Earth Engine implementation of a simple OpenET model for computing NDVI
Project description
WARNING: This code is in development, is being provided without support, and is subject to change at any time without notification
This repository provides an Earth Engine Python API based implementation of a simple OpenET model for computing NDVI as part of the OpenET framework.
Input Collections
The NDVI model is currently implemented for the following Earth Engine image collections:
- Landsat SR
LANDSAT/LC09/C02/T1_L2
LANDSAT/LC08/C02/T1_L2
LANDSAT/LE07/C02/T1_L2
LANDSAT/LT05/C02/T1_L2
LANDSAT/LT04/C02/T1_L2
Model Structure
The primary ways interact with the NDVI model are through the “Collection” and “Image” classes.
Collection
The Collection class should be used to generate image collections of NDVI. These collections can be for image “overpass” dates only or interpolated to daily, monthly, or annual time steps. The collections can be built for multiple input collections types, such as merging Landsat 8 and Sentinel 2.
The Collection class is built based on a list of input collections ID’s, a date range, and a study area geometry.
Required Inputs
- collections
List of Earth Engine collection IDs (see Input Collections).
- start_date
ISO format start date string (i.e. YYYY-MM-DD) that is passed directly to the collection .filterDate() calls.
- end_date
ISO format end date string that is passed directly to .filterDate() calls. The end date must be exclusive (i.e. data will go up to this date but not include it).
- geometry
ee.Geometry() that is passed to the collection .filterBounds() calls. All images with a footprint that intersects the geometry will be included.
- et_reference_source
Reference ET source collection ID.
- et_reference_band
Reference ET source band name.
Optional Inputs
- cloud_cover_max
Maximum cloud cover percentage. The input collections will be filtered to images with a cloud cover percentage less than this value. Optional, the default is 70 (%).
- filter_args
Custom filter arguments for teh input collections. This parameter is not yet fully implemented.
- model_args
A dictionary of argument to pass through to the Image class initialization. This parameter is not yet fully implemented.
Overpass Method
- variables
List of variables to calculate/return.
Interpolate Method
- variables
List of variables to calculate/return.
- t_interval
Time interval over which to interpolate and aggregate values. Choices: ‘daily’, ‘monthly’, ‘custom’ Optional, the default is ‘custom’.
- interp_method
Interpolation method. Choices: ‘linear’ Optional, the default is ‘linear’.
- interp_days
Number of extra days before the start date and after the end date to include in the interpolation calculation. Optional, the default is 32.
Collection Examples
import openet.ndvi as model
overpass_coll = model.Collection(
collections=['LANDSAT/LC08/C02/T1_L2'],
start_date='2017-06-01',
end_date='2017-09-01',
geometry=ee.Geometry.Point(-121.5265, 38.7399),
et_reference_source='IDAHO_EPSCOR/GRIDMET',
et_reference_band='eto') \
.overpass(variables=['ndvi'])
monthly_coll = model.Collection(
collections=['LANDSAT/LC08/C02/T1_L2'],
start_date='2017-06-01',
end_date='2017-09-01',
geometry=ee.Geometry.Point(-121.5265, 38.7399),
et_reference_source='IDAHO_EPSCOR/GRIDMET',
et_reference_band='eto') \
.interpolate(variables=['ndvi'] t_interval='monthly')
Image
The Image class should be used to process a single image, an image collection with custom filtering, or to apply custom parameters to each image in a collection.
Typically the NDVI Image is initialized using one of the collection/sensor specific helper methods listed below (see below). These methods rename the bands to a common naming scheme, apply basic cloud masking, and .
Image collections can be built by mapping one of the helper methods over an image collection. Please see the Image Mapping example notebook for more details.
The Image class can also be initialized using any Earth Engine image with an ‘ndvi’ band and a ‘system:time_start’ property.
Landsat Collection 2 Surface Reflectance (SR) Input Image
To instantiate the class for a Landsat Collection 2 SR image, use the Image.from_landsat_c2_sr() method.
The input Landsat image must have the following bands and properties:
SATELLITE |
Band Names |
|---|---|
LANDSAT_4 |
SR_B1, SR_B2, SR_B3, SR_B4, SR_B5, SR_B7, SR_B6, QA_PIXEL |
LANDSAT_5 |
SR_B1, SR_B2, SR_B3, SR_B4, SR_B5, SR_B7, SR_B6, QA_PIXEL |
LANDSAT_7 |
SR_B1, SR_B2, SR_B3, SR_B4, SR_B5, SR_B7, SR_B6, QA_PIXEL |
LANDSAT_8 |
SR_B2, SR_B3, SR_B4, SR_B5, SR_B6, SR_B7, SR_B10, QA_PIXEL |
LANDSAT_9 |
SR_B2, SR_B3, SR_B4, SR_B5, SR_B6, SR_B7, SR_B10, QA_PIXEL |
Property |
Description |
|---|---|
system:index |
|
system:time_start |
Image datetime in milliseconds since 1970 |
SPACECRAFT_ID |
|
Image Example
import openet.ndvi as model
et_img = model.Image.from_landsat_c2_sr(
ee.Image('LANDSAT/LC08/C02/T1_L2/LC08_044033_20170716'),
et_reference_source='IDAHO_EPSCOR/GRIDMET',
et_reference_band='eto').ndvi
Variables
The NDVI model can compute the following variables:
- ndvi
Normalized difference vegetation index [unitless]
There is also a more general “calculate” method that can be used to return a multiband image of multiple variables (see example…)
Example Notebooks
Detailed Jupyter Notebooks of the various approaches for calling the OpenET NDVI model are provided in the “examples” folder.
Installation
The python OpenET NDVI module can be installed via pip:
pip install openet-ndvi
Dependencies
OpenET Namespace Package
Each OpenET model is stored in the “openet” folder (namespace). The model can then be imported as a “dot” submodule of the main openet module.
import openet.ndvi as model
Development and Testing
Please see the CONTRIBUTING.rst.
References
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