A Comprehensive Study on Artificial Intelligence Algorithms to Implement
Safety Using Communication Technologies
- URL: http://arxiv.org/abs/2205.08404v1
- Date: Tue, 17 May 2022 14:38:38 GMT
- Title: A Comprehensive Study on Artificial Intelligence Algorithms to Implement
Safety Using Communication Technologies
- Authors: Rafia Inam, Alberto Yukinobu Hata, Vlasjov Prifti and Sara Abbaspour
Asadollah
- Abstract summary: The study aims at providing a comprehensive picture of the state of the art AI based safety solutions that uses different communication technologies.
The results demonstrate that automotive domain is the one applying AI and communication the most to implement safety.
The use of non-cellular communication technologies is dominant however a clear trend of a rapid increase in the use of cellular communication is observed specially from 2020 with the roll-out of 5G technology.
- Score: 1.2710179245406195
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The recent development of artificial intelligence (AI) has increased the
interest of researchers and practitioners towards applying its techniques into
multiple domains like automotive, health care and air space to achieve
automation. Combined to these applications, the attempt to use AI techniques
into carrying out safety issues is momentarily at a progressive state. As AI
problems are getting even more complex, large processing power is demanded for
safety-critical systems to fulfill real-time requirements. These challenges can
be solved through edge or cloud computing, which makes the communication an
integral part of the solution. This study aims at providing a comprehensive
picture of the state of the art AI based safety solutions that uses different
communication technologies in diverse application domains. To achieve this, a
systematic mapping study is conducted and 565 relevant papers are shortlisted
through a multistage selection process, which are then analyzed according to a
systematically defined classification framework. The results of the study are
based on these main objectives: to clarify current research gaps in the field,
to identify the possibility of increased usage of cellular communication in
multiple domains, to identify the mostly used AI algorithms and to summarize
the emerging future research trends on the topic. The results demonstrate that
automotive domain is the one applying AI and communication the most to
implement safety and the most used AI in this domain is neural networks,
clustering and computer vision; applying cellular communication to automotive
domain is highest; the use of non-cellular communication technologies is
dominant however a clear trend of a rapid increase in the use of cellular
communication is observed specially from 2020 with the roll-out of 5G
technology.
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