Esempio n. 1
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def inst_lite():
    '''Model instance with full year NEM wide sets and input parameters only'''
    with tempfile.NamedTemporaryFile(suffix=".json", delete=False) as tmp:
        shutil.copyfileobj(gzip.open('tests/inst_lite_data.json.gz'), tmp)
        options = model_options(nem_emit_limit=True, nem_ret_ratio=True, nem_ret_gwh=True)
        model = CreateModel('lite', options).create_model(test=True)
        data = DataPortal()
        data.load(filename=tmp.name)
        return model.create_instance(data)
Esempio n. 2
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 def test_save_inputs_as_dat(self):
     import switch_mod.solve
     from pyomo.environ import DataPortal
     from testfixtures import compare
     (model, instance) = switch_mod.solve.load("test_dat")
     # To do: create a temporary file name for dat_path and delete it
     # when the test is complete.
     dat_path = "test_dat/complete_inputs.dat"
     utilities.save_inputs_as_dat(model, instance, save_path=dat_path)
     reloaded_data = DataPortal(model=model)
     reloaded_data.load(filename=dat_path)
     compare(reloaded_data.data(), instance.DataPortal.data())
Esempio n. 3
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    def create_temoa_instance(self):
        """Create a single instance of Temoa."""

        try:
            if self.options.keepPyomoLP:
                yield '\nSolver will write file: {}\n\n'.format(
                    self.options.scenario + '.lp')
                SE.write('\nSolver will write file: {}\n\n'.format(
                    self.options.scenario + '.lp'))
                self.txt_file.write('\nSolver will write file: {}\n\n'.format(
                    self.options.scenario + '.lp'))

            yield 'Reading data files.'
            SE.write('[        ] Reading data files.')
            SE.flush()
            self.txt_file.write('Reading data files.')
            begin = time()
            duration = lambda: time() - begin

            modeldata = DataPortal(model=self.model)
            # Recreate the pyomo command's ability to specify multiple "dot dat" files
            # on the command lin
            for fname in self.options.dot_dat:
                if fname[-4:] != '.dat':
                    msg = "InputError: expecting a dot dat (e.g., data.dat) file, found '{}'\n"
                    raise Exception(msg.format(fname))
                modeldata.load(filename=fname)
            yield '\t\t\t\t\t[%8.2f]\n' % duration()
            SE.write('\r[%8.2f]\n' % duration())
            self.txt_file.write('[%8.2f]\n' % duration())

            yield 'Creating Temoa model instance.'
            SE.write('[        ] Creating Temoa model instance.')
            SE.flush()
            self.txt_file.write('Creating Temoa model instance.')

            self.model.dual = Suffix(direction=Suffix.IMPORT)
            #self.model.rc = Suffix(direction=Suffix.IMPORT)
            #self.model.slack = Suffix(direction=Suffix.IMPORT)

            self.instance = self.model.create_instance(modeldata)
            yield '\t\t\t\t[%8.2f]\n' % duration()
            SE.write('\r[%8.2f]\n' % duration())
            self.txt_file.write('[%8.2f]\n' % duration())

        except Exception as model_exc:
            yield "Exception found in create_temoa_instance\n"
            SE.write("Exeception found in create_temoa_instance\n")
            self.txt_file.write("Exception found in create_temoa_instance\n")
            yield str(model_exc)
            SE.write(str(model_exc))
            self.txt_file.write(str(model_exc))
            raise model_exc
Esempio n. 4
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 def test_save_inputs_as_dat(self):
     import switch_mod.solve
     from pyomo.environ import DataPortal
     from testfixtures import compare
     (model, instance) = switch_mod.solve.load("test_dat")
     # To do: create a temporary file name for dat_path and delete it
     # when the test is complete.
     dat_path = "test_dat/complete_inputs.dat"
     utilities.save_inputs_as_dat(model, instance, save_path=dat_path)
     reloaded_data = DataPortal(model=model)
     reloaded_data.load(filename=dat_path)
     compare(reloaded_data.data(), instance.DataPortal.data())
Esempio n. 5
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 def test_save_inputs_as_dat(self):
     (model, instance) = switch_model.solve.main(
         args=["--inputs-dir", os.path.join('examples', '3zone_toy', 'inputs')],
         return_model=True, return_instance=True
     )
     temp_dir = tempfile.mkdtemp(prefix="switch_test_")
     try:
         dat_path = os.path.join(temp_dir, "complete_inputs.dat")
         utilities.save_inputs_as_dat(model, instance, save_path=dat_path)
         reloaded_data = DataPortal(model=model)
         reloaded_data.load(filename=dat_path)
         compare(reloaded_data.data(), instance.DataPortal.data())
     finally:
         shutil.rmtree(temp_dir)
Esempio n. 6
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def load_scenario_data(model, dynamic_components, loaded_modules,
                       scenario_directory, subproblem, stage):
    """
    :param model: the Pyomo abstract model object with components added
    :param dynamic_components: the dynamic components class
    :param loaded_modules: list of the imported GridPath modules as Python
        objects
    :param scenario_directory: the main scenario directory
    :param subproblem: the horizon subproblem
    :param stage: the stage subproblem
    :return: the DataPortal object populated with the input data

