Skip to main content

Vyperdatum with built-in regional datums, proj.db, and vdatum vector files.

Project description


PyPI version DOI Read the Docs

Vyperdatum

Vyperdatum is a NOAA OCS/NBS toolkit for performing high-accuracy vertical datum transformations using NOAA’s separation grids within the modern PROJ/GDAL ecosystem. It provides a high-level Transformer interface that builds PROJ pipelines from a source CRS (crs_from) to a target CRS (crs_to), and applies them consistently to point cloud and raster formats (e.g. GeoTIFF, BAG, VRBAG, LAZ, NPZ, and GeoParquet).

The goal of Vyperdatum is to make it easy to transform coastal and hydrographic data between tidal, orthometric, and ellipsoidal vertical datums (for example, NAD83(2011) ellipsoid heights to MLLW or NAVD88) while preserving full coordinate reference system metadata so that transformations are transparent and reproducible.

Typical use cases include:

  • Normalizing hydrographic surveys to charting datums for ENC/RNC and bathymetric products
  • Preparing inputs for coastal flood, storm surge, and inundation models that require a specific vertical datum
  • Converting between ellipsoidal, orthometric, and tidal datums for coastal GNSS/GNSS-tide workflows

Under the hood, Vyperdatum uses a PROJ database augmented with NOAA grids and metadata. Transformation steps can be inferred automatically from crs_from/crs_to, or prescribed explicitly when you need fine-grained control over the pipeline. NOAA’s grid files and the updated proj.db are not bundled with the package; instead, you download them separately and point the VYPER_GRIDS environment variable at their location.

Installation

Vyperdatum requires GDAL which can be installed from the conda's conda-forge channel. Below, we first create a conda environment, install GDAL and Vperdatum.

conda create -n vd python=3.11
conda activate vd
conda install -c conda-forge proj=9.6 gdal python-pdal
pip install vyperdatum

Before running vyperdatum, you need to download NOAA's datum files and the updated proj.db DOI. Once downloaded, create a persistent environment variable VYPER_GRIDS to hold the path to directory where the downloaded grids and proj.db are located.

Usage

Vyperdatum offers a Transformer class to handle the transformation of point and raster data. The Transformer class applies transformation from crs_from to crs_to coordinate reference system. By default the transformation steps will be determined automatically:

from vyperdatum.transformer import Transformer

crs_from = "EPSG:6346"            # NAD83(2011) 17N (vertical: Ellipsoid)
crs_to = "EPSG:6346+NOAA:98"      # NAD83(2011) 17N + MLLW
tf = Transformer(crs_from=crs_from,
                 crs_to=crs_to,
                 )

Alternatively, you may manually prescribe the transformation steps:

from vyperdatum.transformer import Transformer

crs_from = "EPSG:6346"            # NAD83(2011) 17N
crs_to = "EPSG:6346+NOAA:98"      # NAD83(2011) 17N + MLLW
steps = [{"crs_from": "EPSG:6346", "crs_to": "EPSG:6318", "v_shift": False},
         {"crs_from": "EPSG:6319", "crs_to": "EPSG:6318+NOAA:98", "v_shift": True},
         {"crs_from": "EPSG:6318", "crs_to": "EPSG:6346", "v_shift": False}
         ]
tf = Transformer(crs_from=crs_from,
                 crs_to=crs_to,
                 steps=steps
                 )

Once an instance of the Transformer class is created, the transform() method can be called. Vyperdatum supports all GDAL-supported drivers, variable resolution BAG, LAZ and NPZ point-cloud files.

transform

tf.transform(input_file=<PATH_TO_INPUT_RASTER_FILE>,
             output_file=<PATH_TO_OUTPUT_RASTER_FILE>
             )

You may also, directly call the file-specific transform methods instead of the generic Transformer.transform() method:

Click to see pseudo-code examples
# dircet point transformation. The input x, y, z can be list or numpy arrays.
xi, yi, zi = np.array([278881.198]), np.array([2719890.433]), np.array([0])
xt, yt, zt, success = tf.transform_points(x=xi, y=yi, z=zi, always_xy=True)

# GDAL-supported raster transform  
tf.transform_raster(input_file=<PATH_TO_INPUT_RASTER_FILE>,
                    output_file=<PATH_TO_OUTPUT_RASTER_FILE>
                    )

# VRBAG transform
tf.transform_vrbag(input_file=<PATH_TO_INPUT_VRBAG_FILE>,
                   output_file=<PATH_TO_OUTPUT_VRBAG_FILE>
                   )

# LAZ transform
tf.transform_laz(input_file=<PATH_TO_INPUT_LAZ_FILE>,
                 output_file=<PATH_TO_OUTPUT_LAZ_FILE>
                 )

# NPZ transform
tf.transform_npz(input_file=<PATH_TO_INPUT_NPZ_FILE>,
                 output_file=<PATH_TO_OUTPUT_NPZ_FILE>
                 )

Documentation

For a quick start, more detailed descriptions or search through the API, see Vyperdatums's documentation at: https://vyperdatum.readthedocs.io.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

vyperdatum-0.3.54.tar.gz (240.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

vyperdatum-0.3.54-py3-none-any.whl (299.6 kB view details)

Uploaded Python 3

File details

Details for the file vyperdatum-0.3.54.tar.gz.

File metadata

  • Download URL: vyperdatum-0.3.54.tar.gz
  • Upload date:
  • Size: 240.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.11

File hashes

Hashes for vyperdatum-0.3.54.tar.gz
Algorithm Hash digest
SHA256 a847b6247f207b26807ec033b2409f889fa79426c9b9de4c860c45c82646244f
MD5 6d79c97d704b496cadb1b00a15db4221
BLAKE2b-256 bc5e4133c90c88d5124d7b1bb6e3da8260eff14c5abde3607ecfc41b9e3b7f59

See more details on using hashes here.

File details

Details for the file vyperdatum-0.3.54-py3-none-any.whl.

File metadata

  • Download URL: vyperdatum-0.3.54-py3-none-any.whl
  • Upload date:
  • Size: 299.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.11

File hashes

Hashes for vyperdatum-0.3.54-py3-none-any.whl
Algorithm Hash digest
SHA256 6f6d35c86d4b6b9eca68cd8921da7bd0d63e40922e0fb435eb08409348ca5f9b
MD5 7ddf0626169518294a3d94f60d648286
BLAKE2b-256 58506053587399f3a5549e4a30ce4c99b10eac1914b0308fe07347ea1d9c0dd0

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page