Optimize a sample configuration for variogram identification and estimation. A criterion is defined so that the optimized sample configuration has a given number of points or point-pairs contributing to each lag-distance class (PPL).
optimPPL(points, candi, lags = 7, lags.type = "exponential",
lags.base = 2, cutoff, criterion = "distribution", distri,
pairs = FALSE, schedule = scheduleSPSANN(), plotit = FALSE,
track = FALSE, boundary, progress = "txt", verbose = FALSE)objPPL(points, candi, lags = 7, lags.type = "exponential",
lags.base = 2, cutoff, distri, criterion = "distribution",
pairs = FALSE, x.max, x.min, y.max, y.min)
countPPL(points, candi, lags = 7, lags.type = "exponential",
lags.base = 2, cutoff, pairs = FALSE, x.max, x.min, y.max, y.min)
Integer value, integer vector, data frame or matrix, or list.
Integer value. The number of points. These points will be randomly sampled from candi
to form
the starting sample configuration.
Integer vector. The row indexes of candi
that correspond to the points that form the starting
sample configuration. The length of the vector defines the number of points.
Data frame or matrix. An object with three columns in the following order: [, "id"]
, the
row indexes of candi
that correspond to each point, [, "x"]
, the projected x-coordinates, and
[, "y"]
, the projected y-coordinates.
List. An object with two named sub-arguments: fixed
, a data frame or matrix with the projected
x- and y-coordinates of the existing sample configuration -- kept fixed during the optimization --, and
free
, an integer value defining the number of points that should be added to the existing sample
configuration -- free to move during the optimization.
Data frame or matrix with the candidate locations for the jittered points. candi
must
have two columns in the following order: [, "x"]
, the projected x-coordinates, and [, "y"]
,
the projected y-coordinates.
Integer value, the number of lag-distance classes. Alternatively, a vector of numeric values
with the lower and upper bounds of each lag-distance class, the lowest value being larger than zero
(e.g. 0.0001). Defaults to lags = 7
.
Character value, the type of lag-distance classes, with options "equidistant"
and
"exponential"
. Defaults to lags.type = "exponential"
.
Numeric value, base of the exponential expression used to create exponentially spaced
lag-distance classes. Used only when lags.type = "exponential"
. Defaults to lags.base = 2
.
Numeric value, the maximum distance up to which lag-distance classes are created. Used only
when lags
is an integer value. If missing, it is set to be equal to the length of the diagonal of
the rectangle with sides x.max
and y.max
as defined in scheduleSPSANN
.
Character value, the feature used to describe the energy state of the system
configuration, with options "minimum"
and "distribution"
. Defaults to
objective = "distribution"
.
Numeric vector, the distribution of points or point-pairs per lag-distance class that should
be attained at the end of the optimization. Used only when criterion = "distribution"
. Defaults to
a uniform distribution.
Logical value. Should the sample configuration be optimized regarding the number of
point-pairs per lag-distance class? Defaults to pairs = FALSE
.
List with 11 named sub-arguments defining the control parameters of the cooling schedule.
See scheduleSPSANN
.
(Optional) Logical for plotting the optimization results, including a) the progress of the
objective function, and b) the starting (gray circles) and current sample configuration (black dots), and
the maximum jitter in the x- and y-coordinates. The plots are updated at each 10 jitters. When adding
points to an existing sample configuration, fixed points are indicated using black crosses. Defaults to
plotit = FALSE
.
(Optional) Logical value. Should the evolution of the energy state be recorded and returned
along with the result? If track = FALSE
(the default), only the starting and ending energy states
are returned along with the results.
(Optional) SpatialPolygon defining the boundary of the spatial domain. If missing and
plotit = TRUE
, boundary
is estimated from candi
.
(Optional) Type of progress bar that should be used, with options "txt"
, for a text
progress bar in the R console, "tk"
, to put up a Tk progress bar widget, and NULL
to omit the
progress bar. A Tk progress bar widget is useful when using parallel processors. Defaults to
progress = "txt"
.
(Optional) Logical for printing messages about the progress of the optimization. Defaults to
verbose = FALSE
.
