WiP abstract: Diagnostics and prognostics using temporal causal models for cyber physical energy systems

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Abstract

Reliable operation of cyber-physical systems such as Power Transmission and Distribution Systems is critical for the seamless functioning of a vibrant economy. These systems consist of tightly coupled physical (energy sources, transmission and distribution lines, and loads) and computational components (protection devices, energy management systems, etc). The protection devices such as distance relays help in preventing failure propagation by isolating faulty physical components. However, these devices rely on hard thresholds and local information, often ignoring system-level effects introduced by the distributed control algorithms. This leads to scenarios wherein a local mitigation in a subsystem could trigger a larger fault cascade, possibly resulting in a blackout. Efficient models and tool that curtail such systematic failures by performing fault diagnosis and prognosis are therefore necessary.

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CITATION STYLE

APA

Chhokra, A., Hasan, S., Dubey, A., Mahadevan, N., & Karsai, G. (2017). WiP abstract: Diagnostics and prognostics using temporal causal models for cyber physical energy systems. In Proceedings - 2017 ACM/IEEE 8th International Conference on Cyber-Physical Systems, ICCPS 2017 (part of CPS Week) (p. 87). Association for Computing Machinery, Inc. https://doi.org/10.1145/3055004.3064843

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