Jun 19 – 23, 2023
Europe/Madrid timezone

Empowering SRF Cavity by Data-Driven Resonance Control based on Dynamic Mode Decomposition

Not scheduled
2h
Poster Poster

Speaker

Dr Faya Wang (SLAC)

Description

Effective resonance control of superconducting radio frequency (SRF) cavities is critical for large machines like LCLS-II, as failure to achieve proper control can result in increased RF power consumption, higher cryogenic heat loads, and increased costs. To address this challenge, we have developed a machine learning (ML) model based on the dynamic mode decomposition method (DMD) to represent the forced cavity dynamics. Using this model, we designed a model predictive controller (MPC) and demonstrated through simulation that the MPC can effectively stabilize the amplitude and phase of SRF cavities using only a frequency actuator, even in the presence of multiple mechanical modes. The lightweight and explicit ML model make the controller suitable for direct implementation on field-programmable gate arrays (FPGA), unlocking the full potential of SRF linacs like LCLS-II, enabling higher beam power and energy, and also serving as an advanced motion controller for various applications, such as photon beamlines and storage rings.

Primary author

Dr Faya Wang (SLAC)

Presentation materials

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