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Digital Twin Knowledge Graphs for IoT Platforms: Towards a Virtual Model for Real-Time Knowledge Representation in IoT Platforms

Tid: On 2023-01-25 kl 10.00 - 11.00

Plats: Zoom: https://kth-se.zoom.us/j/61328794845

Videolänk: https://kth-se.zoom.us/j/61328794845

Språk: English

Respondent: Alejandro Jarabo Peñas , Reglerteknik/DCS

Opponent: Pablo Moreno Cerezo

Handledare: Bin Xiao (Ericsson Research), Bo Wahlberg

Examinator: Christian Rojas

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Abstract:
This thesis presents the design and prototype implementation of a digital twin based on a knowledge graph for Internet of Things (IoT) platforms. The digital twin is a virtual representation of a physical object or system that must continually integrate and update knowledge in rapidly changing environments. The proposed knowledge graph is designed to store and efficiently query a large number of IoT devices in a complex logical structure, use rule-based reasoning to infer new facts, and integrate unanticipated devices into the existing logical structure in order to adapt to changing environments. The digital twin is implemented using the open-source TypeDB knowledge graph and tested in a simplified automobile production line environment. The main focus of the work is on the integration of unanticipated devices, for which a similarity metric is implemented to identify similar existing devices and determine the appropriate integration into the knowledge graph. The proposed digital twin knowledge graph is a promising solution for managing and integrating knowledge in rapidly changing IoT environments, providing valuable insights and support for decision-making.