Ejemplo n.º 1
0
def driver_setup(prob):
    """Change settings of the driver

    Here the type of the driver has to be selected, wether it will be an
    optimisation driver or a DoE driver. In both cases there are multiple
    options to choose from to tune the driver.
    Two recorders are then attached to the driver for results and N2 plotting.

    Args:
        prob (om.Problem object) : Instance of the Problem class that is used
        to define the current routine.

    """

    if Rt.type == 'Optim':
        # TBD : Genetic algorithm
        # if len(Rt.objective) > 1 and False:
        #     log.info("""More than 1 objective function, the driver will
        #              automatically be set to NSGA2""")
        #     prob.driver = om.pyOptSparseDriver() # multifunc driver : NSGA2
        #     prob.driver.options['optimizer'] = 'NSGA2'
        #     prob.driver.opt_settings['PopSize'] = 7
        #     prob.driver.opt_settings['maxGen'] = Rt.max_iter
        # else:
        prob.driver = om.ScipyOptimizeDriver()
        prob.driver.options['optimizer'] = Rt.driver
        prob.driver.options['maxiter'] = Rt.max_iter
        prob.driver.options['tol'] = Rt.tol
        prob.driver.options['disp'] = True
    elif Rt.type == 'DoE':
        if Rt.doedriver == 'Uniform':
            driver_type = om.UniformGenerator(num_samples=Rt.samplesnb)
        elif Rt.doedriver == 'LatinHypercube':
            driver_type = om.LatinHypercubeGenerator(samples=Rt.samplesnb)
        elif Rt.doedriver == 'FullFactorial':
            driver_type = om.FullFactorialGenerator(levels=Rt.samplesnb)
        elif Rt.doedriver == 'CSVGenerated':
            file = opf.gen_doe_csv(Rt.user_config)
            driver_type = om.CSVGenerator(file)
        prob.driver = om.DOEDriver(driver_type)
        prob.driver.options['run_parallel'] = True
        prob.driver.options['procs_per_model'] = 1
    else:
        log.error('Type of optimisation not recognize!!!')

    ## Attaching a recorder and a diagramm visualizer ##
    prob.driver.recording_options['record_inputs'] = True
    prob.driver.add_recorder(
        om.SqliteRecorder(optim_dir_path + '/circuit.sqlite'))
    prob.driver.add_recorder(
        om.SqliteRecorder(optim_dir_path + '/Driver_recorder.sql'))
Ejemplo n.º 2
0
    def set_driver(self, wt_opt):
        folder_output = self.opt["general"]["folder_output"]

        if self.opt["driver"]["optimization"]["flag"]:
            step_size = self._get_step_size()

            # Solver has specific meaning in OpenMDAO
            wt_opt.model.approx_totals(method="fd", step=step_size, form=self.opt["driver"]["optimization"]["form"])

            # Set optimization solver and options. First, Scipy's SLSQP
            if self.opt["driver"]["optimization"]["solver"] == "SLSQP":
                wt_opt.driver = om.ScipyOptimizeDriver()
                wt_opt.driver.options["optimizer"] = self.opt["driver"]["optimization"]["solver"]
                wt_opt.driver.options["tol"] = self.opt["driver"]["optimization"]["tol"]
                wt_opt.driver.options["maxiter"] = self.opt["driver"]["optimization"]["max_iter"]

            # The next two optimization methods require pyOptSparse.
            elif self.opt["driver"]["optimization"]["solver"] == "CONMIN":
                try:
                    from openmdao.api import pyOptSparseDriver
                except:
                    raise ImportError(
                        "You requested the optimization solver CONMIN, but you have not installed the pyOptSparseDriver. Please do so and rerun."
                    )
                wt_opt.driver = pyOptSparseDriver()
                wt_opt.driver.options["optimizer"] = self.opt["driver"]["optimization"]["solver"]
                wt_opt.driver.opt_settings["ITMAX"] = self.opt["driver"]["optimization"]["max_iter"]

