{ "cells": [ { "cell_type": "markdown", "id": "c3b1eae9-8435-444d-85f4-ae8b34ec3c5c", "metadata": { "editable": true, "slideshow": { "slide_type": "" }, "tags": [] }, "source": [ "# Lagrangian particle tracking with ACCESS-OM2-01. " ] }, { "cell_type": "markdown", "id": "cc8545e6-d1b4-4e83-8a22-8959d9b9cee1", "metadata": {}, "source": [ "Lagrangian particle tracking is widely used in a range of physical and biological oceanography applications. This [review paper](https://www.sciencedirect.com/science/article/pii/S1463500317301853) on Lagrangian fundamentals covers many of the basics and provides an overview of the different particle tracking software programs available to the oceanography community. In this notebook we'll use [Parcels](https://github.com/OceanParcels/parcels) which has the advantage of a large user community and an active development team. The [Parcels website](https://oceanparcels.org) is well documented and has some great general tutorials to get you started. In this tutorial, we'll focus on how to get a simple particle tracking experiment running with output from the ACCESS-OM2-01 model. \n", "\n", "**Requirements:** `conda/analysis3-23.07` (or later) " ] }, { "cell_type": "markdown", "id": "3eee1140-109f-4496-9117-5050ed9ac47d", "metadata": {}, "source": [ "Firstly, load in the required modules. " ] }, { "cell_type": "code", "execution_count": 1, "id": "47e39542-2b92-4448-b063-d4a36e92e1a0", "metadata": { "execution": { "iopub.status.idle": "2023-11-05T23:29:44.536130Z", "shell.execute_reply": "2023-11-05T23:29:44.534840Z", "shell.execute_reply.started": "2023-11-05T23:29:36.636221Z" } }, "outputs": [], "source": [ "import numpy as np\n", "import xarray as xr\n", "import matplotlib as mpl\n", "import matplotlib.pyplot as plt\n", "import cosima_cookbook as cc\n", "\n", "from glob import glob\n", "from datetime import timedelta\n", "from dask.distributed import Client\n", "from parcels import FieldSet, ParticleSet, Variable, JITParticle, ScipyParticle, AdvectionRK4, AdvectionRK4_3D, __version__ " ] }, { "cell_type": "code", "execution_count": 2, "id": "feb6677d-0ec9-4477-b1da-81cdcbdb390d", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:29:44.540773Z", "iopub.status.busy": "2023-11-05T23:29:44.539155Z", "iopub.status.idle": "2023-11-05T23:29:44.546489Z", "shell.execute_reply": "2023-11-05T23:29:44.545526Z", "shell.execute_reply.started": "2023-11-05T23:29:44.540723Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "parcels 3.0.0\n" ] } ], "source": [ "print('parcels', __version__)" ] }, { "cell_type": "markdown", "id": "0f177acb-e86b-4a5e-9a2d-21e61c59e354", "metadata": {}, "source": [ "It's often a good idea to start a cluster with multiple cores for you to work with. " ] }, { "cell_type": "code", "execution_count": 3, "id": "54a8b5c1-f93b-4189-91f1-7a079c52aa9a", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:29:44.551194Z", "iopub.status.busy": "2023-11-05T23:29:44.550616Z", "iopub.status.idle": "2023-11-05T23:29:48.792800Z", "shell.execute_reply": "2023-11-05T23:29:48.791872Z", "shell.execute_reply.started": "2023-11-05T23:29:44.551159Z" } }, "outputs": [ { "data": { "text/html": [ "
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" ], "text/plain": [ "" ] }, "execution_count": 3, "metadata": {}, "output_type": "execute_result" } ], "source": [ "client = Client(n_workers=4)\n", "client" ] }, { "cell_type": "markdown", "id": "746d2753-b3d2-4692-bc77-0abe2ede22f3", "metadata": {}, "source": [ "**Define the velocity fields and any other model data we want Parcels to read**" ] }, { "cell_type": "markdown", "id": "5e43889b-59d7-486f-baf8-478c3174f31d", "metadata": {}, "source": [ "We're now going to run some simple offline Lagrangian particle tracking experiments. This means we need to read in some velocity fields that have been output from an ocean model and feed these to Parcels. Generally speaking, you want to run Lagrangian particle tracking experiments with the highest temporal resolution available. We have several periods of daily output from ACCESS-OM2-01 available on Gadi. These are listed below.\n", "\n", "- 21 years of daily `u,v,wt` from the **RYF** simulation corresponding to model years 50-71. This is stored in folders `output146-output279` here: `/g/data/ik11/outputs/access-om2-01/01deg_jra55v13_ryf9091/`\n", "- 31 years of daily `u,v,wt` from cycle 1 of the **IAF** simulation from 1987 to 2018. This is stored in folders `output116 - output243` here: `/g/data/cj50/access-om2/raw-output/access-om2-01/01deg_jra55v140_iaf`\n", "\n", "We'll use the first year of the daily RYF data for this experiment. We'll also start with a simple 2D advection example, and then run a 3D particle advection experiment with temperature and salinity. " ] }, { "cell_type": "code", "execution_count": 4, "id": "aad1a242-99c0-4e5c-9cd2-6da0038b0d19", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:29:48.794855Z", "iopub.status.busy": "2023-11-05T23:29:48.794104Z", "iopub.status.idle": "2023-11-05T23:29:48.851307Z", "shell.execute_reply": "2023-11-05T23:29:48.850309Z", "shell.execute_reply.started": "2023-11-05T23:29:48.794819Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "WARNING: Output is being saved in this directory: /scratch/tm70/as2285/particle_tracking \n", "Change to any directory you would like.