CB
Christian Becker
4 records found
1
This paper introduces for the first time, to the best of our knowledge, the Bayesian Physics-Informed Neural Networks for applications in power systems. Bayesian Physics-Informed Neural Networks (BPINNs) combine the advantages of Physics-Informed Neural Networks (PINNs), being ro
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Roadmap for edge AI
A Dagstuhl Perspective
Based on the collective input of Dagstuhl Seminar (21342), this paper presents a comprehensive discussion on AI methods and capabilities in the context of edge computing, referred as Edge AI. In a nutshell, we envision Edge AI to provide adaptation for data-driven applications, e
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Resilience-oriented operation of power systems
Hierarchical partitioning-based approach
As an achievement of innovations resulting from partitioning mechanisms, these mechanisms can contribute to the more flexible operation of power systems in local communities. The ever-increasing frequency and severity of unexpected real-time failures have created challenges for p
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Workshop on Context Modeling and Reasoning (CoMoRea '05)
Message from the workshop chair
Presents the welcome message from the conference proceedings@en