Causal explanations of outliers in systems with lagged time-dependencies
AI 摘要
论文改进因果根因分析方法,应用于时变系统异常检测,尤其针对能源系统峰值避免问题。
主要贡献
- 扩展因果根因分析方法到时变系统
- 提出两种处理无限依赖图的截断方法
- 在能源管理场景下验证方法有效性
方法论
基于Budhathoki et al. [2022]的因果根因分析方法,通过截断依赖图处理时变性,并进行实验验证。
原文摘要
Root-cause analysis in controlled time dependent systems poses a major challenge in applications. Especially energy systems are difficult to handle as they exhibit instantaneous as well as delayed effects and if equipped with storage, do have a memory. In this paper we adapt the causal root-cause analysis method of Budhathoki et al. [2022] to general time-dependent systems, as it can be regarded as a strictly causal definition of the term "root-cause". Particularly, we discuss two truncation approaches to handle the infinite dependency graphs present in time-dependent systems. While one leaves the causal mechanisms intact, the other approximates the mechanisms at the start nodes. The effectiveness of the different approaches is benchmarked using a challenging data generation process inspired by a problem in factory energy management: the avoidance of peaks in the power consumption. We show that given enough lags our extension is able to localize the root-causes in the feature and time domain. Further the effect of mechanism approximation is discussed.