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Techniques for the measurement and analysis of HOM signals for diagnostics

Techniques for the measurement and analysis of HOM signals for diagnostics. Stephen Molloy European Spallation Source. Overview. Well known that HOMs are “bad”, But can they be “good”? FLASH experiment Hardware Analysis Results Future? Multibunch ?. Usefulness of HOMs.

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Techniques for the measurement and analysis of HOM signals for diagnostics

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  1. Techniques for the measurement and analysis of HOM signals for diagnostics Stephen Molloy European Spallation Source

  2. Overview • Well known that HOMs are “bad”, • But can they be “good”? • FLASH experiment • Hardware • Analysis • Results • Future? • Multibunch?

  3. Usefulness of HOMs • Mode excitation depends on the beam • Coupling defined by trajectory (for dipole & higher) • Phase of excitation depends on beam arrival time • Each mode carries information • Can this be extracted? • Vacuum/cryo infrastructure already exists • Bandstop filtered coupler extracts power • Replace resistive load with monitoring devices • Very cheap hardware installation!

  4. Dipole modes are polarised • Two polarisations, rotated by π/2 • Not necessarily coincident with xy plane • Alignment may depend on cell number • Four degrees of freedom • Phase & amplitude in each polarisation • Horizontal & vertical position • Only 2 trajectory dofs? • What info is carried by the other dofs?

  5. “Beam” degrees of freedom Cannot separate these two Analyse bunch with finite length, σz, as two “macro-particles” Head & tail particles excite equal but opposite signals, separated by σz/c. Vector sum is really a time-delayed subtraction – much like a differential. Thus, the “tilt” signal is equivalent to the “offset” signal, but phase rotated by π/2.

  6. Our experiment

  7. Measurement electronics Mix to 20MHz IF BP filter & amplify LP filter & amplify Input from coupler Digitize at ~100MS/s

  8. Raw data Two exponentially decaying sinusoids. Polarisation degeneracy broken, so two frequencies beating against each other. Beat frequency indicates Δf is very small. Calibration tone

  9. Analysis • “Standard analysis” • Determine complex amplitude of the signal • Correlate real and imaginary components with position and angle • Matrix transform  rotation & scaling • Problem…

  10. Idea? • Data from each pulse is a vector • Actually two vectors (one from each coupler) but they may be concatenated into one. • 1600 points per coupler per acquisition • This could be considered as 1 point in a hugely dimensional space (3200 dimensions!) • A dataset is a “fuzz” plotted in 3200-D! • The data produced by a “pure” move in 1 dof (x, x’, y, y’) is also a vector • New coord system is defined by aligning with each of these • How? • What about the other 3196 dims?

  11. X  data matrix (100x3200) Matrix decomposition Singular Value Decomposition: • V contains “time dependent” eigenvectors • Unitary, so (by definition) also orthonormal • New basis for 3200-D data? • X may be represented by U.S in “V space” U & V are unitary S is diagonal. Contains the “singular values”. Each of these is an eigenvalue equation, and U & V are matrices containing the respective eigenvectors.

  12. How to use this new vector basis? • For each incoming pulse: • Determine location in 3200-D space • Dot product with V vectors • Correlate this with trajectory info from other devices • SVD calculates and orders V to maximise each subsequent singular value • Only four beam dofs, so we can discard 3196 vectors! • Maybe choose 6 to be safe! • Correlate these with the trajectory

  13. Identical to JPEG compression! • Break image into blocks • 8x8 pixels • Dot product each with 2D basis function • Converts 64 pixel image to 64 amplitudes • Compress by discarding information • Remove high frequency blocks

  14. Eigenmodes & singular values

  15. Results ~0.3 mm Resolution ~4 μm ~0.3 mm

  16. 4 μm resolution – is that good? • No! • Compare: • The power in the mode • with • The thermal noise in the electrons • Find the beam position at which these are equal • 130 nm!!! • Problem in the electronics • Signal jitter mixes position & angle • Updates could fix this…

  17. What about multi-bunch? • Decay time >> bunch separation • Can bunches be separated? • Subtracting bunch by bunch leads to large errors • Work with single bunch modes • Measure the mode amplitudes in one bunch window • Then again in the second window • No bunch in this region! • Calculate the transformation matrix • Calculate mode amps for each bunch subtracting the previous bunch

  18. Multibunch data Multibunch residual is equivalent to a position noise of ~1-2 um. Added in quadrature to 4 um, this increase is negligible.

  19. Stability • In real world: • Diagnostics must be stable as well as high res. • Can’t constantly interrupt machine time to calibrate HOM BPMs! • Questions: • Why does the calibration change? • Temperature drifts, cable changes, etc. cause phase rotations and gain changes • Can we prevent it changing? • Solution? • Measure gain/phase of cal. tone. • Remove gain/phase deltas

  20. Convert to “pure” modes • Construct pure modes from cal data • Monitor phase/gain of cal tone • Alter incoming data appropriately • Determine amplitude of pure modes

  21. Summary • Impossible to completely eradicate HOMs • Dealt with by appropriate accelerator design • This infrastructure can be designed to allow HOMs to be useful • 4D trajectory monitoring • Many machines are dominated by their linac, so such measurements give lots of information • Other measurements possible • Bunch timing wrt accelerating phase • Internal alignment of cryomodules & cavities

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