I have biomass data collected at 3 different distances from 42 different ant mounds (at the edge of the mound, 1m and 4m away). In total there's 42 ant mounds, from 11 plots at 5 different elevations (the samples is unevenly distributed by elevation, where the highest elevation only consist of 3 mounds and the lowest of 18 mounds). My response (biomass) is continuous and my explanatory is categorical (Distance).
The question I want to answer is "How does ants affect the surrounding vegetation in a tundra environment?".
My data is not normally distributed, my observations are clearly not independent and I also have some zeros. I assume that I therefore can not use ANOVA, linear models or linear mixed models nor transform my data to fit a linear model? I have tried to use GLMM, but as you may also tell, my dataset is quite small which have resulted in a lot of error messages in R. I also want to account for other variables that might affect the biomass, like soil temperature and soil moisture. So of my understanding GLMM would be the way, but how will I manage that with my small dataset that contains zeros? Are there other models I should consider?
(I have also tried Wilcoxon signed rank test between the distances, but that I guess is not a robust model, it doesn't account for other variables affecting the biomass.)
Thank you!
biomass
,distance
(discrete taking three values),elevation
(discrete, taking 5 possible values),plot
(categorial with 11 values). Is this correct? $\endgroup$bimoass
andelevation
? $\endgroup$