Montanoa_frutescens

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Seasonal patterns

A standard Water and Leith climate diagram for the mean values of precipitation and temperature extracted from the species presence points.

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The Walter and Leith diagram assumes that the growing season occurs when rainfall is over 100mm. A more refined method is to extract the values from a bucket model that keeps track of input to the soil profile through precipitation and reductions in soil moisture through evaptranspiration over the course of the year. This can be compared to changes in NDVI at the collection points.

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Comparison

In some cases NDVI will remain fairly constant, even when the balance model shows that soil water constant is lowered for part of the year. Providing SWC is above 50% of maximum levels the vegetation would not experience a great deal of hydric stress.

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Summary of the variable values at the collection points.

Min. 1st Qu. Median Mean 3rd Qu. Max.
x -107.00 -102.00 -99.40 -100.00 -98.80 -92.50
y 15.50 19.10 19.20 19.30 19.60 25.90
X -107.00 -102.00 -99.40 -100.00 -98.80 -92.50
Y 15.50 19.10 19.20 19.30 19.60 25.90
elev 408.00 2080.00 2420.00 2300.00 2620.00 3470.00
anprec 605.00 917.00 1010.00 1060.00 1190.00 1670.00
mtemp 9.40 13.60 14.70 15.50 16.40 28.50
Trange 16.30 21.80 22.70 22.30 23.10 27.00
saet 605.00 830.00 853.00 857.00 870.00 1120.00
msoil 230.00 283.00 296.00 297.00 311.00 424.00

Niche space with relation to annual precipitation and mean annual temperature.

The following diagrams show kernel densities one two synthestic climate axes (total annual rainfall and mean annual temperature). If their are signs of multimodality this may indicate that the species has not fully explored its climate niche, or that there are disjunct populations with differing characteristics. The method will not show clear results for species with few collection points.

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Spatial clustering

The same analysis can be run to look at spatial clustering. The kernel densities are smoothed, so will only suggest multimodality if the points are very highly clustered.

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Finding spatial clusters

The significance of any spatial clusters can be checked using the silhouette width method. The width is calculated for values of k between 2 and 5. If any are higher than 0.52 the analysis will produce a diagram showing the clusters.

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## [1] "The collections form  4 spatial clusters"

The collections form 4 spatial clusters

Anosim

If there is evidence that the points fall into at least 2 groups, but fewer than 6 we can look at whether there is significant differences in variability between and within groups in the climatic conditions at the sites using Anosim. This is a sensitive test, as would be MANOVA, so there will often be significant differences. They should only be intepreted as important if R is much larger than 0.3.

## 
## Call:
## anosim(dat = dis, grouping = fit$cluster, permutations = 100) 
## Dissimilarity: euclidean 
## 
## ANOSIM statistic R: 0.307 
##       Significance: 0.0099 
## 
## Based on  100  permutations
## 
## Upper quantiles of permutations (null model):
##    90%    95%  97.5%    99% 
## 0.0180 0.0258 0.0288 0.0399 
## 
## Dissimilarity ranks between and within classes:
##            0%   25%   50%   75%  100%     N
## Between 698.5 12502 20468 28900 37400 24729
## 1       226.5  5348 18502 27860 37326  6903
## 2       226.5 11778 26274 33902 34378    21
## 3       226.5  1540  3746 14200 37401  4095
## 4       226.5 12240 22673 29764 37290  1653

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## Analysis of Variance Table
## 
## Response: vars$mtemp
##                         Df Sum Sq Mean Sq F value Pr(>F)  
## as.factor(fit$cluster)   3    107    35.5    3.85   0.01 *
## Residuals              270   2491     9.2                 
## ---
## Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1

The collections form 4 spatial clusters

Gam model using simple environmental variables

For comparison we can fit a model using mean temperature, temperature range and annual precipitation.

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Bucket model GAM.

Now fit a gam using temperature range, mean temperature and the annual soil moisture dynamic as input.

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Random Forest

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