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I have a dataset here with latitude, longitude and salinity for an area. I have these data for three different cases. First case is for normal flow conditions, second is for high flow and third case is for waterlevelrise.

I want to understand how can we use these data and then make some type of analysis.

My data set is uploaded on

Some of the things that come up to my mind are a) Find the increase or decrease of salinity for each time or even say a pattern.
b) Mean salinity under different conditions

The code that I used to start in R is as follows:

mydata <- read.csv("dataanalysisforthreetimes.csv")
data1 <- melt(mydata,"Lat","Long")

Would you guys suggest if I can fit any linear model to my data ? Any suggested techniques are highly appreciated. I want to use R to do the analysis. Can you suggest any reading as well ?

Thanks .


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closed as off topic by agstudy, Didzis Elferts, joran, Josh O'Brien, SztupY Feb 3 '13 at 3:32

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flagged for migration to cross validated... – user1317221_G Feb 2 '13 at 20:22
what does it mean by flagged for mig ? – Jdbaba Feb 2 '13 at 20:23
if you make this less of a "how can should I analyse my data" question and more of a "here is an example of my data I am trying to this specifically, but cannot find how to do it", you will probably get an answer. – user1317221_G Feb 2 '13 at 20:24
Thanks for your explanation. I would try to rephrase my question. – Jdbaba Feb 2 '13 at 20:25

1 Answer 1

up vote 1 down vote accepted

mean salinity for all three conditions:

data1 <- melt(mydata,id=c("Lat","Long"))

aggregate(value ~ variable, mean, data=data1)
#   variable     value
#1  Highflow  4.039384
#2 Levelrise 32.238867
#3    Normal 21.153334

here is how you get the mean fro your conditions. As for linear models, you are probably best googling linear models with spatial autocorrelation in R to get your started.

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Thank you so much for your time. May be this time I didn't put up question properly. I will try to make questions more precise and clear next time. – Jdbaba Feb 2 '13 at 21:56

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