Provided by: python3-navarp_1.6.0-2_all bug

NAME

       navarp - navarp Documentation

ABSTRACT

       Navigation tools for Angle Resolved Photoemission spectroscopy data, i.e.:

              • a companion app during ARPES data acquitision (as in beamtime);

              • a set of dedicated libs helping to get high quality figures for publication.

       By Federico Bisti, University of L'Aquila, Italy.  [image]

CONTENTS

   Installation
       Download and install the last Anaconda distribution for Python 3.x from here, it can be installed with or
       without admin privilege (just remind the chosen option for later).

       After  installation,  few  commands must be run in the proper command line interface before being able to
       use the NavARP package, and this command line interface depends on the operating system.

       The command line interface corresponds to the Anaconda Prompt on Windows (that can be found in the  Start
       menu  after  searching  Anaconda  Prompt or after opening the Anaconda Navigator), and to the terminal on
       macOS and Linux.

       Regarding macOS, it might happen that after Anaconda installation the default Python  version  accessible
       from  the  terminal  is  still  the  default  one  from  macOS  (so  not  the one related to the Anaconda
       distribution). To check if it is the case, type and run python --version in the  terminal.  If  the  word
       Anaconda  is  not the printed lines, then Python is not of Anaconda and the installation cannot continue.
       To fix it, you can change the python environment by typing conda activate. Or (at your  risk!),  you  can
       try  to  change  your  .bash_profile making sure that the Anaconda directory is the first one in the line
       beginning with export PATH=... .

       Therefore, launch the proper command line interface  and  run  the  following  command  to  install  igor
       (necessary  for  opening  ibw  and  pxt  files)  and  colorcet  (it gives additional perceptually uniform
       colormap):

          conda install --channel conda-forge igor colorcet

       Otherwise, add conda-forge channel first and then install the packages:

          conda config --append channels conda-forge
          conda install igor colorcet

       After this step, NavARP must be installed as  a  package  using  pip.  To  do  it  with  admin  privilege
       (depending on the Anaconda installation), run the following command for the last stable version:

          pip install https://gitlab.com/fbisti/navarp/-/archive/master/navarp-master.zip

       Without administrator privilege run instead:

          pip install --user https://gitlab.com/fbisti/navarp/-/archive/master/navarp-master.zip

       If  you are brave enough you can also install the version still under development by using one of the two
       commands:

          pip install https://gitlab.com/fbisti/navarp/-/archive/develop/navarp-develop.zip
          pip install --user https://gitlab.com/fbisti/navarp/-/archive/develop/navarp-develop.zip

       After this steps NavARP should run directly by  typing  in  the  command  line  interface  the  following
       command:

          navarp

       Instead, for getting familiar with the libraries, launch Jupyter Notebook from the Anaconda Navigator (or
       in  proper  command line interface run the command jupyter notebook) and open some examples which you can
       find in the example folder:

       Finally, if you are familiar with  conda  you  can  also  create  a  dedicated  enviroment  (for  example
       navarp-env) and install only the basic packages using the following commands:

          conda create --name navarp-env numpy scipy matplotlib colorcet h5py pyqt=5 jupyter pyyaml click
          conda activate navarp-env
          conda install -c conda-forge igor

       And then you can install it directly with:

          pip install https://gitlab.com/fbisti/navarp/-/archive/master/navarp-master.zip

       Or maybe you can also have it under control with git, then do:

          conda install -c conda-forge git
          git clone https://gitlab.com/fbisti/navarp
          pip install -e .

       The  version  under development will be installed and any modification in the local directory will affect
       the installed program.

   Update
       To update the NavARP project to the last version, run the following command for the last stable version:

          pip install https://gitlab.com/fbisti/navarp/-/archive/master/navarp-master.zip

       Or for the last version still under development run:

          pip install https://gitlab.com/fbisti/navarp/-/archive/develop/navarp-develop.zip

   Usage
       The following documentation is covering only the basic commands  in  the  NavARP  GUI  (navarp.py).   The
       independent  usage  of the navarp.utils libraries is instead reported as Jupyter notebooks in the example
       folder.

   Loading data
       NavARP can open the following data types:

       • NXarpes file from LOREA/ALBA(ES) and I05/Diamond(GB);

       • HDF5 file from SXARPES-ADRESS/PSI(CH);

       • NEXUS file from Antares/Soleil(FR) (only deflector scan);

       • folder with txt-files from Cassiopee/Soleil(FR);

       • txt-file from MBS A1Soft program;

       • zip- or txt-file from Scienta-Omicron SES program;

       • sp2 file from Specs program;

       • pxt, ibw and itx file of Igor-pro as saved by Scienta-Omicron SES program;

       • txt file in itx format of Igor-pro considering the order (energy, angle, scan);

       • yaml file with dictionary to load files (txt, sp2 or pxt) in a folder or to  only  add  metadata  to  a
         single file.

       To  open  the  file  click  on  the  button  on  the  top left and select the single file or, in the case
       collection of txt-files from Cassiopee/Soleil(FR), select a ROI-file inside the folder.  To open a folder
       with a collection of txt-files from MBS A1Soft, sp2-files from Specs  program,  pxt-  or  txt-files  from
       Scienta-Omicron  SES program, write first a yaml-file inside that folder with the instruction for opening
       the file.  If for example the folder contains "file_name_001.txt,  file_name_002.txt,  file_name_003.txt,
       etc." the related yaml-file inside that folder (called for example file_name.yaml) can be:

          # ----------------------------------------------------------------
          # Required parameters
          # ----------------------------------------------------------------

          # file_path, the * must to be exactly where the variable number is
          file_path: 'file_name_*.txt'

          # scans can be start and step (as below), or start and stop (replace step with stop)
          # in the case below, it starts from 20 with a step of 0.5
          scans:
            start: 20
            step: 0.5

          # scan_type can be 'tilt', 'polar', 'azimuth', 'deflector' or 'hv'
          scan_type: 'azimuth'

          # ----------------------------------------------------------------
          # Optional parameters
          # ----------------------------------------------------------------

          # photon energy, it can be specified and other value from the files will be discarded
          hv: 60

          # analyzer, this define the analyzer geometry, if not specified default values will be used
          analyzer:
            tht_ap: 50
            phi_ap: 0
            work_fun: 4.5
            deflector: False

   Navigate through the data
       To  navigate  the data use the Navigation panel at the top right or mouse right-click on the top (bottom)
       graph to change the energy (scan) value.

