Releases: metno/pyaerocom
Version 0.10.1: Minor updates and bug fixes
This is just a minor release that provides minor updates. That is, it includes
- quick fixes for #319 and #322 ,
- more restrictive with respect to dependencies, due to recent updates in pandas and iris, and
- dependency netcdf4 was removed
- the official documentation was moved from pyaerocom.met.no to ReadTheDocs (https://pyaerocom.readthedocs.io)
Version 0.10.0
pyaerocom version 0.10.0
This release comes with many new features, major improvements and a more stable API. Please see the individual points below for major changes.
New feature modules
Modules that contain new features. See here for a list of all file modifications between version 0.8.0 and 0.10.0.
- pyaerocom/combine_vardata_ungridded.py: Colocation of ungridded data.
- pyaerocom/helpers_landsea_masks.py: Access and helpers for land-sea mask filtering.
- pyaerocom/io/read_ghost.py: reading routine for GHOST dataset.
- pyaerocom/io/read_mscw_ctm.py: Reading interface for EMEP data.
- pyaerocom/molmasses.py: helpers related to access of molecular masses for species.
- pyaerocom/trends_engine.py: Interface for computing trends using the method by Mortier et al., 2020.
- pyaerocom/web/helpers_evaluation_iface.py: helper methods for conversion of
ColocatedData
to json files for Aerocom Evaluation interface. - pyaerocom/web/helpers_trends_iface.py: helper methods for conversion of
ColocatedData
to json files for Aerocom trends interface. - pyaerocom/web/utils.py: High-level methods based on results from standard Aerocom analysis. Currently, this contains a method
compute_model_average_and_diversity
which can be used to compute ensemble median or mean modeldata (e.g. used to compute AEROCOM-MEDIAN and MEAN in Gliss et al., 2020). - pyaerocom/scripts/cli.py: simple command line interface (currently very limited).
- pyaerocom/scripts/highlevel_utils.py: high-level functions used in CLI.
- pyaerocom/testdata_access.py: helpers related to initialization and access of pyaerocom testdata.
Updates related to supported observation data-sets and naming conventions
- Support for reading GHOST data.
- Support for reading of EMEP model data.
Below, relevant changes applied to already existing code are summarized.
Reading of data (io
sub-package)
Reading of gridded data
-
ReadGridded
class- Implement logic to apply constraint reading (i.e. read AOD where AE<0.5, read scattering where RH<40%, etc.). See input arg.
constraints
inReadGridded.read_var
and associated new class methods listed below. - Improve flexibility related to multiple vert_code matches using new method get_vert_code in Variable class.
- Improve logic associated with resolving variable names for edge cases that include usage of alias variables and auxiliary reading of derived variables.
- Add new default auxiliary / derived variables:
sc550dryaer
,concox
,vmrox
,fmf550aer
. - New attrs. (incl. @Property decorators):
vars_provided
,registered_var_patterns
. - New methods:
reinit
,check_constraint_valid
,apply_read_constraint
,__repr__
.
- Implement logic to apply constraint reading (i.e. read AOD where AE<0.5, read scattering where RH<40%, etc.). See input arg.
-
New: Reading interface and support for EMEP file conventions (class
ReadMscvCtm
).
Reading of ungridded data
-
ReadUngridded
- Add option
only_cached
inread
method, to only read cached data e.g. when working offline. - ReadUngridded can post compute variables with merge method combine.
- New attrs. (incl. @Property decorators):
data_dir
,post_compute
- New methods:
read_dataset_post
,get_vars_supported
- Add option
-
NEW: Reading interface for GHOST data (class
ReadGhost
). -
read_ebas.oy (
ReadEbas
andReadEbasOptions
)- Introduced more reading options (e.g. related to shifting of wavelengths and assumed Angstrom Exponents used for shifting).
- NOTE: Before, data at wavelengths (wvl) within a tolerance of +/- 50nm were considered around the output wvl (e.g. 500-600nm for sc550aer) and were used as is (i.e. without converting the values to 550nm). Now, the column with wvl closest to the output wvl is used and the measurement data is shifted to the output wvl (e.g. 550nm) assuming a typical Angstrom Exponent (AE=1.5 for extinction and scattering, AAE=1 for absorption, note also upcoming changes for next major release version 0.11.0).