\n" ] }, { "data": { "text/plain": [ "'/scratch/tm70/as2285/particle_tracking'" ] }, "execution_count": 4, "metadata": {}, "output_type": "execute_result" } ], "source": [ "dir = ! echo /scratch/$PROJECT/$USER/particle_tracking\n", "\n", "print(f\"WARNING: Output is being saved in this directory: {dir[0]} \\nChange to any directory you would like.\")\n", "output_directory = dir[0]\n", "output_directory" ] }, { "cell_type": "markdown", "id": "8039d070-4fe1-422a-9615-e0d10f1b3260", "metadata": {}, "source": [ "## 2D Advection" ] }, { "cell_type": "code", "execution_count": 5, "id": "91d78d87-c81e-4393-95e1-b514afd03b1b", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:29:48.853535Z", "iopub.status.busy": "2023-11-05T23:29:48.852694Z", "iopub.status.idle": "2023-11-05T23:32:28.922651Z", "shell.execute_reply": "2023-11-05T23:32:28.921705Z", "shell.execute_reply.started": "2023-11-05T23:29:48.853493Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "CPU times: user 2min 29s, sys: 11.7 s, total: 2min 41s\n", "Wall time: 2min 40s\n" ] } ], "source": [ "%%time\n", "# First, we need to define ACCESS-OM2-01 (MOM5 ocean) NetCDF files.\n", "data_path = '/g/data/ik11/outputs/access-om2-01/01deg_jra55v13_ryf9091/'\n", "\n", "# At a minimum, Parcels needs U and V files (2D advection). \n", "ufiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_u_*.nc'))\n", "vfiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_v_*.nc'))\n", "\n", "# We then need to read in a file that contains the grid coordinates which are saved in the `ocean.nc` file.\n", "# However our daily velocity data is only saved up to -32.59S and does not cover the whole globe. \n", "# We need to select out only the Southern Ocean region and resave the grid coordinates to file. \n", "orig_mesh_mask = '/g/data/ik11/outputs/access-om2-01/01deg_jra55v13_ryf9091/output196/ocean/ocean.nc'\n", "ds = xr.open_dataset(orig_mesh_mask).sel(yu_ocean=slice(None, -32.52)).sel(yt_ocean=slice(None, -32.55))\n", "variables = ['v', 'wt']\n", "ds = ds[variables]\n", "\n", "mesh_mask = output_directory+'ocean.nc'\n", "ds.to_netcdf(mesh_mask)" ] }, { "cell_type": "code", "execution_count": 6, "id": "70d9ab7a-133c-488d-81fe-0dcf96790996", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:28.925292Z", "iopub.status.busy": "2023-11-05T23:32:28.925109Z", "iopub.status.idle": "2023-11-05T23:32:29.399800Z", "shell.execute_reply": "2023-11-05T23:32:29.399049Z", "shell.execute_reply.started": "2023-11-05T23:32:28.925276Z" } }, "outputs": [], "source": [ "# We now define a dictionary that tells Parcels where the U,V data is, and where to \n", "# find the coordinates. \n", "filenames = {\n", " 'U': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': ufiles},\n", " 'V': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': vfiles},\n", "}\n", "\n", "# Now define a dictionary that specifies the `U, V` variable names as given in the netcdf files \n", "variables = { 'U': 'u', 'V': 'v'}\n", "\n", "# Define a dictionary to specify the U,V dimentions. \n", "# See the description under the 3D advection section for why we specify sw_ocean as the depth here. \n", "# For further reading, also see this tutorial on the Ocean Parcels website: https://nbviewer.org/github/OceanParcels/parcels/blob/master/parcels/examples/documentation_indexing.ipynb\n", "dimensions = {\n", " 'U': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'},\n", " 'V': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'}\n", "}\n", "\n", "indices = {'sw_ocean': range(0, 3)}\n", "\n", "# Define the chunksizes for each variable. This will help Parcels read in the FieldSet. \n", "cs = {\n", " \"U\": {\"lon\": (\"xu_ocean\", 400), \"lat\": (\"yu_ocean\", 300), \"depth\": (\"st_ocean\", 7), \"time\": (\"time\", 1)}, \n", " \"V\": {\"lon\": (\"xu_ocean\", 400), \"lat\": (\"yu_ocean\", 300), \"depth\": (\"st_ocean\", 7), \"time\": (\"time\", 1)},\n", "}\n", "\n", "# Finally, we load the fieldset using the Parcels `FieldSet.from_mom5` function. \n", "fieldset = FieldSet.from_mom5(filenames, variables, dimensions, indices,\n", " mesh = 'spherical', \n", " chunksize = cs, \n", " tracer_interp_method = 'bgrid_tracer')" ] }, { "cell_type": "markdown", "id": "873c8e18-6aac-40f0-b085-c44cca78476c", "metadata": {}, "source": [ "We need to tell Parcels that this fieldset is periodic in the zonal (east-west) direction. This is because, if the particle is close to the edge of the fieldset (but still in it), the advection scheme will need to interpolate velocities that may lay outside the fieldset domain. With the halo, we make sure the advection kernel can access these values." ] }, { "cell_type": "code", "execution_count": 7, "id": "961b6103-9a0d-4971-934d-cf4b87ce6dc8", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:29.400680Z", "iopub.status.busy": "2023-11-05T23:32:29.400502Z", "iopub.status.idle": "2023-11-05T23:32:29.405993Z", "shell.execute_reply": "2023-11-05T23:32:29.405330Z", "shell.execute_reply.started": "2023-11-05T23:32:29.400665Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "WARNING: The zonal halo is located at the east and west of current grid, with a dx = lon[1]-lon[0] between the last nodes of the original grid and the first ones of the halo. In your grid, lon[1]-lon[0] != lon[-1]-lon[-2]. Is the halo computed as you expect?\n" ] } ], "source": [ "fieldset.add_constant('halo_west', fieldset.U.grid.lon[0])\n", "fieldset.add_constant('halo_east', fieldset.U.grid.lon[-1])\n", "fieldset.add_periodic_halo(zonal=True)" ] }, { "cell_type": "markdown", "id": "6921ccac-78c7-4841-98ac-ff9c91fd8bcb", "metadata": {}, "source": [ "We now need a custom kernel that can move the particle from one side of the domain to the other." ] }, { "cell_type": "code", "execution_count": 8, "id": "009362cc-7a04-48bc-bb72-d01379c07808", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:29.406619Z", "iopub.status.busy": "2023-11-05T23:32:29.406472Z", "iopub.status.idle": "2023-11-05T23:32:29.414645Z", "shell.execute_reply": "2023-11-05T23:32:29.413989Z", "shell.execute_reply.started": "2023-11-05T23:32:29.406605Z" } }, "outputs": [], "source": [ "def periodicBC(particle, fieldset, time):\n", " if particle.lon < fieldset.halo_west:\n", " particle_dlon += fieldset.halo_east - fieldset.halo_west\n", " elif particle.lon > fieldset.halo_east:\n", " particle_dlon -= fieldset.halo_east - fieldset.halo_west" ] }, { "cell_type": "markdown", "id": "aae5e924-5a46-429b-a7fa-742ad577ace3", "metadata": {}, "source": [ "We'll also add a recovery kernel to delete particles if they encounter the `ErrorOutOfBounds` signal from Parcels. " ] }, { "cell_type": "code", "execution_count": 9, "id": "2395c701-5be4-4e72-af42-6bb04d0a0ff0", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:29.415416Z", "iopub.status.busy": "2023-11-05T23:32:29.415238Z", "iopub.status.idle": "2023-11-05T23:32:29.423029Z", "shell.execute_reply": "2023-11-05T23:32:29.422288Z", "shell.execute_reply.started": "2023-11-05T23:32:29.415400Z" } }, "outputs": [], "source": [ "def checkOutOfBounds(particle, fieldset, time):\n", " if particle.state == StatusCode.ErrorOutOfBounds:\n", " particle.delete()" ] }, { "cell_type": "markdown", "id": "98b3edaf-6ada-4c2c-a5c5-cf7e654cf1c8", "metadata": {}, "source": [ "Now we can create the **Particle Set**. This contains the particle starting locations and type of particle. We'll read in the `ht` field from the model and initialise particles in a small section across the ACC." ] }, { "cell_type": "code", "execution_count": 10, "id": "5c4b39c8-bde2-4069-b62c-44e45450a2a0", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:29.424102Z", "iopub.status.busy": "2023-11-05T23:32:29.423864Z", "iopub.status.idle": "2023-11-05T23:32:40.737714Z", "shell.execute_reply": "2023-11-05T23:32:40.736859Z", "shell.execute_reply.started": "2023-11-05T23:32:29.424080Z" } }, "outputs": [], "source": [ "session = cc.database.create_session()\n", "experiment = '01deg_jra55v13_ryf9091'\n", "ht = cc.querying.getvar(experiment, 'ht', session, n=1).load()" ] }, { "cell_type": "code", "execution_count": 11, "id": "cbd2c8d5-5352-408b-aeeb-66828a06be37", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:40.738605Z", "iopub.status.busy": "2023-11-05T23:32:40.738429Z", "iopub.status.idle": "2023-11-05T23:32:40.868541Z", "shell.execute_reply": 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time=0.000000)\n", "P[533](lon=-100.150002, lat=-60.096798, depth=1.000000, time=0.000000)\n", "P[534](lon=-100.050003, lat=-60.096798, depth=1.000000, time=0.000000)\n", "P[535](lon=-100.449997, lat=-60.046909, depth=1.000000, time=0.000000)\n", "P[536](lon=-100.349998, lat=-60.046909, depth=1.000000, time=0.000000)\n", "P[537](lon=-100.250000, lat=-60.046909, depth=1.000000, time=0.000000)\n", "P[538](lon=-100.150002, lat=-60.046909, depth=1.000000, time=0.000000)\n", "P[539](lon=-100.050003, lat=-60.046909, depth=1.000000, time=0.000000)" ] }, "execution_count": 11, "metadata": {}, "output_type": "execute_result" } ], "source": [ "x1, x2 = -100.5, -100\n", "y1, y2 = -60, -65\n", "\n", "lons = ht.where((ht.yt_oceany2)&(ht.xt_oceanx1), \n", " drop=True).geolon_t.values.ravel()\n", "lats = ht.where((ht.yt_oceany2)&(ht.xt_oceanx1), \n", " drop=True).geolat_t.values.ravel()\n", "\n", "depths = np.full(len(lats), 1.)