Abstract
We present a method for predicting wave dissipation by sea ice that is
based on the dimensional analysis of data with a scaling defined by ice
thickness. Applying the method to an extensive dataset from the
measurements during the “Polynyas, Ice Production, and seasonal
Evolution in the Ross Sea” (PIPERS) cruise in 2017, we derive a new
model of wave dissipation which not only describes a nonlinear
dependence on ice thickness but also reveals its relation with the
dependence on frequency. This nonlinear dependence on ice thickness can
have more implications on predicting low-frequency waves. The
root-mean-square error of the prediction is significantly reduced using
the new model, compared with other existing parametric models that are
also calibrated for the PIPERS dataset. The new model also explicitly
describes a condition of similarity between large- and small-scale
observations, which is shown to exist when various laboratory datasets
collapse onto the prediction.