Citation:
M. Groshev, J. Martín-Pérez, C. Guimarães, A. de la Oliva and C. J. Bernardos, "FoReCo: a forecast-based recovery mechanism for real-time remote control of robotic manipulators," in IEEE Transactions on Network and Service Management
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
European Commission Ministerio de Asuntos Económicos y Transformación Digital (España)
Sponsor:
This work has been partially funded by European Union's
Horizon 2020 research and innovation programme under grant
agreement No 101015956, and the Spanish Ministry of Economic Affairs and Digital Transformation and the European
Union-NextGenerationEU through the UNICO 5G I+D 6GEDGEDT and 6G-DATADRIVEN
Project:
info:eu-repo/grantAgreement/EC/H2020/101015956 Gobierno de España. UNICO 5G Gobierno de España. 6G-DATADRIVEN Gobierno de España. 6G-EDGEDT
Wireless communications represent a game changer for future manufacturing plants, enabling flexible production chains as machinery and other components are not restricted to a location by the rigid wired connections on the factory floor. However, the presence Wireless communications represent a game changer for future manufacturing plants, enabling flexible production chains as machinery and other components are not restricted to a location by the rigid wired connections on the factory floor. However, the presence of electromagnetic interference in the wireless spectrum may result in packet loss and delay, making it a challenging environment to meet the extreme reliability requirements of industrial applications. In such conditions, achieving real-time remote control, either from the Edge or Cloud, becomes complex. In this paper, we investigate a forecast-based recovery mechanism for real-time remote control of robotic manipulators (FoReCo) that uses Machine Learning (ML) to infer lost commands caused by interference in the wireless channel. FoReCo is evaluated through both simulation and experimentation in interference prone IEEE 802.11 wireless links, and using a commercial research robot that performs pick-and-place tasks. Results show that in case of interference, FoReCo trajectory error is decreased by x18 and x2 times in simulation and experimentation, and that FoReCo is sufficiently lightweight to be deployed in the hardware of already used in existing solutions.[+][-]