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## Figures associated with MOD35 Cloud Mask Exploration
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setwd("~/acrobates/adamw/projects/MOD35C6")
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library(raster);beginCluster(10)
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library(rasterVis)
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library(rgdal)
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library(plotKML)
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library(Cairo)
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library(reshape)
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library(rgeos)
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library(splancs)
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## mod35C6 annual
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if(!file.exists("data/MOD35C6_2009.tif")){
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system("/usr/local/gdal-1.10.0/bin/gdalbuildvrt -a_srs '+proj=sinu +lon_0=0 +x_0=0 +y_0=0 +a=6371007.181 +b=6371007.181 +units=m +no_defs' -sd 1 -b 1 data/MOD35C6.vrt `find /home/adamw/acrobates/adamw/projects/interp/data/modis/mod35/summary/ -name '*h[0-9][0-9]v[0-9][0-9]*_mean.nc'` ")
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# system("gdalbuildvrt data/MOD35C6.vrt `find /home/adamw/acrobates/adamw/projects/interp/data/modis/mod35/summary/ -name '*h[1]*_mean.nc'` ")
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system("align.sh data/MOD35C6.vrt data/MOD09_2009.tif data/MOD35C6_2009.tif")
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system("/usr/local/bin/pkcreatect -min 0 -max 100 -g -i data/MOD35C6_2009.tif -o data/MOD35C6_2009a.tif -ct none -co COMPRESS=LZW")
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system("align.sh data/MOD35C6_CFday_pmiss.vrt data/MOD09_2009.tif data/MOD35C6_CFday_pmiss.tif")
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}
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mod35c6=raster("data/MOD35C6_2009_v1.tif")
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names(mod35c6)="C6MOD35CF"
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NAvalue(mod35c6)=255
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### summary of "alltests" netcdf file
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tests=c("CMday", "CMnight", "non_cloud_obstruction", "thin_cirrus_solar", "shadow", "thin_cirrus_ir", "cloud_adjacency_ir", "ir_threshold", "high_cloud_co2", "high_cloud_67", "high_cloud_138", "high_cloud_37_12", "cloud_ir_difference",
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"cloud_37_11","cloud_visible","cloud_visible_ratio","cloud_ndvi","cloud_night_73_11")
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alt=brick(lapply(tests,function(t){
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td=raster("data/MOD35_h12v04_mean_alltests.nc",varname=t)
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NAvalue(td)=255
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projection(td)='+proj=sinu +lon_0=0 +x_0=0 +y_0=0 +a=6371007.181 +b=6371007.181 +units=m +no_defs'
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return(td)
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} ))
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levelplot(alt,at=seq(100,0,len=100),col.regions=grey(seq(0,1,len=99)),layout=c(6,3))
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## landcover
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if(!file.exists("data/MCD12Q1_IGBP_2009_051_wgs84_1km.tif")){
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system(paste("/usr/local/gdal-1.10.0/bin/gdalwarp -tr 0.008983153 0.008983153 -r mode -ot Byte -co \"COMPRESS=LZW\"",
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" /mnt/data/jetzlab/Data/environ/global/MODIS/MCD12Q1/051/MCD12Q1_051_2009_wgs84.tif ",
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" -t_srs \"+proj=longlat +ellps=WGS84 +datum=WGS84 +no_defs\" ",
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" -te -180.0044166 -60.0074610 180.0044166 90.0022083 ",
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"data/MCD12Q1_IGBP_2009_051_wgs84_1km.tif -overwrite ",sep=""))}
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lulc=raster("data/MCD12Q1_IGBP_2009_051_wgs84_1km.tif")
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# lulc=ratify(lulc)
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data(worldgrids_pal) #load palette
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IGBP=data.frame(ID=0:16,col=worldgrids_pal$IGBP[-c(18,19)],
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lulc_levels2=c("Water","Forest","Forest","Forest","Forest","Forest","Shrublands","Shrublands","Savannas","Savannas","Grasslands","Permanent wetlands","Croplands","Urban and built-up","Cropland/Natural vegetation mosaic","Snow and ice","Barren or sparsely vegetated"),stringsAsFactors=F)
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IGBP$class=rownames(IGBP);rownames(IGBP)=1:nrow(IGBP)
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levels(lulc)=list(IGBP)
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#lulc=crop(lulc,mod09)
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names(lulc)="MCD12Q1"
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## make land mask