\n", "\n", "pset = ParticleSet.from_list(fieldset=fieldset, # the fields on which the particles are advected\n", " pclass=JITParticle, # the type of particles (JITParticle or ScipyParticle)\n", " lon=lons, # a vector of release longitudes \n", " lat=lats, # a vector of release latitudes\n", " depth=depths, # a vector of release depths \n", " time=0.) # set time to start start time of daily velocity fields\n", "pset" ] }, { "cell_type": "markdown", "id": "bf5f0753-9e65-4e63-adc1-1de4251a3651", "metadata": {}, "source": [ "Plot these particles. " ] }, { "cell_type": "code", "execution_count": 12, "id": "406b5d91-dbdc-47f0-9af2-2515e0b9fe93", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:40.869467Z", "iopub.status.busy": "2023-11-05T23:32:40.869301Z", "iopub.status.idle": "2023-11-05T23:32:46.257521Z", "shell.execute_reply": "2023-11-05T23:32:46.256793Z", "shell.execute_reply.started": "2023-11-05T23:32:40.869453Z" } }, "outputs": [ { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "fig = plt.figure(figsize=(12, 4))\n", "\n", "ht.plot(cmap='Blues')\n", "plt.scatter(lons, lats, s=5, c='r')\n", "plt.ylim([-80, -35]);" ] }, { "cell_type": "markdown", "id": "004a172f-588b-4d12-af88-d802c95e3df3", "metadata": {}, "source": [ "We can now advect these particles with Parcels. We'll do this using 4th order Runge-Kutta in 2D. In this example, we'll integrate the particle positions for only 50 days to keep it simple. This may take a few minutes depending on the resources you're using. Feel free to change the total length of the run as you like. " ] }, { "cell_type": "markdown", "id": "1475356a-996e-4ef7-8cdc-be3597190dec", "metadata": {}, "source": [ "**Note**: This cell might take 3-4 minutes." ] }, { "cell_type": "code", "execution_count": 13, "id": "de0e8d0f-79bf-482a-92ea-cbf4d6afb459", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:32:46.258493Z", "iopub.status.busy": "2023-11-05T23:32:46.258323Z", "iopub.status.idle": "2023-11-05T23:34:03.395319Z", "shell.execute_reply": "2023-11-05T23:34:03.394461Z", "shell.execute_reply.started": "2023-11-05T23:32:46.258479Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "INFO: Output files are stored in /scratch/tm70/as2285/particle_trackingTestParticles_2D.zarr.\n", "100%|██████████| 4320000.0/4320000.0 [01:14<00:00, 58373.79it/s]\n" ] } ], "source": [ "# Set your output location: \n", "output_filename = 'TestParticles_2D.zarr'\n", "\n", "# the file name and the time step of the outputs \n", "# (particle locations will be saved every 5 days in this example)\n", "output_file = pset.ParticleFile(\n", " name=output_directory + output_filename, \n", " outputdt=timedelta(days=2)\n", ") \n", "\n", "pset.execute(\n", " [\n", " AdvectionRK4, # the 2D advection kernel (which defines how particles move) at least one of these needs the pset.Kernel() surrounding it. \n", " periodicBC ,\n", " checkOutOfBounds \n", " ],\n", " runtime=timedelta(days=50), # the total length of the run\n", " dt=timedelta(hours=2), # the integration timestep of the kernels\n", " output_file=output_file, # the output file\n", ") " ] }, { "cell_type": "markdown", "id": "0324fe07-f63a-48ce-85c5-3033d7f8e70a", "metadata": {}, "source": [ "Open output file and plot the first 100 of these trajectories. " ] }, { "cell_type": "code", "execution_count": 14, "id": "fb59e678-1baa-43ea-baaa-0bc115fa2740", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:03.396421Z", "iopub.status.busy": "2023-11-05T23:34:03.396235Z", "iopub.status.idle": "2023-11-05T23:34:10.038920Z", "shell.execute_reply": "2023-11-05T23:34:10.038228Z", "shell.execute_reply.started": "2023-11-05T23:34:03.396405Z" }, "tags": [] }, "outputs": [ { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "ds = xr.open_zarr(output_directory + output_filename)\n", "\n", "fig = plt.figure(figsize=(12, 8))\n", "mpl.rcParams['axes.prop_cycle'] = mpl.cycler(color=[\"r\", \"pink\", \"violet\", \"firebrick\", \"orange\", \"orangered\"])\n", "\n", "ht.plot(cmap='Blues')\n", "\n", "plt.plot(ds.lon[:100, :].T, ds.lat[:100, :].T)\n", "plt.scatter(ds.lon[:100, :], ds.lat[:100, :], s=5, c='w')\n", "\n", "plt.ylim([-68, -60])\n", "plt.xlim([-108, -90]);" ] }, { "cell_type": "markdown", "id": "a1fc498f-86ba-4f4a-bf33-6a74bd3e1a69", "metadata": { "tags": [] }, "source": [ "## 3D Advection with temperature and salinity\n", "\n", "Now we'll run an example in 3D and also sample and save temperature and salinity fields. " ] }, { "cell_type": "code", "execution_count": 15, "id": "d33bcceb-0a23-439c-a373-432397cb0fbe", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:10.039728Z", "iopub.status.busy": "2023-11-05T23:34:10.039563Z", "iopub.status.idle": "2023-11-05T23:34:10.071707Z", "shell.execute_reply": "2023-11-05T23:34:10.070912Z", "shell.execute_reply.started": "2023-11-05T23:34:10.039714Z" } }, "outputs": [], "source": [ "# First, we need to define ACCESS-OM2-01 (MOM5 ocean) NetCDF files.