Pervasive Intelligent Diagnostics for High-Tech Systems

conference paper
High-tech systems are growing more complex due to mass customization, integration of diverse technologies, and long lifecycle demands. Customers increasingly expect service contracts based on performance and availability, yet diagnostics remain largely reactive and reliant on human expertise. This position paper proposes a Pervasive Intelligent Diagnostics (PID) framework that integrates pervasive sensing, model-based digital twins, and hybrid AI for predictive diagnostics and sustainable lifecycle management. PID embeds collaborative sensing and reasoning within operational environments. We outline a research agenda for leveraging pervasive sensing and digital twins to advance intelligent diagnostics in high-tech systems. Key directions include: integrating heterogeneous sensor data with system models, automatically generating diagnostic models, and evaluating them in high-tech case studies. Expected benefits include reduced downtime, improved resource use, and stronger retention of expert knowledge. These outcomes align with industry roadmaps for sustainable, dependable systems.
TNO Identifier
1024070
ISSN
03029743
ISBN
978-303213311-3
Publisher
Springer
Source title
10th International Workshop on Sensor-Based Activity Recognition and Artificial Intelligence, iWOAR 2025, Enschede, 18 september - 19 september 2025
Pages
343-352
Files
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