Skip to content

Latest commit

 

History

History
105 lines (63 loc) · 8.95 KB

README.md

File metadata and controls

105 lines (63 loc) · 8.95 KB

MicroSnowEx

[Examples of snow microstructure tools](Proksch et al., 2015)]

Links to resources

shared data in CryoCloud at this path: /shared-public/microsnowex2024

Google Drive for papers

Description

SnowEx is a program designed to relate in-situ snow measurements to satellite so that we can assess snow physical properties and variability over a larger spatial and temporal resolution. Currently we are pretty limited in what we can quantify using optical and radar satellite imagery. Mainly, we are able to just see if snow is present (given the different reflectance and pixel brightness), but techniques for measuring snow mass remain limited, especially in the mountains. Given how variable snow is in the Western US, this necessitates the usage of snow assessment over the season and over a longer temporal record.

One of the currently proposed approaches for measuring SWE from space is high frequency microwave radar. One complexity with the retrieval is that it is sensitive to snow microstructure, requiring observations or model estimates. SnowEx used a multiple approaches for measuring snow microstructure, and this project will compare results from a wide range of instruments. The long-term objective with using snow microstructure (Micro-CT), and one of the primary objective of the 2020 SnowEx campaign, is to test and validate snow water equivalant (SWE) retrieval from active and passive microwave sensors. This project will quantify snow microstructure and its variability using data from different in situ instruments, to help with inversion of SWESARR data.

This module is designed to provide participants with resources using the NSIDC data respository, along with data comparisons and analysis for 3-5 sites in Grand Mesa, CO in during the 2020 SnowEx campaign. These sites have overlapping microstructure, snow-pit, snow penetrometer (SMP), laser, and SWESARR data, which make it an ideal first step to understanding the impact of microstructure on active and passive microwave airborne measurements. This group will work with the SWESARR project to help provide them with microstructural information needed for radar retrieval. This project builds on the 2021 SnowEx Hackweek project, "Microstructure".

Collaborators on this project

  • Sydney Baratta
  • H.P. Marshall
  • .....
  • anyone interested in pit observations related to microstructure

Description of Data

(mainly pulled from NSIDC overviews)

Microsctucture: Snow microstructure is processed using microcomputed tomography (micro-CT). Containers of snow were collected at 6 snow pits in approximately 17 cm intervals. There were approximately 5-8 discrete containers per pit and each container had an ~2 cm overlap with the sample below. A 6-cm section of snow was dissected from each container of snow, which were analyzed in ~2 cm sub-sections. Each sub-section was scanned in three intervals using a micro-CT instrument. The three interval scans comprise multiple slices, and were combined into the reconstructed final scan used for calculating the snow microstructural data.

This is the "golden standard" method and a key component of this module (etc etc)

Snow-pit: Snow-pits were dug and collected in Grand Mesa during the 2020 field season (between 27 January and 12 February 2020). The main parameters for this data set are snow temperature, snow depth, snow density, snow stratigraphy, snow grain size and type, liquid water content, and snow water equivalent. In addition to data files, this data set also contains site photos from each snow pit.

NOTE: each data parameter is saved as a separate .csv file. Make sure to download each .csv per site before running code.

SMP: This data set contains raw penetration force profiles from the SnowEx 2020 Intensive Observation Period in Grand Mesa, Colorado. Measurements were taken using the SnowMicroPen (SMP), a digital snow penetrometer. The data files contain force measurements (in Newtons) at various snow depths. Data are available from 28 January 2020 through 12 February 2020.

NOTE: SMP profiles were taken in a cross pattern around the central location, therefore there are numerous files per each site. It is recommended when downloading each file to use CTRL+F and search by site number to ensure no files are missed.

Laser: This data set contains vertical profiles of snow reflectance, specific surface area (SSA), and spherical equivalent snow grain diameter. Data were collected during the SnowEx 2020 Grand Mesa, Colorado Intensive Observation Period between 27 January and 12 February 2020. Reflectance was measured at snow pits using one of two integrating sphere laser devices, IRIS (InfraRed IntegraXng Sphere) or IceCube. SSA and spherical equivalent diameter were then derived from reflectance.

Airborne lidar data We will use airborne lidar data from Grand Mesa 2020 to aid in understanding the drivers of microstructure variability around the snowpits. Airborne lidar was collected by NV5, and processed by ASO.

SWESARR brightness temperature: This data set contains airborne microwave brightness temperature observations from the Goddard Space Flight Center SWESARR (Snow Water Equivalent Synthetic Aperture Radar and Radiometer) instrument during the winter (10-12 February 2020) NASA SnowEx 2020 campaign at Grand Mesa, CO. Observations were made at three frequencies (10.65, 18.7, and 36.5 GHz; referred to as X, K, and Ka bands, respectively), at horizontal polarization with a nominal 45-degree look angle.

Tasks

1. Load and parse all microstructural data from 3 locations on the Western end of the South line, where there is SWESARR radar data and microCT (Syndey has written MATLAB code for this. Also leverage SnowEx database!)

2. Calculate SSA from SMP data using snowmicropyn,

3. Compare SSA from SMP to SSA from IceCube/IRIS. Explore parameter optimization in the SMP retrieval of SSA to match IceCube/IRIS

4. Compare SSA from SMP and IceCube/IRIS to microCT. Characterize accuracy of retrieval for SMP and IceCube/IRIS

5. Spatial analysis of SMP data around pit - characterize variability of bulk SSA, and SSA within layers. Quantify variability of SSA.

6. Estimate density from SMP using snowmicropyn. Quantify variability in density around each pit using SMP density estimates.

7. Plot bulk average SSA spatially, for each SMP profile. Add snow depth measurements around pit.

8. Use airborne lidar data to quanitfy variability in snow depth and SWE around each pit.

9. Summarize SWE, depth, SSA around each pit with statistics (mean, median, variance, IQR), including plots spanning ~50m around each pit

10. Explore new approach to snow microstructure for radar, "polydispersity", from Picard paper.

11. Convert MATLAB code from work above into python (ongoing throughout project)

Resources for Data Download

Numerical Data

NSIDC Main Data Page

Microwave Radar

Previous related project

2021 SnowEx Hackweek Microstructure project

Software

Python package for reading SMP data

Relevant papers (incomplete currently. In project google drive)

Picard, G., Löwe, H., Domine, F., Arnaud, L., Larue, F., Favier, V., et al. (2022). The microwave snow grain size: A new concept to predict satellite observations over snow-covered regions. AGU Advances, 3, e2021AV000630. https://doi.org/10.1029/2021AV000630

Proksch, Martin & Löwe, Henning & Schneebeli, Martin. (2015). Density, specific surface area and correlation length of snow measured by high-resolution penetrometry. Journal of Geophysical Research: Earth Surface. 120. 10.1002/2014JF003266.

Using Matlab Functions

Within the Github, there are XX functions and XX corresponding codes that call in the functions and plot the data, as a first step to analsysis. The functions' jobs are to structure the data using information found in the filenames (i.e., site number, date of data collection, and file location where all of the data is saved to). For more help with using Matlab, Mathworks has a super helpful community and are open to any questions if you cannot already find the answer to your question(s):