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if(!file.exists("data/land.tif"))
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land=calc(lulc,function(x) ifelse(x==0,NA,1),file="data/land.tif",options=c("COMPRESS=LZW","ZLEVEL=9","PREDICTOR=2"),datatype="INT1U",overwrite=T)
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land=raster("data/land.tif")
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## mask cloud masks to land pixels
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#mod09l=mask(mod09,land)
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#mod35l=mask(mod35,land)
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#####################################
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### compare MOD43 and MOD17 products
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## MOD17
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#extent(mod17)=alignExtent(mod17,mod09)
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if(!file.exists("data/MOD17.tif"))
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system("align.sh ~/acrobates/adamw/projects/interp/data/modis/MOD17/MOD17A3_Science_NPP_mean_00_12.tif data/MOD09_2009.tif data/MOD17.tif")
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mod17=raster("data/MOD17.tif",format="GTiff")
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NAvalue(mod17)=65535
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names(mod17)="MOD17_unscaled"
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if(!file.exists("data/MOD17qc.tif"))
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system("align.sh ~/acrobates/adamw/projects/interp/data/modis/MOD17/MOD17A3_Science_NPP_Qc_mean_00_12.tif data/MOD09_2009.tif data/MOD17qc.tif")
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mod17qc=raster("data/MOD17qc.tif",format="GTiff")
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NAvalue(mod17qc)=255
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names(mod17qc)="MOD17CF"
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## MOD11 via earth engine
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if(!file.exists("data/MOD11_2009.tif"))
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system("align.sh ~/acrobates/adamw/projects/interp/data/modis/mod11/2009/MOD11_LST_2009.tif data/MOD09_2009.tif data/MOD11_2009.tif")
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mod11=raster("data/MOD11_2009.tif",format="GTiff")
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names(mod11)="MOD11_unscaled"
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NAvalue(mod11)=0
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if(!file.exists("data/MOD11qc_2009.tif"))
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system("align.sh ~/acrobates/adamw/projects/interp/data/modis/mod11/2009/MOD11_Pmiss_2009.tif data/MOD09_2009.tif data/MOD11qc_2009.tif")
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mod11qc=raster("data/MOD11qc_2009.tif",format="GTiff")
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names(mod11qc)="MOD11CF"
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### Processing path
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if(!file.exists("data/MOD35pp.tif"))
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system("align.sh data/MOD35_ProcessPath.tif data/MOD09_2009.tif data/MOD35pp.tif")
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pp=raster("data/MOD35pp.tif")
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NAvalue(pp)=255
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names(pp)="MOD35pp"
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#hist(dif,maxsamp=1000000)
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## draw lulc-stratified random sample of mod35-mod09 differences
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#samp=sampleStratified(lulc, 1000, exp=10)
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#save(samp,file="LULC_StratifiedSample_10000.Rdata")
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#mean(dif[samp],na.rm=T)
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#Stats(dif,function(x) c(mean=mean(x),sd=sd(x)))
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###
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n=100
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at=seq(0,100,len=n)
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cols=grey(seq(0,1,len=n))
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cols=rainbow(n)
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bgyr=colorRampPalette(c("blue","green","yellow","red"))
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cols=bgyr(n)
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### Transects
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r1=Lines(list(
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Line(matrix(c(
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-61.688,4.098,
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-59.251,3.430
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),ncol=2,byrow=T))),"Venezuela")
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r2=Lines(list(
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Line(matrix(c(
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133.746,-31.834,
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134.226,-32.143