       The mouse action can be only a single right-click-and-release in a particular region or  the  right-click
       can be kept pressed for a smooth movement to a final release point.

       Important,  the  right-click  mouse  navigation  works  properly if the "pan/zoom" or "zoom rect" are not
       selected in the navigation toolbar at the bottom of the figure (the GUI start with  neither  of  the  two
       options selected).

       With  the  mouse  cursor  on  top  of  a graph (either top or bottom), use the mouse scroll to change the
       integration region for the iso-value (energy or angle), each scroll step  is  doubling  or  halving  such
       region.

   Colormap scale
       Color scale setting can be modified in the Color scale parameters tab on the right (click on the tab name
       if not already selected).

   Fermi level
       Fermi  level  can  be  determined  in the Fermi level alignment tab (click on the tab name if not already
       selected).

       The "No Fermi level alignment" option keep the data in kinetic energy (E_{kin}) or, in the case of photon
       energy scan, in binding energy (E_{bin}) as obtained from E_{bin} = E_{kin} - (h\nu - \Phi),  where  h\nu
       is the photon energy and \Phi is the analyzer work function.

       "Use  Fermi  level at" uses the Fermi level inserted in the box below. "Find Fermi level using" looks for
       the Fermi level following the set-up selected below where: "Energy range" can be all  the  available  one
       (selecting  the  radio  button on full) or within the horizontal lines in the top panel (selecting cursor
       instead); the Fermi level can be the same for  all  the  scan  image  (selecting  "Scan  value"  all)  or
       different  values  for  each  scan  image, option particularly useful in photon energy scan ("Scan value"
       radio button on each).

   Transformation in the k-space
       In the k-space transformation tab it is possible to set up all the parameters used for the transformation
       from angle to momentum scale (the method is based on the kinetic energy of the electrons  and  so  it  is
       independent from the Fermi level alignment).

       The from cursor button auto-fills the "Point in angles" with the actual cursor position in the figure.

       The  set \Gamma just put zeros in k_x and k_y. The inner potential (V0) is 10 by default, it is used only
       for the photon energy scan and so it must be properly modified only in that case. Use photons  =  yes  to
       include  the  photon  momentum  for the determination of the initial electron momentum. In this case, the
       "Analyzer" parameters must be  properly  filled  (important,  at  the  present  version,  the  "Analyzer"
       parameters,  and  so  the  photon  momentum,  are correctly defined only for beamlines LOREA/ALBA(ES) and
       SXARPES-ADRESS/PSI(CH)).  Once everything is properly set, it is possible to click  the  Iso-E  (k)  blue
       button in the "Plot mode".

   File information
       File  information  tab  is  the  selected  one  by default after starting the GUI and it is reporting the
       information extracted from the data file.

   Credits
   Development Lead
       • Federico Bisti <federico.bisti@univaq.it>

   Contributors
       None yet. Why not be the first?

   Contributing
       Contributions are welcome, and they are greatly appreciated! Every little  bit  helps,  and  credit  will
       always be given.

       You can contribute in many ways:

   Types of Contributions
   Report Bugs
       Report bugs at Issue tracker.

       If you are reporting a bug, please include:

       • Your operating system name and version.

       • Any details about your local setup that might be helpful in troubleshooting.

       • Detailed steps to reproduce the bug.

   Fix Bugs
       Look through the Issue tracker for bugs.  Anything tagged with "bug" and "help wanted" is open to whoever
       wants to implement it.

   Implement Features
       Look  through  the  Issue  tracker for features.  Anything tagged with "enhancement" and "help wanted" is
       open to whoever wants to implement it.

   Write Documentation
       NavARP could always use more documentation, whether as part of the official NavARP docs,  in  docstrings,
       or even on the web in blog posts, articles, and such.

   Submit Feedback
       The best way to send feedback is to file an issue at Issue tracker .

       If you are proposing a feature:

       • Explain in detail how it would work.

       • Keep the scope as narrow as possible, to make it easier to implement.

       • Remember that this is a volunteer-driven project, and that contributions are welcome :)

   Get Started!
       Ready to contribute? Here's how to set up navarp for local development.

       1. Fork the navarp repo on GitLab.

       2. Clone your fork locally:

             $ git clone git@gitlab.com:your_name_here/navarp.git

       3. Install  your local copy into a virtualenv. Assuming you have virtualenvwrapper installed, this is how
          you set up your fork for local development:

             $ mkvirtualenv navarp
             $ cd navarp/
             $ python setup.py develop

       4. Create a branch for local development:

             $ git checkout -b name-of-your-bugfix-or-feature

          Now you can make your changes locally.

       5. When you're done making changes, check the code by using navarp.py and/or running the examples.

       6. Commit your changes and push your branch to GitLab:

             $ git add .
             $ git commit -m "Your detailed description of your changes."
             $ git push origin name-of-your-bugfix-or-feature

       7. Submit a pull request through the GitLab website.

   Pull Request Guidelines
       Before you submit a pull request, check that it meets these guidelines:

       1. The pull request should include tests.

       2. If the pull request adds functionality, the docs should be updated. Put your new functionality into  a
          function with a docstring, and add the feature to the list in README.rst.

