View source: R/replacement_costs.R
replacement_costs | R Documentation |
Calculate the replacement cost for priority actions in a project
prioritization problem()
(Moilanen et al. 2009). Actions associated
with larger replacement cost values are more irreplaceable, and may
need to be implemented sooner than actions with lower replacement cost
values.
replacement_costs(x, solution, n = 1)
x |
project prioritization |
solution |
|
n |
|
Replacement cost values are calculated for each priority action
specified in the solution. Missing (NA
) values are assigned to
actions which are not selected for funding in the specified solution.
For a given action, its replacement cost is calculated by
(i) calculating the objective value for the optimal solution to
the argument to x
, (ii) calculating the objective value for the
optimal solution to the argument to x
with the given action locked
out, (iii) calculating the difference between the two objective
values, (iv) the problem has an objective which aims to minimize
the objective value (only add_min_set_objective()
, then
the resulting value is multiplied by minus one so that larger values
always indicate actions with greater irreplaceability. Please note this
function can take a long time to complete
for large problems since it involves re-solving the problem for every
action selected for funding.
A tibble::tibble()
table containing the following
columns:
"action"
character
name of each action.
"cost"
numeric
cost of each solution when each
action is locked out.
"obj"
numeric
objective value of each solution when
each action is locked out. This is calculated using the objective
function defined for the argument to x
.
"rep_cost"
numeric
replacement cost for each
action. Greater values indicate greater irreplaceability. Missing
(NA
) values are assigned to actions which are not selected for
funding in the specified solution, infinite (Inf
) values are
assigned to to actions which are required to meet feasibility
constraints, and negative values mean that superior solutions than
the specified solution exist.
Moilanen A, Arponen A, Stokland JN & Cabeza M (2009) Assessing replacement cost of conservation areas: how does habitat loss influence priorities? Biological Conservation, 142, 575–585.
solution_statistics()
,
project_cost_effectiveness()
.
## Not run: # load data data(sim_projects, sim_features, sim_actions) # build problem with maximum richness objective and $400 budget p <- problem(sim_projects, sim_actions, sim_features, "name", "success", "name", "cost", "name") %>% add_max_richness_objective(budget = 400) %>% add_feature_weights("weight") %>% add_binary_decisions() # solve problem s <- solve(p) # print solution print(s) # calculate replacement cost values r <- replacement_costs(p, s) # print output print(r) # plot histogram of replacement costs, # with this objective, greater values indicate greater irreplaceability hist(r$rep_cost, xlab = "Replacement cost", main = "") ## End(Not run)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.