2013-02-13 239 views
1

摘要:我可以在lattice::layerplot上顯示lon-lat圖,我可以在spam::image上顯示Lambert conformal conic(LCC)圖。如何在lattice::layerplot上顯示LCC地圖?如何不這樣做的例子 - 幫助修理是讚賞(甚至只是調試)。如何在R :: lattice :: layerplot上顯示投影映射?

細節:

我已經使用了網格圖形(通過latticeExtrarasterVis)成功地顯示未投影LON-LAT全球大氣數據,其作品不夠好(雖然我肯定通過ggplot/ggmap感興趣)。特別是,我可以用地圖覆蓋這些地塊,這對我正在做的這類工作很重要。然而,我目前無法使用lattice::layerplot對於某些區域數據投影LCC:數據圖,但我無法獲得覆蓋圖。我可以通過更爲粗魯的方式來做到這一點,但寧願知道如何在lattice/rasterVis或類似方法中執行此操作(例如,ggplot/ggmap)。兩個幾乎自成一體的例子遵循...但如果你知道如何做到這一點,請讓我知道,我會跳過調試。 (我waayyy背後的一個項目。)

的NetCDF數據,ozone_lcc.nc,自帶CRAN package=M3 ...除了M3提供它作爲

system.file("extdata/ozone_lcc.ncf", package="M3") 

和文件擴展名(.ncf)當前導致問題對於CRAN package=raster(見this post)。您可以重命名該文件(並將其放置在當前的工作目錄中),或者您可以下載just that file(270 kB),或者從M3 tarball(但請記住重命名它!)獲取它。

然後,您可以運行以下任何示例(提供(IIRC)您沒有運行Windows,其中package = M3將不會生成(但是ICBW)),根據需要更改常量以適應您的系統。示例1生成一個我知道的類型的地圖(來自以前的經驗)將與中的raster一起使用;但是,在這種情況下,地圖和數據/光柵的座標值不匹配。示例2使用舊式基本圖形,並實際繪製數據和地圖;不幸的是,我不知道如何製作這種在levelplot上生成覆蓋圖的地圖。由於我想使這個代碼與一堆使用rasterlevelplot的其他代碼一起工作,這是一個問題。

例1:產生輸出等this

##### start example 1 ##### 

library("M3")  # http://cran.r-project.org/web/packages/M3/ 
library("rasterVis") # http://cran.r-project.org/web/packages/rasterVis/ 

## Use an example file with projection=Lambert conformal conic. 
# lcc.file <- system.file("extdata/ozone_lcc.ncf", package="M3") 
lcc.file <- "./ozone_lcc.nc" # unfortunate problem with raster::raster 
lcc.proj4 <- M3::get.proj.info.M3(lcc.file) 
lcc.proj4 # debugging 
# [1] "+proj=lcc +lat_1=33 +lat_2=45 +lat_0=40 +lon_0=-97 +a=6370000 +b=6370000" 
# Note +lat_0=40 +lat_1=33 +lat_2=45 for maps::[email protected] (below) 
lcc.crs <- sp::CRS(lcc.proj4) 
lcc.pdf <- "./ozone_lcc.example1.pdf" # for output 

## Read in variable with daily ozone. 
# o3.raster <- raster::raster(x=lcc.file, varname="O3", crs=lcc.crs) 
# ozone_lcc.nc has 4 timesteps, choose 1 at random 
o3.raster <- raster::raster(x=lcc.file, varname="O3", crs=lcc.crs, level=1) 
[email protected] <- lcc.crs # why does the above assignment not take? 
# start debugging 
o3.raster 
summary(coordinates(o3.raster)) # thanks, Felix Andrews! 
M3::get.grid.info.M3(lcc.file) 
# end debugging 