   Deploying
       A  reminder for the maintainers on how to deploy.  Make sure all your changes are committed (including an
       entry in CHANGELOG.rst).  Then run:

          $ bump2version patch # possible: major / minor / patch
          $ git push
          $ git push --tags

   Changelog
   1.0.0: 2021/04/11
       This is one of the most important release of NavARP, and the project is  approaching  to  a  more  stable
       stage.  This  new version adds very important methods to the NavEntry class which are nicely shown in the
       now-available examples gallery! In addition, the loading speed has  been  improved  for  many  text-based
       files  input,  and  now the krx-MBS format is also supported. Below a list of the main changes divided by
       modules:

       • navarp_gui.py:

         • Added more colorscale maps;

         • After closing the program, its window size and position are saved (as a file  called  .navarp  inside
           the  user  home  directory)  and  they  will  be used to restore the program the next time it will be
           opened;

       • utils.navfile:

         • Added support for krx-MBS file format;

         • Added support for ibw file format as saved by Scienta-Omicron SES program;

         • Added support for txt-Scienta file format with 3 dimensions;

         • Added support for igor-pro text file format (saved as .itx or .txt);

         • Loading speed of about x3 faster for txt-based file input (txt from Scienta and MBS, sp2 from Specs);

         • Added set_efermi method to NavEntry to set the efermi of the entry object;

         • Added autoset_efermi method to NavEntry to automatically found the efermi by curve fitting;

         • Added plt_efermi_fit method to NavEntry to show the autoset_efermi results;

         • Added set_tht_an method to NavEntry to set the tht_an angle of  the  the  entry  object  for  k-space
           tranformation;

         • Added  set_kspace  method  to  NavEntry  to  set  tht_an, phi_an, scans_0 and phi used in the k-space
           tranformation;

         • Added isoscan, isoenergy, isoangle and isok methods in the NavEntry calling the respectively  classes
           in isomclass.

         • Extended dictionary in yaml-file, if loaded overwrite any attribute and efermi and tht_an can be also
           directly assigned.

       • utils.isomclass (new file):

         • Added  IsoScan  class  with  the  methods  to show in a plot, export as NXdata or Igor-pro text file,
           postprocessing as interpolation, second derivative and curvature;

         • Added IsoEnergy class  with the methods to show in a plot, export as NXdata or  Igor-pro  text  file,
           postprocessing as interpolation, second derivative and curvature;

         • Added  IsoAngle  class  with  the  methods to show in a plot, postprocessing as second derivative and
           curvature;

         • Added IsoK class with the methods to show in  a  plot,  export  as  NXdata  or  Igor-pro  text  file,
           postprocessing as second derivative and curvature;

       • utils.fermilevel:

         • Added fit procedure without using lmfit, lmfit is no longer required in navarp;

         • Removed all the previous functions based on lmfit.

       • utils.ktransf:

         • Removed all the deprecated functions for k-space transformation.

       • examples directory:

         • The old example directory now is called examples and contains the python script to get the gallery.

       • extras.simulation:

         • Added functions to simulate the graphene band structure probed by deflector and hv scans.

       • requirements.txt and setup.py:

         • Removed lmfit from the required packages.

   0.18.0: 2020/04/11
       This version gives the possibility to open four additional file formats.

       • navarp.py (now renamed as navarp_gui.py):

         • Added click command;

         • Import navarp.utils, so now navarp requires installation with pip before usage;

         • Renamed as navarp_gui.py so to avoid importing conflicts.

       • utils.navfile:

         • Added loading MBS A1Soft text-files;

         • Added case scan_type=deflector for Lorea by reading defl_angles.

       • setup.py:

         • Added click command.

   0.17.0: 2020/08/14
       This version gives the possibility to open four additional file formats.

       • navarp.py:

         • Added .navarp configuration file saved in the local user home

         • Set the initial default value of k-transf to be without photons contribution

       • utils.navfile:

         • Added loading Scienta-Omicron SES zip and text files;

         • Added loading Specs Prodigy sp2 files;

         • Added loading Igor-pro pxt files as saved by Scienta-Omicron SES;

         • Added loading folder with txt, sp2 or pxt files using instructions in a yaml file.

       • setup.py:

         • Improved requirements avoiding to install PyQt5 if in conda it is already present.

   0.16.0: 2020/08/05
       This version adds the sphinx-doc integrated in GitLab pages and utils.kinterp.

       • navarp.py:

         • Added azimuth scan_type

         • Added arctan2 value for sample alignment

         • Fixed Antares data including the case of MBSAcquisition_1

       • utils:

         • Added kinterp

EXAMPLES

   Examples gallery
       Below is a gallery of examples

   Simulated cone basic analysis
       Simple  workflow  for  analyzing  a deflector scan data.  The same workflow can be applied in the case of
       manipulator angular scans.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np

       Import the navarp libraries:

          from navarp.utils import navfile

       Load the data from a file:

          file_name = r"nxarpes_simulated_cone.nxs"
          entry = navfile.load(file_name)

       Out:

          instrument_name = simulated

       Plot a single slice Ex: scan = 0.5

          scan = 0.5
          entry.isoscan(scan).show()
       [image: plot basic commands] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3cea3d9160>

       Fermi level determination

          entry.autoset_efermi(energy_range=[93.8, 94.3])
          entry.plt_efermi_fit()

          print("Fermi level = {:.3f} meV".format(entry.efermi))
          print("Energy resolution = {:.0f} meV".format(entry.efermi_fwhm*1000))
          print("hv = {:g} eV".format(np.squeeze(entry.hv)))
       [image: plot basic commands] [image]

       Out:

          /build/navarp-uNOccK/navarp-1.0.0/navarp/utils/fermilevel.py:67: RuntimeWarning: divide by zero encountered in true_divide
            ddata_s_denergies = ddata_s_denergies/np.abs(data_sum)
          /build/navarp-uNOccK/navarp-1.0.0/navarp/utils/fermilevel.py:67: RuntimeWarning: invalid value encountered in true_divide
            ddata_s_denergies = ddata_s_denergies/np.abs(data_sum)
          Fermi level at 93.8881 eV
          Energy resolution = 67.2 meV (i.e. FWHM of the Gaussian shape which, convoluted with a step function, fits the Fermi edge)
          Photon energy is now set to 98.4881 eV (instead of 100.0000 eV)
          Fermi level = 93.888 meV
          Energy resolution = 67 meV
          hv = 98.4881 eV

       Since now the Fermi level is known, the same plot is automatically aligned Ex: scan = 0.5

          scan = 0.5
          entry.isoscan(scan).show()
       [image: plot basic commands] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9894d00>

