Enabling the human in the loop: Linked data and knowledge in industrial cyber-physical systems

Date published

2019-03-19

Free to read from

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Department

Type

Article

ISSN

1367-5788

Format

Citation

Emmanouilidis C, Pistofidis P, Bertoncelj L, et al., (2019) Enabling the human in the loop: Linked data and knowledge in industrial cyber-physical systems. Annual Reviews in Control, Volume 47, 2019, pp. 249-265

Abstract

Industrial Cyber-Physical Systems have benefitted substantially from the introduction of a range of technology enablers. These include web-based and semantic computing, ubiquitous sensing, internet of things (IoT) with multi-connectivity, advanced computing architectures and digital platforms, coupled with edge or cloud side data management and analytics, and have contributed to shaping up enhanced or new data value chains in manufacturing. While parts of such data flows are increasingly automated, there is now a greater demand for more effectively integrating, rather than eliminating, human cognitive capabilities in the loop of production related processes. Human integration in Cyber-Physical environments can already be digitally supported in various ways. However, incorporating human skills and tangible knowledge requires approaches and technological solutions that facilitate the engagement of personnel within technical systems in ways that take advantage or amplify their cognitive capabilities to achieve more effective sociotechnical systems. After analysing related research, this paper introduces a novel viewpoint for enabling human in the loop engagement linked to cognitive capabilities and highlighting the role of context information management in industrial systems. Furthermore, it presents examples of technology enablers for placing the human in the loop at selected application cases relevant to production environments. Such placement benefits from the joint management of linked maintenance data and knowledge, expands the power of machine learning for asset awareness with embedded event detection, and facilitates IoT-driven analytics for product lifecycle management.

Description

Software Description

Software Language

Github

Keywords

Cyber-physical systems, Internet of things, Context information management, Product lifecycle management, Asset lifecycle management, Maintenance, Human in the loop

DOI

Rights

Attribution 4.0 International

Relationships

Relationships

Supplements

Funder/s