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),ncol=2,byrow=T))),"Australia")
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r3=Lines(list(
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Line(matrix(c(
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73.943,27.419,
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74.369,26.877
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),ncol=2,byrow=T))),"India")
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#r4=Lines(list(
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# Line(matrix(c(
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# -5.164,42.270,
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# -4.948,42.162
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# ),ncol=2,byrow=T))),"Spain")
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r5=Lines(list(
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Line(matrix(c(
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33.195,12.512,
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33.802,12.894
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),ncol=2,byrow=T))),"Sudan")
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#r6=Lines(list(
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# Line(matrix(c(
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# -63.353,-10.746,
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# -63.376,-9.310
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# ),ncol=2,byrow=T))),"Brazil")
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trans=SpatialLines(list(r1,r2,r3,r5),CRS("+proj=longlat +ellps=WGS84 +datum=WGS84 +no_defs "))
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### write out shapefiles of transects
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writeOGR(SpatialLinesDataFrame(trans,data=data.frame(ID=names(trans)),match.ID=F),"output",layer="transects",driver="ESRI Shapefile",overwrite=T)
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## buffer transects to get regional values
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transb=gBuffer(trans,byid=T,width=0.4)
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## make polygons of bounding boxes
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bb0 <- lapply(slot(transb, "polygons"), bbox)
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bb1 <- lapply(bb0, bboxx)
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# turn these into matrices using a helper function in splancs
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bb2 <- lapply(bb1, function(x) rbind(x, x[1,]))
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# close the matrix rings by appending the first coordinate
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rn <- row.names(transb)
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# get the IDs
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bb3 <- vector(mode="list", length=length(bb2))
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# make somewhere to keep the output
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for (i in seq(along=bb3)) bb3[[i]] <- Polygons(list(Polygon(bb2[[i]])),
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ID=rn[i])
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# loop over the closed matrix rings, adding the IDs
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bbs <- SpatialPolygons(bb3, proj4string=CRS(proj4string(transb)))
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trd1=lapply(1:length(transb),function(x) {
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td=crop(mod11,transb[x])
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tdd=lapply(list(mod35c5,mod35c6,mod09,mod17,mod17qc,mod11,mod11qc,lulc,pp),function(l) resample(crop(l,transb[x]),td,method="ngb"))
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## normalize MOD11 and MOD17
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for(j in which(do.call(c,lapply(tdd,function(i) names(i)))%in%c("MOD11_unscaled","MOD17_unscaled"))){
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trange=cellStats(tdd[[j]],range)
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tscaled=100*(tdd[[j]]-trange[1])/(trange[2]-trange[1])
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tscaled@history=list(range=trange)
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names(tscaled)=sub("_unscaled","",names(tdd[[j]]))
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tdd=c(tdd,tscaled)
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}
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return(brick(tdd))
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})
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## bind all subregions into single dataframe for plotting
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trd=do.call(rbind.data.frame,lapply(1:length(trd1),function(i){
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d=as.data.frame(as.matrix(trd1[[i]]))
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d[,c("x","y")]=coordinates(trd1[[i]])
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d$trans=names(trans)[i]
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d=melt(d,id.vars=c("trans","x","y"))
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return(d)
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}))
