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Internal vs Forced Variability metrics for Geophysical Flows using Information theory

POSTER

Abstract

We propose a metric for measuring internal and forced variability in ensemble geophysical flow models using information theory: Shannon entropy and mutual information. Information entropy fundamentally determines variability by measuring the amount of variation in a distribution, as opposed to variance measuring the second moment. Shannon entropy and mutual information naturally take into account correlation coefficient, apply to any data, and are insensitive to outliers as well as a change of scale. We combine these two to quantify internal vs forced variability in (1) idealistic Gaussian vectors, (2) a realistic coastal ocean model and we show our metric's advantage over variance metrics. Our metric applies to any ensemble flow models where intrinsic and extrinsic factors compete to control variability.

Authors

  • Aakash Sane

    Center for Fluid Mechanics, Brown University

  • Baylor Fox-Kemper

    Center for Fluid Mechanics, Brown University