    Iterate over all required GridPath modules and call their
    *load_model_data* method in order to load input data into the relevant
    model components. Return the resulting DataPortal object with the data
    loaded in.
    """
    # Load data
    data_portal = DataPortal()
    for m in loaded_modules:
        if hasattr(m, "load_model_data"):
            m.load_model_data(model, dynamic_components, data_portal,
                              scenario_directory, subproblem, stage)
        else:
            pass
    return data_portal
Esempio n. 7
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 def test_save_inputs_as_dat(self):
     (model, instance) = switch_model.solve.main(args=[
         "--inputs-dir",
         os.path.join('examples', '3zone_toy', 'inputs')
     ],
                                                 return_model=True,
                                                 return_instance=True)
     temp_dir = tempfile.mkdtemp(prefix="switch_test_")
     try:
         dat_path = os.path.join(temp_dir, "complete_inputs.dat")
         utilities.save_inputs_as_dat(model, instance, save_path=dat_path)
         reloaded_data = DataPortal(model=model)
         reloaded_data.load(filename=dat_path)
         compare(reloaded_data.data(), instance.DataPortal.data())
     finally:
         shutil.rmtree(temp_dir)
Esempio n. 8
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 def test_save_inputs_as_dat(self):
     import switch_mod.solve
     from pyomo.environ import DataPortal
     from testfixtures import compare
     (model,
      instance) = switch_mod.solve.main(args=["--inputs-dir", "test_dat"],
                                        return_model=True,
                                        return_instance=True)
     temp_dir = tempfile.mkdtemp(prefix="switch_test_")
     try:
         dat_path = os.path.join(temp_dir, "complete_inputs.dat")
         utilities.save_inputs_as_dat(model, instance, save_path=dat_path)
         reloaded_data = DataPortal(model=model)
         reloaded_data.load(filename=dat_path)
         compare(reloaded_data.data(), instance.DataPortal.data())
     finally:
         shutil.rmtree(temp_dir)
def run_optimization(path_out):
    # Select Solver
    opt = SolverFactory('cbc')

    # Create DataPortal
    data = DataPortal()

    # Read Timeseries
    data.load(filename='input/timeseries_gas.csv', index='t', param='gas')
    data.load(filename='input/timeseries_heat_demand.csv', index='t', param='dem')
    data.load(filename='input/timeseries_spot.csv', index='t', param='spot')

    # Create Instanz
    instance = m.create_instance(data)

    # Solve Optimization Problem
    results = opt.solve(instance, symbolic_solver_labels=True, tee=True,
                        load_solutions=True)

    # Write Timeseries
    df_output = pd.DataFrame()
    for t in instance.t.value:
        df_output.loc[t, 'gas_chp_old'] = instance.In_chp_old[t].value
        df_output.loc[t, 'power_chp_old'] = instance.Out1_chp_old[t].value
        df_output.loc[t, 'heat_chp_old'] = instance.Out2_chp_old[t].value
        df_output.loc[t, 'on_chp_old'] = instance.on_chp_old[t].value
        df_output.loc[t, 'StartCost_chp_old'] = instance.StartCost_chp_old[t].value

        df_output.loc[t, 'gas_chp_new'] = instance.In_chp_new[t].value
        df_output.loc[t, 'power_chp_new'] = instance.Out1_chp_new[t].value
        df_output.loc[t, 'heat_chp_new'] = instance.Out2_chp_new[t].value
        df_output.loc[t, 'on_chp_new'] = instance.on_chp_new[t].value
        df_output.loc[t, 'StartCost_chp_new'] = instance.StartCost_chp_new[t].value