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transd=do.call(rbind.data.frame,lapply(1:length(trans),function(l) {
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td=as.data.frame(extract(trd1[[l]],trans[l],along=T,cellnumbers=F)[[1]])
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td$loc=extract(trd1[[l]],trans[l],along=T,cellnumbers=T)[[1]][,1]
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td[,c("x","y")]=xyFromCell(trd1[[l]],td$loc)
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td$dist=spDistsN1(as.matrix(td[,c("x","y")]), as.matrix(td[1,c("x","y")]),longlat=T)
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td$transect=names(trans[l])
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td2=melt(td,id.vars=c("loc","x","y","dist","transect"))
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td2=td2[order(td2$variable,td2$dist),]
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# get per variable ranges to normalize
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tr=cast(melt.list(tapply(td2$value,td2$variable,function(x) data.frame(min=min(x,na.rm=T),max=max(x,na.rm=T)))),L1~variable)
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td2$min=tr$min[match(td2$variable,tr$L1)]
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td2$max=tr$max[match(td2$variable,tr$L1)]
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print(paste("Finished ",names(trans[l])))
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return(td2)}
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))
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transd$type=ifelse(grepl("MOD35|MOD09|CF",transd$variable),"CF","Data")
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## comparison of % cloudy days
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if(!file.exists("data/dif_c5_09.tif"))
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overlay(mod35c5,mod09,fun=function(x,y) {return(x-y)},file="data/dif_c5_09.tif",format="GTiff",options=c("COMPRESS=LZW","ZLEVEL=9"),overwrite=T)
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dif_c5_09=raster("data/dif_c5_09.tif",format="GTiff")
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#dif_c6_09=mod35c6-mod09
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#dif_c5_c6=mod35c5-mod35c6
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## exploring various ways to compare cloud products along landcover or processing path edges
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#t1=trd1[[1]]
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#dif_p=calc(trd1[[1]], function(x) (x[1]-x[3])/(1-x[1]))
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#edge=calc(edge(subset(t1,"MCD12Q1"),classes=T,type="inner"),function(x) ifelse(x==1,1,NA))
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#edgeb=buffer(edge,width=5000)
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#edgeb=calc(edgeb,function(x) ifelse(is.na(x),0,1))
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#names(edge)="edge"
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#names(edgeb)="edgeb"
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#td1=as.data.frame(stack(t1,edge,edgeb))
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#cor(td1$MOD17,td1$C6MOD35,use="complete",method="spearman")
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#cor(td1$MOD17[td1$edgeb==1],td1$C5MOD35[td1$edgeb==1],use="complete",method="spearman")
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239
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### Correlations
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240
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#trdw=cast(trd,trans+x+y~variable,value="value")
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#cor(trdw$MOD17,trdw$C5MOD35,use="complete",method="spearman")
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#Across all pixels in the four regions analyzed in Figure 3 there is a much larger correlation between mean NPP and the C5 MOD35 CF (Spearman’s ρ = -0.61, n=58,756) than the C6 MOD35 CF (ρ = 0.00, n=58,756) or MOD09 (ρ = -0.07, n=58,756) products.
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#by(trdw,trdw$trans,function(x) cor(as.data.frame(na.omit(x[,c("C5MOD35CF","C6MOD35CF","C5MOD09CF","MOD17","MOD11")])),use="complete",method="spearman"))
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245
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246
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247
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## table of correlations
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248
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#trdw_cor=as.data.frame(na.omit(trdw[,c("C5MOD35CF","C6MOD35CF","C5MOD09CF","MOD17","MOD11")]))
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#nrow(trdw_cor)
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250
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#round(cor(trdw_cor,method="spearman"),2)
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251
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252
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253
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## set up some graphing parameters
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254
