Coverage for src / CSET / operators / read.py: 90%
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1# © Crown copyright, Met Office (2022-2025) and CSET contributors.
2#
3# Licensed under the Apache License, Version 2.0 (the "License");
4# you may not use this file except in compliance with the License.
5# You may obtain a copy of the License at
6#
7# http://www.apache.org/licenses/LICENSE-2.0
8#
9# Unless required by applicable law or agreed to in writing, software
10# distributed under the License is distributed on an "AS IS" BASIS,
11# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
12# See the License for the specific language governing permissions and
13# limitations under the License.
15"""Operators for reading various types of files from disk."""
17import ast
18import datetime
19import functools
20import glob
21import itertools
22import logging
23from pathlib import Path
24from typing import Literal
26import iris
27import iris.coord_systems
28import iris.coords
29import iris.cube
30import iris.exceptions
31import iris.util
32import numpy as np
33from iris.analysis.cartography import rotate_pole, rotate_winds
35from CSET._common import iter_maybe
36from CSET.operators._stash_to_lfric import STASH_TO_LFRIC
37from CSET.operators._utils import (
38 get_cube_coordindex,
39 get_cube_yxcoordname,
40 is_spatialdim,
41)
44class NoDataError(FileNotFoundError):
45 """Error that no data has been loaded."""
48def read_cube(
49 file_paths: list[str] | str,
50 constraint: iris.Constraint = None,
51 model_names: list[str] | str | None = None,
52 subarea_type: str = None,
53 subarea_extent: list[float] = None,
54 **kwargs,
55) -> iris.cube.Cube:
56 """Read a single cube from files.
58 Read operator that takes a path string (can include shell-style glob
59 patterns), and loads the cube matching the constraint. If any paths point to
60 directory, all the files contained within are loaded.
62 Ensemble data can also be loaded. If it has a realization coordinate
63 already, it will be directly used. If not, it will have its member number
64 guessed from the filename, based on one of several common patterns. For
65 example the pattern *emXX*, where XX is the realization.
67 Deterministic data will be loaded with a realization of 0, allowing it to be
68 processed in the same way as ensemble data.
70 Arguments
71 ---------
72 file_paths: str | list[str]
73 Path or paths to where .pp/.nc files are located
74 constraint: iris.Constraint | iris.ConstraintCombination, optional
75 Constraints to filter data by. Defaults to unconstrained.
76 model_names: str | list[str], optional
77 Names of the models that correspond to respective paths in file_paths.
78 subarea_type: "gridcells" | "modelrelative" | "realworld", optional
79 Whether to constrain data by model relative coordinates or real world
80 coordinates.
81 subarea_extent: list, optional
82 List of coordinates to constraint data by, in order lower latitude,
83 upper latitude, lower longitude, upper longitude.
85 Returns
86 -------
87 cubes: iris.cube.Cube
88 Cube loaded
90 Raises
91 ------
92 FileNotFoundError
93 If the provided path does not exist
94 ValueError
95 If the constraint doesn't produce a single cube.
96 """
97 cubes = read_cubes(
98 file_paths=file_paths,
99 constraint=constraint,
100 model_names=model_names,
101 subarea_type=subarea_type,
102 subarea_extent=subarea_extent,
103 )
104 # Check filtered cubes is a CubeList containing one cube.
105 if len(cubes) == 1:
106 return cubes[0]
107 else:
108 raise ValueError(
109 f"Constraint doesn't produce single cube: {constraint}\n{cubes}"
110 )
113def read_cubes(
114 file_paths: list[str] | str,
115 constraint: iris.Constraint | None = None,
116 model_names: str | list[str] | None = None,
117 subarea_type: str = None,
118 subarea_extent: list = None,
119 **kwargs,
120) -> iris.cube.CubeList:
121 """Read cubes from files.
123 Read operator that takes a path string (can include shell-style glob
124 patterns), and loads the cubes matching the constraint. If any paths point
125 to directory, all the files contained within are loaded.
127 Ensemble data can also be loaded. If it has a realization coordinate
128 already, it will be directly used. If not, it will have its member number
129 guessed from the filename, based on one of several common patterns. For
130 example the pattern *emXX*, where XX is the realization.
132 Deterministic data will be loaded with a realization of 0, allowing it to be
133 processed in the same way as ensemble data.
135 Data output by XIOS (such as LFRic) has its per-file metadata removed so
136 that the cubes merge across files.
138 Arguments
139 ---------
140 file_paths: str | list[str]
141 Path or paths to where .pp/.nc files are located. Can include globs.
142 constraint: iris.Constraint | iris.ConstraintCombination, optional
143 Constraints to filter data by. Defaults to unconstrained.
144 model_names: str | list[str], optional
145 Names of the models that correspond to respective paths in file_paths.
146 subarea_type: str, optional
147 Whether to constrain data by model relative coordinates or real world
148 coordinates.
