Machine Learning-Based Retrieval of Total Ozone Column Amount and Cloud Optical Depth from Irradiance Measurements

Milos Sztipanov, Levente Krizsán, Wei Li, Jakob J. Stamnes, Tove Svendby, Knut Stamnes

Research output: Contribution to journalArticlepeer-review

Abstract

A machine learning algorithm combined with measurements obtained by a NILU-UV irradiance meter enables the determination of total ozone column (TOC) amount and cloud optical depth (COD). In the New York City area, a NILU-UV instrument on the rooftop of a Stevens Institute of Technology building (40.74° N, −74.03° E) has been used to collect data for several years. Inspired by a previous study [Opt. Express 22, 19595 (2014)], this research presents an updated neural-network-based method for TOC and COD retrievals. This method provides reliable results under heavy cloud conditions, and a convenient algorithm for the simultaneous retrieval of TOC and COD values. The TOC values are presented for 2014–2023, and both were compared with results obtained using the look-up table (LUT) method and measurements by the Ozone Monitoring Instrument (OMI), deployed on NASA’s AURA satellite. COD results are also provided.

Original languageEnglish
Article number1103
JournalAtmosphere
Volume15
Issue number9
DOIs
StatePublished - Sep 2024

Keywords

  • cloud optical depth
  • composition
  • irradiance
  • machine learning
  • measurement
  • modeling
  • neural network
  • ozone
  • radiative transfer
  • retrieval

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