I want to calculate different kind of trends with this testframe.
date_list = seq(ymd('2000-01-15'),ymd('2010-09-18'),by='day') testframe = data.frame(Date = date_list) testframe$Day = substr(testframe$Date, start = 6, stop = 10) testframe$V1 = runif(3900, 2.0, 35.0) testframe$V2 = runif(3900, 5.0, 40.0) testframe$V3 = runif(3900, -10.0, 10.0) testframe$V4 = seq(from = 5, to = 45, length.out = 3900)
I have a Date column which contains the exact date. The days column contains the extracted days and months and then I have 4 columns with different values.
I want to do two different things:
Calculate the trend of the values of each day over the years. So In the end I only have a column which each single day (no years) and then the slope of the values V1-V4 for each day. The slope should be calculated for each day from the year 2000 to 2010.
The same as above but this time I want to calculate the slope not only from each single day, I also want to take the mean of the values 15 days before and 15 days after each Day. So for the slope of the values of e.g. 2000-02-01, I want to have the mean of all values from 2000-01-17 to 2000-02-16. After I have the mean of these days, I want to do the same as above.
My only effort so far was to create the "Day" column to use it for the
aggregate command...but it didnt bring me anywhere so far.
UPDATE: I found a nice package named
TTR which contains a moving average function. That is what I need. I only didnt find out how to use it for several columns:
library(TTR) mavg.15day = SMA(testframe$V1, n=15)
Unfortunately it does only use the 15 days before each date.