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at=seq(0,100,leng=100)
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255
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bgyr=colorRampPalette(c("purple","blue","green","yellow","orange","red","red"))
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256
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bgrayr=colorRampPalette(c("purple","blue","grey","red","red"))
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cols=bgyr(100)
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258
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259
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## global map
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260
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library(maptools)
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261
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coast=map2SpatialLines(map("world", interior=FALSE, plot=FALSE),proj4string=CRS("+proj=longlat +ellps=WGS84 +datum=WGS84 +no_defs"))
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263
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g1=levelplot(stack(mod35c5,mod09),xlab=" ",scales=list(x=list(draw=F),y=list(alternating=1)),col.regions=cols,at=at)+layer(sp.polygons(bbs[1:4],lwd=2))+layer(sp.lines(coast,lwd=.5))
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264
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|
265
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g2=levelplot(dif_c5_09,col.regions=bgrayr(100),at=seq(-70,70,len=100),margin=F,ylab=" ",colorkey=list("right"))+layer(sp.polygons(bbs[1:4],lwd=2))+layer(sp.lines(coast,lwd=.5))
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g2$strip=strip.custom(var.name="Difference (C5MOD35-C5MOD09)",style=1,strip.names=T,strip.levels=F) #update strip text
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267
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#g3=histogram(dif_c5_09,col="black",border=NA,scales=list(x=list(at=c(-50,0,50)),y=list(draw=F),cex=1))+layer(panel.abline(v=0,col="red",lwd=2))
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268
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|
269
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### regional plots
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270
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p1=useOuterStrips(levelplot(value~x*y|variable+trans,data=trd[!trd$variable%in%c("MOD17_unscaled","MOD11_unscaled","MCD12Q1","MOD35pp"),],asp=1,scales=list(draw=F,rot=0,relation="free"),
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271
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at=at,col.regions=cols,maxpixels=7e6,
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272
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ylab="Latitude",xlab="Longitude"),strip = strip.custom(par.strip.text=list(cex=.7)))+layer(sp.lines(trans,lwd=2))
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273
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|
274
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p2=useOuterStrips(
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275
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levelplot(value~x*y|variable+trans,data=trd[trd$variable%in%c("MCD12Q1"),],
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276
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asp=1,scales=list(draw=F,rot=0,relation="free"),colorkey=F,
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277
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at=c(-1,IGBP$ID),col.regions=IGBP$col,maxpixels=7e7,
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278
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legend=list(
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279
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right=list(fun=draw.key(list(columns=1,#title="MCD12Q1 \n IGBP Land \n Cover",
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280
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rectangles=list(col=IGBP$col,size=1),
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text=list(as.character(IGBP$ID),at=IGBP$ID-.5))))),
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282
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ylab="",xlab=" "),strip = strip.custom(par.strip.text=list(cex=.7)),strip.left=F)+layer(sp.lines(trans,lwd=2))
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283
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p3=useOuterStrips(
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284
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levelplot(value~x*y|variable+trans,data=trd[trd$variable%in%c("MOD35pp"),],
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285
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asp=1,scales=list(draw=F,rot=0,relation="free"),colorkey=F,
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286
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at=c(-1:4),col.regions=c("blue","cyan","tan","darkgreen"),maxpixels=7e7,
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287
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legend=list(
|
288
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right=list(fun=draw.key(list(columns=1,#title="MOD35 \n Processing \n Path",
