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Missing Data

library(aqp)
library(soilDB)
# example data
data("jacobs2000")

# fully populated
plotSPC(jacobs2000, name.style = 'center-center', 
        cex.names = 0.8, color = 'time_saturated')

# missing some data
plotSPC(jacobs2000, name.style = 'center-center', 
        cex.names = 0.8, color = 'concentration_color')

# very nearly complete
plotSPC(jacobs2000, name.style = 'center-center', 
        cex.names = 0.8, color = 'matrix_color')

# variables to consider
v <- c('time_saturated', 'concentration_color', 'matrix_color')

# compute data completeness by profile
# ignore 2C horizons
jacobs2000$data.complete <- evalMissingData(
  jacobs2000, 
  vars = v, 
  method = 'relative',
  p = '2C'
)

jacobs2000$data.complete.abs <- evalMissingData(
  jacobs2000, 
  vars = v, 
  method = 'absolute',
  p = '2C'
)

# compute data completeness by horizon
# ignore 2C horizons
jacobs2000$hz.data.complete <- evalMissingData(
  jacobs2000, 
  vars = v, 
  method = 'horizon',
  p = '2C'
)


# "fraction complete" by horizon
plotSPC(
  jacobs2000, name.style = 'center-center', 
  cex.names = 0.8, color = 'hz.data.complete'
)

# rank on profile completeness
new.order <- order(jacobs2000$data.complete)

# plot along data completeness ranking
plotSPC(
  jacobs2000, name.style = 'center-center', 
  cex.names = 0.8, color = 'hz.data.complete', 
  plot.order = new.order
)

# add relative completeness axis
# note re-ordering of axis labels
axis(
  side = 1, at = 1:length(jacobs2000), 
  labels = round(jacobs2000$data.complete[new.order], 2),
  line = 0, cex.axis = 0.75
)

# add absolute completeness (cm)
axis(
  side = 1, at = 1:length(jacobs2000), 
  labels = jacobs2000$data.complete.abs[new.order],
  line = 2.5, cex.axis=0.75
)

# label axes
mtext('Relative\nCompleteness', side = 1, at = 0.25, line = 0.25, cex = 0.8)
mtext('Absolute\nCompleteness (cm)', side = 1, at = 0.25, line = 2.75, cex = 0.8)

x <- fetchKSSL(series = 'pierre')
par(mar = c(0, 0, 3, 2))

plotSPC(x, color = 'clay', width = 0.3, name.style = 'center-center', label = 'pedon_completeness_index')

plotSPC(x, color = 'cec7', width = 0.3, name.style = 'center-center', label = 'pedon_completeness_index')

plotSPC(x, color = 'estimated_oc', width = 0.3, name.style = 'center-center', label = 'pedon_completeness_index')

plotSPC(x, color = 'ph_h2o', width = 0.3, name.style = 'center-center', label = 'pedon_completeness_index')

plotSPC(x, color = 'db_13b', width = 0.3, name.style = 'center-center', label = 'pedon_completeness_index')

par(mar = c(1, 0, 3, 2))
plotSPC(x, color = 'ph_h2o', width = 0.3, name.style = 'center-center', label = 'pedon_completeness_index')

.b <- x[, , .LAST, .BOTTOM]
text(x = 1:length(x), y = .b, labels = x$pi, cex = 0.85, pos = 1)
mtext('Profile Information Index (bytes)', side = 1, line = -0.5)

v <- c('clay', 'db_13b', 'cec7', 'ph_h2o')
x$rel.not.missing <- evalMissingData(x, vars = v, method = 'relative')
x$abs.not.missing <- evalMissingData(x, vars = v, method = 'absolute')
x$hz.not.missing <- evalMissingData(x, vars = v, method = 'horizon')

o <- order(x$rel.not.missing)
plotSPC(x, color = 'hz.not.missing', width = 0.33, name.style = 'center-center', label = 'pedon_completeness_index', plot.order = o)
text(x = 1:length(x), y = .b[o], labels = round(x$rel.not.missing[o], 2), cex = 0.85, pos = 1)
mtext('Relative Non-Missing Fraction', side = 1, line = -0.5)

o <- order(x$abs.not.missing)
plotSPC(x, color = 'hz.not.missing', width = 0.33, name.style = 'center-center', label = 'pedon_completeness_index', plot.order = o)
text(x = 1:length(x), y = .b[o], labels = x$abs.not.missing[o], cex = 0.85, pos = 1)
mtext('Absolute Non-Missing (cm)', side = 1, line = -0.5)

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.