{ "metadata": { "kernelspec": { "codemirror_mode": { "name": "ipython", "version": 3 }, "display_name": "IOOS (Python 2)", "language": "python", "name": "ioos_python2" }, "name": "", "signature": "sha256:26aa231a7f37ad796044ce8ceaff8c2a5fd3729b96309e865b3c10cfc1daca60" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "code", "collapsed": false, "input": [ "import iris\n", "from iris.unit import Unit\n", "from iris.cube import CubeList\n", "from iris.exceptions import CoordinateNotFoundError, CoordinateMultiDimError\n", "\n", "iris.FUTURE.netcdf_promote = True\n", "iris.FUTURE.cell_datetime_objects = True\n", "\n", "\n", "def time_coord(cube):\n", " \"\"\"Return the variable attached to time axis and rename it to time.\"\"\"\n", " try:\n", " cube.coord(axis='T').rename('time')\n", " except CoordinateNotFoundError:\n", " pass\n", " timevar = cube.coord('time')\n", " return timevar\n", "\n", "\n", "def z_coord(cube):\n", " \"\"\"Heuristic way to return the\n", " dimensionless vertical coordinate.\"\"\"\n", " try:\n", " z = cube.coord(axis='Z')\n", " except CoordinateNotFoundError:\n", " z = cube.coords(axis='Z')\n", " for coord in cube.coords(axis='Z'):\n", " if coord.ndim == 1:\n", " z = coord\n", " return z\n", "\n", "\n", "def time_near(cube, datetime):\n", " \"\"\"Return the nearest index to a `datetime`.\"\"\"\n", " timevar = time_coord(cube)\n", " try:\n", " time = timevar.units.date2num(datetime)\n", " idx = timevar.nearest_neighbour_index(time)\n", " except IndexError:\n", " idx = -1\n", " return idx\n", "\n", "\n", "def time_slice(cube, start, stop=None):\n", " \"\"\"TODO: Re-write to use `iris.FUTURE.cell_datetime_objects`.\"\"\"\n", " istart = time_near(cube, start)\n", " if stop:\n", " istop = time_near(cube, stop)\n", " if istart == istop:\n", " raise ValueError('istart must be different from istop!'\n", " 'Got istart {!r} and '\n", " ' istop {!r}'.format(istart, istop))\n", " return cube[istart:istop, ...]\n", " else:\n", " return cube[istart, ...]\n", "\n", "\n", "def bbox_extract_2Dcoords(cube, bbox):\n", " \"\"\"Extract a sub-set of a cube inside a lon, lat bounding box\n", " bbox=[lon_min lon_max lat_min lat_max].\n", " NOTE: This is a work around too subset an iris cube that has\n", " 2D lon, lat coords.\"\"\"\n", " lons = cube.coord('longitude').points\n", " lats = cube.coord('latitude').points\n", "\n", " def minmax(v):\n", " return np.min(v), np.max(v)\n", "\n", " inregion = np.logical_and(np.logical_and(lons > bbox[0],\n", " lons < bbox[2]),\n", " np.logical_and(lats > bbox[1],\n", " lats < bbox[3]))\n", " region_inds = np.where(inregion)\n", " imin, imax = minmax(region_inds[0])\n", " jmin, jmax = minmax(region_inds[1])\n", " return cube[..., imin:imax+1, jmin:jmax+1]\n", "\n", "\n", "def intersection(cube, bbox):\n", " \"\"\"Sub sets cube with 1D or 2D lon, lat coords.\n", " Using `intersection` instead of `extract` we deal with 0-360\n", " longitudes automagically.\"\"\"\n", " try:\n", " method = \"Using iris `cube.intersection`\"\n", " cube = cube.intersection(longitude=(bbox[0], bbox[2]),\n", " latitude=(bbox[1], bbox[3]))\n", " except CoordinateMultiDimError:\n", " method = \"Using iris `bbox_extract_2Dcoords`\"\n", " cube = bbox_extract_2Dcoords(cube, bbox)\n", " print(method)\n", " return cube\n", "\n", "\n", "def get_cube(url, name_list=None, bbox=None, time=None, units=None):\n", " cubes = iris.load_raw(url)\n", " if name_list:\n", " in_list = lambda cube: cube.standard_name in name_list\n", " cubes = CubeList([cube for cube in cubes if in_list(cube)])\n", " if not cubes:\n", " raise ValueError('Cube does not contain {!r}'.format(name_list))\n", " else:\n", " cube = cubes.merge_cube()\n", " if bbox:\n", " cube = intersection(cube, bbox)\n", " if time:\n", " if isinstance(time, datetime):\n", " start, stop = time, None\n", " elif isinstance(time, tuple):\n", " start, stop = time[0], time[1]\n", " else:\n", " raise ValueError('Time must be start or (start, stop).'