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I have a data set from an instrument that is broken up into 4 different files. 3 separate velocity files (X,Y,Z) and a fourth file that has the time stamp uniting the other three files

The 3 velocity files are basic text files with file extensions that look like

Data.V1 
Data.V2 
Data.V3

The time stamp file is

Data.sen

The velocity files for each dimension (X,Y, and Z) are measured in 25 bins so the data for each of the .V files looks like this

  V1     V2    V3     V4     V5     V6     V7     V8     V9    V10    V11    V12    V13    V14    V15    V16
1  0.195  0.103 0.288 -0.034  0.340  0.337 -0.125  0.029 -0.099  0.269 -0.049  0.053  0.128 -0.069 -0.362  0.207
2 -0.113 -0.260 0.173 -0.135  0.279  0.057  0.163 -0.008 -0.025  0.206  0.014 -0.130 -0.180 -0.182  0.048 -0.144
3 -0.020 -0.138 0.033 -0.028 -0.095  0.200 -0.057 -0.205 -0.004 -0.078 -0.010  0.036 -0.084  0.384  0.186  0.109
4  0.225  0.159 0.026 -0.180 -0.015  0.420 -0.128  0.232  0.399  0.043 -0.027 -0.285 -0.431 -0.231 -0.272 -0.214
5  0.133 -0.179 0.211  0.221 -0.237 -0.164  0.665 -0.079 -0.294  0.137  0.087  0.121  0.075  0.068 -0.114 -0.216
6 -0.051 -0.098 0.060  0.282  0.185 -0.388  0.276  0.496  0.035  0.130 -0.094  0.179 -0.427 -0.109  0.238 -0.334
 V17    V18    V19   V20    V21    V22    V23    V24    V25
1  0.011  0.360  0.096 0.355 -0.084 -0.134  0.253  0.092  0.070
2 -0.093  0.016  0.048 0.159 -0.072  0.093 -0.227  0.005 -0.422
3  0.341  0.187 -0.206 0.172  0.198 -0.118 -0.103 -0.169  0.072
4  0.151 -0.142  0.014 0.049 -0.292  0.040 -0.068  0.079  0.062
5  0.255  0.272  0.026 0.230 -0.265 -0.333  0.397  0.011 -0.011
6 -0.101  0.159 -0.184 0.182 -0.080 -0.072 -0.178  0.038 -0.075

And the time stamp file looks like this

V1 V2   V3 V4 V5 V6 V7     V8   V9    V10   V11   V12   V13 V14   V15 V16   V17
1  1 30 2012 14  1  1  0 100000 11.4 1532.0 309.8   1.8  15.9   0 24.07   0 15320
2  1 30 2012 14  2  1  0 110101 11.3 1532.2  28.2  32.2 -16.0   0 24.12   0 15322
3  1 30 2012 14  3  1  0 111001 11.3 1533.1 205.2 -25.0 -32.9   0 24.51   0 15331
4  1 30 2012 14  4  1  0 110000 11.3 1534.2 181.9  -0.8  -5.2   0 24.94   0 15342
5  1 30 2012 14  5  1  0 110000 11.3 1535.5 183.4  -1.1  -0.1   0 25.49   0 15355
6  1 30 2012 14  6  1  0 110000 11.3 1536.8 171.6   0.1   7.5   0 26.00   0 15368

with the first 6 data columns being Month Day Year Hour Min Sec

I was hoping I could do three things with this data

1- Read all four data files into one file lined up by the time stamp
2- Apply a simple equation to the three different velocity measurements to arrive at final (the equation would be along the lines of sqrt(v1^2+v2^2+v3^3) )
3- Pull an hourly average of all the data

I was hoping it would be simple, but all the code I have tried to write has gotten me nowhere.

Any help with any of the three steps would be greatly appreciated.

share|improve this question
    
The question title does not reflect what is being asked here, and the question should include the details of "all the code I have tried to write" for each step. I'd recommend breaking this into separate questions and focus on each step, though Vincent's answer looks sufficient –  mdsumner Feb 23 '12 at 7:39

1 Answer 1

up vote 3 down vote accepted

You can concatenate the data.frames with cbind or merge, but it may be easier to normalize them first (i.e., convert them to a "tall" format) with melt.

# Sample data
n <- 10
k <- 25
d1 <- as.data.frame( matrix( rnorm(n*k), nc=k ) )
d2 <- as.data.frame( matrix( rnorm(n*k), nc=k ) )
d3 <- as.data.frame( matrix( rnorm(n*k), nc=k ) )
d4 <- seq(ISOdatetime(2012, 1, 1, 0, 0, 0, "UTC"), length=n, by="15 min")
f <- function(u) sapply( 
  c("%Y", "%m", "%d", "%H", "%M", "%S"),
  function(x) as.numeric(format(u,x)) 
)
d4 <- t(sapply(d4, f))
d4 <- cbind( d4, matrix( rnorm(n*(k-6)), nr=n ) )
d4 <- as.data.frame(d4)

# Add column names
names(d1) <- names(d2) <- names(d3) <- paste("V", seq_len(ncol(d1)), sep="")
names(d4) <- paste("W", seq_len(ncol(d4)), sep="")
names(d4)[1:6] <- c("Year", "Month", "Day", "Hour", "Minute", "Second")

# Add an identifier column
d1$id <- d2$id <- d3$id <- d4$id <- seq_len(nrow(d1))
d1$var <- "X"
d2$var <- "Y"
d3$var <- "Z"

# Clean the timestamp
d4$time <- ISOdatetime( d4$Year, d4$Month, d4$Day, d4$Hour, d4$Minute, d4$Second, "UTC" )

# Normalize each data.frame
library(reshape2)
d1 <- melt(d1, id.vars=c("id","var"), variable.name="Position" )
d2 <- melt(d2, id.vars=c("id","var"), variable.name="Position" )
d3 <- melt(d3, id.vars=c("id","var"), variable.name="Position" )

# Concatenate them
d <- rbind(d1, d2, d3)

# Add the time data
d <- merge( d, d4, by="id" )

Once everything is in a single data.frame, you can aggregate the data with ddply and, if needed, reshape it with dcast.

# Aggregate
d <- dcast(d, id + Position + time + Year + Month + Day + Hour + Minute + Second ~ var )
d$velocity <- sqrt( d$X^2 + d$Y^2 + d$Z^2 )
library(plyr)
r <- ddply( d, 
  c("Position", "Year", "Month", "Day", "Hour"), 
  summarize, value=mean(velocity) 
)
dcast(r, Year + Month + Day + Hour ~ Position )
share|improve this answer
    
My apologies for an poor question, but great answer! From one Vincent to another- Thanks –  Vinterwoo Feb 24 '12 at 17:35

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