AI Agents 相关度: 5/10

Uncertainty-Guided Label Rebalancing for CPS Safety Monitoring

John Ayotunde, Qinghua Xu, Guancheng Wang, Lionel C. Briand
arXiv: 2603.25670v1 发布: 2026-03-26 更新: 2026-03-26

AI 摘要

针对CPS安全监控中数据不平衡问题,提出了一种基于不确定性引导的标签重平衡方法,提升安全预测性能。

主要贡献

  • 提出了一种基于行为不确定性的标签重平衡(uLNR)方法
  • 设计了一个基于GatedMLP的不确定性预测器
  • 验证了不确定性和安全性的相关性,并证明了uLNR的有效性

方法论

通过GatedMLP预测不确定性,利用uLNR将高不确定性的安全样本重标记为不安全样本,再训练安全预测器。

原文摘要

Safety monitoring is essential for Cyber-Physical Systems (CPSs). However, unsafe events are rare in real-world CPS operations, creating an extreme class imbalance that degrades safety predictors. Standard rebalancing techniques perform poorly on time-series CPS telemetry, either generating unrealistic synthetic samples or overfitting on the minority class. Meanwhile, behavioral uncertainty in CPS operations, defined as the degree of doubt or uncertainty in CPS decisions , is often correlated with safety outcomes but unexplored in safety monitoring. To that end, we propose U-Balance, a supervised approach that leverages behavioral uncertainty to rebalance imbalanced datasets prior to training a safety predictor. U-Balance first trains a GatedMLP-based uncertainty predictor that summarizes each telemetry window into distributional kinematic features and outputs an uncertainty score. It then applies an uncertainty-guided label rebalancing (uLNR) mechanism that probabilistically relabels \textit{safe}-labeled windows with unusually high uncertainty as \textit{unsafe}, thereby enriching the minority class with informative boundary samples without synthesizing new data. Finally, a safety predictor is trained on the rebalanced dataset for safety monitoring. We evaluate U-Balance on a large-scale UAV benchmark with a 46:1 safe-to-unsafe ratio. Results confirm a moderate but significant correlation between behavioral uncertainty and safety. We then identify uLNR as the most effective strategy to exploit uncertainty information, compared to direct early and late fusion. U-Balance achieves a 0.806 F1 score, outperforming the strongest baseline by 14.3 percentage points, while maintaining competitive inference efficiency. Ablation studies confirm that both the GatedMLP-based uncertainty predictor and the uLNR mechanism contribute significantly to U-Balance's effectiveness.

标签

网络物理系统 安全监控 不平衡学习 不确定性

arXiv 分类

cs.LG cs.SE