Build Smart Grids on Artificial Intelligence -- A Real-world Example
Shutang You, Yilu Liu, Hongyu Li, Shengyuan Liu, Kaiqi Sun, Yinfeng, Zhao, Huangqing Xiao, Jiaojiao Dong, Yu Su, Weikang Wang, Yi Cui

TL;DR
This paper demonstrates how artificial intelligence applied to big data from power grids can significantly enhance resilience, situational awareness, and stability assessment through real-world applications on the FNET-GridEye system.
Contribution
It introduces novel AI-based applications for power grid monitoring and control, leveraging big data to improve performance and enable new capabilities beyond traditional methods.
Findings
AI applications outperform conventional approaches
Successful real-world deployment on FNET-GridEye
Enables new tasks like event and inertia estimation
Abstract
Power grid data are going big with the deployment of various sensors. The big data in power grids creates huge opportunities for applying artificial intelligence technologies to improve resilience and reliability. This paper introduces multiple real-world applications based on artificial intelligence to improve power grid situational awareness and resilience. These applications include event identification, inertia estimation, event location and magnitude estimation, data authentication, control, and stability assessment. These applications are operating on a real-world system called FNET-GridEye, which is a wide-area measurement network and arguably the world-largest cyber-physical system that collects power grid big data. These applications showed much better performance compared with conventional approaches and accomplished new tasks that are impossible to realized using conventional…
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Taxonomy
TopicsPower System Optimization and Stability · Power Systems Fault Detection · Smart Grid Security and Resilience