149 subarea_extent: list[float], optional
150 List of coordinates to constraint data by, in order lower latitude,
151 upper latitude, lower longitude, upper longitude.
153 Returns
154 -------
155 cubes: iris.cube.CubeList
156 Cubes loaded after being merged and concatenated.
158 Raises
159 ------
160 FileNotFoundError
161 If the provided path does not exist
162 """
163 # Get iterable of paths. Each path corresponds to 1 model.
164 paths = iter_maybe(file_paths)
165 model_names = iter_maybe(model_names)
167 # Check we have appropriate number of model names.
168 if model_names != (None,) and len(model_names) != len(paths):
169 raise ValueError(
170 f"The number of model names ({len(model_names)}) should equal "
171 f"the number of paths given ({len(paths)})."
172 )
174 # Load the data for each model into a CubeList per model.
175 model_cubes = (
176 _load_model(path, name, constraint)
177 for path, name in itertools.zip_longest(paths, model_names, fillvalue=None)
178 )
180 # Split out first model's cubes and mark it as the base for comparisons.
181 cubes = next(model_cubes)
182 for cube in cubes:
183 # Use 1 to indicate True, as booleans can't be saved in NetCDF attributes.
184 cube.attributes["cset_comparison_base"] = 1
186 # Load the rest of the models.
187 cubes.extend(itertools.chain.from_iterable(model_cubes))
189 # Unify time units so different case studies can merge.
190 iris.util.unify_time_units(cubes)
192 # Select sub region.
193 cubes = _cutout_cubes(cubes, subarea_type, subarea_extent)
195 # Merge and concatenate cubes now metadata has been fixed.
196 cubes = cubes.merge()
197 cubes = cubes.concatenate()
199 # Squeeze single valued coordinates into scalar coordinates.
200 cubes = iris.cube.CubeList(iris.util.squeeze(cube) for cube in cubes)
202 # Ensure dimension coordinates are bounded.
203 for cube in cubes:
204 for dim_coord in cube.coords(dim_coords=True):
205 # Iris can't guess the bounds of a scalar coordinate.
206 if not dim_coord.has_bounds() and dim_coord.shape[0] > 1:
207 dim_coord.guess_bounds()
209 logging.info("Loaded cubes: %s", cubes)
210 if len(cubes) == 0:
211 raise NoDataError("No cubes loaded, check your constraints!")
212 return cubes
215def _load_model(
216 paths: str | list[str],
217 model_name: str | None,
218 constraint: iris.Constraint | None,
219) -> iris.cube.CubeList:
220 """Load a single model's data into a CubeList."""
221 input_files = _check_input_files(paths)
222 # If unset, a constraint of None lets everything be loaded.
223 logging.debug("Constraint: %s", constraint)
224 cubes = iris.load(input_files, constraint, callback=_loading_callback)
225 # Make the UM's winds consistent with LFRic.
226 _fix_um_winds(cubes)
228 # Add model_name attribute to each cube to make it available at any further
229 # step without needing to pass it as function parameter.
230 if model_name is not None:
231 for cube in cubes:
232 cube.attributes["model_name"] = model_name
233 return cubes
236def _check_input_files(input_paths: str | list[str]) -> list[Path]:
237 """Get an iterable of files to load, and check that they all exist.
239 Arguments
240 ---------
241 input_paths: list[str]
242 List of paths to input files or directories. The path may itself contain
243 glob patterns, but unlike in shells it will match directly first.
245 Returns
246 -------
247 list[Path]
248 A list of files to load.
250 Raises
251 ------
252 FileNotFoundError:
253 If the provided arguments don't resolve to at least one existing file.
254 """
255 files = []
256 for raw_filename in iter_maybe(input_paths):
257 # Match glob-like files first, if they exist.
258 raw_path = Path(raw_filename)
259 if raw_path.is_file():
260 files.append(raw_path)
261 else:
262 for input_path in glob.glob(raw_filename):
263 # Convert string paths into Path objects.
264 input_path = Path(input_path)
265 # Get the list of files in the directory, or use it directly.
266 if input_path.is_dir():
267 logging.debug("Checking directory '%s' for files", input_path)
268 files.extend(p for p in input_path.iterdir() if p.is_file())
269 else:
270 files.append(input_path)
272 files.sort()
273 logging.info("Loading files:\n%s", "\n".join(str(path) for path in files))
274 if len(files) == 0:
275 raise FileNotFoundError(f"No files found for {input_paths}")
276 return files
279def _cutout_cubes(
280 cubes: iris.cube.CubeList,
281 subarea_type: Literal["gridcells", "realworld", "modelrelative"] | None,
282 subarea_extent: list[float, float, float, float],
283):
284 """Cut out a subarea from a CubeList."""
285 if subarea_type is None:
286 logging.debug("Subarea selection is disabled.")
