blcal – Calculate a baseline-based calibration solution (gain or bandpass) – calibration task

Description

This task determines a baseline by baseline gain (time) or bandpass (freq) for all baseline pairs in the data set. For the usual antenna-based calibration of interferometric data, this task gaincal is recommended, even with only one to three baselines. For arrays with closure errors, use blcal.

Parameters

Title

Parameter

Default

Description

vis

''

Name of input visibility file

caltable

''

Name of output gain calibration table

field

''

Select field using field id(s) or field name(s)

spw

''

Select spectral window/channels

intent

''

Select observing intent

selectdata

True

Other data selection parameters

timerange

''

Select data based on time range

uvrange

''

Select data by baseline length.

antenna

''

Select data based on antenna/baseline

scan

''

Scan number range

observation

''

Select by observation ID(s)

msselect

''

Optional complex data selection (ignore for now)

solint

'inf'

Solution interval

combine

'scan'

Data axes which to combine for solve (obs, scan, spw, and/or field)

freqdep

False

Solve for frequency dependent solutions

calmode

'ap'

Type of solution” ('ap', 'p', 'a')

solnorm

False

Normalize average solution amplitudes to 1.0

gaintable

numpy.array( [  ] )

Gain calibration table(s) to apply on the fly

gainfield

numpy.array( [  ] )

Select a subset of calibrators from gaintable(s)

interp

numpy.array( [  ] )

Interpolation parameters for each gaintable, as a list

spwmap

numpy.array( [  ] )

Spectral windows combinations to form for gaintables(s)

parang

False

Apply parallactic angle correction

Parameter Explanations

vis

''

Name of input visibility file

Default: none

Example: vis=’ngc5921.ms’

caltable

''

Name of output gain calibration table

Default: none

Example: caltable=’ngc5921.gcal’

field

''

Select field using field id(s) or field name(s)

Default: ‘’ (all fields)

Use ‘go listobs’ to obtain the list id’s or names. If field string is a non-negative integer, it is assumed a field index, otherwise, it is assumed a field name.

Examples: field=’0~2’; field ids 0,1,2 field=’0,4,5~7’; field ids 0,4,5,6,7 field=’3C286,3C295’; field named 3C286 and 3C295 field = ‘3,4C*’; field id 3, all names starting with 4C

spw

''

Select spectral window/channels

Default: ‘’ (all spectral windows and channels)

Examples: spw=’0~2,4’; spectral windows 0,1,2,4 (all channels) spw=’<2’; spectral windows less than 2 (i.e. 0,1) spw=’0:5~61’; spw 0, channels 5 to 61, INCLUSIVE spw=’*:5~61’; all spw with channels 5 to 61 spw=’0,10,3:3~45’; spw 0,10 all channels, spw 3, channels 3 to 45. spw=’0~2:2~6’; spw 0,1,2 with channels 2 through 6 in each. spw=’0:0~10;15~60’; spectral window 0 with channels 0-10,15-60. (NOTE ‘;’ to separate channel selections) spw=’0:0~10^2,1:20~30^5’; spw 0, channels 0,2,4,6,8,10, spw 1, channels 20,25,30

intent

''

Select observing intent

Default: ‘’ (no selection by intent)

Example: intent=’BANDPASS’ (selects data labelled with BANDPASS intent)

selectdata

True

Other data selection parameters

Default: True Options: True|False

timerange

''

Select data based on time range

Subparameter of selectdata=True Default = ‘’ (all)

Examples: timerange = ‘YYYY/MM/DD/hh:mm:ss~YYYY/MM/DD/hh:mm:ss’ (Note: if YYYY/MM/DD is missing date defaults to first day in data set.) timerange=’09:14:0~09:54:0’ picks 40 min on first day timerange= ‘25:00:00~27:30:00’ picks 1 hr to 3 hr 30min on NEXT day timerange=’09:44:00’ pick data within one integration of time timerange=’>10:24:00’ data after this time

uvrange

''

Select data by baseline length.

