Machine-to-Machine Communication in Telerobotic Systems for Robotics Science

Authors

  • G. Sathish Kumar Assistant Professor, ECE, P.T.Lee Chengalvaraya Naicker College of Engineering and Technology, Oovery, Kanchipuram-631 502, Tamilnadu, India
  • T. Padmapriya Melange Publications, Puducherry, India
  • Basant Sah Department of CSE, Koneru Lakshmaiah Education Foundation, Vaddeswaram, AP, India
  • Muruganantham Ponnusamy Deputy Registrar, Indian Institute of Information Technology Kalyani, Nadia - 741235, West Bengal
  • Anandan Associate Professor, Department of Mechanical Engineering Vinayaka Mission's Kirupa Nanda Variyar Engineering College Salem

Keywords:

Internet of Things (IoT), LEACH, Machine-to-machine communication (M2M), Telerobotic

Abstract

Machine-to-machine communication devices interact and share data independently to carry out required activities. The device uses a wireless network to connect to another device. The Internet of Things (IoT) is predicted to flourish when mechanical things can interact on their own. This paradigm is used in security, transportation, business, and healthcare every day. Security experts claim that there are several flaws associated with IoT devices. To perform surgery, treatment, and diagnostics over short or long distances while utilizing wireless communication networks, telerobotic systems are created. For the telerobotics community and data security, the systems additionally offer a minimal delay and a secure communication mechanism. The system can carry out duties intelligently and independently, easing the stress on medical staff and enhancing the standard and efficiency of patient care. Surgeons and patients in the medical industry are dispersed across different locations but connected via open networks. Therefore, with or without the attack, performance is ensured by the design of a medical sensor node network using the LEACH protocol for secure and dependable communication. Lastly, low delay and dependable, secure network transfer are demonstrated by the simulation results.

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References

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Published

24.11.2023

How to Cite

Kumar, G. S. ., Padmapriya, T. ., Sah, B. ., Ponnusamy, M. ., & Anandan, A. (2023). Machine-to-Machine Communication in Telerobotic Systems for Robotics Science. International Journal of Intelligent Systems and Applications in Engineering, 12(5s), 556–563. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/4115

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Research Article

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