Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have two data sets with latitude, longitude, and temperature data. One data set corresponds to a geographic region of interest with the corresponding lat/long pairs that form the boundary and contents of the region (Matrix Dimension = 4518x2)

The other data set contains lat/long and temperature data for a larger region that envelopes the region of interest (Matrix Dimenion = 10875x3).

My question is: How do you extract the appropriate row data (lat, long, temperature) from the 2nd data set that matches the first data set's lat/long data?

I've tried a variety of "for loops," "subset," and "unique" commands but I can't obtain the matching temperature data.

Thanks in advance!


10/31 Edit: I forgot to mention that I'm using "R" to process this data.

The lat/long data for the region of interest was provided as a list of 4,518 files containing the lat/long coordinates in the name of each file:

x<- dir()

lenx<- length(x)

g <- strsplit(x, "_")

coord1 <- matrix(NA,nrow=lenx, ncol=1)  
coord2 <- matrix(NA,nrow=lenx, ncol=1)

for(i in 1:lenx) {  
coord1[i,1] <- unlist(g)[2+3*(i-1)]  
coord2[i,1] <- unlist(g)[3+3*(i-1)]     
} 

coord1<-as.numeric(coord1)  
coord2<-as.numeric(coord2)

coord<- cbind(coord1, coord2)

The lat/long and temperature data was obtained from an NCDF file for with temperature data for 10,875 lat/long pairs:

long<- tempcd$var[["Temp"]]$size[1]   
lat<- tempcd$var[["Temp"]]$size[2]   
time<- tempcd$var[["Temp"]]$size[3]  
proj<- tempcd$var[["Temp"]]$size[4]  

temp<- matrix(NA, nrow=lat*long, ncol = time)  
lat_c<- matrix(NA, nrow=lat*long, ncol=1)  
long_c<- matrix(NA, nrow=lat*long, ncol =1)  

counter<- 1  

for(i in 1:lat){  
    for(j in 1:long){  
        temp[counter,]<-get.var.ncdf(precipcd, varid= "Prcp", count = c(1,1,time,1), start=c(j,i,1,1))  
        counter<- counter+1  
    }  
}  

temp_gcm <- cbind(lat_c, long_c, temp)`

So now the question is how do you remove values from "temp_gcm" that correspond to lat/long data pairs from "coord?"

share|improve this question
    
A very interesting question. Does the set of lat/long for the area of interest simply bound the region, or is it the set of all lat/long pairs for which there is temperature data in that region? –  Nathaniel Ford Oct 30 '12 at 22:14
    
What language are we using here? And can we get a brief code sample to see what your data structures look like? –  slashingweapon Oct 30 '12 at 22:15
    
@Nathaniel Ford: The set of lat/long data corresponds to both the boundary of the region and the centroid for each grid within the region of interest. –  Noe Santos Oct 31 '12 at 15:01
    
@slashingweapon Oh right, I'm using "R" language to process this data. I will provide an example of the data structures shortly! –  Noe Santos Oct 31 '12 at 15:17
    
Can you separate the boundary points from the grid centroid points? You could use the boundary points to create a polygon and use one of the "point in polygon" functions (eg. package sp) to select the points that lie within the region. –  dcarlson Oct 31 '12 at 18:04

2 Answers 2

Noe,

I can think of a number of ways you could do this. The simplest, albeit not the most efficient would be to make use of R's which() function, which takes a logical argument, while iterating over the data frame which you want to apply the matches to. Of course, this is assuming that there can be at most a single match in the larger data set. Based on your data sets, I would do something like this:

attach(temp_gcm)    # adds the temp_gcm column names to the global namespace
attach(coord)    # adds the coord column names to the global namespace

matched.temp = vector(length = nrow(coord)) # To store matching results
for (i in seq(coord)) {

   matched.temp[i] = temp[which(lat_c == coord1[i] & long_c == coord2[i])]
}

# Now add the results column to the coord data frame (indexes match)
coord$temperature = matched.temp

The function which(lat_c == coord1[i] & long_c == coord2[i]) returns a vector of all rows in the dataframe temp_gcm which satisfy lat_c and long_c matching coord1 and coord2 respectively from row i in the iteration (NOTE: I'm assuming this vector will only have length 1, i.e. there is only 1 possible match). matched.temp[i] will then be assigned the value from the column temp in the dataframe temp_gcm which satisfied the logical condition. Note that the goal in doing this is that we create a vector which has matched values that correspond by index to the rows of the dataframe coord.

I hope this helps. Note that this is a rudimentary approach, and I would advise looking up the function merge() as well as apply() to do this in a more succinct manner.

share|improve this answer
    
Glad I could help, Noe. Just a point about R - there are tons of functions within the R base package alone for sorting and cleaning data. Most users who come from a traditional object oriented programming background like Java or C++ often resort to using loops or other 'hacks'. Since the S language (of which R is a dialect) is built primarily for statistical computing, many of these functions already exist. There are always functions that make it easy to compress your code. Those of us who have been using R for several years discover new functions and packages practically everyday! –  R_User Nov 2 '12 at 23:29
    
Thanks @R_User! This method appears to work! I devised another way this afternoon where I add an extra column of "0"s and a for-loop with an if-statement that tests each lat/long pair. If the statement is true then the 0 will be changed to a 1. I then extract the rows only where the last column = 1. I'll post the code in a moment. –  Noe Santos Nov 2 '12 at 23:32

I added an additional column full of zeros to use as the resultant for an IF statement. "x" is the number of rows in temp_gcm. "y" is the number of columns (representative of time steps). "temp_s" is the standardized temperature data

indicator<- matrix(0, nrow = x, ncol = 1)

precip_s<- cbind(precip_s, indicator)

temp_s<- cbind(temp_s, indicator)

for(aa in 1:x){

    current_lat<-latitudes[aa,1] #Latitudes corresponding to larger area

    current_long<- longitudes[aa,1] #Longitudes corresponding to larger area

    for(ab in 1:lenx){ #Lenx coresponds to nrow(coord)

        if(current_lat == coord[ab,1] & current_long == coord[ab,2]) {
            precip_s[aa,(y/12+1)]<-1 #y/12+1 corresponds to "indicator column"
            temp_s[aa,(y/12+1)]<-1
        } 
    }
}


precip_s<- precip_s[precip_s[,(y/12+1)]>0,] #Removes rows with "0"s remaining in "indcator" column

temp_s<- temp_s[temp_s[,(y/12+1)]>0,]


precip_s<- precip_s[,-(y/12+1)] #Removes "indicator column

temp_s<- temp_s[,-(y/12+1)]
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.