# > o3.raster 
# class  : RasterLayer 
# band  : 1 
# dimensions : 112, 148, 16576 (nrow, ncol, ncell) 
# resolution : 1, 1 (x, y) 
# extent  : 0.5, 148.5, 0.5, 112.5 (xmin, xmax, ymin, ymax) 
# coord. ref. : +proj=lcc +lat_1=33 +lat_2=45 +lat_0=40 +lon_0=-97 +a=6370000 +b=6370000 
# data source : .../ozone_lcc.nc 
# names  : O3 
# z-value  : 1 
# zvar  : O3 
# level  : 1 
# > summary(coordinates(o3.raster)) 
#  x    y   
# Min. : 1.00 Min. : 1.00 
# 1st Qu.: 37.75 1st Qu.: 28.75 
# Median : 74.50 Median : 56.50 
# Mean : 74.50 Mean : 56.50 
# 3rd Qu.:111.25 3rd Qu.: 84.25 
# Max. :148.00 Max. :112.00 
# > M3::get.grid.info.M3(lcc.file) 
# $x.orig 
# [1] -2736000 
# $y.orig 
# [1] -2088000 
# $x.cell.width 
# [1] 36000 
# $y.cell.width 
# [1] 36000 
# $hz.units 
# [1] "m" 
# $ncols 
# [1] 148 
# $nrows 
# [1] 112 
# $nlays 
# [1] 1 

# The grid (`coordinates(o3.raster)`) is integers, because this 
# data is stored using the IOAPI convention. IOAPI makes the grid 
# Cartesian by using an (approximately) equiareal projection (LCC) 
# and abstracting grid positioning to metadata stored in netCDF 
# global attributes. Some of this spatial metadata can be accessed 
# by `M3::get.grid.info.M3` (above), and some can be accessed via 
# the coordinate reference system (`CRS`, see `lcc.proj4` above) 

## Get US state boundaries in projection units. 
state.map <- maps::map(
    database="state", projection="lambert", par=c(33,45), plot=FALSE) 
#     parameters to lambert: ^^^^^^^^^^^^ 
#     see mapproj::mapproject 
state.map.shp <- 
    maptools::map2SpatialLines(state.map, proj4string=lcc.crs) 
# start debugging 
# thanks, Felix Andrews! 
class(state.map.shp) 
summary(do.call("rbind", 
    unlist(coordinates(state.map.shp), recursive=FALSE))) 
# end debugging 

# > class(state.map.shp) 
# [1] "SpatialLines" 
# attr(,"package") 
# [1] "sp" 
# >  summary(do.call("rbind", 
# +  unlist(coordinates(state.map.shp), recursive=FALSE))) 
#  V1     V2   
# Min. :-0.234093 Min. :-0.9169 
# 1st Qu.:-0.000333 1st Qu.:-0.8289 
# Median : 0.080378 Median :-0.7660 
# Mean : 0.058492 Mean :-0.7711 
# 3rd Qu.: 0.162993 3rd Qu.:-0.7116 
# Max. : 0.221294 Max. :-0.6343 
# I can't see how to relate these coordinates to `coordinates(o3.raster)` 

pdf(file=lcc.pdf) 
rasterVis::levelplot(o3.raster, margin=FALSE 
) + latticeExtra::layer(
    sp::sp.lines(state.map.shp, lwd=0.8, col='darkgray')) 

dev.off() 
# change this for viewing PDF on your system 
system(sprintf("xpdf %s", lcc.pdf)) 
# data looks correct, map invisible 

## Try again, with lambert(40,33) 
state.map <- maps::map(
    database="state", projection="lambert", par=c(40,33), plot=FALSE) 
#     parameters to lambert: ^^^^^^^^^^^^ 
#     see mapproj::mapproject 
state.map.shp <- 
    maptools::map2SpatialLines(state.map, proj4string=lcc.crs) 
# start debugging 
summary(do.call("rbind", 
    unlist(coordinates(state.map.shp), recursive=FALSE))) 
# end debugging 

# >  summary(do.call("rbind", 
# +  unlist(coordinates(state.map.shp), recursive=FALSE))) 
#  V1     V2   
# Min. :-0.2226344 Min. :-0.9124 
# 1st Qu.:-0.0003149 1st Qu.:-0.8295 
# Median : 0.0763322 Median :-0.7706 
# Mean : 0.0553948 Mean :-0.7752 
# 3rd Qu.: 0.1546465 3rd Qu.:-0.7190 
# Max. : 0.2112617 Max. :-0.6458 
# no real change from previous `coordinates(state.map.shp)` 

pdf(file=lcc.pdf) 
rasterVis::levelplot(o3.raster, margin=FALSE 
) + latticeExtra::layer(
    sp::sp.lines(state.map.shp, lwd=0.8, col='darkgray')) 

dev.off() 
system(sprintf("xpdf %s", lcc.pdf)) 
# as expected, same as before: data looks correct, map invisible 