\n", " ' Got {!r}'.format(time))\n", " cube = time_slice(cube, start, stop)\n", " if units:\n", " if not cube.units == units:\n", " cube.convert_units(units)\n", " return cube" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 1 }, { "cell_type": "code", "collapsed": false, "input": [ "import time\n", "import contextlib\n", "\n", "\n", "@contextlib.contextmanager\n", "def timeit(log=None):\n", " t = time.time()\n", " yield\n", " elapsed = time.strftime(\"%H:%M:%S\", time.gmtime(time.time()-t))\n", " if log:\n", " log.info(elapsed)\n", " else:\n", " print(elapsed)" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 2 }, { "cell_type": "code", "collapsed": false, "input": [ "%matplotlib inline\n", "import numpy as np\n", "import numpy.ma as ma\n", "import iris.quickplot as qplt\n", "import matplotlib.pyplot as plt\n", "\n", "\n", "def plot_surface(cube, model=''):\n", " z = z_coord(cube)\n", " positive = z.attributes.get('positive', None)\n", " if positive == 'up':\n", " idx = np.argmax(z.points)\n", " else:\n", " idx = np.argmin(z.points)\n", "\n", " c = cube[idx, ...]\n", " c.data = ma.masked_invalid(c.data)\n", " t = time_coord(cube)\n", " t = t.units.num2date(t.points)[0]\n", " qplt.pcolormesh(c)\n", " plt.title('{}: {}\\nVariable: {} level: {}'.format(model, t, c.name(), idx))" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 3 }, { "cell_type": "code", "collapsed": false, "input": [ "print(iris.__version__)\n", "print(iris.__file__)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "1.7.2-DEV\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/__init__.pyc\n" ] } ], "prompt_number": 4 }, { "cell_type": "code", "collapsed": false, "input": [ "from datetime import datetime, timedelta\n", "\n", "start = datetime.utcnow() - timedelta(days=7)\n", "stop = datetime.utcnow()\n", "\n", "name_list = ['sea_water_potential_temperature', 'sea_water_temperature']\n", "\n", "bbox = [-76.4751, 38.3890, -71.7432, 42.9397]\n", "\n", "units = Unit('Kelvin')" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 5 }, { "cell_type": "code", "collapsed": false, "input": [ "model = 'MARACOOS/ESPRESSO'\n", "url = 'http://tds.marine.rutgers.edu/thredds/dodsC/roms/espresso/2009_da/his'\n", "\n", "with timeit():\n", " cube = get_cube(url, name_list=name_list, bbox=bbox,\n", " time=start, units=units)\n", " plot_surface(cube, model)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'h' referenced by data variable u'v' via variable u's_rho': Dimensions (u'eta_rho', u'xi_rho') do not span (u'ocean_time', u's_rho', u'eta_v', u'xi_v')\n", " warnings.warn(msg)\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'zeta' referenced by data variable u'v' via variable u's_rho': Dimensions (u'ocean_time', u'eta_rho', u'xi_rho') do not span (u'ocean_time', u's_rho', u'eta_v', u'xi_v')\n", " warnings.warn(msg)\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'h' referenced by data variable u'u' via variable u's_rho': Dimensions (u'eta_rho', u'xi_rho') do not span (u'ocean_time', u's_rho', u'eta_u', u'xi_u')\n", " warnings.warn(msg)\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "Using iris `bbox_extract_2Dcoords`\n", "00:00:11\n" ] }, { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'zeta' referenced by data variable u'u' via variable u's_rho': Dimensions (u'ocean_time', u'eta_rho', u'xi_rho') do not span (u'ocean_time', u's_rho', u'eta_u', u'xi_u')\n", " warnings.warn(msg)\n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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PAEfWXrF9Is/utgTbBoWJYz3kf297lVobPqev2NYHd7c3OvdbbbWca0DX1j1z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\natzWTWvRPQ8VM3042S5ZJ3Dm1Op9Nu9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"text": [ "" ] } ], "prompt_number": 6 }, { "cell_type": "code", "collapsed": false, "input": [ "model = 'USGS/COAWST'\n", "url = 'http://geoport.whoi.edu/thredds/dodsC/coawst_4/use/fmrc/'\n", "url += 'coawst_4_use_best.ncd'\n", "\n", "with timeit():\n", " cube = get_cube(url, name_list=name_list, bbox=bbox,\n", " time=start, units=units)\n", " plot_surface(cube, model)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'h' referenced by data variable u'v' via variable u's_rho': Dimensions (u'eta_rho', u'xi_rho') do not span (u'time', u's_rho', u'eta_v', u'xi_v')\n", " warnings.warn(msg)\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'zeta' referenced by data variable u'v' via variable u's_rho': Dimensions (u'time', u'eta_rho', u'xi_rho') do not span (u'time', u's_rho', u'eta_v', u'xi_v')\n", " warnings.warn(msg)\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'h' referenced by data variable u'u' via variable u's_rho': Dimensions (u'eta_rho', u'xi_rho') do not span (u'time', u's_rho', u'eta_u', u'xi_u')\n", " warnings.warn(msg)\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/cf.py:1038: UserWarning: Ignoring formula terms variable u'zeta' referenced by data variable u'u' via variable u's_rho': Dimensions (u'time', u'eta_rho', u'xi_rho') do not span (u'time', u's_rho', u'eta_u', u'xi_u')\n", " warnings.warn(msg)\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1291: UserWarning: Gracefully filling 'time' dimension coordinate masked points\n", " warnings.warn(msg.format(str(cf_coord_var.cf_name)))\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "Using iris `bbox_extract_2Dcoords`\n", "00:00:44\n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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sespfj7MSu96LHtMFso14u3yKs+oGcz/GRwadx3DwG/NlrzVSs7NJtxncTYDT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\nuNV8356Z1EZ23oOqVk6Kf2F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"text": [ "" ] } ], "prompt_number": 7 }, { "cell_type": "code", "collapsed": false, "input": [ "model = 'HYCOM'\n", "url = 'http://ecowatch.ncddc.noaa.gov/thredds/dodsC/hycom/hycom_reg1_agg/'\n", "url += 'HYCOM_Region_1_Aggregation_best.ncd'\n", "\n", "with timeit():\n", " cube = get_cube(url, name_list=name_list, bbox=bbox,\n", " time=start, units=units)\n", " plot_surface(cube, model)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'salinity' invalid units 'psu'\n", " warnings.warn(msg.format(msg_name, msg_units))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/coords.py:775: UserWarning: Coordinate u'longitude' is not bounded, guessing contiguous bounds.\n", " 'contiguous bounds.'.format(self.name()))\n" ] }, { "output_type": "stream", "stream": "stdout", "text": [ "Using iris `cube.intersection`\n", "00:00:08\n" ] }, { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/coords.py:775: UserWarning: Coordinate u'latitude' is not bounded, guessing contiguous bounds.\n", " 'contiguous bounds.'.format(self.name()))\n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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"text": [ "" ] } ], "prompt_number": 8 }, { "cell_type": "code", "collapsed": false, "input": [ "model = 'NYHOP'\n", "url = 'http://colossus.dl.stevens-tech.edu/thredds/dodsC/fmrc/NYBight/'\n", "url += 'NYHOPS_Forecast_Collection_for_the_New_York_Bight_best.ncd'\n", "\n", "with timeit():\n", " cube = get_cube(url, name_list=name_list, bbox=bbox,\n", " time=start, units=units)\n", " plot_surface(cube, model)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stdout", "text": [ "Using iris `bbox_extract_2Dcoords`\n", "00:01:23\n" ] }, { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/coords.py:775: UserWarning: Coordinate u'Y-coordinate in Cartesian system' is not bounded, guessing contiguous bounds.\n", " 'contiguous bounds.'.format(self.name()))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/coords.py:775: UserWarning: Coordinate u'X-coordinate in Cartesian system' is not bounded, guessing contiguous bounds.\n", " 'contiguous bounds.'