        df_output.loc[t, 'gas_heat_plant'] = instance.In_heat_plant[t].value
        df_output.loc[t, 'power_heat_plant'] = instance.Out1_heat_plant[t].value
        df_output.loc[t, 'heat_heat_plant'] = instance.Out2_heat_plant[t].value
        df_output.loc[t, 'on_heat_plant'] = instance.on_heat_plant[t].value
        df_output.loc[t, 'StartCost_heat_plant'] = instance.StartCost_heat_plant[t].value

        for j in instance.j_store.value:
            df_output.loc[t, '_'.join([str(j), 'charge'])] = instance.store_charge[j, t].value
            df_output.loc[t, '_'.join([str(j), 'capacity'])] = instance.store_capacity[j, t].value
            df_output.loc[t, '_'.join([str(j), 'discharge'])] = instance.store_discharge[j, t].value
        df_output.loc[t, 'demand'] = instance.dem[t]
        df_output.loc[t, 'spot'] = instance.spot[t]
        df_output.loc[t, 'gas'] = instance.gas[t]

    # Export Timeseries
    df_output.to_csv(path_out+'timeseries.csv')
Esempio n. 10
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def convert_dat_to_csv(old_path, new_path):
    # define a dummy "model" where every "parameter" reports a dimension of 0.
    # otherwise Pyomo assumes they have dim=1 and looks for index values.
    class DummyModel():
        def __getattr__(self, pname):
            return DummyParam()

    class DummyParam():
        def dim(self):
            return 0

    try:
        data = DataPortal(model=DummyModel())
        data.load(filename=old_path)
        # this happens to be in a pandas-friendly format
        df = pandas.DataFrame(data.data())
        df.to_csv(new_path, sep=',', na_rep='.', index=False)
        os.remove(old_path)
    except Exception as e:
        print('\nERROR converting {} to {}:\n{}'.format(
            old_path, new_path, e.message))
        raise
Esempio n. 11
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def add_components_and_load_data(prereq_modules, module_to_test, test_data_dir,
                                 subproblem, stage):
    """
    Test that data are loaded with no errors
    :return:
    """

    m, d = create_abstract_model(prereq_modules, module_to_test, test_data_dir,
                                 subproblem, stage)
    data = DataPortal()
    for mod in prereq_modules:
        if hasattr(mod, "load_model_data"):
            mod.load_model_data(m, d, data, test_data_dir, subproblem, stage)
    if hasattr(module_to_test, "load_model_data"):
        module_to_test.load_model_data(m, d, data, test_data_dir, subproblem,
                                       stage)

    return m, data
def scenario_inputs(inputs_directory):
    """loads in scenario data from csvs and formats as Pyomo DataPortal for abstract model input
    NOTE: if you create more params in the model, you'll have to make sure they get properly loaded here
    
    Arguments:
        inputs_directory {filepath} -- filepath of case directory with input csvs

    Returns:
        <class 'pyomo.dataportal.DataPortal.DataPortal'> -- Pyomo DataPortal
    """
    data = DataPortal()

    data.load(
        filename=os.path.join(inputs_directory, "generators.csv"),
        index=model_competitive_test.dispatch_model.GENERATORS,
        param=(
            model_competitive_test.dispatch_model.capacity,
            model_competitive_test.dispatch_model.fuelcost,
            model_competitive_test.dispatch_model.pmin,
            model_competitive_test.dispatch_model.startcost,
            model_competitive_test.dispatch_model.canspin,
            model_competitive_test.dispatch_model.cannonspin,
            model_competitive_test.dispatch_model.minup,
            model_competitive_test.dispatch_model.mindown,
            model_competitive_test.dispatch_model.noloadcost,
            model_competitive_test.dispatch_model.ramp,
            model_competitive_test.dispatch_model.tonneCO2perMWh,
            model_competitive_test.dispatch_model.CO2price,
            model_competitive_test.dispatch_model.CO2dollarsperMWh,
            model_competitive_test.dispatch_model.zonelabel,
            model_competitive_test.dispatch_model.genco_index,
            model_competitive_test.dispatch_model.uc_index,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "storage_resources.csv"),
        index=model_competitive_test.dispatch_model.STORAGE,
        param=(
            model_competitive_test.dispatch_model.discharge_max,
            model_competitive_test.dispatch_model.charge_max,
            model_competitive_test.dispatch_model.soc_max,
            model_competitive_test.dispatch_model.discharge_eff,
            model_competitive_test.dispatch_model.charge_eff,
            model_competitive_test.dispatch_model.storage_zone_label,
            model_competitive_test.dispatch_model.storage_index,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "initialize_generators.csv"),
        param=(
            model_competitive_test.dispatch_model.commitinit,
            model_competitive_test.dispatch_model.upinit,
            model_competitive_test.dispatch_model.downinit,
        ),
    )