##### end example 1 ##### 

例2:產生像this

##### start example 2 ##### 

# Following adapted from what is installed in my 
# .../R/x86_64-pc-linux-gnu-library/2.14/m3AqfigExampleScript.r 
# (probably by my sysadmin), which also greatly resembles 
# https://wiki.epa.gov/amad/index.php/R_packages_developed_in_AMAD 
# which is behind a firewall :-(

## EXAMPLE WITH LAMBERT CONIC CONFORMAL FILE. 

library("M3") 
library("aqfig") # http://cran.r-project.org/web/packages/aqfig/ 

## Use an example file with LCC projection: either local download ... 
lcc.file <- "./ozone_lcc.nc" 
## ... or as installed by package=M3: 
# lcc.file <- system.file("extdata/ozone_lcc.ncf", package="M3") 
## Choose the one that works for you. 
lcc.pdf <- "./ozone_lcc.example2.pdf" # for output 

## READ AND PLOT OZONE FROM FILE WITH LCC PROJECTION. 

## Read in variable with daily ozone. Note that we can give dates 
## rather than date-times, and that will include all time steps 
## anytime during those days. Or, we can give lower and upper bounds 
## and all time steps between these will be taken. 
o3 <- M3::get.M3.var(
    file=lcc.file, var="O3", hz.units="m", 
    ldatetime=as.Date("2001-07-01"), udatetime=as.Date("2001-07-04")) 
# start debugging 
class(o3) 
summary(o3) 
summary(o3$x.cell.ctr) 
# end debugging 

# > class(o3) 
# [1] "list" 
# > summary(o3) 
#   Length Class Mode  
# data  66304 -none- numeric 
# data.units  1 -none- character 
# x.cell.ctr 148 -none- numeric 
# y.cell.ctr 112 -none- numeric 
# hz.units  1 -none- character 
# rows   112 -none- numeric 
# cols   148 -none- numeric 
# layers   1 -none- numeric 
# datetime  4 POSIXct numeric 
# > summary(o3$x.cell.ctr) 
#  Min. 1st Qu. Median  Mean 3rd Qu.  Max. 
# -2718000 -1395000 -72000 -72000 1251000 2574000 

# Note how these grid coordinates relate to the IOAPI metadata above: 
# min(o3$x.cell.ctr)  == -2718000 
# == -2736000 + (36000/2) == x.orig + (x.cell.width/2) 

## Get colors and map boundaries for plot. 
library("fields") 
col.rng <- tim.colors(20) 
detach("package:fields") 

## Get state boundaries in projection units. 
map.lines <- M3::get.map.lines.M3.proj(
    file=lcc.file, database="state", units="m") 
# start debugging 
class(map.lines) 
summary(map.lines) 
summary(map.lines$coords) 
# end debugging 

# >  class(map.lines) 
# [1] "list" 
# >  summary(map.lines) 
#  Length Class Mode  
# coords 23374 -none- numeric 
# units  1 -none- character 
# >  summary(map.lines$coords) 
#  x     y   
# Min. :-2272238 Min. :-1567156 
# 1st Qu.: 94244 1st Qu.: -673953 
# Median : 913204 Median : -26948 
# Mean : 689997 Mean : -84644 
# 3rd Qu.: 1744969 3rd Qu.: 524531 
# Max. : 2322260 Max. : 1265778 
# NA's :168  NA's :168  

## Set color boundaries to encompass the complete data range. 
z.rng <- range(as.vector(o3$data)) 

## Make a color tile plot of the ozone for the first day (2001-07-01). 
pdf(file=lcc.pdf) 
image(o3$x.cell.ctr, o3$y.cell.ctr, o3$data[,,1,1], 
     col=col.rng, zlim=z.rng, 
     xlab="x-coord (m)", ylab="y-coord (m)") 

## Put date-time string and chemical name (O3) into a format I can use 
## to label the actual figure. 
date.str <- format(o3$datetime[1], "%Y-%m-%d") 
title(main=bquote(paste(O[3], " on ", .(date.str), sep=""))) 

