Nonlinear Processes in Geophysics (Jan 2015)

On the data-driven inference of modulatory networks in climate science: an application to West African rainfall

  • D. L. González II,
  • M. P. Angus,
  • I. K. Tetteh,
  • G. A. Bello,
  • K. Padmanabhan,
  • S. V. Pendse,
  • S. Srinivas,
  • J. Yu,
  • F. Semazzi,
  • V. Kumar,
  • N. F. Samatova

DOI
https://doi.org/10.5194/npg-22-33-2015
Journal volume & issue
Vol. 22, no. 1
pp. 33 – 46

Abstract

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Decades of hypothesis-driven and/or first-principles research have been applied towards the discovery and explanation of the mechanisms that drive climate phenomena, such as western African Sahel summer rainfall~variability. Although connections between various climate factors have been theorized, not all of the key relationships are fully understood. We propose a data-driven approach to identify candidate players in this climate system, which can help explain underlying mechanisms and/or even suggest new relationships, to facilitate building a more comprehensive and predictive model of the modulatory relationships influencing a climate phenomenon of interest. We applied coupled heterogeneous association rule mining (CHARM), Lasso multivariate regression, and dynamic Bayesian networks to find relationships within a complex system, and explored means with which to obtain a consensus result from the application of such varied methodologies. Using this fusion of approaches, we identified relationships among climate factors that modulate Sahel rainfall. These relationships fall into two categories: well-known associations from prior climate knowledge, such as the relationship with the El Niño–Southern Oscillation (ENSO) and putative links, such as North Atlantic Oscillation, that invite further research.