coliny_ea
Evolutionary Algorithm
Topics
package_scolib, package_coliny, global_optimization_methods
Specification
Alias: None
Arguments: None
Child Keywords:
Required/Optional |
Description of Group |
Dakota Keyword |
Dakota Keyword Description |
---|---|---|---|
Optional |
Set the population size |
||
Optional |
Specify how to initialize the population |
||
Optional |
Select fitness type |
||
Optional |
Select a replacement type for SCOLIB
evolutionary algorithm ( |
||
Optional |
Specify the probability of a crossover event |
||
Optional |
Select a crossover type |
||
Optional |
Set probability of a mutation |
||
Optional |
Select a mutation type |
||
Optional |
Multiplier for the penalty function |
||
Optional |
Stopping criteria based on objective function value |
||
Optional |
Seed of the random number generator |
||
Optional |
Show algorithm parameters not exposed in Dakota input |
||
Optional |
Set method options not available through Dakota spec |
||
Optional |
Number of iterations allowed for optimizers and adaptive UQ methods |
||
Optional |
Stopping criterion based on objective function or statistics convergence |
||
Optional |
Number of function evaluations allowed for optimizers |
||
Optional |
Turn on scaling for variables, responses, and constraints |
||
Optional |
Identifier for model block to be used by a method |
Description
Evolutionary Algorithm
See the page :ref:`topic-package_scolib` for important information regarding all SCOLIB methods
coliny_pattern_search
supports concurrency up to the size of
the population
The random seed
control provides a mechanism for making a
stochastic optimization repeatable. That is, the use of the same
random seed in identical studies will generate identical results. The
population_size
control specifies how many individuals will
comprise the EA’s population.
The initialization_type
defines the type of initialization for the
population of the EA. There are three types: simple_random
,
unique_random
, and flat_file
. simple_random
creates initial
solutions with random variable values according to a uniform random
number distribution. It gives no consideration to any previously
generated designs. The number of designs is specified by the
population_size
. unique_random
is the same as simple_random
,
except that when a new solution is generated, it is checked against
the rest of the solutions. If it duplicates any of them, it is
rejected. flat_file
allows the initial population to be read from
a flat file. If flat_file
is specified, a file name must be given.
The fitness_type
controls how strongly differences in “fitness”
(i.e., the objective function) are weighted in the process of
selecting “parents” for crossover:
the
linear_rank
setting uses a linear scaling of probability of selection based on the rank order of each individual’s objective function within the populationthe
merit_function
setting uses a proportional scaling of probability of selection based on the relative value of each individual’s objective function within the population
The replacement_type
controls how current populations and newly
generated individuals are combined to create a new population. Each
of the replacement_type
selections accepts an integer value, which
is referred to below as the replacement_size
.
The
random
setting creates a new population using (a)replacement_size
randomly selected individuals from the current population, and (b)population_size
-replacement_size
individuals randomly selected from among the newly generated individuals (the number of which is optionally specified usingnew_solutions_generated
) that are created for each generation (using the selection, crossover, and mutation procedures).The
chc
setting creates a new population using (a) thereplacement_size
best individuals from the combination of the current population and the newly generated individuals, and (b)population_size
-replacement_size
individuals randomly selected from among the remaining individuals in this combined pool. Thechc
setting is the preferred selection for many engineering problems.The
elitist
(default) setting creates a new population using (a) thereplacement_size
best individuals from the current population, (b) andpopulation_size
-replacement_size
individuals randomly selected from the newly generated individuals. It is possible in this case to lose a good solution from the newly generated individuals if it is not randomly selected for replacement; however, the defaultnew_solutions_generated
value is set such that the entire set of newly generated individuals will be selected for replacement.
Note that new_solutions_generated
is not recognized by Dakota as a
valid keyword unless replacement_type
has been specified.
Expected HDF5 Output
If Dakota was built with HDF5 support and run with the
hdf5
keyword, this method
writes the following results to HDF5:
Best Objective Functions (when
objective_functions
) are specified)Calibration (when
calibration_terms
are specified)
Theory
The basic steps of an evolutionary algorithm are depicted in Figure 5.2.
image html ga.jpg “Figure 5.2 Depiction of evolutionary algorithm” image latex ga.eps “Depiction of evolutionary algorithm” width=10cm
They can be enumerated as follows:
Select an initial population randomly and perform function evaluations on these individuals
Perform selection for parents based on relative fitness
Apply crossover and mutation to generate
new_solutions_generated
new individuals from the selected parents
Apply crossover with a fixed probability from two selected parents
If crossover is applied, apply mutation to the newly generated individual with a fixed probability
If crossover is not applied, apply mutation with a fixed probability to a single selected parent
Perform function evaluations on the new individuals
Perform replacement to determine the new population
Return to step 2 and continue the algorithm until convergence criteria are satisfied or iteration limits are exceeded