287 return cubes
289 # If selected, cutout according to number of grid cells to trim from each edge.
290 cutout_cubes = iris.cube.CubeList()
291 # Find spatial coordinates
292 for cube in cubes:
293 # Find dimension coordinates.
294 lat_name, lon_name = get_cube_yxcoordname(cube)
296 # Compute cutout based on number of cells to trim from edges.
297 if subarea_type == "gridcells":
298 logging.debug(
299 "User requested LowerTrim: %s LeftTrim: %s UpperTrim: %s RightTrim: %s",
300 subarea_extent[0],
301 subarea_extent[1],
302 subarea_extent[2],
303 subarea_extent[3],
304 )
305 lat_points = np.sort(cube.coord(lat_name).points)
306 lon_points = np.sort(cube.coord(lon_name).points)
307 # Define cutout region using user provided cell points.
308 lats = [lat_points[subarea_extent[0]], lat_points[-subarea_extent[2] - 1]]
309 lons = [lon_points[subarea_extent[1]], lon_points[-subarea_extent[3] - 1]]
311 # Compute cutout based on specified coordinate values.
312 elif subarea_type == "realworld" or subarea_type == "modelrelative":
313 # If not gridcells, cutout by requested geographic area,
314 logging.debug(
315 "User requested LLat: %s ULat: %s LLon: %s ULon: %s",
316 subarea_extent[0],
317 subarea_extent[1],
318 subarea_extent[2],
319 subarea_extent[3],
320 )
321 # Define cutout region using user provided coordinates.
322 lats = np.array(subarea_extent[0:2])
323 lons = np.array(subarea_extent[2:4])
324 # Ensure cutout longitudes are within +/- 180.0 bounds.
325 while lons[0] < -180.0:
326 lons += 360.0
327 while lons[1] > 180.0:
328 lons -= 360.0
329 # If the coordinate system is rotated we convert coordinates into
330 # model-relative coordinates to extract the appropriate cutout.
331 coord_system = cube.coord(lat_name).coord_system
332 if subarea_type == "realworld" and isinstance(
333 coord_system, iris.coord_systems.RotatedGeogCS
334 ):
335 lons, lats = rotate_pole(
336 lons,
337 lats,
338 pole_lon=coord_system.grid_north_pole_longitude,
339 pole_lat=coord_system.grid_north_pole_latitude,
340 )
341 else:
342 raise ValueError("Unknown subarea_type:", subarea_type)
344 # Do cutout and add to cutout_cubes.
345 intersection_args = {lat_name: lats, lon_name: lons}
346 logging.debug("Cutting out coords: %s", intersection_args)
347 try:
348 cutout_cubes.append(cube.intersection(**intersection_args))
349 except IndexError as err:
350 raise ValueError(
351 "Region cutout error. Check and update SUBAREA_EXTENT."
352 "Cutout region requested should be contained within data area. "
353 "Also check if cutout region requested is smaller than input grid spacing."
354 ) from err
356 return cutout_cubes
359def _loading_callback(cube: iris.cube.Cube, field, filename: str) -> iris.cube.Cube:
360 """Compose together the needed callbacks into a single function."""
361 # Most callbacks operate in-place, but save the cube when returned!
362 _realization_callback(cube, field, filename)
363 _um_normalise_callback(cube, field, filename)
364 _lfric_normalise_callback(cube, field, filename)
365 cube = _lfric_time_coord_fix_callback(cube, field, filename)
366 _normalise_var0_varname(cube)
367 _fix_spatial_coords_callback(cube)
368 _fix_pressure_coord_callback(cube)
369 _fix_um_radtime(cube)
370 _fix_cell_methods(cube)
371 cube = _convert_cube_units_callback(cube)
372 cube = _grid_longitude_fix_callback(cube)
373 _fix_lfric_cloud_base_altitude(cube)
374 _proleptic_gregorian_fix(cube)
375 _lfric_time_callback(cube)
376 _lfric_forecast_period_callback(cube)
377 return cube
380def _realization_callback(cube, field, filename):
381 """Give deterministic cubes a realization of 0.
383 This means they can be handled in the same way as ensembles through the rest
384 of the code.
385 """
386 # Only add if realization coordinate does not exist.
387 if not cube.coords("realization"):
388 cube.add_aux_coord(
389 iris.coords.DimCoord(0, standard_name="realization", units="1")
390 )
393@functools.lru_cache(None)
394def _warn_once(msg):
395 """Print a warning message, skipping recent duplicates."""
396 logging.warning(msg)
399def _um_normalise_callback(cube: iris.cube.Cube, field, filename):
400 """Normalise UM STASH variable long names to LFRic variable names.
402 Note standard names will remain associated with cubes where different.
403 Long name will be used consistently in output filename and titles.
404 """
405 # Convert STASH to LFRic variable name
406 if "STASH" in cube.attributes:
407 stash = cube.attributes["STASH"]
408 try:
409 (name, grid) = STASH_TO_LFRIC[str(stash)]
410 cube.long_name = name
411 except KeyError:
412 # Don't change cubes with unknown stash codes.
