An Architectural Design for Measurement Uncertainty Evaluation in Cyber-Physical Systems
Wenzel Pilar von Pilchau, Varun Gowtham, Maximilian Gruber and, Matthias Riedl, Nikolaos-Stefanos Koutrakis, Jawad Tayyub, J\"org, H\"ahner, Sascha Eichst\"adt, Eckart Uhlmann, Julian Polte and, Volker Frey, Alexander Willner

TL;DR
This paper proposes an architectural framework for propagating measurement uncertainty in sensor networks within Cyber-Physical Systems, integrating concepts from Asset Administration Shells, Organic Computing, and Machine Learning to enhance reliability in Industrie 4.0.
Contribution
It introduces a novel system architecture that combines uncertainty propagation methods with digital twins and Asset Administration Shells for improved sensor data reliability in CPS.
Findings
Conceptual architecture for uncertainty communication in sensor networks
Integration of Organic Computing and Machine Learning for uncertainty estimation
Mathematical foundation for uncertainty propagation in distributed CPS
Abstract
Several use cases from the areas of manufacturing and process industry, require highly accurate sensor data. As sensors always have some degree of uncertainty, methods are needed to increase their reliability. The common approach is to regularly calibrate the devices to enable traceability according to national standards and Syst\`eme international (SI) units - which follows costly processes. However, sensor networks can also be represented as Cyber Physical Systems (CPS) and a single sensor can have a digital representation (Digital Twin) to use its data further on. To propagate uncertainty in a reliable way in the network, we present a system architecture to communicate measurement uncertainties in sensor networks utilizing the concept of Asset Administration Shells alongside methods from the domain of Organic Computing. The presented approach contains methods for uncertainty…
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