\n", "data_path = '/g/data/ik11/outputs/access-om2-01/01deg_jra55v13_ryf9091/'\n", "\n", "# At a minimum, Parcels needs U and V files (2D advection), and W for 3D advection. \n", "ufiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_u_*.nc')) \n", "vfiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_v_*.nc')) \n", "wfiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_wt_*.nc'))\n", "\n", "# Optional\n", "# You can also feed Parcels temperature, salinity, and 2D fields such as MLD. \n", "# These should be at the same temporal resolution as the U, V and W fields. \n", "tfiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_temp_*.nc')) \n", "sfiles = sorted(glob(data_path+'output19*/ocean/ocean_daily_3d_salt_*.nc')) \n", "\n", "# Read in the grid coordinates\n", "# NOTE: If you haven't already created this file in the 2D advection example, then you need to \n", "# do so before moving on.\n", "mesh_mask = output_directory+'ocean.nc'" ] }, { "cell_type": "markdown", "id": "85ec4ab3-02c9-4738-a5db-b2341aeb954c", "metadata": {}, "source": [ "We now need to set up the Parcels `FieldSet`. For 3D advection we also need a vertical velocity field (`W`), and in this example we'll add temperature and salinity as well.\n", "\n", "**Note:** Initialising the `FieldSet` can take some time depending on the domain and number of files you're feeding to Parcels. In this example, it should be quick. " ] }, { "cell_type": "code", "execution_count": 16, "id": "1a1ad8a7-2ac4-4907-9341-61dc2e6f4f24", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:10.073107Z", "iopub.status.busy": "2023-11-05T23:34:10.072743Z", "iopub.status.idle": "2023-11-05T23:34:12.361574Z", "shell.execute_reply": "2023-11-05T23:34:12.360487Z", "shell.execute_reply.started": "2023-11-05T23:34:10.073082Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "CPU times: user 2.21 s, sys: 82.8 ms, total: 2.29 s\n", "Wall time: 2.28 s\n" ] } ], "source": [ "%%time\n", "# We now define a dictionary that tells Parcels where the U,V data is, and where to \n", "# find the coordinates. \n", "filenames = {'U': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': ufiles},\n", " 'V': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': vfiles},\n", " 'W': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': wfiles},\n", " 'T': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': tfiles},\n", " 'S': {'lon': mesh_mask, 'lat': mesh_mask, 'depth': mesh_mask, 'data': sfiles},\n", " }\n", "\n", "# Now define a dictionary that specifies the (`U,V,W` etc) variable names as given in the netcdf files \n", "variables = {'U': 'u',\n", " 'V': 'v',\n", " 'W': 'wt',\n", " 'T': 'temp',\n", " 'S': 'salt',\n", " }\n", "\n", "# Define a dictionary to specify the U,V, W etc dimentions. \n", "# All variables must have the same lat/lon/depth dimensions (even though the ACCESS-OM2-01 data doesn't). \n", "# When we developed the from_mom5() method, Parcels expected the dimensions on the \n", "# upper-right verticies of the grid cells. Hoewever, in ACCESS-OM2-01, the vertical \n", "# velocity is defined on the bottom face of the grid cell, not the top. Therefore\n", "# the from_mom5() method adds a layer to the top of the vertical velocity field such that wt = 0 @ 0m, \n", "# so that the vertical velocities are correctly defined at the top surface of the grid cells. \n", "dimensions = {'U': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'},\n", " 'V': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'},\n", " 'W': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'},\n", " 'T': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'},\n", " 'S': {'lon': 'xu_ocean', 'lat': 'yu_ocean', 'depth': 'sw_ocean', 'time': 'time'},\n", " }\n", "\n", "# Define the chunksizes for each variable. This will help Parcels read in the FieldSet. \n", "cs = {\"U\": {\"lon\": (\"xu_ocean\", 400), \"lat\": (\"yu_ocean\", 300), \"depth\": (\"st_ocean\", 7), \"time\": (\"time\", 1)}, \n", " \"V\": {\"lon\": (\"xu_ocean\", 400), \"lat\": (\"yu_ocean\", 300), \"depth\": (\"st_ocean\", 7), \"time\": (\"time\", 1)},\n", " \"W\": {\"lon\": (\"xt_ocean\", 400), \"lat\": (\"yt_ocean\", 300), \"depth\": (\"sw_ocean\", 7), \"time\": (\"time\", 1)},\n", " \"T\": {\"lon\": (\"xt_ocean\", 400), \"lat\": (\"yt_ocean\", 300), \"depth\": (\"st_ocean\", 7), \"time\": (\"time\", 1)},\n", " \"S\": {\"lon\": (\"xt_ocean\", 400), \"lat\": (\"yt_ocean\", 300), \"depth\": (\"st_ocean\", 7), \"time\": (\"time\", 1)},\n", " }\n", "\n", "# Finally, we load the fieldset using the Parcels `FieldSet.from_mom5` function. \n", "fieldset = FieldSet.from_mom5(filenames, variables, dimensions, #indices,\n", " mesh = 'spherical', \n", " chunksize=cs, \n", " tracer_interp_method = 'bgrid_tracer')\n", "\n", "# Finally, we load the fieldset using the Parcels `FieldSet.from_mom5` function. This may take some time.