Data di Pubblicazione:
2020
Abstract:
Worker monitoring and protection in collaborative robot (cobots) industrial
environments requires advanced sensing capabilities and flexible solutions
to monitor the movements of the operator in close proximity of moving
robots. Collaborative robotics is an active %represents a mushrooming
research area where Internet of Things (IoT) and novel sensing technologies are
expected to play a critical role. Considering that no single technology
can currently solve the problem of continuous worker monitoring, the
paper targets the development of an IoT multisensor data fusion (MDF) platform.
It is based on an edge-cloud architecture that supports the combination
and transformation of multiple sensing technologies to enable the passive
and anonymous detection of workers.
Multidimensional data acquisition from different IoT sources, signal
pre-processing, feature extraction, data distribution and fusion,
along with machine learning (ML) and computing methods are described. The
proposed IoT platform also comprises a practical solution for data
fusion and analytics. It is able to perform opportunistic and real-time perception
of workers by fusing and analyzing radio signals obtained
from several interconnected IoT components, namely a multi-antenna WiFi installation (2.4-5 GHz), a sub-THz imaging camera (100 GHz), a
network of radars (122 GHz) and infrared sensors (8-13 µm).
The performance of the proposed IoT platform is validated through real
use case scenarios inside a pilot industrial plant in which protective
human--robot distance must be guaranteed considering latency and
detection uncertainties.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Multisensor data fusion; passive radio sensing; transformative computing; cloud-assisted Internet of Things; real-time data analysis; robot assisted manufacturing.
Elenco autori:
Kianoush, Sanaz; Savazzi, Stefano; Beschi, Manuel; Rampa, Vittorio
Link alla scheda completa:
Pubblicato in: