Abstract
AbstractIn this paper, a safety method for a 3-DOF industrial robot is developed based on recurrent neural network (RNN). Safety standards for human robot interaction (HRI) are taken into accounts. The main objective is to detect the undesired collisions on any of robot links. Since most of industrial robots are not collaborative, the dependence of the method on torque sensors to detect collisions makes its ability to use very restricted. Therefore, only the position data of joints are collected to be the data inputs of the proposed method in order to detect the undesired collisions. These data are aggregated from KUKA LWR IV robot while no collisions and in another time when applying collisions. These data are used to train the proposed RNN using Levenberg-Marquardt LM algorithm. KUKA robot is configured to act as a 3-DOF manipulator that moves in space and under the effect of gravity.The results show that the modelled and trained RNN is sensitive and efficient in detecting collisions on each link of robot separately. Studying the resulted error from the developed model reveals clearly that the method is reliable.
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. Sharkawy A-N, Koustoumpardis PN, Aspragathos N (2020) Human–robot collisions detection for safe human–robot interaction using one multi-input–output neural network. Soft Comput 24(9):6687–6719
2. ISO (2011) Robots and robotic devices—safety requirements for industrial robots—part 1: robots, 10218–1
3. ISO (2011) Robots and robotic devices—safety requirements for industrial robots—part 2: robot systems and integration
4. Yamada Y, Hirasawa Y, Huang S, Umetani Y, Suita K (1997) Human-robot contact in the safeguarding space. IEEE/ASME Trans Mechatron 2(4):230–236
5. Mukherjee D, Gupta K, Chang LH, Najjaran H (2022) A survey of robot learning strategies for human-robot collaboration in industrial settings. Robot Comput Integr Manuf 73:102231
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献