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I have been working with HDF5 files and I have been able to do some subsetting in rhdf5. there are three files:. Longitude, latitude and the ColumnAmountNO2Trop. I have extracted this for all the days in the year as a list in "files".

files <- list.files(pattern = ".he5", full.names = TRUE)
attribute <- "/HDFEOS/SWATHS/ColumnAmountNO2/Data Fields/ColumnAmountNO2Trop"
attribute2<-"/HDFEOS/SWATHS/ColumnAmountNO2/Geolocation Fields/Longitude"
attribute3<-"/HDFEOS/SWATHS/ColumnAmountNO2/Geolocation Fields/Latitude"

and the sub files below:

out.list <- lapply(files, h5read, attribute)
Lon <- lapply(files, h5read, attribute2)
Lat<-lapply(files, h5read, attribute3)

However, I need to subset out.list(which contains the 'ColumnAmountNO2Trop' for all the days of the year) based on the latitude and longitude values to narrow down my area of reference geographically. I was able to subset them using row and column numbers:

lapply(out.list, function(x) x[2:8,2:8]) 

However, the goegraphic location of 2,2 on day one may not be the same on day 2. I tried to define the Longitude and latitude values to subset with below but it returned an error message.

lonKeep <- which(Lon > Lond[1] & Lon < Lond[2])
latKeep <- which(lat> latRan[1] & lat< latRan[2]) 

How do I subset 'out.list' for Lon 2-9 and Lat 2-9, please?

share|improve this question
COuld you add some data? –  Paulo Cardoso Mar 18 at 9:27
Sorry I copied it wrongly initially. I have uploaded sample files here [Link] (dropbox.com/sh/t521gr1rpijmkt9/vuo8Y9tpZw) . I would be working with about 1000 files at the same time soon. –  Joke O. Mar 18 at 10:04
I think I found a solution. I'll post it soon. –  Paulo Cardoso Mar 18 at 19:58
Can you tell us the ROI ? Where is this place? –  Paulo Cardoso Mar 18 at 20:32
Ok. It is the Niger delta area of Nigeria –  Joke O. Mar 18 at 20:32

1 Answer 1

up vote 0 down vote accepted

You'll find other approaches, possibly with a solution closer to you needs. An option with hdf5 and raster would be to extract the relevant data from hdf5 files, build a raster, crop it to the ROI and get the values for that area.

I'd do something like this:


my_wd <- './Stackoverflow/22474417'
files <- list.files(path = my_wd, pattern = ".he5", full.names = F)
#[1] "M1.he5" "M2.he5"

attribute <- "/HDFEOS/SWATHS/ColumnAmountNO2/Data Fields/ColumnAmountNO2Trop"
attribute2<- "/HDFEOS/SWATHS/ColumnAmountNO2/Geolocation Fields/Longitude"
attribute3<- "/HDFEOS/SWATHS/ColumnAmountNO2/Geolocation Fields/Latitude"

Read a single file

m1 <- h5read(file.path(my_wd, files[1]), name = attribute)
dim(m1) # file dimension
# [1] 60 54
# [1] 3060

We'll use it to build a rasterLayer, after extracting the geographical extent from atribute2 and atribute3

Lon <- h5read(file.path(my_wd, files[1]) , attribute2)
Lat <- h5read(file.path(my_wd, files[1]) , attribute3)

xmin <- min(Lon[1:prod(dim(m1))]) # Min. Longitude
# [1] -7.141283
xmax <- max(Lon[1:prod(dim(m1))]) # Max. Longitude
ymin <- min(Lat[1:prod(dim(m1))]) # Min. Longitude
ymax <- max(Lat[1:prod(dim(m1))]) # Max. Longitude

We can build a raster with the info above

m1m <- matrix(m1, nrow = 60)    
m1r <- raster(m1m, xmn = xmin, xmx = xmax,
              ymn =  ymin, ymx = ymax)

Take some spatial data to overlay

spdata <- wrld_simpl[which(wrld_simpl@data$NAME %in% c('Nigeria', 'Cameroon', 'Benin',
                                                       'Togo', 'Ghana',"Cote d'Ivoire",
                                                       'Gabon', 'Equatorial Guinea')), ] 

From Africa Shoreline 30m

delta <- readOGR(dsn = './africa_shoreline_30m',
                 layer = 'nigeria_delta')

Build a ROI extent

frm <- extent(c(2, 9, 2, 9))
pfrm <- as(frm, 'SpatialPolygons')

plot it

spplot(m1r,scales = list(draw = TRUE),  ylim=c(-1, 10)) +
  latticeExtra::layer(sp.polygons(stp, fill = NA, col = 'blue'))+
  latticeExtra::layer(sp.polygons(pfrm, fill = NA, col = 'red'))


Crop and get values from ROI

m1rf <- crop(m1r, frm)

spplot(m1rf, scales = list(draw = TRUE), xlim = c(1, 10), ylim=c(1, 10)) +
  latticeExtra::layer(sp.lines(delta, fill = NA, col = 'blue'))+
  latticeExtra::layer(sp.polygons(pfrm, fill = NA, col = 'red'))

spplot of ROI

Min.    -6.528723e+15
1st Qu.  9.437798e+14
Median   1.440395e+15
3rd Qu.  1.896734e+15
Max.     4.232078e+15
NA's     0.000000e+00

m1vals <- getValues(m1rf)

Once you agree with this, it's easy to loop over your file folder and get your data.

share|improve this answer
Hi Paulo, the approach is valid but isn't it possible to aapproach the data as image using another package instead of raster in R? This is because the grids are not equal but raster makes them equal. If it isn't possible I would stick with this. Thanks Paulo. –  Joke O. Mar 19 at 7:41
What if we try the package "fields" which is what I plot images with? –  Joke O. Mar 19 at 7:49
@JokeO. I've never used but could try. Is this looking good for you? I'm not sure we're getting the correct extents and from first file. –  Paulo Cardoso Mar 19 at 8:53
Oh yes Paulo, it looks good. I would try it all again today using your approach. I change the extent once we have a method. –  Joke O. Mar 19 at 9:51
Hi Paulo. Thanks. I just went through it and tried using a boundary shapefile to crop in addition to the raster methods above and it worked. –  Joke O. Mar 20 at 15:22

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