Hybrid Autoencoder-Isolation Forest approach for time series anomaly detection in C70XP cyclotron operation data at ARRONAX
arXiv cs.LG / 3/24/2026
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Key Points
- The study introduces an ML method for early time-series anomaly detection in ARRONAX’s C70XP cyclotron operation using sensor data over temporal windows.
- It combines a fully connected autoencoder (AE) with Isolation Forest (IF) by feeding the AE’s Mean Cubic Error (MCE) reconstruction error into IF to better catch subtle deviations.
- The work is motivated by Isolation Forest’s axis-parallel splitting, which can miss anomalies that occur close to the mean of normal behavior.
- Validation on proton beam intensity time-series data shows improved anomaly detection performance compared with the baseline approach, supported by experimental results.
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