            elif self.opt["driver"]["optimization"]["solver"] == "SNOPT":
                try:
                    from openmdao.api import pyOptSparseDriver
                except:
                    raise ImportError(
                        "You requested the optimization solver SNOPT, but you have not installed the pyOptSparseDriver. Please do so and rerun."
                    )
                wt_opt.driver = pyOptSparseDriver()
                try:
                    wt_opt.driver.options["optimizer"] = self.opt["driver"]["optimization"]["solver"]
                except:
                    raise ImportError(
                        "You requested the optimization solver SNOPT, but you have not installed it within the pyOptSparseDriver. Please do so and rerun."
                    )
                wt_opt.driver.opt_settings["Major optimality tolerance"] = float(
                    self.opt["driver"]["optimization"]["tol"]
                )
                wt_opt.driver.opt_settings["Major iterations limit"] = int(
                    self.opt["driver"]["optimization"]["max_major_iter"]
                )
                wt_opt.driver.opt_settings["Iterations limit"] = int(
                    self.opt["driver"]["optimization"]["max_minor_iter"]
                )
                wt_opt.driver.opt_settings["Major feasibility tolerance"] = float(
                    self.opt["driver"]["optimization"]["tol"]
                )
                wt_opt.driver.opt_settings["Summary file"] = os.path.join(folder_output, "SNOPT_Summary_file.txt")
                wt_opt.driver.opt_settings["Print file"] = os.path.join(folder_output, "SNOPT_Print_file.txt")
                if "hist_file_name" in self.opt["driver"]["optimization"]:
                    wt_opt.driver.hist_file = self.opt["driver"]["optimization"]["hist_file_name"]
                if "verify_level" in self.opt["driver"]["optimization"]:
                    wt_opt.driver.opt_settings["Verify level"] = self.opt["driver"]["optimization"]["verify_level"]
                else:
                    wt_opt.driver.opt_settings["Verify level"] = -1
                # wt_opt.driver.declare_coloring()
                if "hotstart_file" in self.opt["driver"]["optimization"]:
                    wt_opt.driver.hotstart_file = self.opt["driver"]["optimization"]["hotstart_file"]

            else:
                raise ValueError(
                    "The optimizer " + self.opt["driver"]["optimization"]["solver"] + "is not yet supported!"
                )

        elif self.opt["driver"]["design_of_experiments"]["flag"]:
            if self.opt["driver"]["design_of_experiments"]["generator"].lower() == "uniform":
                generator = om.UniformGenerator(
                    num_samples=self.opt["driver"]["design_of_experiments"]["num_samples"],
                    seed=self.opt["driver"]["design_of_experiments"]["seed"],
                )
            elif self.opt["driver"]["design_of_experiments"]["generator"].lower() == "fullfact":
                generator = om.FullFactorialGenerator(levels=self.opt["driver"]["design_of_experiments"]["num_samples"])
            elif self.opt["driver"]["design_of_experiments"]["generator"].lower() == "plackettburman":
                generator = om.PlackettBurmanGenerator()
            elif self.opt["driver"]["design_of_experiments"]["generator"].lower() == "boxbehnken":
                generator = om.BoxBehnkenGenerator()
            elif self.opt["driver"]["design_of_experiments"]["generator"].lower() == "latinhypercube":
                generator = om.LatinHypercubeGenerator(
                    samples=self.opt["driver"]["design_of_experiments"]["num_samples"],
                    criterion=self.opt["driver"]["design_of_experiments"]["criterion"],
                    seed=self.opt["driver"]["design_of_experiments"]["seed"],
                )
            else:
                raise Exception(
                    "The generator type {} is unsupported.".format(
                        self.opt["driver"]["design_of_experiments"]["generator"]
                    )
                )

