https://eartharxiv.org/repository/view/4894/

Authors

Zachary Michael Labe  <https://orcid.org/0000-0002-6394-7651>, Elizabeth A
Barnes, James W. Harrell
Dates

*Published: *2023-01-10 21:52
DOI

https://doi.org/10.31223/X5394Z
Abstract

Stratospheric aerosol injection is a proposed form of solar climate
invention (SCI) that could potentially reduce the amount of future warming
from externally-forced climate change. However, more research is needed, as
there are significant uncertainties surrounding the possible impacts of
SCI, including unforeseen effects on regional climate patterns. In this
study, we consider a climate model simulation of the deployment of
stratospheric aerosols to maintain the global mean surface temperature at
1.5°C above pre-industrial levels. Leveraging two different machine
learning methods, we evaluate when the effects of SCI would be detectable
at regional scales. Specifically, we train a logistic regression model to
classify whether an annual mean map of near-surface temperature or total
precipitation is from a future climate under the influence of SCI or not.
We then design an artificial neural network to predict how many years it
has been since the deployment of SCI by inputting the regional maps from
the climate intervention scenario. In both detection methods, we use
feature attribution methods to spatially understand the forced climate
patterns that are important for the machine learning model predictions. The
effect of SCI on regional temperature patterns is detectable in under a
decade for most regions. However, the effect of SCI on regional
precipitation patterns is more difficult to distinguish due to the presence
of internal climate variability.
Subjects

Earth Sciences, Environmental Sciences, Oceanography and Atmospheric
Sciences and Meteorology, Physical Sciences and Mathematics
Keywords

climate intervention, climate change, Climate variability, machine
learning, climate models, regional climate, large ensembles
Source
Earth Arxiv

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