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  • Created about 5 years ago
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Repository Details

iMMOD: An Interactive Model of Mosquito Distribution | This Google Earth Engine (GEE) code visualizes NASA Earth observations, citizen science and public health data relevant to mosquito habitat suitability. The code also implements a model to predict habitat suitability for mosquitoes in Western Europe.

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ASIT

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OPLC

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PSTP

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PrIME

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SDCI

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Texas-NAC

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MASC

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ADIM

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48

FoCIS

Eastern Hemlock Distribution Model: Four codes scripted to run in Google Earth Engine to compute predicted habitat distribution of Eastern Hemlock in (1) Adirondack Park and (2) New York State.
1
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49

MIPDA

MIPDA (Mapping Insect and Pathogen Disturbance Automation) - LaRC 2017 Spring - ArcMap processing with a Landsat time series that was automated in Python for studying climate of Glacier National Park.
Python
1
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50

TAOW

Turbidity Assessment Over Water - 2017 Summer - The Chesapeake Bay Automation Master Script provides automation for processing atmosperhically corrected satellite imagery. This script specifically pre-processes Landsat 8 and Sentinel-2 datasets that were atmospherically corrected by ACOLITE.
Python
1
star