Towards Probabilistic Dynamic Security Assessment and Enhancement of Large Power Systems
Journal:
arXiv
Published Date:
May 2, 2025
Abstract
This paper proposes a novel methodology for probabilistic dynamic security
assessment and enhancement of power systems that considers load and generation
variability, N-2 contingencies, and uncertain cascade propagation caused by
uncertain protection system behaviour. In this methodology, a database of
likely operating conditions is generated via weather data, a market model and a
model of operators' preventive actions. System states are sampled from this
database and contingencies are applied to them to perform the security
assessment. Rigorous statistical indicators are proposed to decide how many
biased and unbiased samples to simulate to reach a target accuracy on the
statistical error on the estimated risk from individual contingencies.
Optionally, a screening of contingencies can be performed to limit the
computational burden of the analysis. Finally, interpretable machine learning
techniques are used to identify the root causes of the risk from critical
contingencies, to ease the interpretation of the results, and to help with
security enhancement. The method is demonstrated on the 73-bus reliability test
system, and the scalability to large power systems (with thousands of buses) is
also discussed.