- Remove
filelog
inReadEbas
. - Resolve some issues related to old variable names and aliases.
- Implement unit check in column selection method
_find_best_data_column
. - Add
framework
to output data. - Added attrs. in
ReadEbas
(incl. @Property methods):sqlite_database_file
,file_dir
.
-
ReadUngriddedBase
(template metaclass for ungridded reading)- allow to specify
dataset_path
(less dependency on server access, easier to work with local datasets) - New attrs. (incl. @Property decorators):
data_id
- New methods (implemented):
var_supported
- allow to specify
Further updates in io
sub-package
-
cachehandler_ungridded.py (
CacheHandlerUngridded
class)- Modified to handle custom filenames (e.g. used in new method
UngriddedData.save_as
). - New method
delete_all_cache_files
- New option
force_use_outdated
- Modified to handle custom filenames (e.g. used in new method
-
Add method
get_ungridded_reader
in io/utils.py.
Data objects
-
GriddedData
- Can be converted to xarray.
- More robust and flexible time-series extraction, e.g., constraints can be applied during temporal resampling (i.e. hierarchical
min_num_obs
orhow
). - Improving automatic retrieval of lowest layer for profile data using CF attr. "positive".
- Method
mean
now uses area weighted mean by default. - New methods:
years_avail
,split_years
,mean_at_coords
,filter_altitude
,filter_region
,apply_region_mask
,aerocom_savename
,to_xarray
,area_weighted_mean
-
UngriddedData
- Can be filtered by country names
- Can now be saved as pickled objects
- Create UngriddedData from StationData object(s)
- Colocation of UngriddedData is now possible (relevant code is in new module
combine_vardata_ungridded.py
) - Support for wildcards in station data conversion methods.
- New attrs. (incl. decorators):
last_meta_idx
,nonunique_station_names
,countries_available
- New methods:
from_station_data
(static method),check_set_country
,check_convert_var_units
,filter_altitude
,filter_region
,apply_region_mask
,colocate_vardata
,save_as
,from_cache
(static method).
-
ColocatedData
- Implement method to compute regional time-series.
- Support automatic assignments of countries for each site.
- Support computation of area weighted statistics in
calc_statistics
. - New attributes:
has_time_dim
,has_latlon_dims
,countries_available
,country_codes_available
,area_weights
- New methods:
get_country_codes
,calc_area_weights
,flatten_latlondim_station_name
,stack
,unstack
,check_set_countries
,filter_altitude
,apply_country_filter
,set_zeros_nan
,apply_region_mask
,filter_region
,get_regional_timeseries
-
StationData
- Computation of climatological time-series
- Improved handling of metadata access (
get_meta
) and merging of metadata resample_timeseries
was renamed toresample_time
(but old version still works.)- new method
StationData.copy
Colocation of data
Low-level colocation routines (colocation.py
)
- Outliers in gridded/gridded colocation are now removed in original resolution.
- Gridded/gridded colocation now re-grids to the lowest of both resolutions.
- Add option resample_how, which can also be applied hierarchical, like
min_num_obs
(e.g. used to resample O3max). resample_how
option in high level colocation routines.- Option to use obs climatology for gridded / ungridded colocation.
- New helper method
correct_model_stp_coldata
incolocation.py
which applies STP correction to a colocated data object containing obs at STP based on station altitude and temperature derived from ERA Interim data (BETA feature only working for 2010 data and with access to METNo infrastructure). - Some bug fixes for certain edge cases.
High-level colocation routines (colocation_auto.py
)
Affects classes ColocationSetup
and Colocator
- Support new EMEP reading routine.
- Model and obsdata directories can be specified explicitly.
- Option
model_to_stp
(BETA feature which will not work in most cases, see above). - New attrs.
obs_add_meta
,resample_how
. - New methods (
Colocator
):read_model_data
,read_ungridded
Filtering of data
- Implement filtering of binary masks for
GriddedData
,UngriddedData
andColocatedData
- Harmonize API of spatial filtering in data classes (i.e. method
filter_region
that can handle rectangular and binary region masks) - Automatic access to HTAP binary land-sea masks
- Handling of binary and rectangular regions in
Filter
class.
Other updates (in top-level modules)
-
config.py (
Config
class)- Major improvements and API changes, e.g. related to automatic setup and adding new data search directories and ungridded observations.