\n", "# This was adapted from the `from_b_grid_dataset` method to work with ACCESS-OM2-01. \n", "# Note that W is normally directed upward in MOM5 (the ocean component of ACCESS-OM2-01), \n", "# but Parcels requires W to be aligned with the positive z-direction (downward in MOM5). As such, \n", "# the W fields are multiplied by -1 in this method. \n", "fieldset = FieldSet.from_mom5(filenames, variables, dimensions,\n", " mesh = 'spherical', \n", " chunksize = cs, \n", " tracer_interp_method = 'bgrid_tracer')" ] }, { "cell_type": "markdown", "id": "927ec17b-9d21-4d95-86e7-f0fc09d8f182", "metadata": {}, "source": [ "As for the 2D advection case, we need to tell Parcels that this fieldset is periodic in the zonal (east-west) direction. This is because, if the particle is close to the edge of the fieldset (but still in it), the advection scheme will need to interpolate velocities that may lay outside the fieldset domain. With the halo, we make sure the advection kernel can access these values." ] }, { "cell_type": "code", "execution_count": 17, "id": "3b29b5d7-6a74-45ab-85a6-843e9231961e", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:12.362450Z", "iopub.status.busy": "2023-11-05T23:34:12.362285Z", "iopub.status.idle": "2023-11-05T23:34:12.366499Z", "shell.execute_reply": "2023-11-05T23:34:12.365852Z", "shell.execute_reply.started": "2023-11-05T23:34:12.362435Z" } }, "outputs": [], "source": [ "fieldset.add_constant('halo_west', fieldset.U.grid.lon[0])\n", "fieldset.add_constant('halo_east', fieldset.U.grid.lon[-1])\n", "fieldset.add_periodic_halo(zonal=True)" ] }, { "cell_type": "markdown", "id": "941724c5-721f-458e-a1b6-8dec2522d2c6", "metadata": {}, "source": [ "We now need to define a particle class that tells Parcels each particle has a temperature and salinity value associated with it. We also need to define a kernel to tell Parcels to sample the temperature and salinity fields at each integration timestep. " ] }, { "cell_type": "code", "execution_count": 18, "id": "296f6bde-0152-4832-bd38-52f0ac694210", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:12.367187Z", "iopub.status.busy": "2023-11-05T23:34:12.367041Z", "iopub.status.idle": "2023-11-05T23:34:12.376444Z", "shell.execute_reply": "2023-11-05T23:34:12.375776Z", "shell.execute_reply.started": "2023-11-05T23:34:12.367174Z" } }, "outputs": [], "source": [ "# Parcels will automatically save the latitude, longitude, and depth to file at a timestep that \n", "# you specify (see cells below). This kernel tells Parcels to also save the temperature and salinity fields\n", "# to file, along with the location data. \n", "class SampleParticle(JITParticle):\n", " thermo = Variable('thermo', dtype=np.float32, initial = 0.)\n", " psal = Variable('psal', dtype=np.float32, initial = 0.)\n", "\n", "# Kernel to sample temperature and salinity (if you have fed them into your FieldSet above).\n", "def SampleFields(particle, fieldset, time):\n", " particle.thermo = fieldset.T[time, particle.depth, particle.lat, particle.lon]\n", " particle.psal = fieldset.S[time, particle.depth, particle.lat, particle.lon]" ] }, { "cell_type": "markdown", "id": "8712d70e-ea5d-4283-9fe7-9ba37bbf54ad", "metadata": {}, "source": [ "Now we can create the **Particle Set**. Well use the same particle set as in the 2D example but this time we'll initialise particles at 10m depth. This time you can see that `thermo` and `psal` have been added to the Particle Set. " ] }, { "cell_type": "code", "execution_count": 19, "id": "6dcface2-dc2a-4055-b174-d12de289dfd4", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:12.377177Z", "iopub.status.busy": "2023-11-05T23:34:12.377014Z", "iopub.status.idle": "2023-11-05T23:34:13.399743Z", "shell.execute_reply": "2023-11-05T23:34:13.398608Z", "shell.execute_reply.started": "2023-11-05T23:34:12.377162Z" }, "scrolled": true, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "P[540](lon=-100.449997, lat=-64.973167, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[541](lon=-100.349998, lat=-64.973167, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[542](lon=-100.250000, lat=-64.973167, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[543](lon=-100.150002, lat=-64.973167, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[544](lon=-100.050003, lat=-64.973167, depth=10.000000, thermo=0.000000, 