CINDI: Conditional Imputation and Noisy Data Integrity with Flows in Power Grid Data
arXiv cs.AI / 3/13/2026
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Key Points
- CINDI is an unsupervised probabilistic framework that restores data integrity in noisy, multivariate time-series data, emphasizing critical infrastructure such as electrical power grids.
- It combines anomaly detection and imputation into one end-to-end system built on conditional normalizing flows, enabling identification of low-probability segments and iterative, statistically consistent replacements.
- By modeling the exact conditional likelihood, CINDI preserves underlying physical and statistical properties while reusing learned information to avoid discarding useful context.
- The framework was evaluated on real-world grid loss data from a Norwegian power distribution operator, showing robust performance versus competitive baselines and scalability to noisy environments.
- Although demonstrated on grid data, CINDI is designed to generalize to any multivariate time series domain.
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