.vscode | ||
aimodel | ||
rainfallwrangler | ||
.gitignore | ||
LICENSE.md | ||
README.md | ||
research-rainfallradar overview.drawio | ||
research-rainfallradar overview.png |
Rainfall Radar
A model to predict water depth data from rainfall radar information.
This is the 3rd major version of this model.
Unfortunately using this model is rather complicated and involves a large number of steps. There is no way around this. This README (will) explain it the best I can though.
Warning
This README is currently under construction!
Paper
The research in this repository has been published in a conference paper(!)
- Title: Towards AI for approximating hydrodynamic simulations as a 2D segmentation task
- Conference: Northern Lights Deep Learning Conference 2024
- DOI: coming soon, but in advance you can view what should be the final paper here: https://openreview.net/pdf?id=TpOsdB4gwR
Abstract:
Traditional predictive simulations and remote sensing techniques for forecasting floods are based on fixed and spatially restricted physics-based models. These models are computationally expensive and can take many hours to run, resulting in predictions made based on outdated data. They are also spatially fixed, and unable to scale to unknown areas.
By modelling the task as an image segmentation problem, an alternative approach using artificial intelligence to approximate the parameters of a physics-based model in 2D is demonstrated, enabling rapid predictions to be made in real-time.
System Requirements
- Linux (Windows may work but is untested. You will probably have a bad day if you use Windows)
- Node.js (a recent version - i.e. v16+ - the version in the default Ubuntu repositories is too old)
- Python 3.8+
- Nvidia GPU (16GiB RAM+ is strongly recommended) + CUDA and CuDNN (see this table for which versions you need)
- Experience with the command line
- 1TiB disk space free
- Lots of time and patience
Overview
The process of using this model is as as illustrated:
TODO fix this flowchart.
More fully:
- Apply for access to CEDA's 1km rainfall radar dataset
- Download 1km rainfall radar data (use
nimrod-data-downloader
) - Obtain a heightmap (or Digital Elevation Model, as it's sometimes known) from the Ordnance Survey (can't remember the link, please PR to add this)
- Use
terrain50-cli
to slice the the output from steps #2 and #3 to be exactly the same size [TODO: Preprocess to extract just a single river basin from the data] - Push through HAIL-CAESAR (this fork has the ability to handle streams of .asc files rather than each time step having it's own filename)
- Use
rainfallwrangler
in this repository (finally!) to convert the output to .json.gz then .tfrecord files - Train a DeepLabV3+ prediction model
Only steps #6 and #7 actually use code in this repository. Steps #2 and #4 involve the use of modular npm
packages.
Obtaining the data
The data in question is the Met Office's NIMROD 1km rainfall radar dataset, stored in the CEDA archive. It is updated every 24 hours, and has 1 time step every 5 minutes.
The data can be found here: https://catalogue.ceda.ac.uk/uuid/27dd6ffba67f667a18c62de5c3456350
There is an application process to obtain the data. Once complete, use the tool nimrod-data-downloader
to automatically download & parse the data:
https://www.npmjs.com/package/nimrod-data-downloader
This tool was also written me, @sbrl - the primary author on the paper mentioned above.
Full documentation on this tool is available at the above link.
<------ WRITING HERE
TODO document the next steps.
rainfallwrangler
rainfallwrangler
is a Node.js application to wrangle the dataset into something more appropriate for training an AI efficiently. The rainfall radar and water depth data are considered temporally to be regular time steps. Here's a diagram explaining the terminology:
NOW
│ │ │Water depth
│▼ Rainfall Radar Data ▼│[Offset] │▼
├─┬─┬─┬─┬─┬─┬─┬─┬─┬─┬─┬─┼─┬─┬─┬─┬─┼─┐
│ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │
│ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │
│ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │
│ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │ │
└─┴─┴─┴─┴─┴─┴─┴─┴─┴─┴─┴─┼─┴─┴─┴─┴─┴─┘
│
◄────────── Timesteps ─────────────►
Note to self: 150.12 hashes/sec on i7-4770 4c8t, ???.?? hashes/sec on Viper compute
After double checking, rainfallwrangler does NOT mess with the ordering of the data.
License
All the code in this repository is released under the GNU Affero General Public License unless otherwise specified. The full license text is included in the LICENSE.md
file in this repository. GNU have a great summary of the licence which I strongly recommend reading before using this software.