SYLGOCApr 3, 2020

Data-Driven Transient Stability Boundary Generation for Online Security Monitoring

arXiv:2004.01369v116 citations
AI Analysis

This work addresses computational efficiency for power system operators, but it is incremental as it builds on existing methods like time-domain simulation.

The paper tackles the high computational burden of generating transient stability boundaries for power system security monitoring by proposing a data-driven framework that efficiently samples near the boundary, validated through case studies.

Transient stability boundary (TSB) is an important tool in power system online security monitoring, but practically it suffers from high computational burden using state-of-the-art methods, such as time-domain simulation (TDS), with numerous scenarios taken into account (e.g., operating points (OPs) and N-1 contingencies). The purpose of this work is to establish a data-driven framework to generate sufficient critical samples close to the boundary within a limited time, covering all critical scenarios in current OP. Therefore, accurate TSB can be periodically refreshed by tracking current OP in time. The idea is to develop a search strategy to obtain more data samples near the stability boundary, while traverse the rest part with fewer samples. To achieve this goal, a specially designed transient index sensitivity based search strategy and critical scenarios selection mechanism are proposed, in order to find out the most representative scenarios and periodically update TSB for online monitoring. Two case studies validate effectiveness of the proposed method.

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