Swarm Optimization of Fuzzy Systems for Mobile Robots with Remote Control

Authors

  • Oleksiy Kozlov Intelligent Information Systems Department, Petro Mohyla Black Sea National University, Mykolaiv, Ukraine
  • Yuriy Kondratenko 1)Intelligent Information Systems Department, Petro Mohyla Black Sea National University, Mykolaiv, Ukraine 2)Computerized Control Systems Department, Admiral Makarov National University of Shipbuilding, Mykolaiv, Ukraine
  • Oleksandr Skakodub Intelligent Information Systems Department, Petro Mohyla Black Sea National University, Mykolaiv, Ukraine
  • Oleksandr Gerasin Computerized Control Systems Department, Admiral Makarov National University of Shipbuilding, Mykolaiv, Ukraine
  • Andriy Topalov Computerized Control Systems Department, Admiral Makarov National University of Shipbuilding, Mykolaiv, Ukraine

DOI:

https://doi.org/10.13052/jmm1550-4646.1939

Keywords:

fuzzy control systems, mobile robots, optimization, bioinspired swarm techniques, Internet of Things, remote control

Abstract

This paper is dedicated to the development and research of the advanced approach for optimization of fuzzy control systems (FCS) for mobile robots (MR) with remote control based on bioinspired swarm techniques. The proposed approach makes it possible to create effective intelligent control systems for MRs based on the principles of hierarchical multi-level control, remote IoT-based control, fuzzy logic control, and intelligent optimization of fuzzy control devices. The applied hybrid particle swarm optimization (PSO) techniques with elite strategy allow effectively optimizing various parameters of FCSs, finding the optimal solution to the problem, and, at the same time, have a higher convergence rate compared with the basic PSO algorithms. To evaluate the effectiveness of the obtained advanced approach based on hybrid swarm techniques, the optimization process of the FCS for the speed control of the multi-purpose caterpillar MR, which can move on inclined and vertical ferromagnetic surfaces, is carried out. The presented research results fully confirm the high efficiency of the proposed approach, as well as the expediency of its application for the optimization of fuzzy control systems for various remotely controlled mobile robots.

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Author Biographies

Oleksiy Kozlov, Intelligent Information Systems Department, Petro Mohyla Black Sea National University, Mykolaiv, Ukraine

Oleksiy Kozlov is a Ph.D., Associate Professor, Doctorant, and Associate Professor of the Department of Intelligent Information Systems at Petro Mohyla Black Sea National University (PMBSNU), Ukraine. He has received a master degree in electromechanics (2011) from Admiral Makarov National University of Shipbuilding and a Ph.D. degree in control processes automation (2014) from Odessa National Polytechnic University. Since 2011 took part in the implementation of a number of international and state projects related to the automation of complex industrial plants, information technologies, intelligent control systems, robotics, and the Internet of things. His research interests include automation, intelligent information and control systems, fuzzy logic, bioinspired optimization techniques, and robotics.

Yuriy Kondratenko, 1)Intelligent Information Systems Department, Petro Mohyla Black Sea National University, Mykolaiv, Ukraine 2)Computerized Control Systems Department, Admiral Makarov National University of Shipbuilding, Mykolaiv, Ukraine

Yuriy Kondratenko is a Doctor of Science, Professor, Honour Inventor of Ukraine (2008), Corr. Academician of Royal Academy of Doctors (Barcelona, Spain), Head of the Department of Intelligent Information Systems at Petro Mohyla Black Sea National University (PMBSNU), Ukraine. He has received (a) a Ph.D. (1983) and Dr.Sc. (1994) in Elements and Devices of Computer and Control Systems from Odessa National Polytechnic University, (b) several international grants and scholarships for conducting research at Institute of Automation of Chongqing University, P.R.China (1988–1989), Ruhr-University Bochum, Germany (2000, 2010), Nazareth College and Cleveland State University, USA (2003), (c) Fulbright Scholarship for researching in USA (2015/2016) at the Dept. of Electrical Engineering and Computer Science in Cleveland State University. Research interests include robotics, automation, sensors and control systems, intelligent decision support systems, and fuzzy logic.

Oleksandr Skakodub, Intelligent Information Systems Department, Petro Mohyla Black Sea National University, Mykolaiv, Ukraine

Oleksandr Skakodub is a Ph.D. student in the Department of Intelligent Information Systems at Petro Mohyla Black Sea National University (PMBSNU), Ukraine. He received a master degree in Computerized control systems from the Admiral Makarov National University of Shipbuilding in 2019. Since 2019 took part in the implementation of the state project related to the mobile robot’s remote control system development. His main research interests include computer control systems, sensor systems, fuzzy logic, intelligent robotic devices, and measurement systems.

Oleksandr Gerasin, Computerized Control Systems Department, Admiral Makarov National University of Shipbuilding, Mykolaiv, Ukraine

Oleksandr Gerasin is a Ph.D., Associate Professor of the Computerized control systems department of Admiral Makarov National University of Shipbuilding, Ukraine. He has gained bachelor (2012) and master (2014) diplomas in electromechanics, as well as a Ph.D. degree diploma in Automation of Control Processes in 2020. From February 2015 to September 2020 has been involved in different international and state programs related to control and monitoring systems development, robotics, and Internet of Things implementation. His research interests include mobile robotics, sensor systems, industrial automation, artificial intelligence, mathematical and computer modeling of technical plants.

Andriy Topalov, Computerized Control Systems Department, Admiral Makarov National University of Shipbuilding, Mykolaiv, Ukraine

Andriy Topalov is a Ph.D., Associate Professor at Admiral Makarov National University of Shipbuilding, Ukraine. He is a specialist in electrical engineering and got a master diploma in 2014. In 2020 obtained a Ph.D. degree in Computer Systems and Components. He worked in the framework of international scientific university cooperation during the implementation of international projects with the European Union: TEMPUS (Cabriolet), Erasmus + (Aliot), and DAAD-Ostpartnerschaftsprogramm (a project with the University of Saarland, Germany). His research interests include computer control systems, sensor systems, fuzzy logic, intelligent robotic devices, and measurement systems.

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Published

2023-02-15

How to Cite

Kozlov, O. ., Kondratenko, Y. ., Skakodub, O. ., Gerasin, O. ., & Topalov, A. . (2023). Swarm Optimization of Fuzzy Systems for Mobile Robots with Remote Control. Journal of Mobile Multimedia, 19(03), 839–876. https://doi.org/10.13052/jmm1550-4646.1939

Issue

Section

Artificial Intelligence in Automation with Mobile Applications