Share icon

Description

Space-based CO2 measurements have become an important capability in support of climate studies and to inform policy decisions. This intermediate, three-part webinar series will build on the previous CO2 training from 2022, providing a more in-depth review of OCO-2 and OCO-3 measurements along with demonstrations of case-studies. The latter will focus on how to read, visualize and interpret the data, how to account for quality flags in an analysis, how to use the data from the OCO missions to analyze impacts of an El Niño event on atmospheric CO2 and carbon sources and sinks, and how to examine spatial variations of CO2 over a metropolitan area. The demonstration will be conducted using Jupyter Notebook.

This training is also available in Spanish.

Agenda

Citation
(2024). ARSET - Applications of Carbon Dioxide Measurements for Climate-Related Studies. NASA Applied Remote Sensing Training Program (ARSET). http://disasters.nasa.gov/get-involved/training/english/arset-applications-carbon-dioxide-measurements-climate-related
Objective

By the end of this training attendees will be able to:

  1. Identify the characteristics and limitations of the NASA Orbiting Carbon Observatory, OCO-2 and OCO-3 XCO2 measurements.
  2. Access and download data through the Distributed Active Archive Center (GES DISC), and open and visualize XCO2 data from OCO-2/OCO-3 in GES DISC Earthdata.
  3. Interpret XCO2 data from OCO-2/OCO-3 for global, regional, and local scales.
  4. Assess the  level of confidence to place in XCO2 measurements using the quality flags incorporated into each dataset.
  5. Analyze OCO-2 data for assessing the impacts of  an El Nino event on Level 2 CO2 concentrations and Level-4 fluxes over tropical regions. 
  6. Analyze OCO-3 data for assessing the variations in Level-2 CO2 concentrations over a metropolitan area.
Audience
  • Primary Target Audience: Scientists in the field and local, regional, and federal organizations from climate agencies 
  • Secondary Target Audience: NGO’s, academics, and students
Course Format
  • Three, 2-hour sessions
  • There will be a sesson in English (12:00-14:00 EDT) and a session in Spanish (15:00-17:00 EDT) each day
Sessions
Part 1: XCO2 from OCO-2 and OCO-3: Mission Recap, and Data Characteristics and Limitations
12:00 pm ~ 02:00 pm
EDT (UTC-4:00)

ARSET Trainers: Erika Podest (JPL/Caltech)

Guest Instructors: Vivienne Payne (JPL/Caltech), Abhishek Chatterjee (JPL/Caltech), Junjie Liu (JPL/Caltech)

  • Identify the characteristics and limitations of XCO2 measurements from OCO 2/OCO-3.
  • Explore application areas where XCO2 is useful.
  • Identify where to access and how to use the quality flags in a data  set for assessment of the measurement.
  • Interpret data and address considerations for using CO2 in different application areas.

Materials:

Part 2: The Impact of Drought on CO2
12:00 pm ~ 02:00 pm
EDT (UTC-4:00)

ARSET Trainers: Erika Podest (JPL/Caltech)

Guest Speakers: Junjie Liu (JPL/Caltech), Karen Yuen (JPL/Caltech), David Moroni (JPL/Caltech)

  • Identify El Niño event effects that can create regional drought conditions.
  • Monitor global fluxes of atmospheric CO2 concentrations to identify vulnerable  areas.
  • Use OCO-2 data to visualize areas impacted by drought and perform an interpretative and comparative analysis.
  • Identify the methods and processes to derive fluxes with atmospheric CO2  measurements and interpret regional flux perturbations and country-scale f luxes and emissions.
  • Follow steps to clone the ARSET Github repository and maintain the local code.

Materials:

Part 3: CO2 Measurements over a Large Urban Area
12:00 pm ~ 02:00 pm
EDT (UTC-4:00)

ARSET Trainers: Erika Podest (JPL/Caltech)

Guest Instructors: Abhishek Chatterjee (JPL/Caltech), Karen Yuen (JPL/Caltech), David Moroni (JPL/Caltech)

  • Recognize the importance and challenges of measuring carbon dioxide over metropolitan areas.
  • Identify important aspects of space-based CO2 measurements over urban areas.
  • Visualize OCO-3 SAM data over urban areas and perform an interpretative and comparative analysis.
  • Access, subset, and download multi-year OCO-3 SAM data using a provided Jupyter notebook.

Materials:

 

Contact Us

jmobrie1