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I wish to create 24 hourly data frames in which each data.frame contains hourly demand for a product as 1 column, and the next 8 columns contain hourly temperatures. For example, for the data.frame for 8am, the data.frame will contain a column for demand at 8am, then eight columns for temperature ranging from the most current hour to the 7 past hours. The additional complication is that for hours before 8AM i.e. "4AM", I have to get yesterday's temperatures. I am hitting my head against the wall trying to figure out how to do this with apply or plyr, or a vectorized function.

demand8AM Temp8AM Temp7AM Temp6AM...Temp1AM

Demand4AM Temp4AM Temp3AM Temp2AM Temp1AM Temp12AM Temp11pm(Lag) Temp10pm(Lag) 

In my code Hours are numbers; 1 is 12AM etc.

Here is some simple code I created to create the dataset I am dealing with.

#Creating some Fake Data
require(plyr)
# setting up some fake data
set.seed(31)
foo <- function(myHour, myDate){
rlnorm(1, meanlog=0,sdlog=1)*(myHour) + (150*myDate) 
}
Hour <- 1:24
 Day <-1:90
dates <-seq(as.Date("2012-01-01"), as.Date("2012-3-30"), by = "day")
myData <- expand.grid( Day, Hour)
names(myData) <- c("Date","Hour")

myData$Temperature <- apply(myData, 1, function(x) foo(x[2], x[1]))
myData$Date <-dates

myData$Demand <-(rnorm(1,mean = 0, sd=1)+.75*myData$Temperature )
## ok, done with the fake data generation.
share|improve this question
    
There are a lot of challenges here. Most importantly, you have date and time in two separate columns when in this case, they probably should be in one column. –  Ricardo Saporta Oct 2 '13 at 16:10
    
how large is your real data? –  Ricardo Saporta Oct 2 '13 at 16:15
    
24 HOURS bY 565 DAYS ABOUT 13,000 RECORDS –  Eric Blake Oct 2 '13 at 16:26
2  
Keep in mind that you are ultimately replicating your data 24-fold. It is not clear how you plan to use this output, and it is likely you could accomplish the same without replicating the data. –  Ricardo Saporta Oct 2 '13 at 16:32
    
Ricardo: the time is hourly, but it is used as a factor. I am cutting the data by hour, so that I have 24 datasets with the same number of days. I know this part can be done with plyr and apply functions or split –  Eric Blake Oct 2 '13 at 16:37

1 Answer 1

up vote 0 down vote accepted

It looks as though you could benefit from utilizing a time series. Here's my interpretation of what you want (I used the "mean" function in rollapply), not what you asked for. I recommend you read over the xts and zoo packages.

#create dummy time vector
time_index <- seq(from = as.POSIXct("2012-05-15 07:00"), 
                  to = as.POSIXct("2012-05-17 18:00"), by = "hour")

#create dummy demand and temp.C
info <- data.frame(demand = sample(1:length(time_index), replace = T), 
                   temp.C = sample (1:10))  

#turn demand + temp.C into time series
eventdata <- xts(info, order.by = time_index)

x2 <- eventdata$temp.C
for (i in 1:8) {x2 <- cbind(x2, lag(eventdata$temp.C, i))}
share|improve this answer
    
Thank you so much JacK –  Eric Blake Oct 3 '13 at 21:43
    
Hi Jack, this was very useful to learn but it did not answer the problem. I am reading about reshape, which I think could answer it. I will post the answer if I am able to solve it. I really appreciate the help. someone was kind enough to edit the text so maybe it will be clearer what I am looking for. –  Eric Blake Oct 4 '13 at 8:57

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