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I have multiple dataframes that look like the first below (following on in part from this post). I summed observations in 30 minute time intervals. But my original dataset shows no rows for periods where there were no observations. So if there were no observations in a 30-minute period, there is no data. The zeros have meaning, so I would like to add them in so I can plot a full pattern over a 'night of observations'. The plot will take the form of multiple overlain lines, each representing different nights, so each table (like that below; from one night) needs the same number of observation periods, and the same start and end points.

I thought about adding a new character vector period<-c("15:30", "16:00", ..., "07:00") but the other columns would need rearranging to match up. Likewise if I broke up the vector starttime .

What I have.

        starttime       Freq
1   2013-08-21 18:00:00     27
2   2013-08-21 18:30:00     13
3   2013-08-21 19:00:00     16
4   2013-08-21 19:30:00     5
5   2013-08-21 20:00:00     8
6   2013-08-21 20:30:00     9
7   2013-08-21 21:00:00     26
8   2013-08-21 21:30:00     22
9   2013-08-21 22:00:00     61
10  2013-08-21 22:30:00     93
11  2013-08-21 23:00:00     54
12  2013-08-21 23:30:00     42
13  2013-08-22 00:00:00     11
14  2013-08-22 00:30:00     2
15  2013-08-22 01:00:00     2
16  2013-08-22 01:30:00     3
17  2013-08-22 02:00:00     2
18  2013-08-22 03:00:00     1
19  2013-08-22 04:00:00     11

str(df)
'data.frame':   19 obs. of  2 variables:
$ time2: Factor w/ 19 levels "2013-08-21 18:00:00",..: 1 2 3 4 5 6 7 8 9 10 ...
$ Freq : int  27 13 16 5 8 9 26 22 61 93 ...

How I want it to be.

        starttime       Freq
1   2013-08-21 15:30:00     0
2   2013-08-21 18:00:00     27
3   2013-08-21 18:30:00     13
4   2013-08-21 19:00:00     16
5   2013-08-21 19:30:00     5
6   2013-08-21 20:00:00     8
7   2013-08-21 20:30:00     9
8   2013-08-21 21:00:00     26
9   2013-08-21 21:30:00     22
10  2013-08-21 22:00:00     61
11  2013-08-21 22:30:00     93
12  2013-08-21 23:00:00     54
13  2013-08-21 23:30:00     42
14  2013-08-22 00:00:00     11
15  2013-08-22 00:30:00     2
16  2013-08-22 01:00:00     2
17  2013-08-22 01:30:00     3
18  2013-08-22 02:00:00     2
19  2013-08-22 02:30:00     0
20  2013-08-22 03:00:00     1
21  2013-08-22 03:30:00     0
22  2013-08-22 04:00:00     11
23  2013-08-22 04:30:00     0
24  2013-08-22 05:00:00     0
25  2013-08-22 05:30:00     0
26  2013-08-22 06:00:00     0
27  2013-08-22 06:30:00     0

Always very grateful for advice.

Edit. Below is a dput

structure(list(time2 = structure(1:19, .Label = c("2013-08-21 18:00:00", 
"2013-08-21 18:30:00", "2013-08-21 19:00:00", "2013-08-21 19:30:00", 
"2013-08-21 20:00:00", "2013-08-21 20:30:00", "2013-08-21 21:00:00", 
"2013-08-21 21:30:00", "2013-08-21 22:00:00", "2013-08-21 22:30:00", 
"2013-08-21 23:00:00", "2013-08-21 23:30:00", "2013-08-22 00:00:00", 
"2013-08-22 00:30:00", "2013-08-22 01:00:00", "2013-08-22 01:30:00", 
"2013-08-22 02:00:00", "2013-08-22 03:00:00", "2013-08-22 04:00:00"
), class = "factor"), Freq = c(27L, 13L, 16L, 5L, 8L, 9L, 26L, 
22L, 61L, 93L, 54L, 42L, 11L, 2L, 2L, 3L, 2L, 1L, 11L)), .Names = c("time2", 
"Freq"), row.names = c(NA, -19L), class = "data.frame")
share|improve this question
    
Please provide the output of dput(df). –  Sven Hohenstein Jan 30 '14 at 19:08
    
Thanks @Sven, edited question. –  ptenax Jan 30 '14 at 20:11

1 Answer 1

up vote 2 down vote accepted

You can use merge:

times <- data.frame(starttime=seq(
  as.POSIXct("2013-08-21 18:00:00"), 
  as.POSIXct("2013-08-22 06:30:00"),
  by="30 min"
) )
df.fin <- merge(df, times, all.y=T)
df.fin$Freq[is.na(df.fin$Freq)] <- 0
df.fin
#              starttime Freq
# 1  2013-08-21 18:00:00   27
# 2  2013-08-21 18:30:00   13
# 3  2013-08-21 19:00:00   16
# 4  2013-08-21 19:30:00    5
# 5  2013-08-21 20:00:00    8
# ... ommitted values ...
# 20 2013-08-22 03:30:00    0
# 21 2013-08-22 04:00:00   11
# 22 2013-08-22 04:30:00    0
# 23 2013-08-22 05:00:00    0
# 24 2013-08-22 05:30:00    0
# 25 2013-08-22 06:00:00    0
# 26 2013-08-22 06:30:00    0

Also, as sven suggested, if your input data has spaces in a column, it's much easier if you dput it.

share|improve this answer
    
Thanks @BrodieG. It almost worked - the new vector times is perfect. But the merge process matches each new 30 min category in times against each entry in starttime. Would I need to specify a by arguement? I could not modify successfully. dput above. Thanks in advance! –  ptenax Jan 30 '14 at 20:09
    
@ptenax, the merging column name must be the same for merge to work as written. Looks like the dput data you added does not have the same name (I used the name from the original table). You just need to use by.x=nameofyourtimecolumn, by.y=starttime. –  BrodieG Jan 30 '14 at 20:12
    
Thanks again @BrodieG, my vector names were correct but I had to convert one of the time vectors from factor to POSIXct for it to work as you describe. Helped me a lot. –  ptenax Feb 3 '14 at 8:01

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