Title
CPS data streams analytics based on machine learning for Cloud and Fog Computing: A survey.
Abstract
Cloud and Fog computing has emerged as a promising paradigm for the Internet of things (IoT) and cyber–physical systems (CPS). One characteristic of CPS is the reciprocal feedback loops between physical processes and cyber elements (computation, software and networking), which implies that data stream analytics is one of the core components of CPS. The reasons for this are: (i) it extracts the insights and the knowledge from the data streams generated by various sensors and other monitoring components embedded in the physical systems; (ii) it supports informed decision making; (iii) it enables feedback from the physical processes to the cyber counterparts; (iv) it eventually facilitates the integration of cyber and physical systems. There have been many successful applications of data streams analytics, powered by machine learning techniques, to CPS systems. Thus, it is necessary to have a survey on the particularities of the application of machine learning techniques to the CPS domain. In particular, we explore how machine learning methods should be deployed and integrated in Cloud and Fog architectures for better fulfilment of the requirements of mission criticality and time criticality arising in CPS domains. To the best of our knowledge, this paper is the first to systematically study machine learning techniques for CPS data stream analytics from various perspectives, especially from a perspective that leads to the discussion and guidance of how the CPS machine learning methods should be deployed in a Cloud and Fog architecture.
Year
DOI
Venue
2019
10.1016/j.future.2018.06.042
Future Generation Computer Systems
Keywords
Field
DocType
Cyber–physical systems (CPS),Machine learning,Cloud computing,Fog computing,Edge computing,Analytics
Edge computing,Data stream mining,Architecture,Physical system,Computer science,Data stream,Software,Artificial intelligence,Analytics,Machine learning,Cloud computing,Distributed computing
Journal
Volume
ISSN
Citations 
90
0167-739X
6
PageRank 
References 
Authors
0.41
75
8
Name
Order
Citations
PageRank
Xiang Fei1408.94
Nazaraf Shah217527.55
Nandor Verba3261.83
K.-M. Chao410111.26
Victor Sanchez-Anguix510214.87
Jacek Lewandowski6181.90
Anne E. James749080.05
Zahid Usman8564.54