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"P[1067](lon=-100.250000, lat=-60.146614, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1068](lon=-100.150002, lat=-60.146614, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1069](lon=-100.050003, lat=-60.146614, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1070](lon=-100.449997, lat=-60.096798, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1071](lon=-100.349998, lat=-60.096798, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1072](lon=-100.250000, lat=-60.096798, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1073](lon=-100.150002, lat=-60.096798, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1074](lon=-100.050003, lat=-60.096798, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1075](lon=-100.449997, lat=-60.046909, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1076](lon=-100.349998, lat=-60.046909, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1077](lon=-100.250000, lat=-60.046909, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1078](lon=-100.150002, lat=-60.046909, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)\n", "P[1079](lon=-100.050003, lat=-60.046909, depth=10.000000, thermo=0.000000, psal=0.000000, time=0.000000)" ] }, "execution_count": 19, "metadata": {}, "output_type": "execute_result" } ], "source": [ "session = cc.database.create_session()\n", "experiment = '01deg_jra55v13_ryf9091'\n", "ht = cc.querying.getvar(experiment, 'ht', session, n=1).load()\n", "\n", "x1, x2 = -100.5, -100\n", "y1, y2 = -60, -65\n", "\n", "lons = ht.where((ht.yt_oceany2)&(ht.xt_oceanx1), \n", " drop=True).geolon_t.values.ravel()\n", "\n", "lats = ht.where((ht.yt_oceany2)&(ht.xt_oceanx1), \n", " drop=True).geolat_t.values.ravel()\n", "\n", "depths = np.full(len(lats), 10.)\n", "\n", "pset = ParticleSet.from_list(fieldset=fieldset, # the fields on which the particles are advected\n", " pclass=SampleParticle, # the type of particles we specified above with temp and salt added\n", " lon=lons, # a vector of release longitudes \n", " lat=lats, # a vector of release latitudes\n", " depth=depths, # a vector of release depths \n", " time=0.) # set time to start start time of daily velocity fields\n", "pset" ] }, { "cell_type": "markdown", "id": "8428dcba-02fa-40b9-9ad9-32d0b687590a", "metadata": {}, "source": [ "For the 3D advection we will integrate particles forward-in-time for 20 days to keep this example simple, but feel free to integrate longer! If you want really long integrations you should consider [submitting the analysis as a job on Gadi](https://cosima-recipes.readthedocs.io/en/latest/tutorials/Submitting_analysis_jobs_to_gadi.html#gallery-tutorials-submitting-analysis-jobs-to-gadi-ipynb) or to some other HPC system of your liking.\n", "\n", "**Note 1**: Generally you want to use a small integration timestep (`dt`). This is because, the larger the `dt`, the further particles will move in a single timestep and the more likely you are to get particles crossing ocean-land boundaries and 'beaching'. For example, in some Lagrangian applications it is common to use `dt` <= 15 minutes. However the choice of `dt` has to be balanced against the computational resources and the available simulation time. In this example, we'll use a `dt` of 2 hours to speed up the integration. If you want to integrate particles backwards-in-time, simple feed Parcels a negative `dt` value. \n", "\n", "**Note 2**: This 3D example may take some time (~5-10 minutes) depending on the resources you're using." ] }, { "cell_type": "code", "execution_count": 20, "id": "bb09a754-4383-4be5-b2f0-a489533e604c", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:34:13.402569Z", "iopub.status.busy": "2023-11-05T23:34:13.401569Z", "iopub.status.idle": "2023-11-05T23:35:32.724750Z", "shell.execute_reply": "2023-11-05T23:35:32.724003Z", "shell.execute_reply.started": "2023-11-05T23:34:13.402526Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "INFO: Output files are stored in /scratch/tm70/as2285/particle_trackingTestParticles_3D.zarr.\n", "100%|██████████| 1728000.0/1728000.0 [01:16<00:00, 22515.87it/s]\n" ] } ], "source": [ "# Set your output location: \n", "output_filename = 'TestParticles_3D.zarr'\n", "\n", "# the file name and the time step of the outputs \n", "# (particle locations will be saved every 5 days in this example)\n", "output_file = pset.ParticleFile(name=output_directory + output_filename, \n", " outputdt=timedelta(days=2)) \n", "\n", "pset.execute(\n", " [\n", " AdvectionRK4_3D, # the 3D advection kernel (which defines how particles move)\n", " periodicBC,\n", " SampleFields,\n", " checkOutOfBounds\n", " ],\n", " runtime=timedelta(days=20), # the total length of the run\n", " dt=timedelta(hours=2), # the integration timestep of the kernel\n", " output_file=output_file, # the