MLMC-based Resource Adequacy Assessment with Active Learning Trained Surrogate Models
MLMC-based Resource Adequacy Assessment with Active Learning Trained Surrogate Models
Multilevel Monte Carlo (MLMC) is a flexible and effective variance reduction technique for accelerating reliability assessments of complex power system. Recently, data-driven surrogate models have been proposed as lower-level models in the MLMC framework due to their high correlation and negligible execution time once trained. However, in resource adequacy assessments, pre-labeled datasets are typically unavailable. For large-scale systems, the efficiency gains from surrogate models are often offset by the substantial time required for labeling training data. Therefore, this paper introduces a speed metric that accounts for training time in evaluating MLMC efficiency. Considering the total time budget is limited, a vote-by-committee active learning approach is proposed to reduce the required labeling calls. A case study demonstrates that, within practical variance thresholds, active learning enables significantly improved MLMC efficiency with reduced training effort, compared to regular surrogate modelling approaches.
Ruiqi Zhang、Simon H. Tindemans
电工基础理论输配电工程电气测量技术、电气测量仪器
Ruiqi Zhang,Simon H. Tindemans.MLMC-based Resource Adequacy Assessment with Active Learning Trained Surrogate Models[EB/OL].(2025-05-27)[2025-06-17].https://arxiv.org/abs/2505.20930.点此复制
评论