413 _warn_once(
414 f"Unknown STASH code: {stash}. Please check file stash_to_lfric.py to update."
415 )
418def _lfric_normalise_callback(cube: iris.cube.Cube, field, filename):
419 """Normalise attributes that prevents LFRic cube from merging.
421 The uuid and timeStamp relate to the output file, as saved by XIOS, and has
422 no relation to the data contained. These attributes are removed.
424 The um_stash_source is a list of STASH codes for when an LFRic field maps to
425 multiple UM fields, however it can be encoded in any order. This attribute
426 is sorted to prevent this. This attribute is only present in LFRic data that
427 has been converted to look like UM data.
428 """
429 # Remove unwanted attributes.
430 cube.attributes.pop("timeStamp", None)
431 cube.attributes.pop("uuid", None)
432 cube.attributes.pop("name", None)
433 cube.attributes.pop("source", None)
434 cube.attributes.pop("analysis_source", None)
435 cube.attributes.pop("history", None)
437 # Sort STASH code list.
438 stash_list = cube.attributes.get("um_stash_source")
439 if stash_list:
440 # Parse the string as a list, sort, then re-encode as a string.
441 cube.attributes["um_stash_source"] = str(sorted(ast.literal_eval(stash_list)))
444def _lfric_time_coord_fix_callback(
445 cube: iris.cube.Cube, field, filename
446) -> iris.cube.Cube:
447 """Ensure the time coordinate is a DimCoord rather than an AuxCoord.
449 The coordinate is converted and replaced if not. SLAMed LFRic data has this
450 issue, though the coordinate satisfies all the properties for a DimCoord.
451 Scalar time values are left as AuxCoords.
452 """
453 # This issue seems to come from iris's handling of NetCDF files where time
454 # always ends up as an AuxCoord.
455 if cube.coords("time"):
456 time_coord = cube.coord("time")
457 if (
458 not isinstance(time_coord, iris.coords.DimCoord)
459 and len(cube.coord_dims(time_coord)) == 1
460 ):
461 # Fudge the bounds to foil checking for strict monotonicity.
462 if time_coord.has_bounds(): 462 ↛ 463line 462 didn't jump to line 463 because the condition on line 462 was never true
463 if (time_coord.bounds[-1][0] - time_coord.bounds[0][0]) < 1.0e-8:
464 time_coord.bounds = [
465 [
466 time_coord.bounds[i][0] + 1.0e-8 * float(i),
467 time_coord.bounds[i][1],
468 ]
469 for i in range(len(time_coord.bounds))
470 ]
471 iris.util.promote_aux_coord_to_dim_coord(cube, time_coord)
472 return cube
475def _grid_longitude_fix_callback(cube: iris.cube.Cube) -> iris.cube.Cube:
476 """Check grid_longitude coordinates are in the range -180 deg to 180 deg.
478 This is necessary if comparing two models with different conventions --
479 for example, models where the prime meridian is defined as 0 deg or
480 360 deg. If not in the range -180 deg to 180 deg, we wrap the grid_longitude
481 so that it falls in this range. Checks are for near-180 bounds given
482 model data bounds may not extend exactly to 0. or 360.
483 Input cubes on non-rotated grid coordinates are not impacted.
484 """
485 try:
486 y, x = get_cube_yxcoordname(cube)
487 except ValueError:
488 # Don't modify non-spatial cubes.
489 return cube
491 long_coord = cube.coord(x)
492 # Wrap longitudes if rotated pole coordinates
493 coord_system = long_coord.coord_system
494 if x == "grid_longitude" and isinstance(
495 coord_system, iris.coord_systems.RotatedGeogCS
496 ):
497 long_points = long_coord.points.copy()
498 long_centre = np.median(long_points)
499 while long_centre < -175.0:
500 long_centre += 360.0
501 long_points += 360.0
502 while long_centre >= 175.0:
503 long_centre -= 360.0
504 long_points -= 360.0
505 long_coord.points = long_points
507 # Update coord bounds to be consistent with wrapping.
508 if long_coord.has_bounds():
509 long_coord.bounds = None
510 long_coord.guess_bounds()
512 return cube
515def _fix_spatial_coords_callback(cube: iris.cube.Cube):
516 """Check latitude and longitude coordinates name.
518 This is necessary as some models define their grid as on rotated
519 'grid_latitude' and 'grid_longitude' coordinates while others define
520 the grid on non-rotated 'latitude' and 'longitude'.
521 Cube dimensions need to be made consistent to avoid recipe failures,
522 particularly where comparing multiple input models with differing spatial
523 coordinates.
524 """
525 # Check if cube is spatial.
