SailoR:An Extension of the Taylor Diagram to Two-Dimensional Vector
Data
A new diagram for the verification of vector variables (wind, current, etc) generated by multiple models against a set
of observations is presented in this package. It has been
designed as a generalization of the Taylor diagram to two
dimensional quantities. It is based on the analysis of the
two-dimensional structure of the mean squared error matrix
between model and observations. The matrix is divided into the
part corresponding to the relative rotation and the bias of the
empirical orthogonal functions of the data. The full set of
diagnostics produced by the analysis of the errors between
model and observational vector datasets comprises the errors in
the means, the analysis of the total variance of both datasets,
the rotation matrix corresponding to the principal components
in observation and model, the angle of rotation of
model-derived empirical orthogonal functions respect to the
ones from observations, the standard deviation of model and
observations, the root mean squared error between both datasets
and the squared two-dimensional correlation coefficient. See
the output of function UVError() in this package.