       Plotting iso-energetic cut Ex: isoenergy cut at ekin = efermi

          ebin = 0
          debin = 0.005
          entry.isoenergy(ebin, debin).show()
       [image: plot basic commands] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9893790>

       Total running time of the script: ( 0 minutes  3.123 seconds)

   Export isoenergy at the Fermi level
       Simple workflow for exporting the isoenergy at the Fermi  level.   The  data  are  a  deflector  scan  on
       graphene as simulated from a third nearest neighbor tight binding model. The same workflow can be applied
       to any tilt-, polar-, deflector- or hv-scan.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np

       Instead of loading the file as for example:

          # from navarp.utils import navfile
          # file_name = r"nxarpes_simulated_cone.nxs"
          # entry = navfile.load(file_name)

       Here we build the simulated graphene signal with a dedicated function defined just for this purpose:

          from navarp.extras.simulation import get_tbgraphene_deflector

          entry = get_tbgraphene_deflector(
              scans=np.linspace(-5., 20., 91),
              angles=np.linspace(-25, 6, 400),
              ebins=np.linspace(-13, 0.4, 700),
              tht_an=-18,
              phi_an=0,
              hv=120,
              gamma=0.05
          )

   Fermi level autoset
          entry.autoset_efermi(scan_range=[-5, 5], energy_range=[115.2, 115.8])
          print("Energy of the Fermi level = {:.0f} eV".format(entry.efermi))
          print("Energy resolution = {:.0f} meV".format(entry.efermi_fwhm*1000))

          entry.plt_efermi_fit()
       [image: plot export isoenergy as nxs or itx] [image]

       Out:

          Fermi level at 115.4091 eV
          Energy resolution = 138.1 meV (i.e. FWHM of the Gaussian shape which, convoluted with a step function, fits the Fermi edge)
          Photon energy is now set to 120.0091 eV (instead of 120.0000 eV)
          Energy of the Fermi level = 115 eV
          Energy resolution = 138 meV

   Set the k-space for the transformation
          entry.set_kspace(
              tht_p=0.1,
              k_along_slit_p=1.7,
              scan_p=0,
              ks_p=0,
              e_kin_p=114.3,
          )

       Out:

          tht_an = -17.979
          scan_type =  deflector
          inn_pot = 14.000
          scans_0 = 0.000
          phi_an = 0.000
          kspace transformation ready

   Export the Fermi surface:
       First of all let's show it:

          entry.isoenergy(0, 0.02).show()
       [image: plot export isoenergy as nxs or itx] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9439d60>

       Then to be exported it mush be interpolated in a uniform grid.  This can be done by defining kbins in the
       isoenergy  definition,  which  is the number of points the momentum along the analyzer slit and the scan.
       In this case the number will be [1000, 800] and  we  will  call  such  isoenergy  object  as  isoatfermi.
       sphinx_gallery_thumbnail_number = 3

          isoatfermi = entry.isoenergy(0, 0.02, kbins=[1000, 800])

       To show what we are going to save, the method is always the same:

          isoatfermi.show()
       [image: plot export isoenergy as nxs or itx] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce93d71f0>

       To export it as NXdata class of the nexus format uncomment this line:

          # isoatfermi.export_as_nxs('fermimap.nxs')

       To export it as igor-pro text file (itx) uncomment this line:

          # isoatfermi.export_as_itx('fermimap.itx')

       Total running time of the script: ( 0 minutes  20.597 seconds)

   Export isoenergy at the Fermi level
       Simple  workflow  for  exporting  the  isoenergy  at  the  Fermi level.  The data are a deflector scan on
       graphene as simulated from a third nearest neighbor tight binding model. The same workflow can be applied
       to any tilt-, polar-, deflector- or hv-scan.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np

       Instead of loading the file as for example:

          # from navarp.utils import navfile
          # file_name = r"nxarpes_simulated_cone.nxs"
          # entry = navfile.load(file_name)

       Here we build the simulated graphene signal with a dedicated function defined just for this purpose:

          from navarp.extras.simulation import get_tbgraphene_deflector

          entry = get_tbgraphene_deflector(
              scans=np.linspace(-0.1, 0.1, 3),
              angles=np.linspace(-25, 6, 400),
              ebins=np.linspace(-13, 0.4, 700),
              tht_an=-18,
              phi_an=0,
              hv=120,
              gamma=0.05
          )

   Fermi level autoset
          entry.autoset_efermi(scan_range=[-2, 2], energy_range=[115.2, 115.8])
          print("Energy of the Fermi level = {:.0f} eV".format(entry.efermi))
          print("Energy resolution = {:.0f} meV".format(entry.efermi_fwhm*1000))

          entry.plt_efermi_fit()
       [image: plot postprocessing isoscan] [image]

       Out:

          Fermi level at 115.4065 eV
          Energy resolution = 143.7 meV (i.e. FWHM of the Gaussian shape which, convoluted with a step function, fits the Fermi edge)
          Photon energy is now set to 120.0065 eV (instead of 120.0000 eV)
          Energy of the Fermi level = 115 eV
          Energy resolution = 144 meV

   Set the k-space for the transformation
          entry.set_kspace(
              tht_p=0.1,
              k_along_slit_p=1.7,
              scan_p=0,
              ks_p=0,
              e_kin_p=114.3,
          )

       Out:

          tht_an = -17.979
          scan_type =  deflector
          inn_pot = 14.000
          scans_0 = 0.000
          phi_an = 0.000
          kspace transformation ready

   Post processing on the isoscan:
       First of all let's show it:

          entry.isoscan(0).show()
       [image: plot postprocessing isoscan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ceb81dfa0>

       The second derivative can be obtained using sigma in the definition, which define the extension in points
       of the Gaussian filter used to then get the second derivative. In this case the sigma is  different  from
       zero  only  on  the  second  element, meaning that the derivative will be performed only along the energy
       axis: sphinx_gallery_thumbnail_number = 3

          entry.isoscan(0, sigma=[0, 5]).show()
       [image: plot postprocessing isoscan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9418070>

       Only the Gaussian filtered image can be obtained using again sigma but also specifying the order=0, which
       by default is equal to 2 giving the second derivative as before.:

          entry.isoscan(0, sigma=[3, 5], order=0).show()
       [image: plot postprocessing isoscan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce944a370>

