Add maximum phylogenetic diversity objective
Set the objective of a conservation planning problem()
to
maximize the phylogenetic diversity of the features represented in the
solution subject to a budget. This objective is similar to
add_max_features_objective()
except
that emphasis is placed on representing a phylogenetically diverse set of
species, rather than as many features as possible (subject to weights).
This function was inspired by Faith (1992) and Rodrigues et al.
(2002).
add_max_phylo_div_objective(x, budget, tree)
x |
|
budget |
|
tree |
|
A problem objective is used to specify the overall goal of the conservation planning problem. Please note that all conservation planning problems formulated in the prioritizr package require the addition of objectives—failing to do so will return an error message when attempting to solve problem.
The maximum phylogenetic diversity objective finds the set of
planning units that meets representation targets for a phylogenetic tree
while staying within a fixed budget. If multiple solutions can meet all
targets while staying within budget, the cheapest solution is chosen.
Note that this objective is similar to the maximum
features objective (add_max_features_objective()
) in that it
allows for both a budget and targets to be set for each feature. However,
unlike the maximum feature objective, the aim of this objective is to
maximize the total phylogenetic diversity of the targets met in the
solution, so if multiple targets are provided for a single feature, the
problem will only need to meet a single target for that feature
for the phylogenetic benefit for that feature to be counted when
calculating the phylogenetic diversity of the solution. In other words,
for multi-zone problems, this objective does not aim to maximize the
phylogenetic diversity in each zone, but rather this objective
aims to maximize the phylogenetic diversity of targets that can be met
through allocating planning units to any of the different zones in a
problem. This can be useful for problems where targets pertain to the total
amount held for each feature across multiple zones. For example,
each feature might have a non-zero amount of suitable habitat in each
planning unit when the planning units are assigned to a (i) not restored,
(ii) partially restored, or (iii) completely restored management zone.
Here each target corresponds to a single feature and can be met through
the total amount of habitat in planning units present to the three
zones.
The maximum phylogenetic diversity objective for the reserve design problem can be expressed mathematically for a set of planning units (I indexed by i) and a set of features (J indexed by j) as:
Maximize sum_i^I (-s * ci * xi) + sum_j^J (mb * lb) subject to sum_i^I (xi * rij) >= (yj * tj) for all j in J & mb <= yj for all j in T(b) & sum_i^I (xi * ci) <= B
Here, xi is the decisions variable (e.g. specifying whether planning unit i has been selected (1) or not (0)), rij is the amount of feature j in planning unit i, tj is the representation target for feature j, yj indicates if the solution has meet the target tj for feature j. Additionally, T represents a phylogenetic tree containing features j and has the branches b associated within lengths lb. The binary variable mb denotes if at least one feature associated with the branch b has met its representation as indicated by yj. For brevity, we denote the features j associated with branch b using T(b). Finally, B is the budget allocated for the solution, ci is the cost of planning unit i, and s is a scaling factor used to shrink the costs so that the problem will return a cheapest solution when there are multiple solutions that represent the same amount of all features within the budget.
Object (i.e. ConservationProblem
) with the objective
added to it.
In early versions, this function was named as the
add_max_phylo_div_objective
function.
Faith DP (1992) Conservation evaluation and phylogenetic diversity. Biological Conservation, 61: 1–10.
Rodrigues ASL and Gaston KJ (2002) Maximising phylogenetic diversity in the selection of networks of conservation areas. Biological Conservation, 105: 103–111.
# load ape package require(ape) # load data data(sim_pu_raster, sim_features, sim_phylogeny, sim_pu_zones_stack, sim_features_zones) # plot the simulated phylogeny ## Not run: par(mfrow = c(1, 1)) plot(sim_phylogeny, main = "phylogeny") ## End(Not run) # create problem with a maximum phylogenetic diversity objective, # where each feature needs 10% of its distribution to be secured for # it to be adequately conserved and a total budget of 1900 p1 <- problem(sim_pu_raster, sim_features) %>% add_max_phylo_div_objective(1900, sim_phylogeny) %>% add_relative_targets(0.1) %>% add_binary_decisions() %>% add_default_solver(verbose = FALSE) ## Not run: # solve problem s1 <- solve(p1) # plot solution plot(s1, main = "solution", axes = FALSE, box = FALSE) # find out which features have their targets met r1 <- eval_target_coverage_summary(p1, s1) print(r1, width = Inf) # plot the phylogeny and color the adequately represented features in red plot(sim_phylogeny, main = "adequately represented features", tip.color = replace( rep("black", nlayers(sim_features)), sim_phylogeny$tip.label %in% r1$feature[r1$met], "red")) ## End(Not run) # rename the features in the example phylogeny for use with the # multi-zone data sim_phylogeny$tip.label <- feature_names(sim_features_zones) # create targets for a multi-zone problem. Here, each feature needs a total # of 10 units of habitat to be conserved among the three zones to be # considered adequately conserved targets <- tibble::tibble( feature = feature_names(sim_features_zones), zone = list(zone_names(sim_features_zones))[rep(1, number_of_features(sim_features_zones))], type = rep("absolute", number_of_features(sim_features_zones)), target = rep(10, number_of_features(sim_features_zones))) # create a multi-zone problem with a maximum phylogenetic diversity # objective, where the total expenditure in all zones is 5000. p2 <- problem(sim_pu_zones_stack, sim_features_zones) %>% add_max_phylo_div_objective(5000, sim_phylogeny) %>% add_manual_targets(targets) %>% add_binary_decisions() %>% add_default_solver(verbose = FALSE) ## Not run: # solve problem s2 <- solve(p2) # plot solution plot(category_layer(s2), main = "solution", axes = FALSE, box = FALSE) # find out which features have their targets met r2 <- eval_target_coverage_summary(p2, s2) print(r2, width = Inf) # plot the phylogeny and color the adequately represented features in red plot(sim_phylogeny, main = "adequately represented features", tip.color = replace(rep("black", nlayers(sim_features)), which(r2$met), "red")) ## End(Not run) # create a multi-zone problem with a maximum phylogenetic diversity # objective, where each zone has a separate budget. p3 <- problem(sim_pu_zones_stack, sim_features_zones) %>% add_max_phylo_div_objective(c(2500, 500, 2000), sim_phylogeny) %>% add_manual_targets(targets) %>% add_binary_decisions() %>% add_default_solver(verbose = FALSE) ## Not run: # solve problem s3 <- solve(p3) # plot solution plot(category_layer(s3), main = "solution", axes = FALSE, box = FALSE) # find out which features have their targets met r3 <- eval_target_coverage_summary(p3, s3) print(r3, width = Inf) # plot the phylogeny and color the adequately represented features in red plot(sim_phylogeny, main = "adequately represented features", tip.color = replace(rep("black", nlayers(sim_features)), which(r3$met), "red")) ## End(Not run)
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