Source code for sliderule.icesat2

# Copyright (c) 2021, University of Washington
# All rights reserved.
#
# Redistribution and use in source and binary forms, with or without
# modification, are permitted provided that the following conditions are met:
#
# 1. Redistributions of source code must retain the above copyright notice,
#    this list of conditions and the following disclaimer.
#
# 2. Redistributions in binary form must reproduce the above copyright notice,
#    this list of conditions and the following disclaimer in the documentation
#    and/or other materials provided with the distribution.
#
# 3. Neither the name of the University of Washington nor the names of its
#    contributors may be used to endorse or promote products derived from this
#    software without specific prior written permission.
#
# THIS SOFTWARE IS PROVIDED BY THE UNIVERSITY OF WASHINGTON AND CONTRIBUTORS
# “AS IS” AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED
# TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR
# PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE UNIVERSITY OF WASHINGTON OR
# CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL,
# EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO,
# PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS;
# OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY,
# WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR
# OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF
# ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.

import time
import logging
import numpy
import geopandas
import sliderule
from sliderule import earthdata, logger

###############################################################################
# GLOBALS
###############################################################################

# profiling times for each major function
profiles = {}

# whether exceptions should be rethrown
rethrow_exceptions = False

# icesat2 parameters
CNF_POSSIBLE_TEP = -2
CNF_NOT_CONSIDERED = -1
CNF_BACKGROUND = 0
CNF_WITHIN_10M = 1
CNF_SURFACE_LOW = 2
CNF_SURFACE_MEDIUM = 3
CNF_SURFACE_HIGH = 4
SRT_LAND = 0
SRT_OCEAN = 1
SRT_SEA_ICE = 2
SRT_LAND_ICE = 3
SRT_INLAND_WATER = 4
MAX_COORDS_IN_POLYGON = 16384
GT1L = 10
GT1R = 20
GT2L = 30
GT2R = 40
GT3L = 50
GT3R = 60
STRONG_SPOTS = (1, 3, 5)
WEAK_SPOTS = (2, 4, 6)
LEFT_PAIR = 0
RIGHT_PAIR = 1
SC_BACKWARD = 0
SC_FORWARD = 1
ATL08_WATER = 0
ATL08_LAND = 1
ATL08_SNOW = 2
ATL08_ICE = 3

# phoreal percentiles
P = { '5':   0, '10':  1, '15':  2, '20':  3, '25':  4, '30':  5, '35':  6, '40':  7, '45':  8, '50': 9,
      '55': 10, '60': 11, '65': 12, '70': 13, '75': 14, '80': 15, '85': 16, '90': 17, '95': 18 }

###############################################################################
# LOCAL FUNCTIONS
###############################################################################

#
# Calculate Laser Spot
#
def __calcspot(sc_orient, track, pair):

    # spacecraft in forward orientation
    if sc_orient == SC_BACKWARD:
        if track == 1:
            if pair == LEFT_PAIR:
                return 1
            elif pair == RIGHT_PAIR:
                return 2
        elif track == 2:
            if pair == LEFT_PAIR:
                return 3
            elif pair == RIGHT_PAIR:
                return 4
        elif track == 3:
            if pair == LEFT_PAIR:
                return 5
            elif pair == RIGHT_PAIR:
                return 6

    # spacecraft in backward orientation
    elif sc_orient == SC_FORWARD:
        if track == 1:
            if pair == LEFT_PAIR:
                return 6
            elif pair == RIGHT_PAIR:
                return 5
        elif track == 2:
            if pair == LEFT_PAIR:
                return 4
            elif pair == RIGHT_PAIR:
                return 3
        elif track == 3:
            if pair == LEFT_PAIR:
                return 2
            elif pair == RIGHT_PAIR:
                return 1

    # unknown spot
    return 0

#
# Get Ancillary Field Name
#
def __getancillaryfield(parm, field_rec):
    if field_rec['anc_type'] == 0:
        return parm['atl03_ph_fields'][field_rec['field_index']]
    if field_rec['anc_type'] == 1:
        return parm['atl03_geo_fields'][field_rec['field_index']]
    if field_rec['anc_type'] == 2:
        return parm['atl08_fields'][field_rec['field_index']]
    if field_rec['anc_type'] == 3:
        return parm['atl06_fields'][field_rec['field_index']]
    raise sliderule.FatalError(f'Invalid ancillary field type {field_rec["anc_type"]}')

