I've been doing a comparison of the dsm distance sampling method and the finite population block kriging method using the sptotal package on moose in my region and I have some questions about differences I’ve noticed in the results.
We have done 2 separate surveys over the past 5 years which isn’t great temporally but historical data suggest there shouldn’t be huge variation in the population density. The FPBK was run trying to count all moose within 4km x 4km grid cells and estimating over the study area while the distance sampling survey was flown with 10km spacing across a much larger area and projecting onto the same grid but expanded out to fill the entirety of the distance sampling study area.
When I predict the dsm over the same area as the FPBK grid I find that the estimate for the kriging analysis is about 2 to 2.5 times higher than the distance sampling survey even though we don’t have a correction factor for moose that were not detected. My questions are what could be causing the difference I’m seeing here and are there issues in the distance sampling survey design (e.g. line spacing) that could cause underestimation (if that is what the issue is). Other examples comparing these 2 methods have shown comparable results though usually lower estimates from the distance sampling methods, though this is the largest difference I’ve seen.
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I've been doing a comparison of the dsm distance sampling method and the finite population block kriging method using the sptotal package on moose in my region and I have some questions about differences I’ve noticed in the results.
We have done 2 separate surveys over the past 5 years which isn’t great temporally but historical data suggest there shouldn’t be huge variation in the population density. The FPBK was run trying to count all moose within 4km x 4km grid cells and estimating over the study area while the distance sampling survey was flown with 10km spacing across a much larger area and projecting onto the same grid but expanded out to fill the entirety of the distance sampling study area.
When I predict the dsm over the same area as the FPBK grid I find that the estimate for the kriging analysis is about 2 to 2.5 times higher than the distance sampling survey even though we don’t have a correction factor for moose that were not detected. My questions are what could be causing the difference I’m seeing here and are there issues in the distance sampling survey design (e.g. line spacing) that could cause underestimation (if that is what the issue is). Other examples comparing these 2 methods have shown comparable results though usually lower estimates from the distance sampling methods, though this is the largest difference I’ve seen.