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Home >Courses >Advanced Remote Sensing of Carbon Fluxes: From Satellite Observations to Regional Budgets

01/15/2026

Registration closes 01/15/2026
Mentor Based

Advanced Remote Sensing of Carbon Fluxes: From Satellite Observations to Regional Budgets

Quantifying Land–Ocean $CO_2$ Sinks using OCO-2/3, SIF, and Biogeochemical Modeling

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level: Advanced
  • Duration: 3 Days (60-90 Minutes each day)
  • Starts: 15 January 2026
  • Time: 7:30 PM IST

About This Course

This 3-day workshop trains participants to quantify and attribute regional land and ocean CO₂ sinks using satellite (XCO₂, SIF, SST, winds, ocean color) and in-situ (TCCON, SOCAT) data. Learners will perform QC/bias checks, build simple bottom-up and top-down flux workflows, map sinks/sources with uncertainty, analyze trends/anomalies, and produce a reproducible one-page regional carbon-sink brief.

Aim

This workshop aims to equip participants to use satellite and in-situ data to quantify and attribute regional land and ocean CO₂ sinks, assess trends and uncertainties, and produce reproducible, decision-ready carbon-budget reports.

Workshop Structure

Module 1: High-Fidelity Signal Processing (Land & Ocean)

  • Satellite Architecture: Deep dive into $XCO_2$ retrieval physics (OCO-2/3, GOSAT) and the fluorescence signal (SIF) as a proxy for GPP.

  • Error Characterization: Handling averaging kernels, column-to-surface biases, and cloud/aerosol contamination.

  • Oceanic Drivers: Correlating partial pressure ($pCO_2$) with SST, salinity, and wind vectors (using reanalysis data).

  • Lab: “From L2 to L3” — Ingesting OCO-2 swaths and SOCAT in-situ data; performing bias correction and co-location analysis using Python/Xarray.

Module 2: Flux Inversion & Budget Estimation

  • Bottom-Up Modeling:

    • Land: Deriving Net Ecosystem Exchange (NEE) via SIF-GPP relationships and respiration scaling.

    • Ocean: Machine Learning approaches to mapping $pCO_2$ and calculating air-sea gas transfer velocities ($k cdot Delta pCO_2$).

  • Top-Down Concepts: Introduction to atmospheric inversion frameworks (4D-Var/EnKF concepts), prior selection, and transport model (e.g., GEOS-Chem) dependencies.

  • Lab: Building a “Toy Flux Engine.” Construct a spatially explicit map of monthly $CO_2$ fluxes for a target region, integrating uncertainty bands.

Module 3: Attribution, Trends & Decision Support

  • Trend Detection: Distinguishing anthropogenic trends from natural variability (ENSO, Heatwaves, NAO).
  • Data Fusion: Reconciling differences between satellite posteriors and in-situ validation networks (TCCON).
  • FAIR Principles: Best practices for data governance, creating DOIs for your datasets, and ensuring computational reproducibility for peer review.
  • Lab: The “Carbon Brief” — Generate a manuscript-ready figure panel (Time-series, Flux Map, Anomaly Plot) and specific metadata for a chosen ROI (Region of Interest).

Who Should Enrol?

  • Environmental Scientists & Researchers – Focused on carbon cycle and flux estimation.

  • Atmospheric & Oceanic Modelers – Interested in flux inversion and carbon budget analysis.

  • Data Scientists – Experienced in satellite data processing and Python.

  • Climate Change Analysts – Analyzing trends and policy decisions.

  • Machine Learning Engineers – Applying AI to environmental science.

  • Academics & Graduate Students – In environmental or atmospheric sciences.

  • Policy Makers & Consultants – Working in climate and sustainability.

Important Dates

Registration Ends

01/15/2026
IST 6:30 PM

Workshop Dates

01/15/2026 – 01/17/2026
IST 7:30 PM

Workshop Outcomes

  • Interpret satellite XCO₂/SIF and ocean drivers for CO₂ sink monitoring.

  • Perform basic QC/bias screening and co-locate with in-situ datasets (TCCON, SOCAT).

  • Estimate land NEE using SIF-assisted GPP plus simple respiration.

  • Compute and map ocean air–sea CO₂ flux from ΔpCO₂ and wind-driven transfer.

  • Understand top-down inversion concepts and quantify uncertainty.

  • Grid/scale fluxes to regional budgets with correct unit conversions.

  • Produce a reproducible regional carbon-sink brief with trends, confidence, and limits.

Meet Your Mentor(s)

Mentor Photo

roopaSC

Analyst

NA

more


Fee Structure

Student

₹1999 | $60

Ph.D. Scholar / Researcher

₹2999 | $70

Academician / Faculty

₹3999 | $80

Industry Professional

₹5999 | $100

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

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