首页 /研究 /KIND: A Kalman-Inspired Adaptive Estimator for SRF Cavity Detuning
OTHER

KIND: A Kalman-Inspired Adaptive Estimator for SRF Cavity Detuning

Andrei Maalberg, Axel Neumann, Pablo Echevarria, Andriy Ushakov, Jens Knobloch

发表年份
2026
访问权限
开放获取

摘要

Superconducting radio frequency cavities with a high quality factor enable energy-efficient accelerator operation but are very sensitive to mechanical disturbances that detune their resonance. Accurate detuning estimation is therefore essential for efficient resonance control and stable beam conditions. This paper introduces Kalman-Inspired Neural Decomposition (KIND), a data-driven estimator that fuses a Dynamic Mode Decomposition model for stationary modal behavior with a Transformer-based predictor for transient dynamics. KIND further outputs learned uncertainty signals that indicate regime changes, enabling anomaly detection. Using operational cavity data, we compare KIND with a classical Kalman filtering baseline and discuss its potential as a foundation for future uncertainty-aware, forecast-based control.

关键词

eess.SY

相关论文

查看 OTHER 分类全部论文