-2

I have a very long data frame with 200 stations number. The sample data is given here. Let the sample data bedf .Now I would like to check the auto correlation at lag 1 for each station number. Perform pre-whitening and calculate Mann-kendall trend for each stations after pre-whitening. I can do for one individual stations using the code below. Would you kindly help me how i can perform this for all the stations at once. Dataframe df

dput(df)
structure(list(stn_num = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 
1L, 1L, 1L, 1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 
2L, 2L, 2L, 2L, 2L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L, 3L
), .Label = c("08BB005", "08CE001", "08CF003"), class = "factor"), 
    year = c(1987L, 1988L, 1989L, 1990L, 1991L, 1992L, 1993L, 
    1994L, 1995L, 1996L, 1997L, 1998L, 1999L, 1980L, 1981L, 1982L, 
    1983L, 1984L, 1985L, 1986L, 1987L, 1988L, 1989L, 1990L, 1991L, 
    1992L, 1993L, 1984L, 1985L, 1986L, 1987L, 1988L, 1989L, 1990L, 
    1991L, 1992L, 1993L, 1994L), value = c(411.2146215, 346.9846995, 
    453.8616438, 435.3561644, 421.4019178, 444.7603825, 454.469589, 
    441.5884932, 339.76, 294.9562842, 371.8939726, 321.7016438, 
    337.7627397, 460.6622951, 513.1084932, 385.4580822, 386.6643836, 
    377.9076503, 440.7849315, 407.7731507, 454.4967123, 458.3259563, 
    421.4032877, 449.3890411, 456.3934247, 450.015847, 400.0569863, 
    1331.70765, 1415.484932, 1589.654795, 1606.709589, 1750.002732, 
    1803.646575, 1729.054795, 1802.509589, 1805.469945, 1711.854795, 
    1574.153425)), .Names = c("stn_num", "year", "value"), class = "data.frame", row.names = c(NA, 
-38L))

Code i have used for individual station's calculation

c<-acf(df$value,lag.max=1)
dim(c$acf)
c$acf[[2,1,1]]
df$prewhit1<-c$acf[[2,1,1]]*df$value
prewhitseries<-data.frame(with(df, (df$value[-1] - prewhit1[-length(prewhit1)])))
autocordata<-cbind(df,prewhitseries)
MannKendall(autocordata$prewhitseries)

So how i can perform the prewhitening and mankendall test for all the station number on the same dataframe at once. Thank you.

2
  • Could you run the sample code above at your end and make sure it runs without errors e.g. autocordata<-cbind(df,prewhitseries)...cheers
    – shekeine
    Feb 21, 2016 at 10:36
  • Second the comment above, the line prewhitseries<-data.frame(with(df, (df$value[-1] - prewhit1[-length(prewhit1)]))) produces a data.frame with only 37 rows which you then try to bind to one with 38. Also I'm a little confused on how your code is only running for one station since df contains data for two stations and the you're calculating a lag 1 acf on the entire series at once. Even if the cbind command worked it wouldn't create a column with the name prewhiteseries. Finally if you're using non-base R functions (MannKendall) please specify the package they're from.
    – admccurdy
    Feb 21, 2016 at 16:28

1 Answer 1

1

My above comments aside I think this will get you what you're looking for:

stationList <- unique(df$stn_num)
resultsList <- vector("list", length(stationList))
for(i in stationList){
  tempDF <- df[df$stn_num == i, ]
  c<-acf(tempDF$value,lag.max=1)
  t <- dim(c$acf)
  tempDF$prewhit1<-c$acf[[t[1], t[2], t[3]]]*tempDF$value
  prewhitseries<-data.frame(with(tempDF, (tempDF$value[-1] - prewhit1[-length(prewhit1)])))
  autocordata<-cbind(tempDF[-1,],prewhitseries)
  resultsList[[grep(i, stationList)]] <- MannKendall(autocordata[,5])
}
names(resultsList) <- stationList

I arbitrarily removed a row from the tempDF I create in the loop so the cbind command will actually work I'm not sure what you actually want to do there. You could get the same result with something from the apply family which might be the direction you want to go if you're trying to parallelize or need more efficiency.

1
  • Thank you Adam. This helps.
    – Cirrus
    Apr 11, 2016 at 16:23

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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