.format(self.name()))\n" ] }, { "metadata": {}, "output_type": "display_data", "png": 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rJ8ot3xKe+nWwaaVFuDBncHsO+JCk9fLnoc/95SLzpnoN4uYvuaVYxo30+ZjR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\ngu/kA43WzYl4CvBWQ8Y133RGsc4I1ss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"text": [ "" ] } ], "prompt_number": 9 }, { "cell_type": "code", "collapsed": false, "input": [ "model = 'RUTGERS/NWA'\n", "url = 'http://oceanus.esm.rutgers.edu:8090/thredds/dodsC/ROMS/NWA/Run03/Output'\n", "\n", "with timeit():\n", " cube = get_cube(url, name_list=name_list, bbox=bbox,\n", " time=start, units=units)\n", " plot_surface(cube, model)" ], "language": "python", "metadata": {}, "outputs": [ { "output_type": "stream", "stream": "stderr", "text": [ "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'TIC' invalid units 'millimole_carbon meter-3'\n", " warnings.warn(msg.format(msg_name, msg_units))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'SiOH' invalid units 'millimole_silica meter-3'\n", " warnings.warn(msg.format(msg_name, msg_units))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'NO3' invalid units 'millimole_N03 meter-3'\n", " warnings.warn(msg.format(msg_name, msg_units))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'NH4' invalid units 'millimole_NH4 meter-3'\n", " warnings.warn(msg.format(msg_name, msg_units))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'PO4' invalid units 'millimole_PO4 meter-3'\n", " warnings.warn(msg.format(msg_name, msg_units))\n", "/home/filipe/miniconda/envs/ioos/lib/python2.7/site-packages/iris/fileformats/_pyke_rules/compiled_krb/fc_rules_cf_fc.py:1196: UserWarning: Ignoring netCDF variable 'oxyg' invalid units 'millimole_O2 meter-3'\n", " warnings.warn(msg.format(msg_name, msg_units))\n" ] }, { "ename": "ValueError", "evalue": "Cube does not contain ['sea_water_potential_temperature', 'sea_water_temperature']", "output_type": "pyerr", "traceback": [ "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mValueError\u001b[0m Traceback (most recent call last)", "\u001b[1;32m\u001b[0m in \u001b[0;36m\u001b[1;34m()\u001b[0m\n\u001b[0;32m 4\u001b[0m \u001b[1;32mwith\u001b[0m \u001b[0mtimeit\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 5\u001b[0m cube = get_cube(url, name_list=name_list, bbox=bbox,\n\u001b[1;32m----> 6\u001b[1;33m time=start, units=units)\n\u001b[0m\u001b[0;32m 7\u001b[0m \u001b[0mplot_surface\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mcube\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mmodel\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n", "\u001b[1;32m\u001b[0m in \u001b[0;36mget_cube\u001b[1;34m(url, name_list, bbox, time, units)\u001b[0m\n\u001b[0;32m 98\u001b[0m \u001b[0mcubes\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mCubeList\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m[\u001b[0m\u001b[0mcube\u001b[0m \u001b[1;32mfor\u001b[0m \u001b[0mcube\u001b[0m \u001b[1;32min\u001b[0m \u001b[0mcubes\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0min_list\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mcube\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m]\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 99\u001b[0m \u001b[1;32mif\u001b[0m \u001b[1;32mnot\u001b[0m \u001b[0mcubes\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 100\u001b[1;33m \u001b[1;32mraise\u001b[0m \u001b[0mValueError\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m'Cube does not contain {!r}'\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mformat\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mname_list\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 101\u001b[0m \u001b[1;32melse\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 102\u001b[0m \u001b[0mcube\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mcubes\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mmerge_cube\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n", "\u001b[1;31mValueError\u001b[0m: Cube does not contain ['sea_water_potential_temperature', 'sea_water_temperature']" ] } ], "prompt_number": 10 } ], "metadata": {} } ] }