('Draws nightsky allskymaps',)
Project description
nsb (Night Sky Backgound)
Draws nightsky allskymaps corresponding to KRISCIUNAS Model of the Brightness of Moonlight together with star data obtained from the GAIA public data release catalog. The result is a 2D Pixel array with physical brightness values for each sky position.
Or estimate the brightness for a given source over a timespann. The GAIA Data will we automatically downloaded via an query to the corresponding ESA server. The User has just decide how much to get. For calling sources 'by name' and storing their positions, nsb includes a sub packages 'mypycat'. Therefore a catalog is needed, which is not provided. Only a dummy file will be created and the user is free to add any source coordinates to ~/.nsb/mypycat.txt
Usage as commandline tool
python -m nsb [--OPTIONS] [--FLAGS]
python -m --help
--h --help prints this help message
--create CONFIGFILE
writes a standard value configfile
OPTIONS:
(can all be set in config)
--use CONFIGFILE:
use a dedicated (non standard) configfile
--t1 --time DATETIME:
time and date for which the map should be drawn
format: 2010/12/24 23:59:59
--t2 --time_end DATETIME:
needed for plots over a timestamp like --trend and --maxnsb
format: 2010/12/24 23:59:59
--o --output /OUTPUT/DIRECTORY/
for saving results in different place than working directory
filenames will be generated automatically
--s --size IMAGESIZE:
set the output Imagesize in Pixels
--altaz ALT AZ:
set the observation position in the sky manually (unit: degrees)
--q --source SOURCENAME:
set the observation position automatically on a source by name
i.e.: "crab", "moon"
--l --location LOCATION:
The observers coordinates (Lon Lat) on earth and elevation (unit: degrees and meters)
format: 16.5028 -23.27280 1800.0
--hp LEVEL:
HealPix Level for the gaia catalog to be plotted
Integer in range [1:12]
--g --gauss KERNELSIZE:
Gaussian Kernel in pixel to smoothen the model images
format: 1.5
FLAGS:
(to steer programs the behaviour)
--verbose
Do verbose printouts
--mhz
use the new and still EXPERIMENTAL model to output MHz instead of nLb
--skymap
create the skymap and show it on screen
--savefits
save the Sky-Brightness Map as *.fits file
--maxnsb VALUE
creates a plot of nsb vs. gained observation time.
data points are additionally printed to console with --verbose.
(NEEDS a --time_end, typically more than a year to be not influenced by the Seasons)
format: 100.0
--trend
creates a time trend plot of nsb and source position over the given timespan
(NEEDS a --time_end)
Source, Sun and Moon Setting/Rising times are printed to console with --verbose
Use it as a library
see the following examples:
Creating Allsky and field-of-view maps, showing them on screen and saving them into FITS
from nsb import config
from nsb.model import nsbModel
from nsb.mypycat import mypycat
from nsb.gaia import Gaia
from nsb.nsbtools import makeDateString, plotMaps
import ephem
import matplotlib.pyplot as plt
import astropy.io.fits as pyfits
con = config.TheConfiguration()
con.readStandardConfig()
# or read a custom config
# con.readConfig("my_config.cfg")
#time_and_date = makeDateString("today now")
time_and_date = ephem.Date("2019-01-26 21:29:07")
mpc = mypycat()
source = mpc.get("Crab Pulsar")
gaiamap = Gaia(level=10)
model = nsbModel(con, gaiamap, time_and_date, use_mhz=True)
# draw what you want
model.drawAllSky(size=800)
model.drawFOV_source(source=source, fov=5.0, size=1000)
# model.drawFOV_altaz(alt=30, az=213, fov=5.0, size=42)
# show the results on screen
plotMaps(model.allskymap.data, 'Allskymaps for %s' % (model.observer_source.date))
plotMaps(model.fovmap.data, 'FOV for %s' % (model.observer_source.date))
plt.show()
# save fits files
hdul = pyfits.HDUList([model.allskymap, model.fovmap])
hdul.writeto("NSB_of_"+ makeDateString(time_and_date) + "_.fits", 'exception', True)
Or get all kind of values like brightness, Alt, Az, Phase, etc. over a timespan
from nsb import config
from nsb.model import nsbModel
from nsb.mypycat import mypycat
from nsb.gaia import Gaia
from nsb.nsbtools import plotTimespan
import ephem
con = config.TheConfiguration()
con.readStandardConfig()
time_and_date_1 = ephem.Date("2019/05/10 12:00:00")
time_and_date_2 = time_and_date_1 + 1.0 # plus one day (24h)
mpc = mypycat()
source = mpc.get("Eta Carinae")
gaiamap = Gaia(level=7)
model = nsbModel(con, gaiamap, time_and_date_1, time_and_date_2, threshold=400, timeresolution=15, verbose=False)
model.setSource(source=source)
model.calculateTimespan()
# now these arrays are available and filled
t = model.timestamps
b = model.bright
mp = model.moonphase
malt = model.moonalt
salt = model.sourcealt
maz = model.moonaz
saz = model.sourceaz
sunalt = model.sunalt
sunaz = model.sunaz
sep = model.separation
# TODO: anything you like with these values
# the plot from the --trend cmdline tool
plotTimespan(model)
If there are questions, feel free to contact me:
matthias.buechele[at]fau[dot]de
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