Context-Aware Statistical Dead Reckoning for Localization in IoT Scenarios

Sensors (Basel). 2023 Jun 28;23(13):5987. doi: 10.3390/s23135987.

Abstract

The current trends in 5G and 6G systems anticipate vast communication capabilities and the deployment of massive heterogeneous connectivity with more than a million internet of things (IoT) and other devices per square kilometer and up to ten million gadgets in 6G scenarios. In addition, the new generation of smart industries and the energy of things (EoT) context demand novel, reliable, energy-efficient network protocols involving massive sensor cooperation. Such scenarios impose new demands and opportunities to cope with the ever-growing cooperative dense ad hoc environments. Position location information (PLI) plays a crucial role as an enabler of several location-aware network protocols and applications. In this paper, we have proposed a novel context-aware statistical dead reckoning localization technique suitable for high dense cooperative sensor networks, where direct angle and distance estimations between peers are not required along the route, as in other dead reckoning-based localization approaches, but they are obtainable from the node's context information. Validation of the proposed technique was assessed in several scenarios through simulations, achieving localization errors as low as 0.072 m for the worst case analyzed.

Keywords: IoT; collaborative localization; context-aware localization; dead reckoning; position location information; stochastic dead reckoning.

MeSH terms

  • Awareness
  • Communication
  • Industry
  • Internet of Things*

Grants and funding

This research received no external funding.