I have data as follows
Time <- c("2021-08-30 7:24","2021-08-30 7:30","2021-08-30 7:54","2021-08-30 8:16","2021-08-30 8:27","2021-08-30 8:22","2021-08-31 2:39","2021-08-31 2:44","2021-08-31 2:50","2021-08-31 2:56","2021-08-31 7:42","2021-08-31 7:45","2021-08-31 7:50","2021-08-31 6:02")
Distance_m <- c(162,162,162,162,162,162,162,157,150,137,122,102,78,42)
df <- data.frame(Time, Distance_m)
df
Time Distance_m
1 2021-08-30 7:24 162
2 2021-08-30 7:30 162
3 2021-08-30 7:54 162
4 2021-08-30 8:16 162
5 2021-08-30 8:27 162
6 2021-08-30 8:22 162
7 2021-08-31 2:39 162
8 2021-08-31 2:44 157
9 2021-08-31 2:50 150
10 2021-08-31 2:56 137
11 2021-08-31 7:42 122
12 2021-08-31 7:45 102
13 2021-08-31 7:50 78
14 2021-08-31 6:02 42
I Want to sum the Distance_m based on 15 minutes intervals based on date and hour.
I am expecting the output as follows
Date Hour Time Distance_m
2021-08-30 7 54 486
2021-08-30 8 30 486
2021-08-31 2 56 606
2021-08-31 6 2 344
So far I have tried
df <- tidyr::separate(df, Time, c("Date", "Time"), sep = " ")
df1<- df %>%
mutate(Time = hm(Time)) %>%
mutate(ttt= (lubridate::minute(Time) + lubridate::hour(Time) * 60)) %>%
mutate(tt = floor(ttt/15) ) %>%
group_by(tt) %>%
summarize(Date = last(Date),Time = last(Time), Distance_m = sum(Distance_m))
But the output is a bit messy. I am hoping to find an efficient way as I am dealing with a huge data.
Thank you