AI RESEARCH

CINDI: Conditional Imputation and Noisy Data Integrity with Flows in Power Grid Data

arXiv CS.AI

ArXi:2603.11745v1 Announce Type: new Real-world multivariate time series, particularly in critical infrastructure such as electrical power grids, are often corrupted by noise and anomalies that degrade the performance of downstream tasks. Standard data cleaning approaches often rely on disjoint strategies, which involve detecting errors with one model and imputing them with another. Such approaches can fail to capture the full joint distribution of the data and ignore prediction uncertainty. This work.