#
# Flatten Batches
#
def __flattenbatches(rsps, rectype, batch_column, parm, keep_id, as_numpy_array, height_key):

    # Latch Start Time
    tstart_flatten = time.perf_counter()

    # Check for Output Options
    if "output" in parm:
        gdf = sliderule.procoutputfile(parm, rsps)
        profiles["flatten"] = time.perf_counter() - tstart_flatten
        return gdf

    # Flatten Records
    columns = {}
    records = []
    num_records = 0
    field_dictionary = {} # [<field_name>] = {"extent_id": [], <field_name>: []}
    file_dictionary = {} # [id] = "filename"
    if len(rsps) > 0:
        # Sort Records
        for rsp in rsps:
            if rectype in rsp['__rectype']:
                records += rsp,
                num_records += len(rsp[batch_column])
            elif 'ancfrec' == rsp['__rectype']:
                for field_rec in rsp['fields']:
                    extent_id = numpy.uint64(rsp['extent_id'])
                    field_name = __getancillaryfield(parm, field_rec)
                    if field_name not in field_dictionary:
                        field_dictionary[field_name] = {'extent_id': [], field_name: []}
                    field_dictionary[field_name]['extent_id'] += extent_id,
                    field_dictionary[field_name][field_name] += sliderule.getvalues(field_rec['value'], field_rec['datatype'], len(field_rec['value']), num_elements=1)[0],
            elif 'rsrec' == rsp['__rectype'] or 'zsrec' == rsp['__rectype']:
                if rsp["num_samples"] <= 0:
                    continue
                # Get field names and set
                sample = rsp["samples"][0]
                field_names = list(sample.keys())
                field_names.remove("__rectype")
                field_set = rsp['key']
                if rsp["num_samples"] > 1:
                    as_numpy_array = True
                # On first time, build empty dictionary for field set associated with raster
                if field_set not in field_dictionary:
                    field_dictionary[field_set] = {'extent_id': []}
                    for field in field_names:
                        field_dictionary[field_set][field_set + "." + field] = []
                # Populate dictionary for field set
                field_dictionary[field_set]['extent_id'] += numpy.uint64(rsp['index']),
                for field in field_names:
                    if as_numpy_array:
                        data = []
                        for s in rsp["samples"]:
                            data += s[field],
                        field_dictionary[field_set][field_set + "." + field] += numpy.array(data),
                    else:
                        field_dictionary[field_set][field_set + "." + field] += sample[field],
            elif 'waverec' == rsp['__rectype']:
                field_set = rsp['__rectype']
                field_names = list(rsp.keys())
                field_names.remove("__rectype")
                if field_set not in field_dictionary:
                    field_dictionary[field_set] = {'extent_id': []}
                    for field in field_names:
                        field_dictionary[field_set][field] = []
                for field in field_names:
                    if type(rsp[field]) == tuple:
                        field_dictionary[field_set][field] += numpy.array(rsp[field]),
                    elif field == 'extent_id':
                        field_dictionary[field_set][field] += numpy.uint64(rsp[field]),
                    else:
                        field_dictionary[field_set][field] += rsp[field],
            elif 'fileidrec' == rsp['__rectype']:
                file_dictionary[rsp["file_id"]] = rsp["file_name"]

        # Build Columns
        if num_records > 0:
            # Initialize Columns
            sample_record = records[0][batch_column][0]
            for field in sample_record.keys():
                fielddef = sliderule.get_definition(sample_record['__rectype'], field)
                if len(fielddef) > 0:
                    if type(sample_record[field]) == tuple:
                        columns[field] = numpy.empty(num_records, dtype=object)
                    else:
                        columns[field] = numpy.empty(num_records, fielddef["nptype"])
            # Populate Columns
            cnt = 0
            for record in records:
                for batch in record[batch_column]:
                    for field in columns:
                        columns[field][cnt] = batch[field]
                    cnt += 1
    else:
        logger.debug("No response returned")