Numeric value defining the minimum and maximum quantity of random noise to
be added to the projected x- and y-coordinates. The minimum quantity should be equal to, at least, the
minimum distance between two neighbouring candidate locations. The units are the same as of the projected
x- and y-coordinates. If missing, they are estimated from candi
.
Numeric value defining the minimum and maximum quantity of random noise to
be added to the projected x- and y-coordinates. The minimum quantity should be equal to, at least, the
minimum distance between two neighbouring candidate locations. The units are the same as of the projected
x- and y-coordinates. If missing, they are estimated from candi
.
Numeric value defining the minimum and maximum quantity of random noise to
be added to the projected x- and y-coordinates. The minimum quantity should be equal to, at least, the
minimum distance between two neighbouring candidate locations. The units are the same as of the projected
x- and y-coordinates. If missing, they are estimated from candi
.
Numeric value defining the minimum and maximum quantity of random noise to
be added to the projected x- and y-coordinates. The minimum quantity should be equal to, at least, the
minimum distance between two neighbouring candidate locations. The units are the same as of the projected
x- and y-coordinates. If missing, they are estimated from candi
.
optimPPL
returns an object of class OptimizedSampleConfiguration
: the optimized sample
configuration with details about the optimization.
objPPL
returns a numeric value: the energy state of the sample configuration -- the objective
function value.
countPPL
returns a data.frame with three columns: a) the lower and b) upper limits of each
lag-distance class, and c) the number of points or point-pairs per lag-distance class.
Details about the mechanism used to generate a new sample configuration out of the current sample
configuration by randomly perturbing the coordinates of a sample point are available in the help page of
spJitter
.
Two types of lag-distance classes can be created by default. The first are evenly spaced lags
(lags.type = "equidistant"
). They are created by simply dividing the distance interval from 0.0001
to cutoff
by the required number of lags. The minimum value of 0.0001 guarantees that a point does
not form a pair with itself. The second type of lags is defined by exponential spacings
(lags.type = "exponential"
). The spacings are defined by the base \(b\) of the exponential
expression \(b^n\), where \(n\) is the required number of lags. The base is defined using the argument
lags.base
. See vgmLags
for other details.
Using the default uniform distribution means that the number of point-pairs per lag-distance class
(pairs = TRUE
) is equal to \(n \times (n - 1) / (2 \times lag)\), where \(n\) is the total
number of points and \(lag\) is the number of lags. If pairs = FALSE
, then it means that the
number of points per lag is equal to the total number of points. This is the same as expecting that each
point contributes to every lag. Distributions other than the available options can be easily implemented
changing the arguments lags
and distri
.
There are two optimizing criteria implemented. The first is called using criterion = "distribution"
and is used to minimize the sum of the absolute differences between a pre-specified distribution and the
observed distribution of points or point-pairs per lag-distance class. The second criterion is called using
criterion = "minimum"
. It corresponds to maximizing the minimum number of points or point-pairs
observed over all lag-distance classes.
Bresler, E.; Green, R. E. Soil parameters and sampling scheme for characterizing soil hydraulic properties of a watershed. Honolulu: University of Hawaii at Manoa, p. 42, 1982.
Pettitt, A. N.; McBratney, A. B. Sampling designs for estimating spatial variance components. Applied Statistics. v. 42, p. 185, 1993.
Russo, D. Design of an optimal sampling network for estimating the variogram. Soil Science Society of America Journal. v. 48, p. 708-716, 1984.
Truong, P. N.; Heuvelink, G. B. M.; Gosling, J. P. Web-based tool for expert elicitation of the variogram. Computers and Geosciences. v. 51, p. 390-399, 2013.
Warrick, A. W.; Myers, D. E. Optimization of sampling locations for variogram calculations. Water Resources Research. v. 23, p. 496-500, 1987.
# NOT RUN {
# This example takes more than 5 seconds
require(sp)
data(meuse.grid)
candi <- meuse.grid[, 1:2]
schedule <- scheduleSPSANN(chains = 1, initial.temperature = 30,
x.max = 1540, y.max = 2060, x.min = 0,
y.min = 0, cellsize = 40)
set.seed(2001)
res <- optimPPL(points = 10, candi = candi, schedule = schedule)
objSPSANN(res) - objPPL(points = res, candi = candi)
countPPL(points = res, candi = candi)
# }
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