output file\n", ") \n" ] }, { "cell_type": "markdown", "id": "112dbdd3-491c-4dca-8aed-6569f6f02776", "metadata": {}, "source": [ "Open output file and scatter plot the first 100 of these trajectories, coloured by depth. " ] }, { "cell_type": "code", "execution_count": 21, "id": "8e7266b8-16bd-4489-a4e6-f81bb489fd95", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:35:32.727116Z", "iopub.status.busy": "2023-11-05T23:35:32.726874Z", "iopub.status.idle": "2023-11-05T23:35:38.790608Z", "shell.execute_reply": "2023-11-05T23:35:38.789930Z", "shell.execute_reply.started": "2023-11-05T23:35:32.727101Z" } }, "outputs": [ { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "ds = xr.open_zarr(output_directory + output_filename)\n", "\n", "fig = plt.figure(figsize=(12, 8))\n", "\n", "ht.plot(cmap='Blues')\n", "\n", "plt.plot(ds.lon[:100, :].T, ds.lat[:100, :].T, c='w', zorder=2)\n", "\n", "cb = plt.scatter(ds.lon[:100, 1:], ds.lat[:100, 1:], c=ds.z[:100, 1:],\n", " s=20, vmin=3, vmax=18, cmap='Reds', zorder=3)\n", "\n", "plt.legend(*cb.legend_elements(num=10), loc=\"upper right\", title=\"Depth (m)\")\n", "\n", "plt.ylim([-68, -62])\n", "plt.xlim([-108, -95]);" ] }, { "cell_type": "markdown", "id": "faf00010-8b63-4fb2-ab78-fba8a855d946", "metadata": {}, "source": [ "For reference, this is how the output file is organised. " ] }, { "cell_type": "code", "execution_count": 22, "id": "433e55d9-d1fd-4771-8276-86eceb16d9eb", "metadata": { "editable": true, "execution": { "iopub.execute_input": "2023-11-05T23:35:38.791401Z", "iopub.status.busy": "2023-11-05T23:35:38.791231Z", "iopub.status.idle": "2023-11-05T23:35:38.839590Z", "shell.execute_reply": "2023-11-05T23:35:38.838911Z", "shell.execute_reply.started": "2023-11-05T23:35:38.791386Z" }, "slideshow": { "slide_type": "" }, "tags": [] }, "outputs": [ { "data": { "text/html": [ "
\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "\n", "
<xarray.Dataset>\n",
       "Dimensions:     (trajectory: 540, obs: 10)\n",
       "Coordinates:\n",
       "  * obs         (obs) int32 0 1 2 3 4 5 6 7 8 9\n",
       "  * trajectory  (trajectory) int64 540 541 542 543 544 ... 1076 1077 1078 1079\n",
       "Data variables:\n",
       "    lat         (trajectory, obs) float32 dask.array<chunksize=(540, 1), meta=np.ndarray>\n",
       "    lon         (trajectory, obs) float32 dask.array<chunksize=(540, 1), meta=np.ndarray>\n",
       "    psal        (trajectory, obs) float32 dask.array<chunksize=(540, 1), meta=np.ndarray>\n",
       "    thermo      (trajectory, obs) float32 dask.array<chunksize=(540, 1), meta=np.ndarray>\n",
       "    time        (trajectory, obs) object dask.array<chunksize=(540, 1), meta=np.ndarray>\n",
       "    z           (trajectory, obs) float32 dask.array<chunksize=(540, 1), meta=np.ndarray>\n",
       "Attributes:\n",
       "    Conventions:            CF-1.6/CF-1.7\n",
       "    feature_type:           trajectory\n",
       "    ncei_template_version:  NCEI_NetCDF_Trajectory_Template_v2.0\n",
       "    parcels_kernels:        SampleParticleAdvectionRK4_3DperiodicBCSampleFiel...\n",
       "    parcels_mesh:           spherical\n",
       "    parcels_version:        3.0.0
" ], "text/plain": [ "\n", "Dimensions: (trajectory: 540, obs: 10)\n", "Coordinates:\n", " * obs (obs) int32 0 1 2 3 4 5 6 7 8 9\n", " * trajectory (trajectory) int64 540 541 542 543 544 ... 1076 1077 1078 1079\n", "Data variables:\n", " lat (trajectory, obs) float32 dask.array\n", " lon (trajectory, obs) float32 dask.array\n", " psal (trajectory, obs) float32 dask.array\n", " thermo (trajectory, obs) float32 dask.array\n", " time (trajectory, obs) object dask.array\n", " z (trajectory, obs) float32 dask.array\n", "Attributes:\n", " Conventions: CF-1.6/CF-1.7\n", " feature_type: trajectory\n", " ncei_template_version: NCEI_NetCDF_Trajectory_Template_v2.0\n", " parcels_kernels: SampleParticleAdvectionRK4_3DperiodicBCSampleFiel...\n", " parcels_mesh: spherical\n", " parcels_version: 3.0.0" ] }, "execution_count": 22, "metadata": {}, "output_type": "execute_result" } ], "source": [ "ds" ] }, { "cell_type": "code", "execution_count": 23, "id": "97775647-fa0d-49ff-aa11-92531c147fe4", "metadata": { "execution": { "iopub.execute_input": "2023-11-05T23:35:38.840558Z", "iopub.status.busy": "2023-11-05T23:35:38.840374Z", "iopub.status.idle": "2023-11-05T23:35:39.662637Z", "shell.execute_reply": "2023-11-05T23:35:39.661534Z", "shell.execute_reply.started": "2023-11-05T23:35:38.840542Z" } }, "outputs": [], "source": [ "client.close()" ] } ], "metadata": { "kernelspec": { "display_name": "Python [conda env:analysis3-23.07]", "language": "python", "name": "conda-env-analysis3-23.07-py" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.10.13" } }, "nbformat": 4, "nbformat_minor": 5 }