## Put the state boundaries on the plot. 
lines(map.lines$coords) 

## Add legend to right of plot. NOTE: YOU CANNOT ADD TO THE PLOT 
## AFTER USING vertical.image.legend(). Before making a new plot, 
## open a new device or turn this device off. 
vertical.image.legend(zlim=z.rng, col=col.rng) 

dev.off() # close the plot if you haven't already, ... 
# ... and change the following to display PDFs on your system. 
system(sprintf("xpdf %s", lcc.pdf)) 
# data displays with state map 

##### end example 2 ##### 

輸出但我不能看到如何從簡單矩陣得到(但不是太多)由M3::get.map.lines.M3.proj返回即sp::sp.lines想要的,更不用說latticeExtra::layer想要。 (我足夠的新手來查找網格文檔相當難以理解。)此外,我寧願避免手動進行上面的IOAPI轉換(儘管我肯定會這樣做比跳過舊式圖形)。

回答

2

儘管很醜陋,但要做到這一點的一種方法是使用線性IOAPI變換來「修復」從maps::map獲得的state.map中的座標。例如,

實施例3:產生輸出等this

##### start example 3 ##### 

library("M3")  # http://cran.r-project.org/web/packages/M3/ 
library("rasterVis") # http://cran.r-project.org/web/packages/rasterVis/ 

## Use an example file with projection=Lambert conformal conic. 
# lcc.file <- system.file("extdata/ozone_lcc.ncf", package="M3") 
# See notes in question regarding unfortunate problem with raster::raster, 
# and remember to download or rename the file (symlinking alone will not work). 
lcc.file <- "./ozone_lcc.nc" 

lcc.proj4 <- M3::get.proj.info.M3(lcc.file) 
lcc.proj4 # debugging 
# [1] "+proj=lcc +lat_1=33 +lat_2=45 +lat_0=40 +lon_0=-97 +a=6370000 +b=6370000" 
# Note +lat_0=40 +lat_1=33 +lat_2=45 for maps::[email protected] (below) 
lcc.crs <- sp::CRS(lcc.proj4) 
lcc.pdf <- "./ozone_lcc.example3.pdf" # for output 

## Read in variable with daily ozone. 
# o3.raster <- raster::raster(x=lcc.file, varname="O3", crs=lcc.crs) 
# ozone_lcc.nc has 4 timesteps, choose 1 at random 
o3.raster <- raster::raster(x=lcc.file, varname="O3", crs=lcc.crs, level=1) 
[email protected] <- lcc.crs # why does the above assignment not take? 
# start debugging 
o3.raster 
summary(coordinates(o3.raster)) # thanks, Felix Andrews! 
M3::get.grid.info.M3(lcc.file) 
# end debugging 

# > o3.raster 
# class  : RasterLayer 
# band  : 1 
# dimensions : 112, 148, 16576 (nrow, ncol, ncell) 
# resolution : 1, 1 (x, y) 
# extent  : 0.5, 148.5, 0.5, 112.5 (xmin, xmax, ymin, ymax) 
# coord. ref. : +proj=lcc +lat_1=33 +lat_2=45 +lat_0=40 +lon_0=-97 +a=6370000 +b=6370000 
# data source : .../ozone_lcc.nc 
# names  : O3 
# z-value  : 1 
# zvar  : O3 
# level  : 1 

# > summary(coordinates(o3.raster)) 
#  x    y   
# Min. : 1.00 Min. : 1.00 
# 1st Qu.: 37.75 1st Qu.: 28.75 
# Median : 74.50 Median : 56.50 
# Mean : 74.50 Mean : 56.50 
# 3rd Qu.:111.25 3rd Qu.: 84.25 
# Max. :148.00 Max. :112.00 

# > M3::get.grid.info.M3(lcc.file) 
# $x.orig 
# [1] -2736000 
# $y.orig 
# [1] -2088000 
# $x.cell.width 
# [1] 36000 
# $y.cell.width 
# [1] 36000 
# $hz.units 
# [1] "m" 
# $ncols 
# [1] 148 
# $nrows 
# [1] 112 
# $nlays 
# [1] 1 

# The grid (`coordinates(o3.raster)`) is integers, because this 
# data is stored using the IOAPI convention. IOAPI makes the grid 
# Cartesian by using an (approximately) equiareal projection (LCC) 
# and abstracting grid positioning to metadata stored in netCDF 
# global attributes. Some of this spatial metadata can be accessed 
# by `M3::get.grid.info.M3` (above), and some can be accessed via 
# the coordinate reference system (`CRS`, see `lcc.proj4` above) 