    # Build Initial GeoDataFrame
    gdf = sliderule.todataframe(columns, height_key=height_key)

    # Merge Ancillary Fields
    tstart_merge = time.perf_counter()
    for field_set in field_dictionary:
        df = geopandas.pd.DataFrame(field_dictionary[field_set])
        gdf = geopandas.pd.merge(gdf, df, how='left', on='extent_id').set_axis(gdf.index)
    profiles["merge"] = time.perf_counter() - tstart_merge

    # Delete Extent ID Column
    if len(gdf) > 0 and not keep_id:
        del gdf["extent_id"]

    # Attach Metadata
    if len(file_dictionary) > 0:
        gdf.attrs['file_directory'] = file_dictionary

    # Return GeoDataFrame
    profiles["flatten"] = time.perf_counter() - tstart_flatten
    return gdf

#
# Build Request
#
def __build_request(parm, resources, default_asset='icesat2'):

    # Default the Asset
    rqst_parm = parm.copy()
    if "asset" not in rqst_parm:
        rqst_parm["asset"] = default_asset

    # Get List of Resources
    resources = earthdata.search(rqst_parm, resources)

    # Build Request
    return {
        "resources": resources,
        "parms": rqst_parm
    }


###############################################################################
# APIs
###############################################################################

#
#  Initialize
#
[docs] def init (url=sliderule.service_url, verbose=False, max_resources=earthdata.DEFAULT_MAX_REQUESTED_RESOURCES, loglevel=logging.CRITICAL, organization=sliderule.service_org, desired_nodes=None, time_to_live=60, bypass_dns=False, rethrow=False): ''' Initializes the Python client for use with SlideRule and should be called before other ICESat-2 API calls. This function is a wrapper for the `sliderule.init(...) function </web/rtds/api_reference/sliderule.html#init>`_. Parameters ---------- max_resources: int maximum number of H5 granules to process in the request Examples -------- >>> from sliderule import icesat2 >>> icesat2.init() ''' global rethrow_exceptions sliderule.init(url, verbose, loglevel, organization, desired_nodes, time_to_live, bypass_dns, plugins=['icesat2']) earthdata.set_max_resources(max_resources) # set maximum number of resources allowed per request rethrow_exceptions = rethrow
# # ATL06 #
[docs] def atl06 (parm, resource): ''' Performs ATL06-SR processing on ATL03 data and returns geolocated elevations Parameters ---------- parms: dict parameters used to configure ATL06-SR algorithm processing (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) resource: str ATL03 HDF5 filename Returns ------- GeoDataFrame geolocated elevations (see `Elevations </web/rtd/user_guide/ICESat-2.html#elevations>`_) ''' return atl06p(parm, resources=[resource])
# # Parallel ATL06 #
[docs] def atl06p(parm, callbacks={}, resources=None, keep_id=False, as_numpy_array=False, height_key=None): ''' Performs ATL06-SR processing in parallel on ATL03 data and returns geolocated elevations. This function expects that the **parm** argument includes a polygon which is used to fetch all available resources from the CMR system automatically. If **resources** is specified then any polygon or resource filtering options supplied in **parm** are ignored. Warnings -------- It is often the case that the list of resources (i.e. granules) returned by the CMR system includes granules that come close, but do not actually intersect the region of interest. This is due to geolocation margin added to all CMR ICESat-2 resources in order to account for the spacecraft off-pointing. The consequence is that SlideRule will return no data for some of the resources and issue a warning statement to that effect; this can be ignored and indicates no issue with the data processing. Parameters ---------- parms: dict parameters used to configure ATL06-SR algorithm processing (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) callbacks: dictionary a callback function that is called for each result record resources: list a list of granules to process (e.g. ["ATL03_20181019065445_03150111_005_01.h5", ...]) keep_id: bool whether to retain the "extent_id" column in the GeoDataFrame for future merges as_numpy_array: bool whether