- In particular, attrs.
BASEDIR
,MODELBASEDIR
,OBSBASEDIR
are deprecated. - Instead, methods
add_data_search_dir
andadd_ungridded_obs
can be used to register data locations.
-
geodesy.py: new methods
calc_latlon_dists
,find_coord_indices_within_distance
,get_country_info_coords
. -
New methods in
helpers.py
, the most relevant ones areextract_latlon_dataarray
,make_dummy_cube_latlon
,numpy_to_cube
,sort_ts_types
,calc_climatology
. -
New methods in
mathutils.py
:weighted_sum
,sum
,weighted_mean
,weighted_cov
,weighted_corr
,corr
(which were implemented incalc_statistics
),vmrx_to_concx
,concx_to_vmrx
. -
New class
AerocomDataID
in **...
Version used in Mortier et al., ACP, 2020
This is the pyaerocom version used for the processing in Mortier et al., 2020 paper
Release version 0.8.0
Published here with one year delay, for completeness.
This release comprises major improvements, changes and many new features compared to the last release (comprising about 10 months of development time). Thus, below we only summarise the most important changes. For a list of all changes, please see the changelog file of this release (in subdirectory changelog).
-
New sub-package
web
(tools for high-level web processing)- Contains frameworks and routines for high level analysis of data and computation of json files both for AeroCom evaluation and trends web interfaces.
- Includes 2 simple command line interfaces pyaeroeval and pyaerotrends for web processing
- Main classes:
AerocomEvaluation
for processing of data displayed at https://aerocom-evaluation.met.no/TrendsEvaluation
for data displayed at https://aerocom-trends.met.no/
-
Gridded reading (
ReadGridded
class and methods used therein)data_dir
can be provided directly on input inReadGridded
(e.g. for working locally with no database access). However, data files are required to be in AeroCom naming convention.- og550gtaer is now primarily computed via od550aer-od550lt1aer
- easy file filtering for all attributes accessible via filename (e.g. model, variable, year, vertical type)
- option to compute variables during runtime for custom methods
- Clean up of outdated methods
- improved logic of processing work-flow, especially for computation of variables and handling of 4D files, e.g.
- use ModelLevel files if Surface is requested but not available
- Compute mass concentration fields (
concXX
) from mass mixing ratios (mmrXX
) and density (rho
) fields
- Reading of climatological data (i.e. year 9999 in filename). Remark: tricky, because pandas cannot handle timestamps with year 9999
- More flexible options for reading of iris cubes (
iris_io.py
) - Improved check and correction of invalid time dimensions in source files
-
Ungridded reading (Reading of observations)
- EBAS: implemented framekwork for computation of variables from variables that can be read (or computed)
- EBAS: evaluate and use flag columns (flagged data added to new flag column in
UngriddedData
object) - EBAS: support all occurring sampling frequencies (e.g. weekly, 2daily, etc.)
- EBAS: default now reads raw (i.e. as is in NASA Ames files), but writes all relevant information for filtering (e.g. datalevel, flags) into output
UngriddedData
object, which can then be filtered flexibly after reading - New reading routine for GAW ascii format
- New reading routine for data subset from trends paper by Aas et al.
- Updated EARLINET reading routine after major changes in format (Feb. 2019)
- More flexible handling of cached data objects in
ReadUngridded
(cf. changes in caching strategy below)
-
Data classes
-
StationData
- Merging of multiple instances possible (including metadata merging and handling of overlapping data)
- Removed attrs. stat_lon, stat_lat, stat_alt
- Support trends computation and visualisation
- Support profile data
-
UngriddedData
- Support for flags and error data
- Outlier removal
- More flexible and robust conversion into StationData
- More advanced filtering and subsetting (e.g. extract single variable)
- Methods for merging of several instances
- Added iter method (looping over data object -> returns StationData at each index, BETA)
-
GriddedData
- More flexible subsetting (e.g. sel method)
- Method to automatically infer surface level for 3D data
- Cleaned up attributes: now everything is stored within underlying cube (i.e. attr.