526 if not is_spatialdim(cube):
527 # Don't modify non-spatial cubes.
528 return
530 # Get spatial coords and dimension index.
531 y_name, x_name = get_cube_yxcoordname(cube)
532 ny = get_cube_coordindex(cube, y_name)
533 nx = get_cube_coordindex(cube, x_name)
535 # Remove spatial coords bounds if erroneous values detected.
536 # Aims to catch some errors in input coord bounds by setting
537 # invalid threshold of 10000.0
538 if cube.coord(x_name).has_bounds() and cube.coord(y_name).has_bounds():
539 bx_max = np.max(np.abs(cube.coord(x_name).bounds))
540 by_max = np.max(np.abs(cube.coord(y_name).bounds))
541 if bx_max > 10000.0 or by_max > 10000.0:
542 cube.coord(x_name).bounds = None
543 cube.coord(y_name).bounds = None
545 # Translate [grid_latitude, grid_longitude] to an unrotated 1-d DimCoord
546 # [latitude, longitude] for instances where rotated_pole=90.0
547 if "grid_latitude" in [coord.name() for coord in cube.coords(dim_coords=True)]:
548 coord_system = cube.coord("grid_latitude").coord_system
549 pole_lat = getattr(coord_system, "grid_north_pole_latitude", None)
550 if pole_lat == 90.0: 550 ↛ 551line 550 didn't jump to line 551 because the condition on line 550 was never true
551 lats = cube.coord("grid_latitude").points
552 lons = cube.coord("grid_longitude").points
554 cube.remove_coord("grid_latitude")
555 cube.add_dim_coord(
556 iris.coords.DimCoord(
557 lats,
558 standard_name="latitude",
559 var_name="latitude",
560 units="degrees",
561 coord_system=iris.coord_systems.GeogCS(6371229.0),
562 circular=True,
563 ),
564 ny,
565 )
566 y_name = "latitude"
567 cube.remove_coord("grid_longitude")
568 cube.add_dim_coord(
569 iris.coords.DimCoord(
570 lons,
571 standard_name="longitude",
572 var_name="longitude",
573 units="degrees",
574 coord_system=iris.coord_systems.GeogCS(6371229.0),
575 circular=True,
576 ),
577 nx,
578 )
579 x_name = "longitude"
581 # Create additional AuxCoord [grid_latitude, grid_longitude] with
582 # rotated pole attributes for cases with [lat, lon] inputs
583 if y_name in ["latitude"] and cube.coord(y_name).units in [
584 "degrees",
585 "degrees_north",
586 "degrees_south",
587 ]:
588 # Add grid_latitude AuxCoord
589 if "grid_latitude" not in [ 589 ↛ 602line 589 didn't jump to line 602 because the condition on line 589 was always true
590 coord.name() for coord in cube.coords(dim_coords=False)
591 ]:
592 cube.add_aux_coord(
593 iris.coords.AuxCoord(
594 cube.coord(y_name).points,
595 var_name="grid_latitude",
596 units="degrees",
597 ),
598 ny,
599 )
600 # Ensure input latitude DimCoord has CoordSystem
601 # This attribute is sometimes lost on iris.save
602 if not cube.coord(y_name).coord_system:
603 cube.coord(y_name).coord_system = iris.coord_systems.GeogCS(6371229.0)
605 if x_name in ["longitude"] and cube.coord(x_name).units in [
606 "degrees",
607 "degrees_west",
608 "degrees_east",
609 ]:
610 # Add grid_longitude AuxCoord
611 if "grid_longitude" not in [ 611 ↛ 625line 611 didn't jump to line 625 because the condition on line 611 was always true
612 coord.name() for coord in cube.coords(dim_coords=False)
613 ]:
614 cube.add_aux_coord(
615 iris.coords.AuxCoord(
616 cube.coord(x_name).points,
617 var_name="grid_longitude",
618 units="degrees",
619 ),
620 nx,
621 )
623 # Ensure input longitude DimCoord has CoordSystem
624 # This attribute is sometimes lost on iris.save
625 if not cube.coord(x_name).coord_system:
626 cube.coord(x_name).coord_system = iris.coord_systems.GeogCS(6371229.0)
629def _fix_pressure_coord_callback(cube: iris.cube.Cube):
630 """Rename pressure coordinate to "pressure" if it exists and ensure hPa units.
632 This problem was raised because the AIFS model data from ECMWF
633 defines the pressure coordinate with the name "pressure_level" rather
634 than compliant CF coordinate names.
636 Additionally, set the units of pressure to be hPa to be consistent with the UM,
637 and approach the coordinates in a unified way.
638 """
639 for coord in cube.dim_coords:
640 if coord.name() in ["pressure_level", "pressure_levels"]:
641 coord.rename("pressure")
643 if coord.name() == "pressure":
644 if str(cube.coord("pressure").units) != "hPa":
645 cube.coord("pressure").convert_units("hPa")
648def _fix_um_radtime(cube: iris.cube.Cube):
649 """Move radiation diagnostics from timestamps which are output N minutes or seconds past every hour.
