%# fields is a package for analysis of spatial data written for %# the R software environment . %# Copyright (C) 2018 %# University Corporation for Atmospheric Research (UCAR) %# Contact: Douglas Nychka, nychka@ucar.edu, %# National Center for Atmospheric Research, PO Box 3000, Boulder, CO 80307-3000 %# %# This program is free software; you can redistribute it and/or modify %# it under the terms of the GNU General Public License as published by %# the Free Software Foundation; either version 2 of the License, or %# (at your option) any later version. %# This program is distributed in the hope that it will be useful, %# but WITHOUT ANY WARRANTY; without even the implied warranty of %# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the %# GNU General Public License for more details. %# %# You should have received a copy of the GNU General Public License %# along with the R software environment if not, write to the Free Software %# Foundation, Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301 USA %# or see http://www.r-project.org/Licenses/GPL-2 \name{grid list} \alias{grid list} \alias{grid.list} \alias{fields.x.to.grid} \alias{parse.grid.list} \alias{fields.convert.grid} \alias{discretize.image} \alias{make.surface.grid} \alias{unrollZGrid} \title{ Some simple functions for working with gridded data and the grid format (grid.list) used in fields. } \description{ The object grid.list refers to a list that contains information for evaluating a function on a 2-dimensional grid of points. If a function has more than two independent variables then one also needs to specify the constant levels for the variables that are not being varied. This format is used in several places in fields for functions that evaluate function estimates and plot surfaces. These functions provide some default conversions among information and the gird.list. The function \code{discretize.image} is a useful tool for "registering" irregular 2-d points to a grid. } \usage{ parse.grid.list( grid.list, order.variables="xy") fields.x.to.grid(x,nx=80, ny=80, xy=c(1,2)) fields.convert.grid( midpoint.grid ) discretize.image(x, m = 64, n = 64, grid = NULL, expand = c(1 + 1e-08, 1 + 1e-08), boundary.grid = FALSE, na.rm = TRUE) make.surface.grid( grid.list) unrollZGrid( grid.list, ZGrid) } \arguments{ \item{grid.list}{ No surprises here -- a grid list! These can be unequally spaced.} \item{order.variables}{ If "xy" the x variable will be subsequently plotted as the horizontal variable. If "yx" the x variable will be on the vertical axis.} \item{x}{ A matrix of independent variables such as the locations of observations given to Krig.} \item{nx}{Number of grid points for x variable.} \item{ny}{Number of grid points for y variable.} \item{m}{Number of grid points for x variable.} \item{n}{Number of grid points for y variable.} \item{na.rm}{Remove missing values if TRUE} \item{xy}{The column positions that locate the x and y variables for the grid.} \item{grid}{ A grid list!} \item{expand}{ A scalar or two column vector that will expand the grid beyond the range of the observations.} \item{midpoint.grid}{ Grid midpoints to convert to grid boundaries.} \item{boundary.grid}{ If TRUE interpret grid points as boundaries of grid boxes. If FALSE interpret as the midpoints of the boxes. } \item{ZGrid}{An array or list form of covariates to use for prediction. This must match the \code{grid.list} argument. e.g. ZGrid and grid.list describe the same grid. If ZGrid is an array then the first two indices are the x and y locations in the grid. The third index, if present, indexes the covariates. e.g. For evaluation on a 10X15 grid and with 2 covariates. \code{ dim( ZGrid) == c(10,15, 2)}. If ZGrid is a list then the components x and y shold match those of grid.list and the z component follows the shape described above for the no list case. } } \details{The form of a grid.list is \code{list( var.name1= what1 , var.name2=what2 , ... var.nameN=what3)} Here var.names are the names of the independent variables. The what options describe what should be done with this variable when generating the grid. These should either an increasing sequence of points or a single vaules. Obviously there should be only be two variables with sequences to define a grid for a surface. Most of time the gridding sequences are equally spaced and are easily generated using the \code{seq} function. Also throughout fields the grid points are typically