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Generates a ``stratified random'' pattern of points in a window,
by dividing the window into rectangular tiles and placing
k
random points independently in each tile.
rstrat(win=square(1), nx, ny=nx, k = 1, nsim=1, drop=TRUE)
Number of tiles in each column.
Number of tiles in each row.
Number of random points to generate in each tile.
Number of simulated realisations to be generated.
Logical. If nsim=1
and drop=TRUE
(the default), the
result will be a point pattern, rather than a list
containing a point pattern.
A point pattern (an object of class "ppp"
)
if nsim=1
, or a list of point patterns if nsim > 1
.
This function generates a random pattern of points in a ``stratified random'' sampling design. It can be useful for generating random spatial sampling points.
The bounding rectangle of win
is divided into
a regular k
random points are generated independently
with a uniform distribution in that tile.
Some of these grid points may lie outside the window win
:
if they do, they are deleted.
The result is a point pattern inside the window win
.
This function is useful in creating dummy points for quadrature
schemes (see quadscheme
) as well as in simulating
random point patterns.
# NOT RUN {
X <- rstrat(nx=10)
plot(X)
# polygonal boundary
X <- rstrat(letterR, 5, 10, k=3)
plot(X)
# }
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