651 This callback does not have any effect for output diagnostics with
652 timestamps exactly 00 or 30 minutes past the hour. Only radiation
653 diagnostics are checked.
654 Note this callback does not interpolate the data in time, only adjust
655 timestamps to sit on the hour to enable time-to-time difference plotting
656 with models which may output radiation data on the hour.
657 """
658 try:
659 if cube.attributes["STASH"] in [
660 "m01s01i207",
661 "m01s01i208",
662 "m01s02i205",
663 "m01s02i201",
664 "m01s01i207",
665 "m01s02i207",
666 "m01s01i235",
667 ]:
668 time_coord = cube.coord("time")
670 # Convert time points to datetime objects
671 time_unit = time_coord.units
672 time_points = time_unit.num2date(time_coord.points)
673 # Skip if times don't need fixing.
674 if time_points[0].minute == 0 and time_points[0].second == 0:
675 return
676 if time_points[0].minute == 30 and time_points[0].second == 0: 676 ↛ 677line 676 didn't jump to line 677 because the condition on line 676 was never true
677 return
679 # Subtract time difference from the hour from each time point
680 n_minute = time_points[0].minute
681 n_second = time_points[0].second
682 # If times closer to next hour, compute difference to add on to following hour
683 if n_minute > 30:
684 n_minute = n_minute - 60
685 # Compute new diagnostic time stamp
686 new_time_points = (
687 time_points
688 - datetime.timedelta(minutes=n_minute)
689 - datetime.timedelta(seconds=n_second)
690 )
692 # Convert back to numeric values using the original time unit.
693 new_time_values = time_unit.date2num(new_time_points)
695 # Replace the time coordinate with updated values.
696 time_coord.points = new_time_values
698 # Recompute forecast_period with corrected values.
699 if cube.coord("forecast_period"): 699 ↛ exitline 699 didn't return from function '_fix_um_radtime' because the condition on line 699 was always true
700 fcst_prd_points = cube.coord("forecast_period").points
701 new_fcst_points = (
702 time_unit.num2date(fcst_prd_points)
703 - datetime.timedelta(minutes=n_minute)
704 - datetime.timedelta(seconds=n_second)
705 )
706 cube.coord("forecast_period").points = time_unit.date2num(
707 new_fcst_points
708 )
709 except KeyError:
710 pass
713def _fix_cell_methods(cube: iris.cube.Cube):
714 """To fix the assumed cell_methods in accumulation STASH from UM.
716 Lightning (m01s21i104), rainfall amount (m01s04i201, m01s05i201) and snowfall amount
717 (m01s04i202, m01s05i202) in UM is being output as a time accumulation,
718 over each hour (TAcc1hr), but input cubes show cell_methods as "mean".
719 For UM and LFRic inputs to be compatible, we assume accumulated cell_methods are
720 "sum". This callback changes "mean" cube attribute cell_method to "sum",
721 enabling the cell_method constraint on reading to select correct input.
722 """
723 # Shift "mean" cell_method to "sum" for selected UM inputs.
724 if cube.attributes.get("STASH") in [
725 "m01s21i104",
726 "m01s04i201",
727 "m01s04i202",
728 "m01s05i201",
729 "m01s05i202",
730 ]:
731 # Check if input cell_method contains "mean" time-processing.
732 if set(cm.method for cm in cube.cell_methods) == {"mean"}: 732 ↛ exitline 732 didn't return from function '_fix_cell_methods' because the condition on line 732 was always true
733 # Retrieve interval and any comment information.
734 for cell_method in cube.cell_methods:
735 interval_str = cell_method.intervals
736 comment_str = cell_method.comments
738 # Remove input aggregation method.
739 cube.cell_methods = ()
741 # Replace "mean" with "sum" cell_method to indicate aggregation.
742 cube.add_cell_method(
743 iris.coords.CellMethod(
744 method="sum",
745 coords="time",
746 intervals=interval_str,
747 comments=comment_str,
748 )
749 )
752def _convert_cube_units_callback(cube: iris.cube.Cube):
753 """Adjust diagnostic units for specific variables.
755 Some precipitation diagnostics are output with unit kg m-2 s-1 and are
756 converted here to mm hr-1.
758 Visibility diagnostics are converted here from m to km to improve output
759 formatting.
760 """
761 # Convert precipitation diagnostic units if required.
762 varnames = filter(None, [cube.long_name, cube.standard_name, cube.var_name])
763 if any("surface_microphysical" in name for name in varnames):
764 if cube.units == "kg m-2 s-1":
765 logging.debug(
766 "Converting precipitation rate units from kg m-2 s-1 to mm hr-1"
767 )
768 # Convert from kg m-2 s-1 to mm s-1 assuming 1kg water = 1l water = 1dm^3 water.
