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Deciphering isoprene variability across dozen of Chinese and overseas cities using deep transfer learning

  • Song Liu
  • , Xiaopu Lyu*
  • , Fumo Yang
  • , Zongbo Shi
  • , Xin Huang
  • , Tengyu Liu
  • , Hongli Wang
  • , Mei Li
  • , Jian Gao
  • , Nan Chen
  • , Guoliang Shi
  • , Yu Zou
  • , Chenglei Pei
  • , Chengxu Tong
  • , Xinyi Liu
  • , Li Zhou
  • , Alex B. Guenther
  • , Nan Wang*
  • *Corresponding author for this work

Research output: Contribution to journalJournal articlepeer-review

Abstract

Isoprene, the globally most abundant volatile organic compound, significantly impacts air quality. Determining isoprene concentration variations and their drivers is a persistent challenge. Here, we developed a robust machine learning framework to simulate isoprene concentrations, without requiring localized emission inventories and explicit chemistry. Temperature, radiation, and surface pressure were the primary drivers of short-term isoprene variations across Chinese cities. On climatic timescales, urban greenspace expansion and climate warming drove isoprene increases by 341 pptv in Hong Kong during 1990–2023, but traffic emission reductions in London counteracted the isoprene rise that climate warming would have otherwise caused (-755 pptv vs. +31 pptv). Driven by rising temperatures and isoprene levels, ozone would increase by up to 1.7-fold by 2100 under the high-emission scenario. However, ambitious reduction in nitrogen oxides would alleviate this growth to 1.2-fold. The study has the potential to inform air quality management in a warming climate.

Original languageEnglish
Pages (from-to)635-646
Number of pages12
JournalAtmospheric Chemistry and Physics
Volume26
Issue number1
DOIs
Publication statusPublished - 14 Jan 2026

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 11 - Sustainable Cities and Communities
    SDG 11 Sustainable Cities and Communities
  2. SDG 13 - Climate Action
    SDG 13 Climate Action

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