Outline For Thesis
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Abstract, Intro (obviously)
Current Experiments - Motivation for Research
- Current experiments requiring the use of GaAs photo-guns - polarized electron beams
- What is a photo-gun?
- CEBAF Injector - What is it? How do we (currently) model it?
Description of problem - Ionization
- What is ionization & why is it bad for electron beam production & electron guns?
- Ion Back-Bombardment & QE degradation of the photocathode
- How/where are ions formed in the photogun?
- How many ions reach the photocathode and what are their energies?
- How many of these ions contribute/correlate to QE damage?
- Other ion effects
- Fast-ion instability
- Charge neutralization
- Effect on emittance and tune
- Recombination - can lead to unwanted light incident on the photocathode active area, which may lead to beam halo
- Ion Back-Bombardment & QE degradation of the photocathode
Current Solutions
- Experimental ion mitigation techniques that are currently available:
- Clearing Techniques:
- Clearing electrodes - ion precipitator
- Repelling electrodes - biased anode
- Beam Gaps
- Beam Shaking Techniques
- Damage mitigation techniques:
- Varying laser spot size
- Photocathode elemental makeup (GaAs vs Mb)?
- Clearing Techniques:
- Theoretical Techniques
- Other ion tracking codes (IBSimu, SIMION, etc.)
The "Thesis" statement
- What do **I** bring to the table? Brief description/summary of
- GPT ionization custom element
- Biased anode as ion mitigation technique
- Analysis of how the charge lifetime scales with laser spot size (2017 experiments)
- Ion trapping experiments/simulations
- How all of these help to solve the problem described above?
- Knowing how ions are formed and where they go through measurements and simulations, we can...
- Predict the effectiveness of ion mitigation techniques (such as the biased anode)
- Predict the QE degradation of the photocathode and its charge lifetime under various beam conditions
- Identify the conditions under which ions can cause deleterious effects on the beam (in its creation and its stability) That is, we can identify the sources/causes of damaging ions.
- Knowing how ions are formed and where they go through measurements and simulations, we can...
Ionization Simulations with GPT Custom Element
GPT Description
- Purpose - to create particle simulations, often of electron beams, and to track their movement within electromagnetic fields in real-time (as opposed to just getting the trajectory info)
- How does it work? (perhaps with a flow chart?)
- Description of how particle distributions are created and what "macro-particles" are
- Built-in and custom elements with their respective locations (i.e. coordinate systems) are called by the GPT kernel. These elements include:
- E-Field and B-Field maps, usually due to beam line components
- Space charge routines
- Custom elements (like the ionization custom element)
- Equations of motion are derived by solving the Poisson equation using the 5th-order Runge-Kutta Method with an adaptive stepsize control
GPT Custom Element Algorithm
- Description of how the custom element works and is used to simulate ionization
- Ionization theory - Can be pulled from PSTP proceedings and tech notes
- Secondary Electron Differential Cross Section (SEDCS)
- Ion Energy Distribution (Maxwellian)
- Momentum/Energy Conservation?
- Benchmarking with theory and IBSimu (Can be pulled from future GPT/IBSimu paper)...maybe put in the LIfeSize Runs Section?
Biased Anode To Mitigate Ion Back-Bombardment
- Description of ion back-bombardment
- CEBAF vacuum pressures
- Description of mechanism - electron beam ionizes gas, accelerates towards photocathode, damages it, causing QE decay (describe how this occurs)
- Description of how the biased anode will mitigate it (Can be pulled from PSTP) - compare E-Fields
- Summer 2019 Biased Anode Experiments
- Description of Experiment at CEBAF
- QE Measurements & Charge Lifetime Analysis
- QE Scan Analysis
- GPT Simulations (w/custom element)
- Results/Discussion
- Similar for Winter 2019-2020 Experiments?
Analyzing 2017 LifeSize Runs with GPT/IBSimu
- Description of Experiment - varying laser spot size and calculating photocathode charge lifetime
- QE Scan analysis
- Comparing analysis results with GPT simulations using the ionization custom element
- Comparison & benchmarking with IBSimu
Ion Trapping at the Gun Test Stand (GTS)
- Description of phenomenon & experiments
- Anode bias/Gun solenoid systematic study
- Experiments where ghost beam returns when gun solenoid current is lowered and then raised - perhaps ion trap filling or field emission?
- GPT Simulations (w/custom element)
- Ion Trapping Experiments - Recreating Ghost Beam using Steel Shield. These experiments will help confirm/benchmark the GPT simulations and vice-versa.
- Results/Discussion
Discussion/Conclusions
- What is the most important info that I've learned so that I can pass it on to the next grad student?
- GPT is extensible!
- GPT can accurately simulate and predict the effect of ions on the operation of the photogun, both in the electron beam production (QE decay) and its stability (ion trapping & charge neutralization)
- A biased anode is effective at increasing the charge lifetime of the photocathode by repelling ions downstream of it.
- Ghosts are real! (ion trapping experiments at GTS)
- GPT is extensible!