Dear R users

I am currently investigating time series analysis using an irregular time 
series. Our study is looking at vegetation change in areas of alien vegetation 
growth after clearing events. The irregular time series is sourced from Landsat 
ETM+ data, over a six year period I have 38 scenes. For certain periods I have 
monthly data while for others, images are up to three months apart. So far I 
have been using linear regression between NDVI (Normalized Difference 
Vegetation Index) and time to get an overall trend and then plotting the long 
term trend with the mFilter (Hodrick-Prescott filter). Additional to this I 
would like to plot a full time series of monthly rainfall data (with no missing 
data) against my irregular ts. I thus have the following questions,

1. While the mFilter does provide a good trend profile I would like to use a ts 
analysis procedure which is tailored to irregular environmental data, could 
anyone suggest a filter / analysis technique besides the mFilter? I am 
interested in the long term trend, but would also like to identify stochastic 
changes in the ts?

2. Is it possible to pad / interpolate missing values in a ts and how 
scientifically robust is this?

3. If interpolation / pad is not an issue how do I deal with NA values in a ts, 
the mFilter does not like NA and will return only NA if the ts contains any 
NA's?

I am using R version 2.8 on a Dell Precision 690 Workstation running Ubuntu 
Hardy Heron.

If any one has experience with time series analysis and has any suggestions 
regarding the questions posted, I would really appreciate some help.

Many thanks and kind regards,
Wesley



Wesley Roberts MSc.
Researcher: Earth Observation (Ecosystems)
Natural Resources and the Environment
CSIR
Tel: +27 (21) 888-2490
Fax: +27 (21) 888-2693

"To know the road ahead, ask those coming back."
- Chinese proverb



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