to provide all sampled values as numpy arrays even if there is only a single value height_key: str identifies the name of the column provided for the 3D CRS transformation Returns ------- GeoDataFrame geolocated elevations (see `Elevations </web/rtd/user_guide/ICESat-2.html#elevations>`_) Examples -------- >>> from sliderule import icesat2 >>> icesat2.init("slideruleearth.io", True) >>> parms = { "cnf": 4, "ats": 20.0, "cnt": 10, "len": 40.0, "res": 20.0 } >>> resources = ["ATL03_20181019065445_03150111_003_01.h5"] >>> atl03_asset = "atlas-local" >>> rsps = icesat2.atl06p(parms, asset=atl03_asset, resources=resources) >>> rsps dh_fit_dx w_surface_window_final ... time geometry 0 0.000042 61.157661 ... 2018-10-19 06:54:46.104937 POINT (-63.82088 -79.00266) 1 0.002019 61.157683 ... 2018-10-19 06:54:46.467038 POINT (-63.82591 -79.00247) 2 0.001783 61.157678 ... 2018-10-19 06:54:46.107756 POINT (-63.82106 -79.00283) 3 0.000969 61.157666 ... 2018-10-19 06:54:46.469867 POINT (-63.82610 -79.00264) 4 -0.000801 61.157665 ... 2018-10-19 06:54:46.110574 POINT (-63.82124 -79.00301) ... ... ... ... ... ... 622407 -0.000970 61.157666 ... 2018-10-19 07:00:29.606632 POINT (135.57522 -78.98983) 622408 0.004620 61.157775 ... 2018-10-19 07:00:29.250312 POINT (135.57052 -78.98983) 622409 -0.001366 61.157671 ... 2018-10-19 07:00:29.609435 POINT (135.57504 -78.98966) 622410 -0.004041 61.157748 ... 2018-10-19 07:00:29.253123 POINT (135.57034 -78.98966) 622411 -0.000482 61.157663 ... 2018-10-19 07:00:29.612238 POINT (135.57485 -78.98948) [622412 rows x 16 columns] ''' try: tstart = time.perf_counter() # Build Request rqst = __build_request(parm, resources) # Make API Processing Request rsps = sliderule.source("atl06p", rqst, stream=True, callbacks=callbacks) # Flatten Responses gdf = __flattenbatches(rsps, 'atl06rec', 'elevation', parm, keep_id, as_numpy_array, height_key) # Return Response profiles[atl06p.__name__] = time.perf_counter() - tstart return gdf # Handle Runtime Errors except RuntimeError as e: logger.critical(e) if rethrow_exceptions: raise # Error Case return sliderule.emptyframe()
# # Subsetted ATL06 #
[docs] def atl06s (parm, resource): ''' Subsets ATL06 data given the polygon and time range provided and returns elevations Parameters ---------- parms: dict parameters used to configure ATL03 subsetting (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) resource: str ATL06 HDF5 filename Returns ------- GeoDataFrame ATL06 elevations ''' return atl06sp(parm, resources=[resource])
# # Parallel Subsetted ATL06 #
[docs] def atl06sp(parm, callbacks={}, resources=None, keep_id=False, as_numpy_array=False, height_key=None): ''' Performs ATL06 subsetting in parallel on ATL06 data and returns elevation data. Unlike the `atl06s <#atl06s>`_ function, this function does not take a resource as a parameter; instead it is expected that the **parm** argument includes a polygon which is used to fetch all available resources from the CMR system automatically. Warnings -------- Note, it is often the case that the list of resources (i.e. granules) returned by the CMR system includes granules that come close, but do not actually intersect the region of interest. This is due to geolocation margin added to all CMR ICESat-2 resources in order to account for the spacecraft off-pointing. The consequence is that SlideRule will return no data for some of the resources and issue a warning statement to that effect; this can be ignored and indicates no issue with the data processing. Parameters ---------- parms: dict parameters used to configure ATL03 subsetting (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) callbacks: dictionary a callback function that is called for each result record resources: list a list of granules to process (e.g. ["ATL03_20181019065445_03150111_005_01.h5", ...]) keep_id: bool whether to retain the "extent_id" column in the GeoDataFrame for future merges as_numpy_array: bool whether to provide all sampled values as numpy arrays even if there is only a single value height_key: str identifies the name of the column provided for the 3D CRS transformation Returns ------- GeoDataFrame ATL06 elevations ''' try: tstart = time.perf_counter() # Build Request rqst = __build_request(parm, resources, default_asset="icesat2-atl06") # Make API Processing Request rsps = sliderule.source("atl06sp", rqst, stream=True, callbacks=callbacks) # Flatten Responses gdf = __flattenbatches(rsps, 'atl06srec', 'elevation', parm, keep_id, as_numpy_array, height_key) # Return Response profiles[atl06sp.__name__] = time.perf_counter() - tstart return gdf # Handle Runtime Errorss except RuntimeError as e: logger.critical(e) if rethrow_exceptions: raise # Error Case return sliderule.emptyframe()
