# fill gaps in a timeseries with averages

I have a dataframe like so:

``````day         sum_flux  samples mean
2005-10-26     0.02     48    0.02
2005-10-27     0.12     12    0.50
``````

It's a series of daily readings spanning 5 years, however some of the days are missing. I want to fill these days with the average of that month from other years.

i.e if 26-10-2005 was missing I'd want to use the average of all Octobers in the data set. if all of October was missing I'd want to apply this average to each missing day.

I think I need to build a function (possibly using plyr) to evaluate the days. However I'm very inexperienced with using the various timeseries objects in R, and conditionally subsetting data and would like some advice. Especially regarding which type of timeseries I should be using.

Many Thanks

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By doing this, you would be assuming that there is no trend, that is, each year has similar values to the others. Are you sure you believe that? – Richie Cotton Sep 8 '11 at 9:57
Also, which column is it that you want to apply the average to, `sum_flux` or `mean`? – Richie Cotton Sep 8 '11 at 10:07

Some sample data. I'm assuming that `sum_flux` is the column that has missing values, and that you want to calculate values for.

``````library(lubridate)
days <- seq.POSIXt(ymd("2005-10-26"), ymd("2010-10-26"), by = "1 day")
n_days <- length(days)
day      = days,
sum_flux = runif(n_days),
samples  = sample(100, n_days, replace = TRUE),
mean     = runif(n_days)
)
readings\$sum_flux[sample(n_days, floor(n_days / 10))] <- NA
``````

``````readings\$month <- month(readings\$day, label = TRUE)
``````

Use `tapply` to get the monthly mean flux.

``````monthly_avg_flux <- with(readings, tapply(sum_flux, month, mean, na.rm = TRUE))
``````

Use this value whenever the flux is missing, or keep the flux if not.

``````readings\$sum_flux2 <- with(readings, ifelse(
is.na(sum_flux),
monthly_avg_flux[month],
sum_flux
))
``````
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+1 for lubridate and for pointing out the effect in your comment – Brandon Bertelsen Sep 8 '11 at 13:25
Thanks very much Richie, sorry about the delay in responding. RE: assuming no trend, generally the yearly variability is > than any measurable trend (the timeseries is too short). – BetaScoo8 Sep 12 '11 at 11:39
Just ran though the data, exactly what I was looking for, thanks again. – BetaScoo8 Sep 12 '11 at 13:30

This is one (very fast) way in data.table.

Using the nice example data from Richie :

``````require(data.table)
days <- seq(as.IDate("2005-10-26"), as.IDate("2010-10-26"), by = "1 day")
n_days <- length(days)
day      = days,
sum_flux = runif(n_days),
samples  = sample(100, n_days, replace = TRUE),
mean     = runif(n_days)
)
readings\$sum_flux[sample(n_days, floor(n_days / 10))] <- NA
day   sum_flux samples       mean
[1,] 2005-10-26 0.32838686      94 0.09647325
[2,] 2005-10-27 0.14686591      88 0.48728321
[3,] 2005-10-28 0.25800913      51 0.72776002
[4,] 2005-10-29 0.09628937      81 0.80954124
[5,] 2005-10-30 0.70721591      23 0.60165240
[6,] 2005-10-31 0.59555079       2 0.96849533
[7,] 2005-11-01         NA      42 0.37566491
[8,] 2005-11-02 0.01649860      89 0.48866220
[9,] 2005-11-03 0.46802818      49 0.28920807
[10,] 2005-11-04 0.13024856      30 0.29051080
First 10 rows of 1827 printed.
``````

Create the average for each month, in appearance order of each group :

``````> avg = readings[,mean(sum_flux,na.rm=TRUE),by=list(mnth = month(day))]
> avg
mnth        V1
[1,]   10 0.4915999
[2,]   11 0.5107873
[3,]   12 0.4451787
[4,]    1 0.4966040
[5,]    2 0.4972244
[6,]    3 0.4952821
[7,]    4 0.5106539
[8,]    5 0.4717122
[9,]    6 0.5110490
[10,]    7 0.4507383
[11,]    8 0.4680827
[12,]    9 0.5150618
``````

Next reorder `avg` to start in January :

``````avg = avg[order(mnth)]
avg
mnth        V1
[1,]    1 0.4966040
[2,]    2 0.4972244
[3,]    3 0.4952821
[4,]    4 0.5106539
[5,]    5 0.4717122
[6,]    6 0.5110490
[7,]    7 0.4507383
[8,]    8 0.4680827
[9,]    9 0.5150618
[10,]   10 0.4915999
[11,]   11 0.5107873
[12,]   12 0.4451787
``````

Now update by reference (`:=`) the `sum_flux` column, where `sum_flux` is `NA`, with the value from `avg` for that month.

``````readings[is.na(sum_flux), sum_flux:=avg\$V1[month(day)]]
day   sum_flux samples       mean
[1,] 2005-10-26 0.32838686      94 0.09647325
[2,] 2005-10-27 0.14686591      88 0.48728321
[3,] 2005-10-28 0.25800913      51 0.72776002
[4,] 2005-10-29 0.09628937      81 0.80954124
[5,] 2005-10-30 0.70721591      23 0.60165240
[6,] 2005-10-31 0.59555079       2 0.96849533
[7,] 2005-11-01 0.51078729**    42 0.37566491  # ** updated with the Nov avg
[8,] 2005-11-02 0.01649860      89 0.48866220
[9,] 2005-11-03 0.46802818      49 0.28920807
[10,] 2005-11-04 0.13024856      30 0.29051080
First 10 rows of 1827 printed.
``````

Done.

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