       To export it as NXdata class of the nexus format uncomment this line:

          # entry.isoscan(0, 0, sigma=[3, 5], order=0).export_as_nxs('fermimap.nxs')

       To export it as igor-pro text file (itx) uncomment this line:

          # entry.isoscan(0, 0, sigma=[3, 5], order=0).export_as_itx('fermimap.itx')

       Total running time of the script: ( 0 minutes  1.881 seconds)

   Interpolation on Graphene deflector scan
       Simple workflow for the interpolation of data along a generic path in  the  k-space  from  its  isoenergy
       cuts.  The data are a deflector scan on graphene as simulated from a third nearest neighbor tight binding
       model. The same workflow can be applied to any tilt-, polar-, deflector- or hv-scan.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np
          import matplotlib.pyplot as plt

       Instead of loading the file as for example:

          # from navarp.utils import navfile
          # file_name = r"nxarpes_simulated_cone.nxs"
          # entry = navfile.load(file_name)

       Here we build the simulated graphene signal with a dedicated function defined just for this purpose:

          from navarp.extras.simulation import get_tbgraphene_deflector

          entry = get_tbgraphene_deflector(
              scans=np.linspace(-5., 20., 91),
              angles=np.linspace(-25, 6, 400),
              ebins=np.linspace(-13, 0.4, 700),
              tht_an=-18,
              phi_an=0,
              hv=120,
              gamma=0.05
          )

   Fermi level autoset
          entry.autoset_efermi(scan_range=[-5, 5], energy_range=[115.2, 115.8])
          print("Energy of the Fermi level = {:.0f} eV".format(entry.efermi))
          print("Energy resolution = {:.0f} meV".format(entry.efermi_fwhm*1000))

          entry.plt_efermi_fit()
       [image: plot interpolation gr deflector scan] [image]

       Out:

          Fermi level at 115.4094 eV
          Energy resolution = 137.5 meV (i.e. FWHM of the Gaussian shape which, convoluted with a step function, fits the Fermi edge)
          Photon energy is now set to 120.0094 eV (instead of 120.0000 eV)
          Energy of the Fermi level = 115 eV
          Energy resolution = 138 meV

   Check for the Fermi level alignment
          entry.isoscan(scan=0, dscan=0).show(yname='eef')
       [image: plot interpolation gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9495d90>

   Plotting iso-energetic cut at ekin = efermi
          entry.isoenergy(0, 0.02).show()
       [image: plot interpolation gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9f502e0>

   Set the k-space for the transformation
          entry.set_kspace(
              tht_p=0.1,
              k_along_slit_p=1.7,
              scan_p=0,
              ks_p=0,
              e_kin_p=114.3,
          )

       Out:

          tht_an = -17.979
          scan_type =  deflector
          inn_pot = 14.000
          scans_0 = 0.000
          phi_an = 0.000
          kspace transformation ready

       and check the isoenergy at the Fermi level:

          entry.isoenergy(0, 0.02).show()
       [image: plot interpolation gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9349c70>

   Define the interpolation path points
          kbins = 900
          k_GK = 1.702
          k_pts_xy = np.array([
              [0, 0],
              [k_GK, 0],
              [k_GK*np.cos(np.pi/3), k_GK*np.sin(np.pi/3)+0.05],
              [0, 0]
          ])
          kx_pts = k_pts_xy[:, 0]
          ky_pts = k_pts_xy[:, 1]

          klabels = [
              r'$\Gamma$',
              r'$\mathrm{K}$',
              r'$\mathrm{K}^{\prime}$',
              r'$\Gamma$'
          ]

       and show them on the isoenergy at the Dirac point energy:

          entry.isoenergy(-1.1, 0.02).show()
          plt.plot(kx_pts, ky_pts, '-+')
       [image: plot interpolation gr deflector scan] [image]

       Out:

          [<matplotlib.lines.Line2D object at 0x7f3ce94a5f70>]

       Run the interpolation defining an isok:

          isok = entry.isok(kx_pts, ky_pts, klabels)

       Show the final results with the executed path on the isoenergy: sphinx_gallery_thumbnail_number = 6

          fig, axs = plt.subplots(1, 2)

          entry.isoenergy(0, 0.02).show(ax=axs[0])

          isok.path_show(axs[0], 'k', 'k', xytext=(8, 8))

          qmesh = isok.show(ax=axs[1])

          fig.tight_layout()
          fig.colorbar(qmesh)
       [image: plot interpolation gr deflector scan] [image]

       Out:

          <matplotlib.colorbar.Colorbar object at 0x7f3ce943a190>

       Total running time of the script: ( 0 minutes  21.724 seconds)

   The old way analysis
       Old  workflow  for  analyzing  a  deflector scan data. This workflow use the all the function in the most
       explicit way without using any entry method.  This is not a recommended  workflow  but  it  can  help  on
       understanding what it is behind the entry methods.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np
          import matplotlib.pyplot as plt

       Import the navarp libraries:

          from navarp.utils import navfile, fermilevel, navplt, ktransf, isocut

       Load the data from a file:

          file_name = r"nxarpes_simulated_cone.nxs"
          entry = navfile.load(file_name)

       Out:

          instrument_name = simulated

       Plot a single slice Ex: scan = 0.5

          scan = 0.5
          scan_ind = np.argmin(abs(entry.scans-scan))
          isoscan = isocut.maps_sum(scan, 0, entry.scans, entry.data)

          qmisoscan = navplt.pimage(
              entry.angles, entry.energies, isoscan, cmap='binary', style='tht_ekin')
       [image: plot cone old way] [image]