# # Subsetted ATL03 #
[docs] def atl03s (parm, resource): ''' Subsets ATL03 data given the polygon and time range provided and returns segments of photons Parameters ---------- parms: dict parameters used to configure ATL03 subsetting (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) resource: str ATL03 HDF5 filename Returns ------- GeoDataFrame ATL03 extents (see `Photon Segments </web/rtd/user_guide/ICESat-2.html#segmented-photon-data>`_) ''' return atl03sp(parm, resources=[resource])
# # Parallel Subsetted ATL03 #
[docs] def atl03sp(parm, callbacks={}, resources=None, keep_id=False, height_key=None): ''' Performs ATL03 subsetting in parallel on ATL03 data and returns photon segment data. Unlike the `atl03s <#atl03s>`_ function, this function does not take a resource as a parameter; instead it is expected that the **parm** argument includes a polygon which is used to fetch all available resources from the CMR system automatically. Warnings -------- Note, it is often the case that the list of resources (i.e. granules) returned by the CMR system includes granules that come close, but do not actually intersect the region of interest. This is due to geolocation margin added to all CMR ICESat-2 resources in order to account for the spacecraft off-pointing. The consequence is that SlideRule will return no data for some of the resources and issue a warning statement to that effect; this can be ignored and indicates no issue with the data processing. Parameters ---------- parms: dict parameters used to configure ATL03 subsetting (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) callbacks: dictionary a callback function that is called for each result record resources: list a list of granules to process (e.g. ["ATL03_20181019065445_03150111_005_01.h5", ...]) keep_id: bool whether to retain the "extent_id" column in the GeoDataFrame for future merges height_key: str identifies the name of the column provided for the 3D CRS transformation Returns ------- GeoDataFrame ATL03 segments (see `Photon Segments </web/rtd/user_guide/ICESat-2.html#photon-segments>`_) ''' try: tstart = time.perf_counter() # Build Request rqst = __build_request(parm, resources) # Make Request rsps = sliderule.source("atl03sp", rqst, stream=True, callbacks=callbacks) # Check for Output Options if "output" in parm: profiles[atl03sp.__name__] = time.perf_counter() - tstart return sliderule.procoutputfile(parm, rsps) else: # Native Output # Flatten Responses tstart_flatten = time.perf_counter() columns = {} sample_photon_record = None photon_records = [] num_photons = 0 photon_dictionary = {} photon_field_types = {} # ['field_name'] = nptype if len(rsps) > 0: # Sort Records for rsp in rsps: if 'atl03rec' in rsp['__rectype']: photon_records += rsp, num_photons += len(rsp['photons']) if sample_photon_record == None and len(rsp['photons']) > 0: sample_photon_record = rsp elif 'ancerec' == rsp['__rectype']: # Get Field Name and Type field_name = __getancillaryfield(parm, rsp) if field_name not in photon_field_types: photon_field_types[field_name] = sliderule.basictypes[sliderule.codedtype2str[rsp['datatype']]]["nptype"] # Initialize Extent Dictionary Entry extent_id = rsp['extent_id'] if extent_id not in photon_dictionary: photon_dictionary[extent_id] = {} # Save of Values per Extent ID per Field Name data = sliderule.getvalues(rsp['data'], rsp['datatype'], len(rsp['data'])) photon_dictionary[extent_id][field_name] = data # Build Elevation Columns if num_photons > 0: # Initialize Columns for field in sample_photon_record.keys(): fielddef = sliderule.get_definition("atl03rec", field) if len(fielddef) > 0 and field != "photons": columns[field] = numpy.empty(num_photons, fielddef["nptype"]) for field in sample_photon_record["photons"][0].keys(): fielddef = sliderule.get_definition("atl03rec.photons", field) if len(fielddef) > 0: columns[field] = numpy.empty(num_photons, fielddef["nptype"]) for field in photon_field_types.keys(): columns[field] = numpy.empty(num_photons, photon_field_types[field]) # Populate Columns ph_cnt = 0 for record in photon_records: # Add Ancillary Extent Fields ph_index = 0 extent_id = record['extent_id'] if extent_id in photon_dictionary: for photon in record["photons"]: for field_name, field_array in photon_dictionary[extent_id].items(): columns[field_name][ph_cnt + ph_index] = field_array[ph_index] ph_index += 1 # For Each Photon in Extent for photon in record["photons"]: # Add per Extent Fields for field in record.keys(): if field in columns: columns[field][ph_cnt] = record[field] # Add per Photon Fields for field in photon.keys(): if field in columns: columns[field][ph_cnt] = photon[field] # Goto Next Photon ph_cnt += 1 # Delete Extent ID Column if "extent_id" in columns and not keep_id: del columns["extent_id"] # Capture Time to Flatten profiles["flatten"] = time.perf_counter() - tstart_flatten # Create DataFrame gdf = sliderule.todataframe(columns, height_key=height_key) # Calculate Spot Column gdf['spot'] = gdf.apply(lambda row: __calcspot(row["sc_orient"], row["track"], row["pair"]), axis=1) # Return Response profiles[atl03sp.__name__] = time.perf_counter() - tstart return gdf else: logger.debug("No photons returned") else: logger.debug("No response returned") # Handle Runtime Errors except RuntimeError as e: logger.critical(e) if rethrow_exceptions: raise # Error Case return sliderule.emptyframe()
# # ATL08 #
[docs] def atl08 (parm, resource): ''' Performs ATL08-PhoREAL processing on ATL03 and ATL08 data and returns geolocated elevations Parameters ---------- parms: dict parameters used to configure ATL06-SR algorithm processing (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) resource: str ATL03 HDF5 filename Returns ------- GeoDataFrame geolocated vegatation statistics ''' return atl08p(parm, resources=[resource])
# # Parallel ATL08 #
[docs] def atl08p(parm, callbacks={}, resources=None, keep_id=False, as_numpy_array=False, height_key=None): ''' Performs ATL08-PhoREAL processing in parallel on ATL03 and ATL08 data and returns geolocated vegatation statistics. This function expects that the **parm** argument includes a polygon which is used to fetch all available resources from the CMR system automatically. If **resources** is specified then any polygon or resource filtering options supplied in **parm** are ignored. Warnings -------- It is often the case that the list of resources (i.e. granules) returned by the CMR system includes granules that come close, but do not actually intersect the region of interest. This is due to geolocation margin added to all CMR ICESat-2 resources in order to account for the spacecraft off-pointing. The consequence is that SlideRule will return no data for some of the resources and issue a warning statement to that effect; this can be ignored and indicates no issue with the data processing. Parameters ---------- parms: dict parameters used to configure ATL06-SR algorithm processing (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) callbacks: dictionary a callback function that is called for each result record resources: list a list of granules to process (e.g. ["ATL03_20181019065445_03150111_005_01.h5", ...]) keep_id: bool whether to retain the "extent_id" column in the GeoDataFrame for future merges as_numpy_array: bool whether to provide all sampled values as numpy arrays even if there is only a single value height_key: str identifies the name of the column provided for the 3D CRS transformation Returns ------- GeoDataFrame geolocated vegetation statistics ''' try: tstart = time.perf_counter() # Build Request rqst = __build_request(parm, resources) # Make Request rsps = sliderule.source("atl08p", rqst, stream=True, callbacks=callbacks) # Flatten Responses gdf = __flattenbatches(rsps, 'atl08rec', 'vegetation', parm, keep_id, as_numpy_array, height_key) # Return Response profiles[atl08p.__name__] = time.perf_counter() - tstart return gdf # Handle Runtime Errors except RuntimeError as e: logger.critical(e) if rethrow_exceptions: raise # Error Case return sliderule.emptyframe()
