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Big Data Analysis of Synchrophasor Data: Experience from the U.S. (Industry Track)

* 21PESGM2343, MindSynchro: Semi-supervised learning and physics-based features for detection of relevant power grid events: B. LEAO, Siemens * 21PESGM2344, Machine Learning Guided Operation Intelligence from Synchrophasors: D. DAIGLE, Schweitzer Engineering Laboratories * 21PESGM2345, PMU-Based Data Analytics Using Digital Twin and PhasorAnalytics Software: P. HART, GE Research * 21PESGM2346, Combinatorial Evaluation of Physical Feature Engineering and Deep Temporal Modeling for Synchrophasor Data Scale , S. MURPHY, Ping Things

  • PES
    Members: $5.00
    IEEE Members: $10.00
    Non-members: $20.00
27 Jul 2021

The U.S. Department of Energy (DOE) released $5.8 million funding to support the research and development (R&D) of advanced tools and controls that will improve the resilience and reliability of the national power grid. Eight project teams are selected to explore the use of big data, artificial intelligence (AI), and machine learning technology and tools to derive more value from the vast amounts of sensor data already being gathered and used to monitor the health of the grid and support system operations. This panel session serves as a forum for the four industry project teams to present their findings from mining terabytes of PMU data in the U.S. The team leads will also share their experience in analyzing the large-scale PMU data and developing useful tools and algorithms. The discussions and findings will help shape future development and application of faster grid analytics and modeling; better grid asset management; and sub-second automatic control actions that will help system operators avoid grid outages, improve operations, and reduce costs.

Chairs:
Nanpeng Yu, UCR
Sponsor Committees:
(AMPS) Big Data Analytics