       Fermi level determination

          energy_range = [93.8, 94.3]
          data_sum = np.sum(entry.data, axis=tuple([0, 1]))
          popt = fermilevel.fit_efermi(entry.energies, data_sum, energy_range)
          efermi, res = popt[0], popt[1]*4

          fig, axfit = plt.subplots(1)
          axfit.axvline(popt[0])
          axfit.plot(entry.energies, data_sum, '+')
          axfit.plot(entry.energies, fermilevel.fermi_fun(entry.energies, *popt), 'r-')
          axfit.set_xlabel(r'Kinetic Energy (eV)')
          axfit.set_xlim(energy_range)
          dvis = data_sum[
              (entry.energies >= energy_range[0]) &
              (entry.energies <= energy_range[1])
          ]
          dvis_min = dvis.min()
          dvis_max = dvis.max()
          dvis_delta = dvis_max - dvis_min
          axfit.set_ylim(
              dvis_min - dvis_delta*0.05,
              dvis_max + dvis_delta*0.05
          )

          # Overwrite hv from the derived fermi level and the known work function
          hv_from_file = np.copy(entry.hv)
          entry.hv = np.array([efermi + entry.analyzer.work_fun])
          print(
              "hv = {:g} eV (from the file was {:g})".format(
                  np.squeeze(entry.hv), np.squeeze(hv_from_file))
          )
          print("Energy resolution = {:.0f} meV".format(res*1000))
       [image: plot cone old way] [image]

       Out:

          /build/navarp-uNOccK/navarp-1.0.0/navarp/utils/fermilevel.py:67: RuntimeWarning: divide by zero encountered in true_divide
            ddata_s_denergies = ddata_s_denergies/np.abs(data_sum)
          /build/navarp-uNOccK/navarp-1.0.0/navarp/utils/fermilevel.py:67: RuntimeWarning: invalid value encountered in true_divide
            ddata_s_denergies = ddata_s_denergies/np.abs(data_sum)
          hv = 98.4881 eV (from the file was 100)
          Energy resolution = 67 meV

       Plot a single slice with fermi level alignment Ex: scan = 0.5

          scan = 0.5
          scan_ind = np.argmin(abs(entry.scans-scan))
          isoscan = isocut.maps_sum(scan, 0, entry.scans, entry.data)

          qmisoscan = navplt.pimage(
              entry.angles, entry.energies-efermi, isoscan,
              cmap='magma_r', style='tht_eef')
       [image: plot cone old way] [image]

       Plotting iso-energetic cut Ex: isoenergy cut at ekin = efermi

          ekin = efermi
          dekin = 0.005
          isoev = isocut.maps_sum(ekin, dekin, entry.energies, entry.data)
          qmisoev = navplt.pimage(
              entry.angles, entry.scans, isoev,
              cmap='magma_r', style='tht_phi', cmapscale='linear')
       [image: plot cone old way] [image]

       Total running time of the script: ( 0 minutes  1.861 seconds)

   Graphene deflector scan
       Simple  workflow  for  analyzing  a  deflector  scan  data  of graphene as simulated from a third nearest
       neighbor tight binding model.  The same workflow can be applied to any tilt-, polar- or deflector-scan.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np
          import matplotlib.pyplot as plt

       Instead of loading the file as for example:

          # from navarp.utils import navfile
          # file_name = r"nxarpes_simulated_cone.nxs"
          # entry = navfile.load(file_name)

       Here we build the simulated graphene signal with a dedicated function defined just for this purpose:

          from navarp.extras.simulation import get_tbgraphene_deflector

          entry = get_tbgraphene_deflector(
              scans=np.linspace(-5., 5., 51),
              angles=np.linspace(-7, 7, 300),
              ebins=np.linspace(-3.3, 0.4, 450),
              tht_an=-18,
              phi_an=0,
              hv=120
          )

   Plot a single analyzer image at scan = 0
       First I have to extract the isoscan from the entry, so I use the isoscan method of entry:

          iso0 = entry.isoscan(scan=0, dscan=0)

       Then to plot it using the 'show' method of the extracted iso0:

          iso0.show(yname='ekin')
       [image: plot gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce94162b0>

       Or by string concatenation, directly as:

          entry.isoscan(scan=0, dscan=0).show(yname='ekin')
       [image: plot gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce917f160>

   Fermi level determination
       The initial guess for the binding energy is: ebins = ekins - (hv - work_fun).  However, the better way is
       to proper set the Fermi level first and then derives everything form it. The Fermi  level  can  be  given
       directly as a value using:

          entry.set_efermi(114.8)

       Or  it  can be detected from a fit using the method autoset_efermi.  In both cases the binding energy and
       the photon energy will be updated consistently. Note that the work function depends on  the  beamline  or
       laboratory. If not specified is 4.5 eV.

          entry.autoset_efermi(scan_range=[-5, 5], energy_range=[115.2, 115.8])
          print("Energy of the Fermi level = {:.0f} eV".format(entry.efermi))
          print("Energy resolution = {:.0f} meV".format(entry.efermi_fwhm*1000))

          entry.plt_efermi_fit()
       [image: plot gr deflector scan] [image]

       Out:

          Fermi level at 115.4016 eV
          Energy resolution = 56.6 meV (i.e. FWHM of the Gaussian shape which, convoluted with a step function, fits the Fermi edge)
          Photon energy is now set to 120.0016 eV (instead of 120.0000 eV)
          Energy of the Fermi level = 115 eV
          Energy resolution = 57 meV

   Plot a single analyzer image at scan = 0 with the Fermi level aligned
          entry.isoscan(scan=0, dscan=0).show(yname='eef')
       [image: plot gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce936e100>

   Plotting iso-energetic cut at ekin = efermi
          entry.isoenergy(0).show()
       [image: plot gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce93f4d00>

   Plotting in the reciprocal space (k-space)
       I  have  to  define  first the reference point to be used for the transformation.  Meaning a point in the
       angular space which I know it correspond to a particular point in the k-space. In this case the  graphene
       Dirac-point  which is at ekin = 114.3 eV, in angle is at (tht_p, phi_p) = (0.1, 0) and in the k-space has
       to correspond to (kx, ky) = (1.7, 0).

          entry.set_kspace(
              tht_p=0.1,
              k_along_slit_p=1.7,
              scan_p=0,
              ks_p=0,
              e_kin_p=114.3,
          )

       Out:

          tht_an = -17.979
          scan_type =  deflector
          inn_pot = 14.000
          scans_0 = 0.000
          phi_an = 0.000
          kspace transformation ready