# # ATL24 Gold Standard # def atl24g (parm, resource): ''' Produces gold standard bathymetry photon classification of ATL03 data Parameters ---------- parms: dict parameters used to configure ATL03 subsetting (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) resource: str ATL03 HDF5 filename Returns ------- GeoDataFrame ATL03 extents (see `Photon Segments </web/rtd/user_guide/ICESat-2.html#segmented-photon-data>`_) ''' return atl03sp(parm, resources=[resource]) # # Parallel Gold Standard # def atl24gp(parm, callbacks={}, resources=None, keep_id=False, height_key=None): ''' Performs ATL24 gold standard generation in parallel on ATL03 data. Unlike the `atl03s <#atl03s>`_ function, this function does not take a resource as a parameter; instead it is expected that the **parm** argument includes a polygon which is used to fetch all available resources from the CMR system automatically. Parameters ---------- parms: dict parameters used to configure ATL03 subsetting (see `Parameters </web/rtd/user_guide/ICESat-2.html#parameters>`_) callbacks: dictionary a callback function that is called for each result record resources: list a list of granules to process (e.g. ["ATL03_20181019065445_03150111_005_01.h5", ...]) keep_id: bool whether to retain the "extent_id" column in the GeoDataFrame for future merges height_key: str identifies the name of the column provided for the 3D CRS transformation Returns ------- GeoDataFrame ATL03 segments (see `Photon Segments </web/rtd/user_guide/ICESat-2.html#photon-segments>`_) ''' try: tstart = time.perf_counter() # Build Request rqst = __build_request(parm, resources) # Make Request rsps = sliderule.source("atl24gp", rqst, stream=True, callbacks=callbacks) # Check for Output Options if "output" in parm: profiles[atl24gp.__name__] = time.perf_counter() - tstart return sliderule.procoutputfile(parm, rsps) else: # Native Output # Flatten Responses tstart_flatten = time.perf_counter() columns = {} sample_photon_record = None photon_records = [] num_photons = 0 if len(rsps) > 0: # Sort Records for rsp in rsps: if 'bathyrec' in rsp['__rectype']: photon_records += rsp, num_photons += len(rsp['photons']) if sample_photon_record == None and len(rsp['photons']) > 0: sample_photon_record = rsp # Build Elevation Columns if num_photons > 0: # Initialize Columns for field in sample_photon_record.keys(): fielddef = sliderule.get_definition("bathyrec", field) if len(fielddef) > 0 and field != "photons": columns[field] = numpy.empty(num_photons, fielddef["nptype"]) for field in sample_photon_record["photons"][0].keys(): fielddef = sliderule.get_definition("bathyrec.photons", field) if len(fielddef) > 0: columns[field] = numpy.empty(num_photons, fielddef["nptype"]) # Populate Columns ph_cnt = 0 for record in photon_records: # For Each Photon in Extent for photon in record["photons"]: # Add per Extent Fields for field in record.keys(): if field in columns: columns[field][ph_cnt] = record[field] # Add per Photon Fields for field in photon.keys(): if field in columns: columns[field][ph_cnt] = photon[field] # Goto Next Photon ph_cnt += 1 # Delete Extent ID Column if "extent_id" in columns and not keep_id: del columns["extent_id"] # Capture Time to Flatten profiles["flatten"] = time.perf_counter() - tstart_flatten # Create DataFrame gdf = sliderule.todataframe(columns, height_key=height_key) # Calculate Spot Column gdf['spot'] = gdf.apply(lambda row: __calcspot(row["sc_orient"], row["track"], row["pair"]), axis=1) # Return Response profiles[atl24gp.__name__] = time.perf_counter() - tstart return gdf else: logger.debug("No photons returned") else: logger.debug("No response returned") # Handle Runtime Errors except RuntimeError as e: logger.critical(e) if rethrow_exceptions: raise # Error Case return sliderule.emptyframe()