Default = ‘’ (all)

Examples: uvrange=’0~1000klambda’; uvrange from 0-1000 kilo-lambda uvrange=’>4klambda’;uvranges greater than 4 kilo-lambda uvrange=’0~1000km’; uvrange in kilometers

antenna

''

Select data based on antenna/baseline

Subparameter of selectdata=True Default: ‘’ (all)

If antenna string is a non-negative integer, it is assumed an antenna index, otherwise, it is assumed as an antenna name

Examples: antenna=’5&6’; baseline between antenna index 5 and index 6. antenna=’VA05&VA06’; baseline between VLA antenna 5 and 6. antenna=’5&6;7&8’; baselines with indices 5-6 and 7-8 antenna=’5’; all baselines with antenna index 5 antenna=’05’; all baselines with antenna number 05 (VLA old name) antenna=’5,6,10’; all baselines with antennas 5,6,10 index numbers

scan

''

Scan number range

Subparameter of selectdata=True Default: ‘’ = all

observation

''

Select by observation ID(s)

Subparameter of selectdata=True Default: ‘’ = all

Example: observation=’0~2,4’

msselect

''

Optional complex data selection (ignore for now)

solint

'inf'

Solution interval

Default: ‘inf’ (infinite, up to boundaries controlled by combine); Options: ‘inf’ (~infinite), ‘int’ (per integration), any float or integer value with or without units

Examples: solint=’1min’; solint=’60s’, solint=60 (i.e., 1 minute); solint=’0s’; solint=0; solint=’int’ (i.e., per integration); solint-‘-1s’; solint=’inf’ (i.e., ~infinite, up to boundaries enforced by combine)

combine

'scan'

Data axes which to combine for solve

Default: ‘scan’ (solutions will break at obs, field, and spw boundaries, but may extend over multiple scans [per obs, field, and spw] up to solint.) Options: ‘’,’obs’,’scan’,’spw’,field’, or any comma-separated combination in a single string

Example: combine=’scan,spw’ - Extend solutions over scan boundaries (up to the solint), and combine spws for solving

freqdep

False

Solve for frequency dependent solutions

Default: False (gain; True=bandpass) Options: False|True

calmode

'ap'

Type of solution” (‘ap’, ‘p’, ‘a’)

Default: ‘ap’ (amp and phase) Options: ‘p’ (phase) ,’a’ (amplitude), ‘ap’ (amplitude and phase)

Example: calmode=’p’

solnorm

False

Normalize average solution amplitudes to 1.0

Default: False (no normalization)

For freqdep=False, this is a global (per-spw) normalization of amplitudes (only). For freqdep=True, each baseline solution spectrum is separately normalized by its (complex) mean.

gaintable

numpy.array( [  ] )

Gain calibration table(s) to apply on the fly

Default: ‘’ (none)

Examples: gaintable=’ngc5921.gcal’ gaintable=[‘ngc5921.ampcal’,’ngc5921.phcal’]

gainfield

numpy.array( [  ] )

Select a subset of calibrators from gaintable(s)

Default: ‘’ (all sources on the sky)

‘nearest’ ==> nearest (on sky) available field in table otherwise, same syntax as field

Examples: gainfield=’0~3’ gainfield=[‘0~3’,’4~6’]

interp

numpy.array( [  ] )

Interpolation parmameters (in time[,freq]) for each gaintable, as a list of strings.

Default: ‘’ –> ‘linear,linear’ for all gaintable(s) Options: Time: ‘nearest’, ‘linear’

Freq: ‘nearest’, ‘linear’, ‘cubic’, ‘spline’

Specify a list of strings, aligned with the list of caltable specified in gaintable, that contain the required interpolation parameters for each caltable. * When frequency interpolation is relevant (B, Df,

Xf), separate time-dependent and freq-dependent interp types with a comma (freq_after_ the comma).

  • Specifications for frequency are ignored when the calibration table has no channel-dependence.

  • Time-dependent interp options ending in ‘PD’ enable a “phase delay” correction per spw for non-channel-dependent calibration types.

  • For multi-obsId datasets, ‘perobs’ can be appended to the time-dependent interpolation specification to enforce obsId boundaries when interpolating in time.

  • Freq-dependent interp options can have ‘flag’ appended to enforce channel-dependent flagging, and/or ‘rel’ appended to invoke relative frequency interpolation

    Examples: interp=’nearest’ (in time, freq-dep will be linear, if relevant) interp=’linear,cubic’ (linear in time, cubic in freq) interp=’linearperobs,splineflag’ (linear in time per obsId, spline in freq with channelized flagging) interp=’nearest,linearflagrel’ (nearest in time, linear in freq with with channelized flagging and relative-frequency interpolation) interp=’,spline’ (spline in freq; linear in time by default) interp=[‘nearest,spline’,’linear’] (for multiple gaintables)

spwmap

numpy.array( [  ] )

Spectral windows combinations to form for gaintables(s)

Subparameter of callib=False default: [] (apply solutions from each spw to that spw only)

Examples: spwmap=[0,0,1,1] means apply the caltable solutions from spw = 0 to the spw 0,1 and spw 1 to spw 2,3. spwmap=[[0,0,1,1],[0,1,0,1]] (for multiple gaintables)

parang

False

Apply parallactic angle correction

Default: False

If True, apply the parallactic angle correction (required for polarization calibration)