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A Review on Teleoperation of Mobile Ground Robots: Architecture and Situation Awareness

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  • Robot and Applications
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Abstract

Currently, the application of mobile ground robots spans a range of fields from surveillance, search and rescue, exploration, agriculture, military among others. In unstructured and dangerous environments such as disaster scene, military fields or chemical spray in agricultural farms, the experience and intelligence of the operator are necessary for making complex decisions beyond the autonomy of the robot. In such cases, teleoperation allow the operator to guide the robot in achieving complex task from a safe location. The effectiveness with which the operator controls the robot depends on, among others, operator’s awareness of the robot’s environment, the quality of communication link, the robustness of robot’s control system and experience of the human operator. Ground mobile robots form the basis of this work since they are applicable in many fields and mostly operate in dynamic environments that require additional guidance from a human operator. This study reviews research work on mobile robot teleoperation systems, and puts more emphasis on the architecture, communication link and situation awareness creation. Moreover, future trend in mobile robot teleoperation is also put forward in this review to give ground for new research work in this field. Based on the sited literature, it is noted that making the operator feel present in the robot’s environment through sufficient visual and force feedback as well as use of good quality network, significantly improve the navigation efficiency and task achievement of mobile ground robots.

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Correspondence to Jun Zhou.

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Recommended by Associate Editor Seok Chang Ryu under the direction of Editor Won-jong Kim. The authors of this work would like to acknowledge the funding support given by the Jiangsu Provincial Key Research & Development Plan (no. BE2017370).

Samwel Opiyo was born and raised in Kisumu, Kenya. He received a B.E. degree (physics, majoring in electronics) at Moi University-Kenya and graduated with second class upper division in 2008. He then enrolled for an M.S. degree (electronics and instrumentation) at Kenyatta University, Kenya, where he graduated in 2015. He has taught digital electronics, computer programing and robotics-related courses in Catholic University-Kenya, Mount Kenya University and Moi University-Kenya. He is currently a Ph.D. candidate majoring in electrification and automation at Nanjing Agricultural University specifically dealing with teleoperation of robots. His areas of interest include human-robot collaboration, digital image processing, teleoperation of robots, and IoT.

Jun Zhou is a full professor at Nanjing Agricultural University. He graduated, in 1998, with a B.E. degree from the Agricultral Mechanization Department, Nanjing Agricultural University, China. In 2003, he received a Ph.D. degree in agricultral engineering, Nanjing Agricultural University, China. In the year 2005, he completed his Postdoctoral Research Fellow, in mechatronics engineering, Shanghai Jiaotong University, China. He was a Visiting Scholar, in agicultural engineering, Iowa State University, USA, in 2013. His research interests are agricultural robot, digital image processing and pattern recognition, automation for agriculture, equipments for precision agriculture.

Emmy Mwangi graduated with the second upper B.Eng. degree (control and instrumentation) from Egerton University Kenya in 2017. She is currently an M.Sc. candidate majoring in agricultural electrification and automation at Nanjing Agriculural University. Her research interests include agricultural robots, digital image processing and control systems.

Wang Kai obtained his Master’s degree in mechatronics engineering from Changzhou University in 2012. He is curretly a Ph.D. candidate at Nanjing Agricultural University. His research directions are agricultural robots and robot navigation technology.

Idris Sunusi received his B.Eng. degree in agricultural engineering from Bayero University, Kano-Nigeria in 2009 and an M.Sc. degree in engineering (farm machinery) from Ahmadu Bello University, Zaria-Nigeria in 2016. He later joined the services of National agricultural extension and research liaison services, Ahmadu Bello University, Zaria in 2011 as an assistant lecturer/extension specialist. He has worked on the development of machinery for harvesting and processing of crop and is currently a Ph.D. research student in Nanjing Agricultural University, China. His research directions span dynamic control of electric vehicles, application of artificial intelligence in agricultural systems and automation of agricultural machinery.

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Opiyo, S., Zhou, J., Mwangi, E. et al. A Review on Teleoperation of Mobile Ground Robots: Architecture and Situation Awareness. Int. J. Control Autom. Syst. 19, 1384–1407 (2021). https://doi.org/10.1007/s12555-019-0999-z

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