July 28, 2021
Conference Paper

Big Data Analytic for Cascading Failure Analysis

Abstract

With the challenges of increased grid dynamics and more variability of power generation from renewable energy sources, rapidly increasing complexity in the grid model, and abundant data from measurements and simulations, the requirements for computational analysis have also increased dramatically. Power system operators and engineers need to analyze more scenarios, extract meaningful information from a larger set of data, and respond more quickly when faced with these new challenges for large-scale applications, such as contingency analysis. This paper proposes a novel big data analysis approach for power system cascading analysis, prevention, and remediation. The developed techniques will be capable of cascading analysis, better assessment of the system’s vulnerability level, as well as proposing potential remediation. Case studies using IEEE 118-bus system and a 500-bus system, with a comparison against a commercial tool, validate the advantages of the developed big data approach: accurate prediction, and more importantly, faster and effective correction actions.The developed techniques could be further used for other power system applications.

Published: July 28, 2021

Citation

Chen Y., T. Yin, R. Huang, X. Fan, and Q. Huang. 2020. Big Data Analytic for Cascading Failure Analysis. In IEEE International Conference on Big Data (Big Data 2019), December 9-12, 2019, Los Angeles, CA, 1625-1630. Piscataway, New Jersey:IEEE. PNNL-SA-146726. doi:10.1109/BigData47090.2019.9005593