Spatio-temporal Data-Driven and Machine Learning based Applications for Transmission Systems
This paper summarizes recent advancements on spatio-temporal data-driven and machine learning methods for static and dynamic security assessment, and their particular use cases. It is a collective effort of different research groups members of the IEEE Working Group on Big Data Analytics for Transmission Systems, to provide transmission system operators (TSOs) with innovative tools and ideas for their potential implementation. The algorithms presented here are classified as non-training and training approaches, namely spatio-temporal and machine learning based, considering as input time series from time domain simulations, and or synchrophasor data from wide-area monitoring systems. The efficacy of these algorithms is then evaluated in different IEEE benchmark models and using real system measurements from different countries.
2-s2.0-85207425100
ZHAW Zurich University of Applied Sciences
Tianjin University
Universidad de Guadalajara
ZHAW Zurich University of Applied Sciences
University of Michigan
Universidade Estadual de Campinas (UNICAMP)
Swiss Federal Laboratories for Materials Science and Technology
USACH
Technical University of Denmark
Operador Nacional de Electricidad - CENACE
2024-10-04
Piscataway NJ USA
9798350381832
1944-9933
1
5
REVIEWED
EPFL
| Event name | Event acronym | Event place | Event date |
PESGM | Seattle, WA, USA | 2024-07-21 - 2024-07-25 | |