This vignettes shows on example application of mobsim
to
illustrate the concepts and functionality incorporated in the package.
The example deals with the detection of biodiversity changes in a
landscape. Specifically, we address the question of how inference on
biodiversity changes depends on the biodiversity measures used as well
as the spatial scale of sampling. The key idea of mobsim
is
to use controlled simulations in order to address these questions.
In this example, we assume that a hypothetical biodiversity driver, e.g. an invasive species, pollution, or climate change, reduces only the total number of individuals in a landscape, but does not change the relative species abundance distribution and the spatial distribution of individuals and species.
In a first step, we simulate two communities, which reflect these assumptions. In a second step, we generate virtual data sets by sampling the simulated communities, and in the third step we analyse these data in a similar way, as we would analyse real empirical field data.
We simulate two communities that have the same species richness
(s_pool
), the same Poisson log-normal species abundance
distribution (SAD) (specified by the argument sad_type
and
sad_coef
) of the species pool, and the same intraspecific
aggregation of species with cluster size parameter sigma
.
The two communities only differ in the total number of individuals
(n_sim
).
library(mobsim)
sim_n_high <- sim_thomas_community(s_pool = 200, n_sim = 20000, sad_type = "poilog",
sad_coef = list("cv_abund" = 1), sigma = 0.02)
sim_n_low <- sim_thomas_community(s_pool = 200, n_sim = 10000, sad_type = "poilog",
sad_coef = list("cv_abund" = 1), sigma = 0.02)
The function sim_thomas_community
generates community
objects that can be conveniently summarised and plotted. The community
object includes the xy-coordinates and species identities of all
simulated individuals.
## No. of individuals: 20000
## No. of species: 200
## x-extent: 0 1
## y-extent: 0 1
##
## x y species
## Min. :5.5e-05 Min. :5.7e-06 species_001: 640
## 1st Qu.:2.7e-01 1st Qu.:2.4e-01 species_002: 566
## Median :5.2e-01 Median :4.7e-01 species_003: 558
## Mean :5.1e-01 Mean :4.8e-01 species_004: 508
## 3rd Qu.:7.6e-01 3rd Qu.:7.2e-01 species_005: 487
## Max. :1.0e+00 Max. :1.0e+00 species_006: 400
## (Other) :16841
## No. of individuals: 10000
## No. of species: 200
## x-extent: 0 1
## y-extent: 0 1
##
## x y species
## Min. :0.00031 Min. :0.00037 species_001: 481
## 1st Qu.:0.24735 1st Qu.:0.26732 species_002: 446
## Median :0.48638 Median :0.49883 species_003: 375
## Mean :0.49698 Mean :0.50088 species_005: 183
## 3rd Qu.:0.76074 3rd Qu.:0.73440 species_004: 180
## Max. :0.99989 Max. :0.99995 species_008: 163
## (Other) :8172
The package mobsim
offers functions to derive important
biodiversity patterns from spatially-explicit community objects, for
instance the well-known species- area relationship (SAR). The SAR is
generated by nested subsampling of the community with samples of
different sizes. To generate the SAR, the function divar
(diversity-area relationships) is used, which requires a vector of
sampling areas, specified as proportion of the total area. Here, we use
an approximately log-scaled sampling area vector ranging from 0.1 - 100%
of the total area.
area <- c(0.001,0.002,0.005,0.01,0.02,0.05,0.1,0.2,0.5,1.0)
sar_n_high <- divar(sim_n_high, prop_area = area)
sar_n_low <- divar(sim_n_low, prop_area = area)
For each sampling size, the function calculates mean and standard deviation of several biodiversity indices. For the SAR, we plot the mean species richness vs. sampling area.
## [1] "prop_area" "m_species" "sd_species" "m_endemics"
## [5] "sd_endemics" "m_shannon" "sd_shannon" "m_ens_shannon"
## [9] "sd_ens_shannon" "m_simpson" "sd_simpson" "m_ens_simpson"
## [13] "sd_ens_simpson"
plot(m_species ~ prop_area, data = sar_n_high, type = "b", log = "xy", ylim = c(2,200),
xlab = "Proportion of area sampled.", ylab = "No. of species",
main = "Species-area relationship")
lines(m_species ~ prop_area, data = sar_n_low, type = "b", col = "red")
legend("bottomright",c("N high","N low"), col = 1:2, pch = 1)
We see that there are more species in the landscape with more individuals across most scales. However, the curves converge as soon as 50% or more of the landscape are sampled.
In contrast to the simulated communities, where we have full
information about all individuals in the landscape, in reality we only
have data from local samples, e.g. plots, traps, etc.. In the following,
it is illustrated, how mobsim
can be used to simulate the
sampling process.
The function sample_quadrats
distributes sampling
quadrats of user defined number (n_quadrats
) and size
(quadrat_area
) in a landscape and returns the abundance of
each species in each quadrat. The user can choose different spatial
sampling designs. Here, we use a random distribution of the samples.
First, we use many small samples:
oldpar <- par(mfrow = c(1,2))
samples_S_n_high <- sample_quadrats(sim_n_high, n_quadrats = 100,
quadrat_area = 0.001, method = "random",
avoid_overlap = TRUE)
samples_S_n_low <- sample_quadrats(sim_n_low, n_quadrats = 100,
quadrat_area = 0.001, method = "random",
avoid_overlap = TRUE)
Second, we use less, but larger samples, that in total cover the same area as the many small samples used before.
oldpar <- par(mfrow = c(1,2))
samples_L_n_high <- sample_quadrats(sim_n_high, n_quadrats = 10,
quadrat_area = 0.01, method = "random",
avoid_overlap = TRUE)
samples_L_n_low <- sample_quadrats(sim_n_low, n_quadrats = 10,
quadrat_area = 0.01, method = "random",
avoid_overlap = TRUE)
The function sample_quadrats
return two objects: (i) a
community matrix with quadrats in rows, species in columns and the
abundance of every species in the respective cell, and (ii) a matrix
with the positions of the sampling quadrats in the landscape.