       Once it is set, all the isoscan or isoenergy extracted from the entry will now get their  proper  k-space
       scales:

          entry.isoscan(0).show()
       [image: plot gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce944da30>

          entry.isoenergy(0).show()
       [image: plot gr deflector scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce92c0c40>

       I can also place together in a single figure different images: sphinx_gallery_thumbnail_number = 5

          fig, axs = plt.subplots(1, 2)

          entry.isoscan(0).show(ax=axs[0])
          entry.isoenergy(0).show(ax=axs[1])

          plt.tight_layout()
       [image: plot gr deflector scan] [image]

   Many other options:
          fig, axs = plt.subplots(2, 2)

          scan = 0.8
          dscan = 0.05
          ebin = -0.4
          debin = 0.05

          entry.isoscan(scan, dscan).show(ax=axs[0][0], xname='tht', yname='ekin')
          entry.isoscan(scan, dscan).show(ax=axs[0][1], cmap='binary')

          axs[0][0].axhline(ebin-debin+entry.efermi)
          axs[0][0].axhline(ebin+debin+entry.efermi)

          axs[0][1].axhline(ebin-debin)
          axs[0][1].axhline(ebin+debin)

          entry.isoenergy(ebin, debin).show(
              ax=axs[1][0], xname='tht', yname='phi', cmap='cividis')
          entry.isoenergy(ebin, debin).show(
              ax=axs[1][1], cmap='magma', cmapscale='log')

          axs[1][0].axhline(scan, color='w')

          x_note = 0.05
          y_note = 0.98

          for ax in axs[0][:]:
              ax.annotate(
                  "$scan \: = \: {} \pm {} \; ^\circ$".format(scan, dscan),
                  (x_note, y_note),
                  xycoords='axes fraction',
                  size=8, rotation=0, ha="left", va="top",
                  bbox=dict(
                      boxstyle="round", fc='w', alpha=0.65, edgecolor='None', pad=0.05
                  )
              )

          for ax in axs[1][:]:
              ax.annotate(
                  "$E-E_F \: = \: {} \pm {} \; eV$".format(ebin, debin),
                  (x_note, y_note),
                  xycoords='axes fraction',
                  size=8, rotation=0, ha="left", va="top",
                  bbox=dict(
                      boxstyle="round", fc='w', alpha=0.65, edgecolor='None', pad=0.05
                  )
              )

          plt.tight_layout()
       [image: plot gr deflector scan] [image]

       Total running time of the script: ( 0 minutes  5.859 seconds)

   Graphene hv scan
       Simple  workflow  for  analyzing  a photon energy scan data of graphene as simulated from a third nearest
       neighbor tight binding model.  The same workflow can be applied to any photon energy scan.

       Import the "fundamental" python libraries for a generic data analysis:

          import numpy as np
          import matplotlib.pyplot as plt

       Instead of loading the file as for example:

          # from navarp.utils import navfile
          # file_name = r"nxarpes_simulated_cone.nxs"
          # entry = navfile.load(file_name)

       Here we build the simulated graphene signal with a dedicated function defined just for this purpose:

          from navarp.extras.simulation import get_tbgraphene_hv

          entry = get_tbgraphene_hv(
              scans=np.arange(90, 150, 2),
              angles=np.linspace(-7, 7, 300),
              ebins=np.linspace(-3.3, 0.4, 450),
              tht_an=-18,
          )

   Plot a single analyzer image at scan = 90
       First I have to extract the isoscan from the entry, so I use the isoscan method of entry:

          iso0 = entry.isoscan(scan=90)

       Then to plot it using the 'show' method of the extracted iso0:

          iso0.show(yname='ekin')
       [image: plot gr hv scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce8f78be0>

       Or by string concatenation, directly as:

          entry.isoscan(scan=90).show(yname='ekin')
       [image: plot gr hv scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9164be0>

   Fermi level determination
       The initial guess for the binding energy is: ebins = ekins - (hv - work_fun).  However, the better way is
       to proper set the Fermi level first and then derives everything form it. In this  case  the  Fermi  level
       kinetic  energy is changing along the scan since it is a photon energy scan.  So to set the Fermi level I
       have to give an array of values corresponding to each photon energy. By definition I can give:

          efermis = entry.hv - entry.analyzer.work_fun
          entry.set_efermi(efermis)

       Or I can use a method for its detection, but in this case, it is important to give a proper energy  range
       for  each  photon  energy.  For  example  for each photon a good range is within 0.4 eV around the photon
       energy minus the analyzer work function:

          energy_range = (
              (entry.hv[:, None] - entry.analyzer.work_fun) +
              np.array([-0.4, 0.4])[None, :])

          entry.autoset_efermi(energy_range=energy_range)

       Out:

          scan(eV)  efermi(eV)  FWHM(meV)  new hv(eV)
          90.0000  85.4000  58.5  90.0000
          92.0000  87.3999  58.8  91.9999
          94.0000  89.3995  59.6  93.9995
          96.0000  91.4000  58.7  96.0000
          98.0000  93.4004  58.5  98.0004
          100.0000  95.3997  59.6  99.9997
          102.0000  97.4000  59.1  102.0000
          104.0000  99.3997  60.1  103.9997
          106.0000  101.4007  58.5  106.0007
          108.0000  103.4006  58.5  108.0006
          110.0000  105.4002  59.4  110.0002
          112.0000  107.4006  57.4  112.0006
          114.0000  109.4006  58.9  114.0006
          116.0000  111.4004  58.9  116.0004
          118.0000  113.3998  59.5  117.9998
          120.0000  115.4002  59.4  120.0002
          122.0000  117.4009  57.7  122.0009
          124.0000  119.4004  58.0  124.0004
          126.0000  121.4001  58.9  126.0001
          128.0000  123.4002  59.0  128.0002
          130.0000  125.4004  58.6  130.0004
          132.0000  127.4006  58.9  132.0006
          134.0000  129.4005  57.3  134.0005
          136.0000  131.4002  59.1  136.0002
          138.0000  133.4001  58.7  138.0001
          140.0000  135.4000  58.1  140.0000
          142.0000  137.4007  57.6  142.0007
          144.0000  139.4005  58.5  144.0005
          146.0000  141.4004  57.8  146.0004
          148.0000  143.4001  60.0  148.0001

       In both cases the binding energy and the photon energy will be updated consistently. Note that  the  work
       function depends on the beamline or laboratory. If not specified is 4.5 eV.

