Accelerator, radiation and x-ray optics simulation framework
Ocelot is a multiphysics simulation toolkit designed for studying FEL and storage ring-based light sources. Ocelot is written in Python. Its central concept is the writing of python's scripts for simulations with the usage of Ocelot's modules and functions and the standard Python libraries.
Ocelot includes following main modules:
- Charged particle beam dynamics module (CPBD)
- optics
- tracking
- matching
- collective effects (description can be found here and here)
- Space Charge (3D Laplace solver)
- CSR (Coherent Synchrotron Radiation) (1D model with arbitrary number of dipoles).
- Wakefields (Taylor expansion up to second order for arbitrary geometry).
- MOGA (Multi Objective Genetics Algorithm) ref.
- Native module for spontaneous radiation calculation (some details can be found here and here)
- FEL calculations: interface to GENESIS and pre/post-processing
- Modules for online beam control and online optimization of accelerator performances. ref1, ref2, ref3, ref4.
- This module is being developed in collaboration with other accelerator groups. The module has been migrated to a separate repository (in ocelot-collab organization) for ease of collaborative development.
Ocelot extensively uses Python's NumPy (Numerical Python) and SciPy (Scientific Python) libraries, which enable efficient in-core numerical and scientific computation within Python and give you access to various mathematical and optimization techniques and algorithms. To produce high quality figures Python's matplotlib library is used.
It is an open source project and it is being developed by physicists from The European XFEL, DESY (Germany), NRC Kurchatov Institute (Russia).
We still have no documentation but you can find a lot of examples in /demos/ folder including this tutorial
Ocelot is designed for researchers who want to have the flexibility that is given by high-level languages such as Matlab, Python (with Numpy and SciPy) or Mathematica. However if someone needs a GUI it can be developed using Python's libraries like a PyQtGraph or PyQt.
The tutorial includes 9 examples dedicated to the beam dynamics and optics and 5 to Photon Field Simulation. However, you should have a basic understanding of Computer Programming terminologies. A basic understanding of Python language is a plus.
- Python 3.6 - 3.8
numpy
version 1.8 or later: http://www.numpy.org/scipy
version 0.15 or later: http://www.scipy.org/matplotlib
version 1.5 or later: http://matplotlib.org/ipython
version 2.4 or later, with notebook support: http://ipython.org
Optional, but highly recommended for speeding up calculations
- numexpr (version 2.6.1)
- pyfftw (version 0.10)
- numba
Orbit Correction module
- pandas
The easiest way to get these is to download and install the (large) Anaconda software distribution.
Alternatively, you can download and install miniconda. The following command will install all required packages:
$ conda install numpy scipy matplotlib jupyter
The easiest way to install OCELOT is to use Anaconda cloud. In that case use command:
$ conda install -c ocelot-collab ocelot
Clone OCELOT from GitHub:
$ git clone https://github.com/ocelot-collab/ocelot.git
or download last release zip file. Now you can install OCELOT from the source:
$ python setup.py install
Another way is download ocelot from GitHub
-
you have to download from GitHub zip file.
-
Unzip ocelot-master.zip to your working folder /your_working_dir/.
-
Add ../your_working_dir/ocelot-master to PYTHONPATH
- Windows 7: go to Control Panel -> System and Security -> System -> Advance System Settings -> Environment Variables. and in User variables add /your_working_dir/ocelot-master/ to PYTHONPATH. If variable PYTHONPATH does not exist, create it
Variable name: PYTHONPATH
Variable value: ../your_working_dir/ocelot-master/
- Linux:
$ export PYTHONPATH=/your_working_dir/ocelot-master:$PYTHONPATH
in command line run following commands:
$ ipython notebook
or
$ ipython notebook --notebook-dir="path_to_your_directory"
or
$ jupyter notebook --notebook-dir="path_to_your_directory"
You can download OCELOT jupyter tutorials (release v18.02) using GitHub link zip file.
- Preliminaries: Setup & introduction
- Introduction. Tutorial N1. Linear optics
- Linear optics. Double Bend Achromat (DBA). Simple example of usage OCELOT functions to get periodic solution for a storage ring cell.
- Tutorial N2. Tracking
- Linear optics of the European XFEL Injector.
- Tracking. First and second order.
- Artificial beam matching - BeamTransform
- Tutorial N3. Space Charge
- Tracking through RF cavities with SC effects and RF focusing.
- Tutorial N4. Wakefields
- Tracking through corrugated structure (energy chirper) with Wakefields
- Tutorial N5. CSR
- Tracking trough bunch compressor with CSR effect.
- Tutorial N6. RF Coupler Kick
- Coupler Kick. Example of RF coupler kick influence on trajjectory and optics.
- Tutorial N7. Lattice design
- Lattice design, twiss matching, twiss backtracking
- Tutorial N8. Physics process addition. Laser heater
- Theory of Laser Heater, implementation of new Physics Process, track particles w/o laser heater effect.
- Tutorial N9. Simple accelerator based THz source
- A simple accelerator with the electron beam formation system and an undulator to generate THz radiation.
- PFS tutorial N1. Synchrotron radiation module.
- Simple examples how to calculate synchrotron radiation with OCELOT Synchrotron Radiation Module.
- PFS tutorial N2. Coherent radiation module and RadiationField object.
- PFS tutorial N3. Reflection from imperfect highly polished mirror.
- PFS tutorial N4. Converting synchrotron radiation Screen object to RadiationField object for viewing and propagation.
- PFS tutorial N5: SASE estimation and imitation.
- Undulator matching.
- brief theory and example in OCELOT
- Some useful OCELOT functions
- Aperture, RK tracking
- Example of an accelerator section optimization
- A simple demo of accelerator section optimization with a standard scipy numerical optimization method.
The API documentation can be build using sphinx. To do so, you have to clone the repository or download the zip file, as explained in the ocelot installation section. Then you can install all dependencies by running
python -m pip install -r docs/requirements.txt
python setup.py install
Now you can build the documentation by running
python setup.py build_sphinx
If these steps succeeded (yes, there are still very many errors and warnings during building the documentation),
you can browse the HTML documentation by opening build/sphinx/html/index.html
in your browser.
Disclaimer: The OCELOT code comes with absolutely NO warranty. The authors of the OCELOT do not take any responsibility for any damage to equipments or personnel injury that may result from the use of the code.