## [1] 10 200
## species_001 species_002 species_003 species_004 species_005
## site1 0 4 25 0 0
## site2 2 0 8 0 3
## site3 0 0 0 0 2
## site4 16 25 8 6 0
## site5 23 7 0 0 0
## site6 12 15 0 3 0
## [1] 10 2
## x y
## site1 0.4700679 0.4306285
## site2 0.5047687 0.6379506
## site3 0.1258209 0.4297800
## site4 0.4902543 0.1578489
## site5 0.2285379 0.8022674
## site6 0.2638432 0.2906420
The community matrix can now be analysed just as ecologist will
analyse field data. A software package that is perfectly suited for this
and smoothly integrates with mobsim
is vegan.
Here, we use vegan
to calculate the species richness,
the Shannon- and Simpson-diversity indices for both landscapes and for
both sampling scales.
First, we analyse the small-scale samples:
library(vegan)
S_n_high <- specnumber(samples_S_n_high$spec_dat)
S_n_low <- specnumber(samples_S_n_low$spec_dat)
Shannon_n_high <- diversity(samples_S_n_high$spec_dat, index = "shannon")
Shannon_n_low <- diversity(samples_S_n_low$spec_dat, index = "shannon")
Simpson_n_high <- diversity(samples_S_n_high$spec_dat, index = "simpson")
Simpson_n_low <- diversity(samples_S_n_low$spec_dat, index = "simpson")
The three biodiversity indices are combined into one dataframe and can then be conveniently visualized using boxplots.
div_dat_S <- data.frame(N = rep(c("N high","N low"), each = length(S_n_high)),
S = c(S_n_high, S_n_low),
Shannon = c(Shannon_n_high, Shannon_n_low),
Simpson = c(Simpson_n_high, Simpson_n_low))
oldpar <- par(mfrow = c(1,3))
boxplot(S ~ N, data = div_dat_S, ylab = "Species richness")
boxplot(Shannon ~ N, data = div_dat_S, ylab = "Shannon diversity")
boxplot(Simpson ~ N, data = div_dat_S, ylab = "Simpson diversity")
We see that on average diversity is reduced for all indices, species richness, Shannon, and Simpson. However, we could like to compare the effects among the three different indices. Since the different diversity indices have different absolute values, we calculate relative changes of the mean values as diversity changes effect size.
The relative change is defined as
\[ relEff = \frac{diversity(N = low) - diversity(N = high)}{diversity(N = high)} \]
Accordingly, a relative effect of -0.5 means that diversity is reduced by 50%, while a positive value means diversity increases by the reduction of total abundance. A value of zero indicates no change.
To calculate the relative change we first average diversity across samples
## Group.1 S Shannon Simpson
## 1 N high 10.11 2.060320 0.8359582
## 2 N low 5.88 1.551802 0.7381090
Then we apply the formula shown above to calculate the relative change.
relEff_S <- (mean_div_S[mean_div_S$Group.1 == "N low", 2:4] - mean_div_S[mean_div_S$Group.1 == "N high", 2:4])/
mean_div_S[mean_div_S$Group.1 == "N high", 2:4]
relEff_S
## S Shannon Simpson
## 2 -0.4183976 -0.2468153 -0.1170504
These results indicate that the relative change clearly varies among the indices. While we find a 43% reduction in species richness, there is just a 16% reduction considering the Simpson-index.
Now we repeat this analysis using the large samples:
S_n_high <- specnumber(samples_L_n_high$spec_dat)
S_n_low <- specnumber(samples_L_n_low$spec_dat)
Shannon_n_high <- diversity(samples_L_n_high$spec_dat, index = "shannon")
Shannon_n_low <- diversity(samples_L_n_low$spec_dat, index = "shannon")
Simpson_n_high <- diversity(samples_L_n_high$spec_dat, index = "simpson")
Simpson_n_low <- diversity(samples_L_n_low$spec_dat, index = "simpson")
div_dat_L <- data.frame(N = rep(c("N high","N low"), each = length(S_n_high)),
S = c(S_n_high, S_n_low),
Shannon = c(Shannon_n_high, Shannon_n_low),
Simpson = c(Simpson_n_high, Simpson_n_low))
Finally, we compare the diversity effect sizes across the two scales.
## S Shannon Simpson
## 2 -0.4183976 -0.2468153 -0.1170504
## S Shannon Simpson
## 2 -0.3297297 -0.1168428 -0.02836357
We see that there are differences, both among indices within the same scale, as shown above, but also across scales. The reduction of diversity is smaller at larger scales. However, the change of the effect across scales is weak with species richness, but strong with the Simpson-index.
This simple example hopefully shows two things. First, it illustrates
the dependence of biodiversity change on the specific index and the
sampling scale used, which even emerges with a very simple change of
just reducing the total abundance. Second, it shows the potential of
mobsim
to investigate and foster understanding of scale-
and sampling-dependent biodiversity change. Of course, similar analysis
with different changes in biodiversity components, including total
abundance, relative abundance and spatial patterns can be easily
implemented in mobsim
. The simulate changes can then be
analysed using different combinations of sampling designs, scales and
biodiversity effect sizes.