Published September 18, 2023 | Version v1
Poster Open

Optimal Sensor Placement for Black Carbon AOD with Convolutional Neural Processes (poster)

  • 1. Image Processing Lab, Universitat de València
  • 2. The Alan Turing Institute
  • 3. British Antarctic Survey

Description

This poster showcases the results of a 3-month collaboration at The Alan Turing Institute, using convolutional neural processes via the open-source Python package DeepSensor to model black carbon aerosols from limited observations and propose optimal placements for new ground-based sensors.

Presented at the joint iMIRACLI Summer School / FORCeS annual meeting 2023 in Patras, Greece (18-22 September 2023).

Files

Pelucchi_2023_Optimal-Sensor-Placement-for-Black-Carbon-AOD-with-Convolutional-Neural-Processes_poster.pdf

Additional details

Funding

The Alan Turing Institute EP/N510129/1
UK Research and Innovation
iMIRACLI – innovative MachIne leaRning to constrain Aerosol-cloud CLimate Impacts (iMIRACLI) 860100
European Commission