EGU21-5240
https://doi.org/10.5194/egusphere-egu21-5240
EGU General Assembly 2021
© Author(s) 2021. This work is distributed under
the Creative Commons Attribution 4.0 License.

Uncertainties in SST datasets and implications for El Niño event classification

Mengke Zhu1, Jonathon Wright1, Maryam Ilyas2, and Chris Brierley3
Mengke Zhu et al.
  • 1Tsinghua University, Earth System Science, China(jswright@tsinghua.edu.cn)
  • 2College of Statistical and Actuarial Sciences, University of the Punjab, Pakistan (maryam.stat@pu.edu.pk)
  • 3Department of Geography, University College London, UK(c.brierley@ucl.ac.uk)

Identification of El Niño warm events and their types has traditionally been deterministic, based mainly on whether a pre-defined index exceeded a critical value. However, uncertainties in both sea surface temperature (SST) measurements and their interpolation into a gridded analysis can impact identification of and confidence in El Niño variability, particularly earlier in the record. Although several different classification methods for El Niño exist, researchers lack an effective reference and evaluation system to identify advantages and disadvantages of a given index for a given application. Therefore, this study quantifies the impacts of both data- and method-related uncertainties on different El Niño classification methods, considering different types of uncertainty, different types of analysis, different teleconnection mechanisms and expressions of El Niño impact and different types of climate data. To aid in these objectives, El Niño classification methods are evaluated from five aspects: reliability, accuracy, precision, flexibility, and simplicity. The core analysis is based on probabilistic, uncertainty-aware classifications applied to a large ensemble of historical SST realizations. The results are then used to conduct a more general evaluation of how different types of uncertainty propagate through the different classification methods, and provide guidance on the strengths and weaknesses of these indices for different applications.

How to cite: Zhu, M., Wright, J., Ilyas, M., and Brierley, C.: Uncertainties in SST datasets and implications for El Niño event classification, EGU General Assembly 2021, online, 19–30 Apr 2021, EGU21-5240, https://doi.org/10.5194/egusphere-egu21-5240, 2021.

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