Detection, attribution, and modeling of climate change: key open issues
Nicola Scafetta

TL;DR
This paper reviews key open issues in climate change detection, attribution, and modeling, highlighting scientific challenges, uncertainties, and the need for refined models to improve future climate predictions and policy decisions.
Contribution
It identifies critical scientific challenges in climate modeling, especially regarding natural variability, solar influences, and climate sensitivity, proposing areas for future research and model improvement.
Findings
Empirical ECS estimates are lower than 3 K, possibly around 1.1 +/- 0.4 K.
Natural variability models suggest moderate 21st-century warming without aggressive mitigation.
GCMs may underestimate solar and astronomical influences on climate.
Abstract
The CMIP global climate models (GCMs) assess that nearly 100% of global surface warming observed between 1850-1900 and 2011-2020 is attributable to anthropogenic drivers like greenhouse gas emissions. These models also generate future climate projections based on shared socioeconomic pathways (SSPs), aiding in risk assessment and the development of costly Net-Zero climate mitigation strategies. Yet, the CMIP GCMs face significant scientific challenges in attributing and modeling climate change, particularly in capturing natural climate variability over multiple timescales throughout the Holocene. Other key concerns include the reliability of global surface temperature records, the accuracy of solar irradiance models, and the robustness of climate sensitivity estimates. Global warming estimates may be overstated due to uncorrected non-climatic biases, and the GCMs may significantly…
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