurrent architecture is performed. Checking the frequencies of the frequency converters H1 and H2 in Simulink for the level parameters in the tanks and in the tank LT1_вх, LT2_вх, LT3_вх showed that the object model works correctly, thus, the simulation of the neural network showed that the training was successful. Conclusion. As a result of the conducted research, an artificial neural network was developed to control the process of preparing and pumping water in the Matlab environment and a simulation of a neural network in the Simulink package.

Еще

Process, ammonia station, nanofilters, development, neural network

Короткий адрес: https://sciup.org/142227316

IDR: 142227316   |   DOI: 10.15828/2075-8545-2021-13-4-252-258

Список литературы Development of an intelligent control system for the process of preparation and water transfer in the cooling circuit of an ammonia station

  • Muravyova E., Popkov V. Development and Research of a Dynamic Flow Laboratory Bench Model. In: Advances in Intelligent Systems Research 7th Scientific Conference on Information Technologies for Intelligent Decision-Making Support (ITIDS). 2019. Р. 1–6.
  • Muravyova E., Gabitov R. Economic Features to Optimize the Catalyst Calcinations Process. In: International scientific multi-conference on industrial engineering and modern technologies (FAREASTCON). 2018. Р. 1–8.
  • Muravyova E., Sharipov M., Gabitov R. SCADA-System Based on Multidimensional Precise Logic Controller for the Control of a Cement Kiln. In: International scientific multi-conference on industrial engineering and modern technologies (FAREASTCON). 2018. Р. 1–9.
  • Muravyova E., Bondarev A. Method for Increasing the Speed and Reducing the Error of Multidimensional Precise Logic Controller. In: International scientific multi-conference on industrial engineering and modern technologies (FAREASTCON). 2018. Р. 1–11.
  • Muravyova E., Sharipov M. Method of optimal parameters control in three-phase separator using fuzzy controller. In: Proceedings of the International conference actual issues of mechanical engineering (AIME). 2018. Р. 1–8.
  • Muravyova E., Fedorov S., Bondarev A. Control Systems with Pulse Width Modulation in Matrix Converters. In: International conference on mechanical engineering, automation and control systems (MEACS). 2017. Р. 1–7.
  • Muravyova E., Bondarev A., Sharipov M., Galiaskarova G., Kubryak A. Power consumption analysis of pump station control systems based on fuzzy controllers with discrete terms in iThink software. In: International conference on mechanical engineering, automation and control systems (MEACS). 2017. Р. 1–8.
  • Muravyova E., Azanov A., Enikeeva E. Modeling power consumption by pump station control systems based on fuzzy controllers with discrete terms. In: Proceedings of the international conference: aviamechanical engineering and transport (AVENT). 2018; p. 1–6.
  • Muravyova E., Sharipov M., Radakina D. Method of fuzzy controller adaptation. In: Proceedings of the international conference actual issues of mechanical engineering (AIME). 2017. Р. 1–7.
  • Muravyova E., Bondarev A. Fuzzification Concept Using the Any-time Algorithm on the basis of Precise Term Sets. In: International conference on industrial engineering, applications and manufacturing (ICIEAM). 2017. Р. 1–9.
  • Muravyova E., Sharipov M. Two Fuzzy Controller Synthesis Methods with the Double Base of Rules: Reference Points and Training Using. In: International conference on industrial engineering, applications and manufacturing (ICIEAM). 2017. Р. 1–7.
  • Muravyova E., Kayashev A., Sharipov M., Emekeev A., Sagdatullin A. Verbally Defined Processes Controlled by Fuzzy Controllers with Input/Output Parameters Represented by Set of Precise Terms. In: International conference on mechanical engineering, automation and control systems (MEACS). 2014. Р. 1–8.
  • Yoshiko H., Shunji U., Taiko K. Evaluation of artificial neural network classifiers in small sample size situations. In: Pros. Int. It. Conf. Neural Networks. 2019. Р. 1–6.
  • Wasserman F. Brain-computer equipment. Transl. from Eng. Moscow: Mir; 1992.
  • Hrycej T. Neurocontrol: Towards An Industrial Control Methodology. John Willey & Sons. 2018. 380 р.
  • Istvan Szite, Andras Lorincz. Simple algorithm for recurrent neural networks that can learn sequence completion (IJCNN). 2019. Р. 1–6.
Еще
Статья научная