769 # This is a 1:1 conversion, so we just change the units.
770 cube.units = "mm s-1"
771 # Convert the units to per hour.
772 cube.convert_units("mm hr-1")
773 elif cube.units == "kg m-2": 773 ↛ 780line 773 didn't jump to line 780 because the condition on line 773 was always true
774 logging.debug("Converting precipitation amount units from kg m-2 to mm")
775 # Convert from kg m-2 to mm assuming 1kg water = 1l water = 1dm^3 water.
776 # This is a 1:1 conversion, so we just change the units.
777 cube.units = "mm"
779 # Convert visibility diagnostic units if required.
780 varnames = filter(None, [cube.long_name, cube.standard_name, cube.var_name])
781 if any("visibility" in name for name in varnames):
782 if cube.units == "m": 782 ↛ 787line 782 didn't jump to line 787 because the condition on line 782 was always true
783 logging.debug("Converting visibility units m to km.")
784 # Convert the units to km.
785 cube.convert_units("km")
787 return cube
790def _fix_lfric_cloud_base_altitude(cube: iris.cube.Cube):
791 """Mask cloud_base_altitude diagnostic in regions with no cloud."""
792 varnames = filter(None, [cube.long_name, cube.standard_name, cube.var_name])
793 if any("cloud_base_altitude" in name for name in varnames):
794 # Mask cube where set > 144kft to catch default 144.35695538058164
795 cube.data = np.ma.masked_array(cube.data)
796 cube.data[cube.data > 144.0] = np.ma.masked
799def _fix_um_winds(cubes: iris.cube.CubeList):
800 """To make winds from the UM consistent with those from LFRic.
802 Diagnostics of wind are not always consistent between the UM
803 and LFric. Here, winds from the UM are adjusted to make them i
804 consistent with LFRic.
805 """
806 # Check whether we have components of the wind identified by STASH,
807 # (so this will apply only to cubes from the UM), but not the
808 # wind speed and calculate it if it is missing. Note that
809 # this will be biased low in general because the components will mostly
810 # be time averages. For simplicity, we do this only if there is just one
811 # cube of a component. A more complicated approach would be to consider
812 # the cell methods, but it may not be warranted.
813 u_constr = iris.AttributeConstraint(STASH="m01s03i225")
814 v_constr = iris.AttributeConstraint(STASH="m01s03i226")
815 speed_constr = iris.AttributeConstraint(STASH="m01s03i227")
816 try:
817 if cubes.extract(u_constr) and cubes.extract(v_constr): 817 ↛ 818line 817 didn't jump to line 818 because the condition on line 817 was never true
818 if len(cubes.extract(u_constr)) == 1 and not cubes.extract(speed_constr):
819 _add_wind_speed_um(cubes)
820 # Convert winds in the UM to be relative to true east and true north.
821 _convert_wind_true_dirn_um(cubes)
822 except (KeyError, AttributeError):
823 pass
826def _add_wind_speed_um(cubes: iris.cube.CubeList):
827 """Add windspeeds to cubes from the UM."""
828 wspd10 = (
829 cubes.extract_cube(iris.AttributeConstraint(STASH="m01s03i225"))[0] ** 2
830 + cubes.extract_cube(iris.AttributeConstraint(STASH="m01s03i226"))[0] ** 2
831 ) ** 0.5
832 wspd10.attributes["STASH"] = "m01s03i227"
833 wspd10.standard_name = "wind_speed"
834 wspd10.long_name = "wind_speed_at_10m"
835 cubes.append(wspd10)
838def _convert_wind_true_dirn_um(cubes: iris.cube.CubeList):
839 """To convert winds to true directions.
841 Convert from the components relative to the grid to true directions.
842 This functionality only handles the simplest case.
843 """
844 u_grids = cubes.extract(iris.AttributeConstraint(STASH="m01s03i225"))
845 v_grids = cubes.extract(iris.AttributeConstraint(STASH="m01s03i226"))
846 for u, v in zip(u_grids, v_grids, strict=True):
847 true_u, true_v = rotate_winds(u, v, iris.coord_systems.GeogCS(6371229.0))
848 u.data = true_u.data
849 v.data = true_v.data
852def _normalise_var0_varname(cube: iris.cube.Cube):
853 """Fix varnames for consistency to allow merging.
855 Some model data netCDF sometimes have a coordinate name end in
856 "_0" etc, where duplicate coordinates of same name are defined but
857 with different attributes. This can be inconsistently managed in
858 different model inputs and can cause cubes to fail to merge.
