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I am trying to implement Chebyshev filter to smooth a time series but, unfortunately, there are NAs in the data series.

For example,

t <- seq(0, 1, len = 100)                     
x <- c(sin(2*pi*t*2.3) + 0.25*rnorm(length(t)),NA, cos(2*pi*t*2.3) + 0.25*rnorm(length(t)))

I am using Chebyshev filter: cf1 = cheby1(5, 3, 1/44, type = "low")

I am trying to filter the time series exclude NAs, but not mess up the orders/position. So, I have already tried na.rm=T, but it seems there's no such argument. Then

z <- filter(cf1, x)   # apply filter

Thank you guys.

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3 Answers 3

up vote 1 down vote accepted

You can remove the NAs beforehand using the compelete.cases function. You also might consider imputing the missing data. Check out the mtsdi or Amelia II packages.


Here's a solution with Rcpp. This might be helpful is speed is important:

t <- seq(0, 1, len = 100)
x <- c(sin(2*pi*t*2.3) + 0.25*rnorm(length(t)),NA, cos(2*pi*t*2.3) + 0.25*rnorm(length(t)))
NAs <- x
x2 <- x[!is.na(x)]
#do something to x2
src <- '
Rcpp::NumericVector vecX(vx);
Rcpp::NumericVector vecNA(vNA);
int j = 0;   //counter for vx
for (int i=0;i<vecNA.size();i++) {
  if (!(R_IsNA(vecNA[i]))) {
    //replace and update j
    vecNA[i] = vecX[j];
return Rcpp::wrap(vecNA);
fun <- cxxfunction(signature(vx="numeric",
if (identical(x,fun(x2,NAs)))
# [1] "worked"
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i am just wondering if the complete.case is the same as na.omit. Also, since i am using the observed SST time series, i am not sure if it is a good idea to inputing the missing values. –  Yu Deng Jul 18 '12 at 13:15
Hopefully this update solves the problem. –  chandler Jul 19 '12 at 11:37

Try using x <- x[!is.na(x)] to remove the NAs, then run the filter.

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sorry, but if i use na.omit, it will mass up the orders, i just want value of NA after the filter remaining NA, but all other non-NA values can pass. –  Yu Deng Jul 18 '12 at 12:52
Sorry, I'm not sure what you're asking. Do you want to keep your values in the same position, and have spaces in your data? –  Liz Sander Jul 18 '12 at 12:54
would na.remove() or na.remove.ts() from the tseries package do what you want? –  Liz Sander Jul 18 '12 at 13:01
Thank you very much, but i am wondering if i use x <- x[!is.na(x)], the new time series will remove all NAs, and how can i recover the original NAs back into series after filtering. –  Yu Deng Jul 18 '12 at 13:28
couldn't you use z <- filter(cf1, x[x!is.na(x)]) ? –  Liz Sander Jul 18 '12 at 15:56

I don't know if ts objects can have missing values, but if you just want to re-insert the NA values, you can use ?insert from R.utils. There might be a better way to do this.

install.packages(c('R.utils', 'signal'))
t <- seq(0, 1, len = 100)                     
x <- c(sin(2*pi*t*2.3) + 0.25*rnorm(length(t)), NA, NA, cos(2*pi*t*2.3) + 0.25*rnorm(length(t)), NA)
cf1 = cheby1(5, 3, 1/44, type = "low")
xex <- na.omit(x)
z <- filter(cf1, xex)   # apply
z <- as.numeric(z)
for (m in attributes(xex)$na.action) {
  z <- insert(z, ats = m, values = NA)
all.equal(is.na(z), is.na(x))
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