Earth Engine: Time Series Analysis of Soil Moisture with SMAP data | Export as CSV

Terra Spatial
Terra Spatial
3.6 هزار بار بازدید - پارسال - Monthly Time Series Analysis of
Monthly Time Series Analysis of Soil Moisture using SMAP data and export result as CSV for preparing charts. Code Link: https://code.earthengine.google.co.in...
Code Link (Download in notepad): https://drive.google.com/file/d/1TKjt...
-------------------------------------------------------------------------------------
Join this channel to get access to perks:
-------------------------------------------------------------------------------------
MAP (Soil Moisture Active Passive) is a NASA mission that provides global observations of soil moisture and vegetation water content. The SMAP satellite carries two instruments: the L-band radar and the L-band radiometer. These instruments work together to measure soil moisture at a depth of about 5 cm and vegetation water content at a depth of about 1-2 cm.
------------------------------------------------------------------------------------
The SMAP soil moisture data is a product of the L-band radiometer, which measures the natural emissions of the Earth's surface at a frequency of 1.4 GHz. The soil moisture data is reported in units of volumetric soil moisture content, which is the amount of water in a given volume of soil, typically expressed as a percentage. The data is provided at a spatial resolution of about 36 km and a temporal resolution of 2-3 days.
------------------------------------------------------------------------------------
The SMAP soil moisture data is useful for a wide range of applications, including drought monitoring, weather forecasting, flood prediction, crop yield estimation, and climate modeling. The data can also be used to study the water cycle, carbon cycle, and energy balance of the Earth's surface.
------------------------------------------------------------------------------------


#googleearthengine  #earthengine  #SMAP #SoilMoisture #RemoteSensing #nasa  #earthobservation  #ClimateResearch #watercycle  #agriculture  #weatherforecasting  #environmentalscience  #naturalresources  #dataanalysis  #datavisualization  #GeospatialAnalysis #bigdata  #machinelearning  #artificialintelligence  #gis  #hydrology  #LandSurfaceProcesses #climatechange  #sustainability  #GlobalWaterCrisis #foodsecurity  #CropYield #precisionagriculture  #DroughtMonitoring #FloodPrediction #extract #csv
پارسال در تاریخ 1401/12/22 منتشر شده است.
3,631 بـار بازدید شده
... بیشتر