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metR

metR packages several functions and utilities that make R better for handling meteorological data in the tidy data paradigm. It started mostly sa a packaging of assorted wrappers and tricks that I wrote for my day to day work as a researcher in atmospheric sciences. Since then, it has grown organically and for my own needs and feedback from users.

Conceptually it’s divided into visualization tools and data tools. The former are geoms, stats and scales that help with plotting using ggplot2, such as stat_contour_fill() or scale_y_level(), while the later are functions for common data processing tools in the atmospheric sciences, such as Derivate() or EOF(); these are implemented to work in the data.table paradigm, but also work with regular data frames.

Currently metR is in development but maturing. Most functions check arguments and there are some tests. However, some functions might change it’s interface, and functionality can be moved to other packages, so please bear that in mind.

Installation

You can install metR from CRAN with:

install.packages("metR")

Or the development version () with:

# install.packages("devtools")
devtools::install_github("eliocamp/metR@dev")

If you need to read netcdf files, you might need to install the netcdf and udunits2 libraries. On Ubuntu and it’s derivatives this can be done by typing

sudo apt install libnetcdf-dev netcdf-bin libudunits2-dev

Citing the package

If you use metR in your research, please consider citing it. You can get citation information with

citation("metR")
#> 
#> To cite metR in publications use:
#> 
#> 
#> 
#> A BibTeX entry for LaTeX users is
#> 
#>   @Manual{,
#>     title = {metR: Tools for Easier Analysis of Meteorological Fields},
#>     author = {Elio Campitelli},
#>     year = {2020},
#>     note = {R package version 0.8.9000},
#>     url = {https://github.com/eliocamp/metR},
#>     doi = {10.5281/zenodo.2593516},
#>   }

Examples

In this example we easily perform Principal Components Decomposition (EOF) on monthly geopotential height, then compute the geostrophic wind associated with this field and plot the field with filled contours and the wind with streamlines.

library(metR)
library(data.table)
library(ggplot2)
data(geopotential)
# Use Empirical Orthogonal Functions to compute the Antarctic Oscillation
geopotential <- copy(geopotential)
geopotential[, gh.t.w := Anomaly(gh)*sqrt(cos(lat*pi/180)),
      by = .(lon, lat, month(date))]
aao <- EOF(gh.t.w ~ lat + lon | date, data = geopotential, n = 1)
aao$left[, c("u", "v") := GeostrophicWind(gh.t.w, lon, lat)]

# AAO field
binwidth <- 0.01
ggplot(aao$left, aes(lon, lat, z = gh.t.w)) +
    geom_contour_fill(aes(fill = stat(level)), binwidth = binwidth,
                      xwrap = c(0, 360)) +    # filled contours!
    geom_streamline(aes(dx = dlon(u, lat), dy = dlat(v)), 
                    size = 0.4, L = 80, skip = 3, xwrap = c(0, 360)) +
    scale_x_longitude() +
    scale_y_latitude(limits = c(-90, -20)) +
    scale_fill_divergent_discretised(name = "AAO pattern") +
    coord_polar()
#> Warning in .check_wrap_param(list(...)): 'xwrap' and 'ywrap' will be deprecated.
#> Use ggperiodic::periodic insead.

# AAO signal
ggplot(aao$right, aes(date, gh.t.w)) +
    geom_line() +
    geom_smooth(span = 0.4)
#> `geom_smooth()` using method = 'loess' and formula 'y ~ x'

You can read more in the vignettes: Visualization tools and Working with data.

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Version

Install

install.packages('metR')

Monthly Downloads

5,492

Version

0.9.0

License

GPL-3

Issues

Pull Requests

Stars

Forks

Maintainer

Elio Campitelli

Last Published

November 25th, 2020

Functions in metR (0.9.0)

GeostrophicWind

Calculate geostrophic winds
GetSMNData

Get Meteorological data
FitLm

Fast estimates of linear regression
ConvertLongitude

Converts between longitude conventions
Anomaly

Anomalies
GetTopography

Get topographic data
Mag

Magnitude of a vector
MakeBreaks

Functions for making breaks
DivideTimeseries

Divides long timeseries for better reading
Derivate

Derivate a discrete variable using finite differences
JumpBy

Skip observations
Interpolate

Bilinear interpolation
Impute2D

Impute missing values by linear or constant interpolation
ImputeEOF

Impute missing values
EOF

Empirical Orthogonal Function
EPflux

Computes Eliassen-Palm fluxes.
as.path

Interpolates between locations
label_placement_fraction

Functions to place contour labels
geom_contour2

2d contours of a 3d surface
geom_arrow

Arrows
WaveFlux

Calculate wave-activity flux
WrapCircular

Wrap periodic data to any range
Percentile

Percentiles
cut.eof

Remove some principal components.
MaskLand

Mask
coriolis

Effects of the Earth's rotation
geom_label_contour

Label contours
ReadNetCDF

Read NetCDF files.
Trajectory

Compute trajectories
guide_vector

Reference arrow for magnitude scales
geopotential

Geopotential height
guide_colourstrip

Discretized continuous colour guide
denormalise

Denormalise eof matrices
season

Assign seasons to months
geom_streamline

Streamlines
geom_relief

Relief Shading
spherical

Transform between spherical coordinates and physical coordinates
waves

Fourier transform
thermodynamics

Thermodynamics
is.cross

Cross pattern
temperature

Air temperature
scale_divergent

Divergent colour scales
reverselog_trans

Reverse log transform
logic

Extended logical operators
surface

Surface height
scale_mag

Scale for vector magnitudes
scale_longitude

Helpful scales for maps
stat_na

Filter only NA values.
scale_fill_discretised

Discretised scale
stat_subset

Subset values
geom_contour_tanaka

Illuminated contours
metR

metR: Tools for Easier Analysis of Meteorological Fields
map_labels

Label longitude and latitude
geom_contour_fill

Filled 2d contours of a 3d surface