the midpoints of the grid rather the grid box boundaries. However, these functions can handle unequally spaced grids and the logical boundary.grid can indicate a grid being the box boundaries. The variables in the list components are assumed to be in the same order as they appear in the data matrix. A useful function that expands the grid from the grid.list description into a full set of locations is \code{make.surface.grid} and is just a wrapper around the R base function \code{expand.grid}. A typical operation is to go from a grid.list to the set of grid locations. Evaluate a fucntion at these lcoations and then reformat this as an image for plotting. Here is how to do this cleanly: \preformatted{ grid.list<- list( x= 1:10, y=1:15) xg<- make.surface.grid(grid.list) # look at a surface dependin on xg locations z<- xg[,1] + 2*xg[,2] out<- list( x=grid.list$x, y= grid.list$y, z=matrix( z, nrow=10, ncol=15)) # now for example image.plot( out) } The key here is that \code{xg} and \code{matrix} both organize the grid in the same order. Some fields internal functions that support interpreting grid list format are: \code{fields.x.to.grid}: Takes an "x" matrix of locations or independent variables and creates a reasonable grid list. This is used to evaluate predicted surfaces when a grid list is not explicited given to predictSurface. The variables (i.e. columns of x) that are not part of the grid are set to the median values. The x grid values are \code{nx} equally spaced points in the range \code{x[, xy[1]]}. The y grid values are \code{ny} equally spaced points in the range \code{x[, xy[2]]}. \code{parse.grid.list}: Takes a grid list and returns the information in a more expanded list form that is easy to use. This is used, for example, by predictSurface to figure out what to do! \code{fields.convert.grid}: Takes a vector of n values assumed to be midpoints of a grid and returns the n+1 boundaries. See how this is used in discretize.image with the cut function. This function will handle unequally spaced grid values. \code{discretize.image}: Takes a vector of locations and a 2-d grid and figures out to which boxes they belong. The output matrix ind has the grid locations. If boundary.grid is FALSE then the grid list (grid) is assumed to be grid midpoints. The grid boundaries are taken to be the point half way between these midpoints. The first and last boundaries points are determined by extrapolating so that the first and last box has the midpoint in its center. (See the code in fields.convert.grid for details.) If grid is NULL then midpoints are found from m and n and the range of the x matrix. \code{unrollZGrid} Checks that the ZGrid object is compatible with th e grid.list and concatenates the grid arrays into vectors. This version of the covariates are used the usual predict function. } \seealso{ as.surface, predictSurface, plot.surface, surface, expand.grid, as.image } \examples{ #Given below are some examples of grid.list objects and the results #when they are used with make.surface.grid. Note that #make.surface.grid returns a matrix that retains the grid.list #information as an attribute. grid.l<- list( 1:3, 2:5) make.surface.grid(grid.l) grid.l <- list( 1:3, 10, 1:3) make.surface.grid(grid.l) #The next example shows how the grid.list can be used to #control surface plotting and evaluation of an estimated function. # first create a test function set.seed( 124) X<- 2*cbind( runif(30), runif(30), runif(30)) -1 dimnames( X)<- list(NULL, c("X1","X2","X3")) y<- X[,1]**2 + X[,2]**2 + exp(X[,3]) # fit an interpolating thin plate spline out<- Tps( X,y) grid.l<- list( X1= seq( 0,1,,20), X2=.5, X3=seq(0,1,,25)) surface( out, grid.list=grid.l) # surface plot based on a 20X25 grid in X1 an X3 # over the square [0,2] and [0,2] # holding X2 equal to 1.0. # # test of discretize to make sure points on boundaries are counted right set.seed(123) x<- matrix( runif(200), 100,2) look<- discretize.image( x, m=2,n=2) xc<- seq(min(x[,1]), max(x[,1]),,5) xc<- xc[2:4] yc<- seq(min(x[,2]), max(x[,2]),,5) yc<- yc[2:4] grid <- list( x= xc, y= yc) look2<- discretize.image( x, m=2,n=2) table( look$index ) table( look2$index ) # indicator image of discretized locations look<- discretize.image( RMprecip$x, m=15, n=15) image.plot( look$grid$x, look$grid$y,look$hist ) # actual locations points( RMprecip$x,col="magenta", pch=".") } \keyword{misc} % docclass is function % Converted by Sd2Rd version 1.21.