       To  check  the Fermi level detection I can have a look on each photon energy.  Here I show only the first
       10 photon energies:

          for scan_i in range(10):
              print("hv = {} eV,  E_F = {:.0f} eV,  Res = {:.0f} meV".format(
                  entry.hv[scan_i],
                  entry.efermi[scan_i],
                  entry.efermi_fwhm[scan_i]*1000
              ))
              entry.plt_efermi_fit(scan_i=scan_i)

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       • [image: plot gr hv scan] [image]

       Out:

          hv = 89.99998283633579 eV,  E_F = 85 eV,  Res = 59 meV
          hv = 91.9998627668236 eV,  E_F = 87 eV,  Res = 59 meV
          hv = 93.99949668680733 eV,  E_F = 89 eV,  Res = 60 meV
          hv = 96.00002470385328 eV,  E_F = 91 eV,  Res = 59 meV
          hv = 98.00040009140567 eV,  E_F = 93 eV,  Res = 59 meV
          hv = 99.99973916893491 eV,  E_F = 95 eV,  Res = 60 meV
          hv = 101.99995912743783 eV,  E_F = 97 eV,  Res = 59 meV
          hv = 103.99974209235835 eV,  E_F = 99 eV,  Res = 60 meV
          hv = 106.00073875670226 eV,  E_F = 101 eV,  Res = 58 meV
          hv = 108.0006350982113 eV,  E_F = 103 eV,  Res = 59 meV

   Plot a single analyzer image at scan = 110 with the Fermi level aligned
          entry.isoscan(scan=110).show(yname='eef')
       [image: plot gr hv scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce910a3a0>

   Plotting iso-energetic cut at ekin = efermi
          entry.isoenergy(0).show()
       [image: plot gr hv scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce92906d0>

   Plotting in the reciprocal space (k-space)
       I have to define first the reference point to be used for the transformation.  Meaning  a  point  in  the
       angular  space which I know it correspond to a particular point in the k-space. In this case the graphene
       Dirac-point is for hv = 120 is at ekin = 114.3 eV and tht_p = -0.6 (see the figure below), which  in  the
       k-space has to correspond to kx = 1.7.

          hv_p = 120

          entry.isoscan(scan=hv_p, dscan=0).show(yname='ekin', cmap='cividis')

          tht_p = -0.6
          e_kin_p = 114.3
          plt.axvline(tht_p, color='w')
          plt.axhline(e_kin_p, color='w')

          entry.set_kspace(
              tht_p=tht_p,
              k_along_slit_p=1.7,
              scan_p=0,
              ks_p=0,
              e_kin_p=e_kin_p,
              inn_pot=14,
              p_hv=True,
              hv_p=hv_p,
          )
       [image: plot gr hv scan] [image]

       Out:

          tht_an = -18.040
          scan_type =  hv
          inn_pot = 14.000
          phi_an = 0.000
          k_perp_slit_for_kz = 0.000
          kspace transformation ready

       Once  it is set, all the isoscan or iscoenergy extracted from the entry will now get their proper k-space
       scales:

          entry.isoscan(120).show()
       [image: plot gr hv scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9244340>

       sphinx_gallery_thumbnail_number = 17

          entry.isoenergy(0).show(cmap='cividis')
       [image: plot gr hv scan] [image]

       Out:

          <matplotlib.collections.QuadMesh object at 0x7f3ce9324b20>

       I can also place together in a single figure different images:

          fig, axs = plt.subplots(1, 2)

          entry.isoscan(120).show(ax=axs[0])
          entry.isoenergy(-0.9).show(ax=axs[1])

          plt.tight_layout()
       [image: plot gr hv scan] [image]

   Many other options:
          fig, axs = plt.subplots(2, 2)

          scan = 110
          dscan = 0
          ebin = -0.9
          debin = 0.01

          entry.isoscan(scan, dscan).show(ax=axs[0][0], xname='tht', yname='ekin')
          entry.isoscan(scan, dscan).show(ax=axs[0][1], cmap='binary')

          axs[0][1].axhline(ebin-debin)
          axs[0][1].axhline(ebin+debin)

          entry.isoenergy(ebin, debin).show(
              ax=axs[1][0], xname='tht', yname='phi', cmap='cividis')
          entry.isoenergy(ebin, debin).show(
              ax=axs[1][1], cmap='magma', cmapscale='log')

          axs[1][0].axhline(scan, color='w', ls='--')
          axs[0][1].axvline(1.7, color='r', ls='--')
          axs[1][1].axvline(1.7, color='r', ls='--')

          x_note = 0.05
          y_note = 0.98

          for ax in axs[0][:]:
              ax.annotate(
                  "$scan \: = \: {} eV$".format(scan, dscan),
                  (x_note, y_note),
                  xycoords='axes fraction',
                  size=8, rotation=0, ha="left", va="top",
                  bbox=dict(
                      boxstyle="round", fc='w', alpha=0.65, edgecolor='None', pad=0.05
                  )
              )

          for ax in axs[1][:]:
              ax.annotate(
                  "$E-E_F \: = \: {} \pm {} \; eV$".format(ebin, debin),
                  (x_note, y_note),
                  xycoords='axes fraction',
                  size=8, rotation=0, ha="left", va="top",
                  bbox=dict(
                      boxstyle="round", fc='w', alpha=0.65, edgecolor='None', pad=0.05
                  )
              )

          plt.tight_layout()
       [image: plot gr hv scan] [image]

       Total running time of the script: ( 0 minutes  7.611 seconds)

API REFERENCE

       • genindex

       • modindex

       • search

PROJECT ON GITLAB

Source repositoryIssue tracker

AUTHOR

       Federico Bisti

COPYRIGHT

       2021, Federico Bisti

                                                  Sep 30, 2021                                         NAVARP(1)