I have presence-absence data from multiple species over 4 years (surveyed in October, November, December, March and May – most years); however the same locations were not always surveyed. Based on previous posts I decided to run single season models on each species with year and/or month as covariates, (the null multiple season model would be the same, but I’m not interested in colonisation or extinction rates). Occupancy likely doesn’t change much between seasons as they are small skinks which do not travel far, but detection probability likely does. I’m trying to use covariates to create occupancy maps for my study area, which I can then test with current sampling sessions. I have a basic question though, if year/month isn’t the lowest AIC does it need to be included in all models (as it is in the multiple season model), or can season or year alone or a null model be used for detection. Additionally, a few of the datasets don’t have enough data currently is it be possible to supplement them with the surveys I’m completing this year?
Data Input example for single season by month (and year as a covariate)
O, N, D, M, May
00110
0000-
10111
11- -0
2005 2006 2007 2008
1000
0100
0010
0001