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Use gamultiobj with the Optimization app |

The `gamultiobj` solver attempts to create
a set of Pareto optima for a multiobjective minimization. You may
optionally set bounds and linear constraints on variables. `gamultiobj` uses
the genetic algorithm for finding local Pareto optima. As in the `ga` function,
you may specify an initial population, or have the solver generate
one automatically.

The fitness function for use in `gamultiobj` should
return a vector of type `double`. The population
may be of type `double`, a bit string vector, or
can be a custom-typed vector. As in `ga`, if you
use a custom population type, you must write your own creation, mutation,
and crossover functions that accept inputs of that population type,
and specify these functions in the following fields, respectively:

**Creation function**(`CreationFcn`)**Mutation function**(`MutationFcn`)**Crossover function**(`CrossoverFcn`)

You can set the initial population in a variety of ways. Suppose
that you choose a population of size *m*. (The default
population size is 15 times the number of variables *n*.)
You can set the population:

As an

*m*-by-*n*matrix, where the rows represent*m*individuals.As a

*k*-by-*n*matrix, where*k*<*m*. The remaining*m*–*k*individuals are generated by a creation function.The entire population can be created by a creation function.

You can access `gamultiobj` from the Optimization
app. Enter

optimtool('gamultiobj')

at
the command line, or enter `optimtool` and then
choose `gamultiobj` from the **Solver** menu.
You can also start the tool from the MATLAB^{®} **Apps** tab.

If the **Quick Reference** help
pane is closed, you can open it by clicking the ">>"
button on the upper right:
. The help pane briefly
explains all the available options.

You can create an options structure in the Optimization app, export it to the MATLAB workspace, and use the structure at the command line. For details, see Importing and Exporting Your Work in the Optimization Toolbox™ documentation.

This example has a two-objective fitness function *f*(*x*),
where *x* is also two-dimensional:

function f = mymulti1(x) f(1) = x(1)^4 - 10*x(1)^2+x(1)*x(2) + x(2)^4 -(x(1)^2)*(x(2)^2); f(2) = x(2)^4 - (x(1)^2)*(x(2)^2) + x(1)^4 + x(1)*x(2);

Create this function file before proceeding.

To define the optimization problem, start the Optimization app, and set it as pictured.

Set the options for the problem as pictured.

Run the optimization by clicking

**Start**under**Run solver and view results**.

A plot appears in a figure window.

This plot shows the tradeoff between
the two components of *f*. It is plotted in objective
function space; see the figure Set of Noninferior Solutions.

The results of the optimization appear in the following table containing both objective function values and the value of the variables.

You can sort the table by clicking
a heading. Click the heading again to sort it in the reverse order.
The following figures show the result of clicking the heading `f1`.

To perform the same optimization at the command line:

Set the options:

options = gaoptimset('PopulationSize',60,... 'ParetoFraction',0.7,'PlotFcns',@gaplotpareto);

Run the optimization using the options:

[x fval flag output population] = gamultiobj(@mymulti1,2,... [],[],[],[],[-5,-5],[5,5],options);

There are other ways of regarding the problem. The following
figure contains a plot of the level curves of the two objective functions,
the Pareto frontier calculated by `gamultiobj` (boxes),
and the x-values of the true Pareto frontier (diamonds connected by
a nearly-straight line). The true Pareto frontier points are where
the level curves of the objective functions are parallel. They were
calculated by finding where the gradients of the objective functions
are parallel. The figure is plotted in parameter space; see the figure Mapping from Parameter Space into Objective
Function Space.

**Contours of objective functions, and Pareto frontier**

`gamultiobj` found the ends of the line segment,
meaning it found the full extent of the Pareto frontier.

The syntax and options for `gamultiobj` are
similar to those for `ga`, with the following differences:

`gamultiobj`does not have nonlinear constraints, so its syntax has fewer inputs.`gamultiobj`takes an option`DistanceMeasureFcn`, a function that assigns a distance measure to each individual with respect to its neighbors.`gamultiobj`takes an option`ParetoFraction`, a number between 0 and 1 that specifies the fraction of the population on the best Pareto frontier to be kept during the optimization. If there is only one Pareto frontier, this option is ignored.`gamultiobj`uses only the`Tournament`selection function.`gamultiobj`uses elite individuals differently than`ga`. It sorts noninferior individuals above inferior ones, so it uses elite individuals automatically.`gamultiobj`has only one hybrid function,`fgoalattain`.`gamultiobj`does not have a stall time limit.`gamultiobj`has different plot functions available.`gamultiobj`does not have a choice of scaling function.

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