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289
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rectangles=list(col=c("blue","cyan","tan","darkgreen"),size=1),
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text=list(c("Water","Coast","Desert","Land")))))),
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291
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ylab="",xlab=" "),strip = strip.custom(par.strip.text=list(cex=.7)),strip.left=F)+layer(sp.lines(trans,lwd=2))
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292
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293
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## transects
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294
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p4=xyplot(value~dist|transect,groups=variable,type=c("smooth","p"),
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295
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data=transd,panel=function(...,subscripts=subscripts) {
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296
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td=transd[subscripts,]
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297
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## mod09
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298
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imod09=td$variable=="C5MOD09CF"
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299
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panel.xyplot(td$dist[imod09],td$value[imod09],type=c("p","smooth"),span=0.2,subscripts=1:sum(imod09),col="red",pch=16,cex=.25)
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300
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## mod35C5
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301
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imod35=td$variable=="C5MOD35CF"
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302
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panel.xyplot(td$dist[imod35],td$value[imod35],type=c("p","smooth"),span=0.09,subscripts=1:sum(imod35),col="blue",pch=16,cex=.25)
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303
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## mod35C6
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304
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imod35c6=td$variable=="C6MOD35CF"
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305
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panel.xyplot(td$dist[imod35c6],td$value[imod35c6],type=c("p","smooth"),span=0.09,subscripts=1:sum(imod35c6),col="black",pch=16,cex=.25)
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306
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## mod17
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307
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imod17=td$variable=="MOD17"
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308
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panel.xyplot(td$dist[imod17],100*((td$value[imod17]-td$min[imod17][1])/(td$max[imod17][1]-td$min[imod17][1])),
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309
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type=c("smooth"),span=0.09,subscripts=1:sum(imod17),col="darkgreen",lty=5,pch=1,cex=.25)
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310
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imod17qc=td$variable=="MOD17CF"
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311
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panel.xyplot(td$dist[imod17qc],td$value[imod17qc],type=c("p","smooth"),span=0.09,subscripts=1:sum(imod17qc),col="darkgreen",pch=16,cex=.25)
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312
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## mod11
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313
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imod11=td$variable=="MOD11"
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314
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panel.xyplot(td$dist[imod11],100*((td$value[imod11]-td$min[imod11][1])/(td$max[imod11][1]-td$min[imod11][1])),
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315
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type=c("smooth"),span=0.09,subscripts=1:sum(imod17),col="orange",lty="dashed",pch=1,cex=.25)
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316
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imod11qc=td$variable=="MOD11CF"
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317
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qcspan=ifelse(td$transect[1]=="Australia",0.2,0.05)
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318
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panel.xyplot(td$dist[imod11qc],td$value[imod11qc],type=c("p","smooth"),npoints=100,span=qcspan,subscripts=1:sum(imod11qc),col="orange",pch=16,cex=.25)
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319
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## land
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320
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path=td[td$variable=="MOD35pp",]
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321
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panel.segments(path$dist,-10,c(path$dist[-1],max(path$dist,na.rm=T)),-10,col=c("blue","cyan","tan","darkgreen")[path$value+1],subscripts=1:nrow(path),lwd=10,type="l")
