Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems

In traditional production plants, current technologies do not provide sufficient context to support information integration and interpretation. Digital transformation technologies have the potential to support contextualization, but it is unclear how this can be achieved. The present article present...

Full description

Bibliographic Details
Main Authors: Romy Müller, Franziska Kessler, David W. Humphrey, Julian Rahm
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Future Internet
Subjects:
Online Access:https://www.mdpi.com/1999-5903/13/6/156
id doaj-a33c1e12bba9471fb07ec7f29652aca8
record_format Article
spelling doaj-a33c1e12bba9471fb07ec7f29652aca82021-07-01T00:23:45ZengMDPI AGFuture Internet1999-59032021-06-011315615610.3390/fi13060156Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production SystemsRomy Müller0Franziska Kessler1David W. Humphrey2Julian Rahm3Faculty of Psychology, Chair of Engineering Psychology and Applied Cognitive Research, Technische Universität Dresden, 01069 Dresden, GermanyFaculty of Psychology, Chair of Learning and Instruction, Technische Universität Dresden, 01069 Dresden, GermanyARC Advisory Group, 80999 Munich, GermanyFaculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group, Technische Universität Dresden, 01069 Dresden, GermanyIn traditional production plants, current technologies do not provide sufficient context to support information integration and interpretation. Digital transformation technologies have the potential to support contextualization, but it is unclear how this can be achieved. The present article presents a selection of the psychological literature in four areas relevant to contextualization: information sampling, information integration, categorization, and causal reasoning. Characteristic biases and limitations of human information processing are discussed. Based on this literature, we derive functional requirements for digital transformation technologies, focusing on the cognitive activities they should support. We then present a selection of technologies that have the potential to foster contextualization. These technologies enable the modelling of system relations, the integration of data from different sources, and the connection of the present situation with historical data. We illustrate how these technologies can support contextual reasoning, and highlight challenges that should be addressed when designing human–machine cooperation in cyber-physical production systems.https://www.mdpi.com/1999-5903/13/6/156operator assistance systemscyber-physical production systemscontextualizationcognitive psychologydigital transformationinformation modelling
collection DOAJ
language English
format Article
sources DOAJ
author Romy Müller
Franziska Kessler
David W. Humphrey
Julian Rahm
spellingShingle Romy Müller
Franziska Kessler
David W. Humphrey
Julian Rahm
Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems
Future Internet
operator assistance systems
cyber-physical production systems
contextualization
cognitive psychology
digital transformation
information modelling
author_facet Romy Müller
Franziska Kessler
David W. Humphrey
Julian Rahm
author_sort Romy Müller
title Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems
title_short Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems
title_full Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems
title_fullStr Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems
title_full_unstemmed Data in Context: How Digital Transformation Can Support Human Reasoning in Cyber-Physical Production Systems
title_sort data in context: how digital transformation can support human reasoning in cyber-physical production systems
publisher MDPI AG
series Future Internet
issn 1999-5903
publishDate 2021-06-01
description In traditional production plants, current technologies do not provide sufficient context to support information integration and interpretation. Digital transformation technologies have the potential to support contextualization, but it is unclear how this can be achieved. The present article presents a selection of the psychological literature in four areas relevant to contextualization: information sampling, information integration, categorization, and causal reasoning. Characteristic biases and limitations of human information processing are discussed. Based on this literature, we derive functional requirements for digital transformation technologies, focusing on the cognitive activities they should support. We then present a selection of technologies that have the potential to foster contextualization. These technologies enable the modelling of system relations, the integration of data from different sources, and the connection of the present situation with historical data. We illustrate how these technologies can support contextual reasoning, and highlight challenges that should be addressed when designing human–machine cooperation in cyber-physical production systems.
topic operator assistance systems
cyber-physical production systems
contextualization
cognitive psychology
digital transformation
information modelling
url https://www.mdpi.com/1999-5903/13/6/156
work_keys_str_mv AT romymuller dataincontexthowdigitaltransformationcansupporthumanreasoningincyberphysicalproductionsystems
AT franziskakessler dataincontexthowdigitaltransformationcansupporthumanreasoningincyberphysicalproductionsystems
AT davidwhumphrey dataincontexthowdigitaltransformationcansupporthumanreasoningincyberphysicalproductionsystems
AT julianrahm dataincontexthowdigitaltransformationcansupporthumanreasoningincyberphysicalproductionsystems
_version_ 1721348763267629056