859 """
860 for coord in cube.coords():
861 if coord.var_name and coord.var_name.endswith("_0"):
862 coord.var_name = coord.var_name.removesuffix("_0")
863 if coord.var_name and coord.var_name.endswith("_1"):
864 coord.var_name = coord.var_name.removesuffix("_1")
865 if coord.var_name and coord.var_name.endswith("_2"): 865 ↛ 866line 865 didn't jump to line 866 because the condition on line 865 was never true
866 coord.var_name = coord.var_name.removesuffix("_2")
867 if coord.var_name and coord.var_name.endswith("_3"): 867 ↛ 868line 867 didn't jump to line 868 because the condition on line 867 was never true
868 coord.var_name = coord.var_name.removesuffix("_3")
870 if cube.var_name and cube.var_name.endswith("_0"):
871 cube.var_name = cube.var_name.removesuffix("_0")
874def _proleptic_gregorian_fix(cube: iris.cube.Cube):
875 """Convert the calendars of time units to use a standard calendar."""
876 try:
877 time_coord = cube.coord("time")
878 if time_coord.units.calendar == "proleptic_gregorian":
879 logging.debug(
880 "Changing proleptic Gregorian calendar to standard calendar for %s",
881 repr(time_coord.units),
882 )
883 time_coord.units = time_coord.units.change_calendar("standard")
884 except iris.exceptions.CoordinateNotFoundError:
885 pass
888def _lfric_time_callback(cube: iris.cube.Cube):
889 """Fix time coordinate metadata if missing dimensions.
891 Some model data does not contain forecast_reference_time or forecast_period as
892 expected coordinates, and so we cannot aggregate over case studies without this
893 metadata. This callback fixes these issues.
895 This callback also ensures all time coordinates are referenced as hours since
896 1970-01-01 00:00:00 for consistency across different model inputs.
898 Notes
899 -----
900 Some parts of the code have been adapted from Paul Earnshaw's scripts.
901 """
902 # Construct forecast_reference time if it doesn't exist.
903 try:
904 tcoord = cube.coord("time")
905 # Set time coordinate to common basis "hours since 1970"
906 try:
907 tcoord.convert_units("hours since 1970-01-01 00:00:00")
908 except ValueError:
909 logging.warning("Unrecognised base time unit: %s", tcoord.units)
911 if not cube.coords("forecast_reference_time"):
912 try:
913 init_time = datetime.datetime.fromisoformat(
914 tcoord.attributes["time_origin"]
915 )
916 frt_point = tcoord.units.date2num(init_time)
917 frt_coord = iris.coords.AuxCoord(
918 frt_point,
919 units=tcoord.units,
920 standard_name="forecast_reference_time",
921 long_name="forecast_reference_time",
922 )
923 cube.add_aux_coord(frt_coord)
924 except KeyError:
925 logging.warning(
926 "Cannot find forecast_reference_time, but no `time_origin` attribute to construct it from."
927 )
929 # Remove time_origin to allow multiple case studies to merge.
930 tcoord.attributes.pop("time_origin", None)
932 # Construct forecast_period axis (forecast lead time) if it doesn't exist.
933 if not cube.coords("forecast_period"):
934 try:
935 # Create array of forecast lead times.
936 init_coord = cube.coord("forecast_reference_time")
937 init_time_points_in_tcoord_units = tcoord.units.date2num(
938 init_coord.units.num2date(init_coord.points)
939 )
940 lead_times = tcoord.points - init_time_points_in_tcoord_units
942 # Get unit for lead time from time coordinate's unit.
943 # Convert all lead time to hours for consistency between models.
944 if "seconds" in str(tcoord.units): 944 ↛ 945line 944 didn't jump to line 945 because the condition on line 944 was never true
945 lead_times = lead_times / 3600.0
946 units = "hours"
947 elif "hours" in str(tcoord.units): 947 ↛ 950line 947 didn't jump to line 950 because the condition on line 947 was always true
948 units = "hours"
949 else:
950 raise ValueError(f"Unrecognised base time unit: {tcoord.units}")
952 # Create lead time coordinate.
953 lead_time_coord = iris.coords.AuxCoord(
954 lead_times,
955 standard_name="forecast_period",
956 long_name="forecast_period",
957 units=units,
958 )
960 # Associate lead time coordinate with time dimension.
961 cube.add_aux_coord(lead_time_coord, cube.coord_dims("time"))
962 except iris.exceptions.CoordinateNotFoundError:
963 logging.warning(
964 "Cube does not have both time and forecast_reference_time coordinate, so cannot construct forecast_period"
965 )
966 except iris.exceptions.CoordinateNotFoundError:
967 logging.warning("No time coordinate on cube.")
970def _lfric_forecast_period_callback(cube: iris.cube.Cube):
971 """Check forecast_period name and units."""
972 try:
973 coord = cube.coord("forecast_period")
974 if coord.units != "hours":
975 cube.coord("forecast_period").convert_units("hours")
976 if not coord.standard_name:
977 coord.standard_name = "forecast_period"
978 except iris.exceptions.CoordinateNotFoundError:
979 pass