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322
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land=td[td$variable=="MCD12Q1",]
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323
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panel.segments(land$dist,-20,c(land$dist[-1],max(land$dist,na.rm=T)),-20,col=IGBP$col[land$value+1],subscripts=1:nrow(land),lwd=10,type="l")
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324
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},subscripts=T,par.settings = list(grid.pars = list(lineend = "butt")),
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325
|
scales=list(
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326
|
x=list(alternating=1,relation="free"),#, lim=c(0,70)),
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327
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y=list(at=c(-18,-10,seq(0,100,len=5)),
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328
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labels=c("MCD12Q1 IGBP","MOD35 path",seq(0,100,len=5)),
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329
|
lim=c(-25,100)),
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330
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alternating=F),
|
331
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xlab="Distance Along Transect (km)", ylab="% Missing Data / % of Maximum Value",
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332
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legend=list(
|
333
|
bottom=list(fun=draw.key(list( rep=FALSE,columns=1,title=" ",
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334
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lines=list(type=c("b","b","b","b","b","l","b","l"),pch=16,cex=.5,
|
335
|
lty=c(0,1,1,1,1,5,1,5),
|
336
|
col=c("transparent","red","blue","black","darkgreen","darkgreen","orange","orange")),
|
337
|
text=list(
|
338
|
c("MODIS Products","C5 MOD09 % Cloudy","C5 MOD35 % Cloudy","C6 MOD35 % Cloudy","MOD17 % Missing","MOD17 (scaled)","MOD11 % Missing","MOD11 (scaled)")),
|
339
|
rectangles=list(border=NA,col=c(NA,"tan","darkgreen")),
|
340
|
text=list(c("C5 MOD35 Processing Path","Desert","Land")),
|
341
|
rectangles=list(border=NA,col=c(NA,IGBP$col[sort(unique(transd$value[transd$variable=="MCD12Q1"]+1))])),
|
342
|
text=list(c("MCD12Q1 IGBP Land Cover",IGBP$class[sort(unique(transd$value[transd$variable=="MCD12Q1"]+1))])))))),
|
343
|
strip = strip.custom(par.strip.text=list(cex=.75)))
|
344
|
print(p4)
|
345
|
|
346
|
|
347
|
|
348
|
CairoPDF("output/mod35compare.pdf",width=11,height=7)
|
349
|
#CairoPNG("output/mod35compare_%d.png",units="in", width=11,height=8.5,pointsize=4000,dpi=1200,antialias="subpixel")
|
350
|
### Global Comparison
|
351
|
print(g1,position=c(0,.35,1,1),more=T)
|
352
|
print(g2,position=c(0,0,1,0.415),more=F)
|
353
|
#print(g3,position=c(0.31,0.06,.42,0.27),more=F)
|
354
|
|
355
|
### MOD35 Desert Processing path
|
356
|
levelplot(pp,asp=1,scales=list(draw=T,rot=0),maxpixels=1e6,
|
357
|
at=c(-1:3),col.regions=c("blue","cyan","tan","darkgreen"),margin=F,
|
358
|
colorkey=list(space="bottom",title="MOD35 Processing Path",labels=list(labels=c("Water","Coast","Desert","Land"),at=0:4-.5)))+layer(sp.polygons(bbs,lwd=2))+layer(sp.lines(coast,lwd=.5))
|
359
|
### levelplot of regions
|
360
|
print(p1,position=c(0,0,.62,1),more=T)
|
361
|
print(p2,position=c(0.6,0.21,0.78,0.79),more=T)
|
362
|
print(p3,position=c(0.76,0.21,1,0.79))
|
363
|
### profile plots
|
364
|
print(p4)
|
365
|
dev.off()
|
366
|
|
367
|
### summary stats for paper
|
368
|
td=cast(transect+loc+dist~variable,value="value",data=transd)
|
369
|
td2=melt.data.frame(td,id.vars=c("transect","dist","loc","MOD35pp","MCD12Q1"))
|
370
|
|
371
|
## function to prettyprint mean/sd's
|
372
|
msd= function(x) paste(round(mean(x,na.rm=T),1),"% ±",round(sd(x,na.rm=T),1),sep="")
|
373
|
|
374
|
cast(td2,transect+variable~MOD35pp,value="value",fun=msd)
|
375
|
cast(td2,transect+variable~MOD35pp+MCD12Q1,value="value",fun=msd)
|
376
|
cast(td2,transect+variable~.,value="value",fun=msd)
|
377
|
|
378
|
cast(td2,transect+variable~.,value="value",fun=msd)
|
379
|
|
380
|
cast(td2,variable~MOD35pp,value="value",fun=msd)
|
381
|
cast(td2,variable~.,value="value",fun=msd)
|
382
|
|
383
|
td[td$transect=="Venezuela",]
|
384
|
|
385
|
|
386
|
#### export KML
|
387
|
library(plotKML)
|
388
|
|
389
|
kml_open("output/modiscloud.kml")
|
390
|
|
391
|
readAll(mod35c5)
|
392
|
|
393
|
kml_layer.Raster(mod35c5,
|
394
|
plot.legend = TRUE,raster_name="Collection 5 MOD35 Cloud Frequency",
|
395
|
z.lim = c(0,100),colour_scale = get("colour_scale_numeric", envir = plotKML.opts),
|
396
|
# home_url = get("home_url", envir = plotKML.opts),
|
397
|
# metadata = NULL, html.table = NULL,
|
398
|
altitudeMode = "clampToGround", balloon = FALSE
|
399
|
)
|
400
|
|
401
|
system(paste("gdal_translate -of KMLSUPEROVERLAY ",mod35c5@file@name," output/mod35c5.kmz -co FORMAT=JPEG"))
|
402
|
|
403
|
logo = "http://static.tumblr.com/t0afs9f/KWTm94tpm/yale_logo.png"
|
404
|
kml_screen(image.file = logo, position = "UL", sname = "YALE logo",size=c(.1,.1))
|
405
|
kml_close("modiscloud.kml")
|
406
|
kml_compress("modiscloud.kml",files=c(paste(month.name,".png",sep=""),"obj_legend.png"),zip="/usr/bin/zip")
|