            # Initialize driver
            wt_opt.driver = om.DOEDriver(generator)

            # options
            wt_opt.driver.options["run_parallel"] = self.opt["driver"]["design_of_experiments"]["run_parallel"]

        else:
            raise Exception(
                "Design variables are set to be optimized or studied, but no driver is selected. Please enable a driver."
            )

        return wt_opt
Ejemplo n.º 3
0
import openmdao.api as om
from openmdao.test_suite.components.paraboloid import Paraboloid

prob = om.Problem()
model = prob.model

model.add_subsystem('p1', om.IndepVarComp('x', 0.), promotes=['*'])
model.add_subsystem('p2', om.IndepVarComp('y', 0.), promotes=['*'])
model.add_subsystem('comp', Paraboloid(), promotes=['*'])

model.add_design_var('x', lower=-10, upper=10)
model.add_design_var('y', lower=-10, upper=10)
model.add_objective('f_xy')

prob.driver = om.DOEDriver(om.UniformGenerator(num_samples=10))
#prob.driver = om.DOEDriver(om.LatinHypercubeGenerator(samples=10))
prob.driver.add_recorder(om.SqliteRecorder("cases.sql"))

prob.setup()
prob.run_driver()
prob.cleanup()

cr = om.CaseReader("cases.sql")
cases = cr.list_cases('driver')

print(len(cases))

values = []
for case in cases:
    outputs = cr.get_case(case).outputs
    values.append((outputs['x'], outputs['y'], outputs['f_xy']))
Ejemplo n.º 4
0
def run_routine():
    """
    Run optimisation with openmdao.

    Function 'run_routine' is used to define the optimisation problem for
    openmdao. The different parameter to define variables are passed through a
    global dictionnay (for now).

    Source:
        *http://openmdao.org/twodocs/versions/latest/getting_started/index.html

    """
    # sInitialize dictionnaries
    # init_dict()

    # Build the model
    prob = om.Problem()
    model = prob.model

    # Build model components
    indeps = model.add_subsystem('indeps', om.IndepVarComp())
    model.add_subsystem('objective', objective_function())
    model.add_subsystem('const', constraint())

    # Choose between optimizer or driver
    if Rt.type == 'DoE':
        if Rt.doetype == 'uniform':
            driver = prob.driver = om.DOEDriver(
                om.UniformGenerator(num_samples=Rt.samplesnb))
        elif Rt.doetype == 'fullfact':
            # 2->9 3->81
            driver = prob.driver = om.DOEDriver(
                om.FullFactorialGenerator(Rt.samplesnb))
    elif Rt.type == 'Optim':
        driver = prob.driver = om.ScipyOptimizeDriver()
        # SLSQP,COBYLA,shgo,TNC
        driver.options['optimizer'] = Rt.driver
        # driver.options['maxiter'] = 20
        driver.options['tol'] = 1e-2
        if Rt.driver == 'COBYLA':
            driver.opt_settings['catol'] = 0.06

    # Connect problem components to model components

    # Design variable
    for key, (name, listval, minval, maxval, setcommand,
              getcommand) in design_var_dict.items():
        norm = int(np.log10(abs(listval[0]) + 1) + 1)
        indeps.add_output(key, listval[0], ref=norm, ref0=0)
        model.connect('indeps.' + key, 'objective.' + key)
        model.add_design_var('indeps.' + key, lower=minval, upper=maxval)

    # Constraints
    for key, (name, listval, minval, maxval,
              getcommand) in res_var_dict.items():
        # Select only one constrain
        if name in Rt.constraints:
            norm = int(np.log10(abs(listval[0]) + 1) + 1)
            model.add_constraint('const.' + name,
                                 ref=norm,
                                 lower=-0.25,
                                 upper=0.25)

    # Objective function
    model.add_objective('objective.{}'.format(Rt.objective))

    # Recorder
    path = optim_dir_path
    driver.add_recorder(om.SqliteRecorder(path + '/Driver_recorder.sql'))

    # Run
    prob.setup()
    prob.run_driver()
    prob.cleanup()

    # Results
    log.info('=========================================')
    log.info('min = ' + str(prob['objective.{}'.format(Rt.objective)]))

    for key, (name, listval, minval, maxval, setcommand,
              getcommand) in design_var_dict.items():
        log.info(name + ' = ' + str(prob['indeps.' + key]) + '\n Min :' +
                 str(minval) + ' Max : ' + str(maxval))

    log.info('Variable history')
    for key, (name, listval, minval, maxval, setcommand,
              getcommand) in design_var_dict.items():
        log.info(name + ' => ' + str(listval))

    log.info('=========================================')

    # Generate plots, maybe make a dynamic plot
    opf.read_results(optim_dir_path, Rt.type)