suppl_info
is deperecated) - Added CF attributes such as
standard_name
andlong_name
- WORK IN PROGRESS: altitude access for 4D fields via
get_altitude
method (cleaned up and refactored old code due to below mentioned updates in modvert_coords.py
) - option to add metadata when converting to timeseries (
StationData
) at distinct locations
-
ColocatedData
- Updated I/O and naming conventions
- Region filtering
- time resampling
-
All data classes contain many more helper and analysis methods and attributes, that are not explicitely mentioned here, for details see changelog
-
-
Colocation: Improved flexibility and robustness of colocation routines (modules
colocation.py
,colocation_auto.py
), e.g.- more control on individual outlier removal for both input datasets
- hierarchical resampling
- option for outlier removal
- option for unit harmonisation
- option for colocating time before downsampling
- option to ignore certain station names (for gridded / ungridded colocation)
- colocation with climatology data
- High level interface (
Colocator
class) for automatic colocation, e.g. used inAerocomEvaluation
class for web processing.
-
Other changes:
- Updated method
calc_statistics
: biases (NMB, MNMB) and FGE are now computed only from positive values - New modules
units_helpers.py
providing custom unit conversion, e.g. for non-CF conform units in data files (e.g. sulphur specific mass concentration data: ug S m-3) - Improved caching stragegy (now single variable instances of
UngriddedData
are cached) - Easier installation options
- Support for simple geographical calculations
- New helpers and processing methods in
region.py
- Support for more variables
- Advanced and unified time resampling in
TimeResampler
class - More CF-compliant (e.g.
units
attr. in data classes) - More flexible and unified handling (and sharing) of metadata among different data objects
- Methods for trends computation (class
TrendsEngine
) - Major improvements in ungridded caching using single variable cache files for I/O
- Bug fixes
- New class
TsType
for handling and comparing temporal resolutions (in new modtstype.py
) - More flexible tests (using pytest markers that check access to database)
- Worked on implementation of vertical coordinate to altitude conversion methods (WORK IN PROGRESS, mod.
vert_coords.py
)
- Updated method
-
API changes:
Station
class is deprecatedReadGriddedMulti
is deprecated (but still works)- sconc variables are deprecated (but still work): use conc instead (e.g. concso4 instead of sconcso4)
- Renaming of classes / modules:
AllVariables
toVarCollection
unit
tounits
- Moved
GridIO
class fromconfig.py
to dedicated new modulegrid_io.py
- Global setup dictionaries for time conversion moved from
helpers.py
totime_config.py
-
Not finished / under development / coming soon
- Handling of vertical model coordinates
- Colocation of profile data
- Filtering by land / sea masks
- Computation of regional average time series in data objects
-
Planned major changes for v0.9.0:
- API refactor: StationData based on xarray.Dataset (currently variable data can be either numpy array, pandas Series or xarray)
- Include filtering using land / sea masks (should work for
GriddedData
,UngriddedData
,ColocatedData
) - 4D data (ModelLevel):
- conversion of vertical level coordinates to altitude
- profile colocation (would add additional vertical dimension to
Colocateddata
) - Retrieval of aerosol layer height (PRODUCT)
- Default vertical domains for vertical aggregation (particularly for web interfaces, e.g. 0-2km, 2-6km, >6km)
Fixed some issues related to installation and import
Compared to the recent release v0.7.1, this release only comprises changes related to the library installation (both from source and using conda) and some improvements and bug fixes related to how pyaerocom sets up the output directories (e.g. cache directory) when imported.
Version 0.7.0 with improved flexibility and user-friendliness
This release does not include many new features but rather significant improvements in the user-friendliness and flexibility.
Main improvements include (for details see changelog):
- Improved setup of Config class (
pyaerocom.const
) for different path environments (including bug fixes)- leading to a more flexible and faster import of pyaerocom
- Improved handling and flexibility of gridded data that is not prepared following the AeroCom standards
- Much improved reading and processing of EBAS data (and ungridded data in general, e.g. EBAS SQL constraints can now also be provided in
ReadUngridded.read()
) - Some new methods and bug fixes in
UngriddedData
class - pyaerocom can now be installed via conda (see README)
Minor updates and bug fixes
v0.6.3 Merge branch 'master' of https://github.com/metno/pyaerocom
First release
First release of pyaerocom. For an overview of relevant features and usage, see introduction tutorial.
Remarks
- Not yet ready to be used on Windows machines.
- For data access, please see here or contact us.
- Python 3 only