PUBLICATIONS
Integrated assessment model diagnostics: key indicators and model evolution
- Type of publication:Accepted Manuscript
- Date of publication:April 2021
- Author/s:Mathijs Harmsen, Elmar Kriegler, Detlef P. van Vuuren, Kaj-Ivar van der Wijst, Gunnar Luderer, Ryna Cui, Olivier Dessens, Laurent Drouet, Johannes Emmerling, Jennifer Morris, Florian Fosse, Dimitris Fragkiadakis, Kostas Fragkiadakis, Panagiotis Fragkos, Oliver Fricko, Shinichiro Fujimori, David E.H.J. Gernaat, Celine Guivarch, Gokul C Iyer, Panagiotis Karkatsoulis, Ilkka Keppo, Kimon Keramidas, Alexandre Köberle, Peter Kolp, Volker Krey, Christoph Krüger, Florian Leblanc, Shivika Mittal, Sergey V Paltsev, Pedro Rochedo, Bas van Ruijven, Ronald D Sands, Fuminori Sano, Jessica Strefler, Eveline Vasquez Arroyo, Kenichi Wada, Behnam Zakeri
- Url:https://iopscience.iop.org/article/10.1088/1748-9326/abf964
Integrated assessment models (IAMs) form a prime tool in informing climate mitigation strategies. Diagnostic indicators that allow to compare these models can help to describe and explain differences in model projections. This also increases transparency and comparability. Earlier, the IAM community has developed an approach to diagnose models (Kriegler et al., 2015). Here we build on this, by proposing a selected set of well-defined indicators as a community standard, similar to metrics used for other modeling communities such as climate models. These indicators are the relative abatement index (RAI), emission reduction type index (ERT), inertia timescale (IT), fossil fuel reduction (FFR), transformation index (TI) and cost per abatement value (CAV). We apply the approach to 17 IAMs, including both older version as well as their latest versions, as applied in the IPCC 6th Assessment Report (AR6). The study shows that the approach can be easily applied and allows for comparison of model versions in time. Moreover, we demonstrate that this comparison helps to link model behavior to model characteristics and assumptions. We show that together, the set of six indicators can provide an useful indication of the main traits of the model and can roughly indicate the general model behavior. The results also show that there is often a considerable spread across the models. Interestingly, the diagnostic values often change for different model versions, but there does not seem to be a distinct trend across the different models.