## Get US state boundaries in projection units. 
state.map <- maps::map(
    database="state", projection="lambert", par=c(33,45), plot=FALSE) 
#     parameters to lambert: ^^^^^^^^^^^^ 
#     see mapproj::mapproject 

# replace its coordinates with 
metadata.coords.IOAPI.list <- M3::get.grid.info.M3(lcc.file) 
metadata.coords.IOAPI.x.orig <- metadata.coords.IOAPI.list$x.orig 
metadata.coords.IOAPI.y.orig <- metadata.coords.IOAPI.list$y.orig 
metadata.coords.IOAPI.x.cell.width <- metadata.coords.IOAPI.list$x.cell.width 
metadata.coords.IOAPI.y.cell.width <- metadata.coords.IOAPI.list$y.cell.width 
map.lines <- M3::get.map.lines.M3.proj(
    file=lcc.file, database="state", units="m") 
map.lines.coords.IOAPI.x <- 
    (map.lines$coords[,1] - metadata.coords.IOAPI.x.orig)/metadata.coords.IOAPI.x.cell.width 
map.lines.coords.IOAPI.y <- 
    (map.lines$coords[,2] - metadata.coords.IOAPI.y.orig)/metadata.coords.IOAPI.y.cell.width 
map.lines.coords.IOAPI <- 
    cbind(map.lines.coords.IOAPI.x, map.lines.coords.IOAPI.y) 
# start debugging 
class(map.lines.coords.IOAPI) 
summary(map.lines.coords.IOAPI) 
# end debugging 

# >  class(map.lines.coords.IOAPI) 
# [1] "matrix" 
# >  summary(map.lines.coords.IOAPI) 
# map.lines.coords.IOAPI.x map.lines.coords.IOAPI.y 
# Min. : 12.88   Min. :14.47   
# 1st Qu.: 78.62   1st Qu.:39.28   
# Median :101.37   Median :57.25   
# Mean : 95.17   Mean :55.65   
# 3rd Qu.:124.47   3rd Qu.:72.57   
# Max. :140.51   Max. :93.16   
# NA's :168    NA's :168   

coordinates(state.map.shp) <- map.lines.coords.IOAPI # FAIL: 
> Error in `coordinates<-`(`*tmp*`, value = c(99.0242231482288, 99.1277727928691, : 
> setting coordinates cannot be done on Spatial objects, where they have already been set 

state.map.IOAPI <- state.map # copy 
state.map.IOAPI$x <- map.lines.coords.IOAPI.x 
state.map.IOAPI$y <- map.lines.coords.IOAPI.y 
state.map.IOAPI$range <- c(
    min(map.lines.coords.IOAPI.x), 
    max(map.lines.coords.IOAPI.x), 
    min(map.lines.coords.IOAPI.y), 
    max(map.lines.coords.IOAPI.y)) 
state.map.IOAPI.shp <- 
    maptools::map2SpatialLines(state.map.IOAPI, proj4string=lcc.crs) 
# start debugging 
# thanks, Felix Andrews! 
class(state.map.IOAPI.shp) 
summary(do.call("rbind", 
    unlist(coordinates(state.map.IOAPI.shp), recursive=FALSE))) 
# end debugging 

# > class(state.map.IOAPI.shp) 
# [1] "SpatialLines" 
# attr(,"package") 
# [1] "sp" 

# > summary(do.call("rbind", 
# + unlist(coordinates(state.map.IOAPI.shp), recursive=FALSE))) 
#  V1    V2  
# Min. : 12.88 Min. :14.47 
# 1st Qu.: 78.62 1st Qu.:39.28 
# Median :101.37 Median :57.25 
# Mean : 95.17 Mean :55.65 
# 3rd Qu.:124.47 3rd Qu.:72.57 
# Max. :140.51 Max. :93.16 

pdf(file=lcc.pdf) 
rasterVis::levelplot(o3.raster, margin=FALSE 
) + latticeExtra::layer(
    sp::sp.lines(state.map.IOAPI.shp, lwd=0.8, col='darkgray')) 
dev.off() 
# change this for viewing PDF on your system 
system(sprintf("xpdf %s", lcc.pdf)) 

##### end example 3 #####