Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

TimeRadar: A Domain-Rotatable Foundation Model for Time Series Anomaly Detection

About

Current time series foundation models (TSFMs) primarily focus on learning prevalent and regular patterns within a predefined time or frequency domain to enable supervised downstream tasks (e.g., forecasting). Consequently, they are often ineffective for inherently unsupervised downstream tasks-such as time series anomaly detection (TSAD), which aims to identify rare, irregular patterns. This limitation arises because such abnormal patterns can closely resemble the regular patterns when presented in the same time/frequency domain. To address this issue, we introduce TimeRadar, an innovative TSFM built in a fractional time-frequency domain to support generalist TSAD across diverse unseen datasets. Our key insight is that rotating a time series into a data-dependent fractional time-frequency representation can adaptively differentiate the normal and abnormal signals across different datasets. To this end, a novel component, namely Fractionally modulated Time-Frequency Reconstruction (FTFRecon), is proposed in TimeRadar to leverage a learnable fractional order to rotate the time series to the most pronounced angle between a continuous time and frequency domain for accurate data reconstruction. This provides adaptive data reconstruction in an optimal time-frequency domain for each data input, enabling effective differentiation of the unbounded abnormal patterns from the regular ones across datasets, including unseen datasets. To allow TimeRadar to model local abnormality that is not captured by the global data reconstruction, we further introduce a Contextual Deviation Learning (CDL) component to model the local deviation of the input relative to its contextual time series data in the rotatable domain.

Hui He, Hezhe Qiao, Yutong Chen, Kun Yi, Guansong Pang• 2026

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionSMD--
217
Time Series Anomaly DetectionSMAP
Affiliation F175.41
29
Anomaly DetectionSMD (test)
Precision (Aff)76.6
25
Time Series Anomaly DetectionSWaT (test)
Affiliation Precision62.23
25
Time Series Anomaly DetectionSMAP (test)
Affiliation Precision62.9
25
Time Series Anomaly DetectionPSM (test)
Affiliation Precision71.49
25
Time Series Anomaly DetectionPSM
AUC-R67.72
13
Time Series Anomaly DetectionSWaT
AUC-R83.31
13
Time Series Anomaly DetectionCICIDS
AUC-R82.76
13
Time Series Anomaly DetectionSWAN
AUC-R81.13
13
Showing 10 of 13 rows

Other info

Follow for update