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Rosseland And Planck Opacity Converter

Project description

PyPI version GitHub release (latest by date) Downloads Documentation Status GitHub

RAPOC: Rosseland And Planck Opacity Converter

The RAPOC code is written by Lorenzo V. Mugnai and Darius Modirrousta-Galian and is the product of a collaboration between Sapienza Università di Roma, Università degli Studi di Palermo and INAF - Osservatorio Astronomico di Palermo. It uses molecular absorption measurements (i.e. wavelength-dependent opacities) to calculate Rosseland and Planck mean opacities that are commonly used in atmospheric modelling.

RAPOC is designed to be simple, straightforward, and easily incorporated into other codes. It is completely written in Python and documented with docstrings. In addition, a Sphinx version of the documentation with a full user guide that includes examples is available in html format.

Reports

RAPOC is under development, please report any issues or inaccuracies to the developers to support the implementation.

Cite

If you use this code or its results, please cite RAPOC: the Rosseland and Planck opacity converter by Mugnai L. V. and Modirrousta-Galian D. (submitted).

Installation

Installing from Pypi

RAPOC can be installed from the Pypi repository with the following script::

pip install rapoc

Installing from git

RAPOC may also be cloned from the main git repository::

git clone https://github.com/ExObsSim/Rapoc-public.git

The next step is to move into the RAPOC folder::

cd /your_path/Rapoc

Then::

pip install .

To check if one has the correct setup::

python -c "import rapoc"

Use

RAPOC is designed to be used on its own or in conjunction with other Python codes. Given an ExoMol file in the TauREx.h5 format, Rosseland and Planck mean opacities can be calculated. For example, in order to estimate the mean opacities at a temperature (T) of 1000 K with a pressure (P) of 10,000 Pa in the wavelength range of 0.3-50 micron the following script is used,

from rapoc import Rosseland, Planck

r_model = Rosseland(input_data='exomol_file.TauREx.h5')
opacity = r_model.estimate(P_input=10000 * u.Pa, T_input=1000 * u.K, band=(0.3 *u.um, 50*u.um))

p_model = Planck(input_data='exomol_file.TauREx.h5')
opacity = p_model.estimate(P_input=10000 * u.Pa, T_input=1000 * u.K, band=(0.3 *u.um, 50*u.um))

Inputs

To run the code you need measured data. The supported file formats are:

  • ExoMol opacities (downloadable here) with the TauREx.h5 format.

Documentation

The full documentation is available here

Alternatively, RAPOC accepts user-defined documentation by using sphinx. To install it run

pip install sphinx sphinx_rtd_theme

From the Rapoc/docs folder running

cd docs
make html

This will create a html version of the documentation in Rapoc/doc/build/html/index.html.

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