    data.load(
        filename=os.path.join(
            inputs_directory, "generators_scheduled_availability.csv"
        ),
        param=(
            model_competitive_test.dispatch_model.scheduled_available,
            model_competitive_test.dispatch_model.capacity_time,
            model_competitive_test.dispatch_model.fuel_cost_time,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "timepoints_index.csv"),
        index=model_competitive_test.dispatch_model.TIMEPOINTS,
        param=(
            model_competitive_test.dispatch_model.reference_bus,
            model_competitive_test.dispatch_model.reg_up_mw,
            model_competitive_test.dispatch_model.reg_down_mw,
            model_competitive_test.dispatch_model.flex_up_mw,
            model_competitive_test.dispatch_model.flex_down_mw,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "zones.csv"),
        index=model_competitive_test.dispatch_model.ZONES,
        param=(
            model_competitive_test.dispatch_model.wind_cap,
            model_competitive_test.dispatch_model.solar_cap,
            model_competitive_test.dispatch_model.voltage_angle_max,
            model_competitive_test.dispatch_model.voltage_angle_min,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "timepoints_zonal.csv"),
        param=(
            model_competitive_test.dispatch_model.gross_load,
            model_competitive_test.dispatch_model.wind_cf,
            model_competitive_test.dispatch_model.solar_cf,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "transmission_lines.csv"),
        index=model_competitive_test.dispatch_model.TRANSMISSION_LINE,
        param=(model_competitive_test.dispatch_model.susceptance),
    )

    data.load(
        filename=os.path.join(inputs_directory, "transmission_lines_hourly.csv"),
        param=(
            model_competitive_test.dispatch_model.transmission_from,
            model_competitive_test.dispatch_model.transmission_to,
            model_competitive_test.dispatch_model.transmission_from_capacity,
            model_competitive_test.dispatch_model.transmission_to_capacity,
            model_competitive_test.dispatch_model.hurdle_rate,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "generator_segments.csv"),
        index=model_competitive_test.dispatch_model.GENERATORSEGMENTS,
        param=(model_competitive_test.dispatch_model.base_generator_segment_length),
    )

    data.load(
        filename=os.path.join(inputs_directory, "generator_segment_marginalcost.csv"),
        param=(
            model_competitive_test.dispatch_model.generator_segment_length,
            model_competitive_test.dispatch_model.generator_marginal_cost,
            model_competitive_test.dispatch_model.previous_offer,
            model_competitive_test.dispatch_model.marginal_CO2,
            model_competitive_test.dispatch_model.CO2_damage,
        ),
    )

    data.load(
        filename=os.path.join(inputs_directory, "case_index.csv"),
        index=model_competitive_test.dispatch_model.CASE,
        param=(model_competitive_test.dispatch_model.genco),
    )

    return data
Esempio n. 13
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""" intsance of the break schedule problem """

from model import *
from pyomo.opt import SolverFactory
from pyomo.environ import DataPortal
import numpy as np
import pandas as pd

path_in = 'input/'
path_out = 'output/'
""" Select a solver: cbc or glpk. """
opt = SolverFactory('cbc')
""" Load the input data. """
data = DataPortal()
data.load(filename=path_in + 'demand.csv', index='t', param='demand')
data.load(filename=path_in + 'workers.csv', set=m.w)
data.load(filename=path_in + 'capacities.csv', index=m.w, param='cap')
data.load(filename=path_in + 'break_settings.csv',
          index=m.w,
          param=[
              'break_length', 'num_breaks', 'earliest_break_start',
              'latest_break_end'
          ])
data.load(filename=path_in + 'shift_schedule.csv',
          param=m.shift_schedule,
          format='array')
""" Create the instanz. """
instance = m.create_instance(data)
""" Solve the optimization problem """
results = opt.solve(instance,
                    symbolic_solver_labels=True,
Esempio n. 14
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from pyomo.environ import SolverFactory, DataPortal
from DiseaseEstimation import model

model.pprint()

data = DataPortal(model=model)
data.load(filename='DiseaseEstimation.dat')
data.load(filename='DiseasePop.dat')

instance = model.create(data)
instance.pprint()

solver = SolverFactory("ipopt")
results = solver.solve(instance)

instance.display()
Esempio n. 15
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from pyomo.environ import SolverFactory, DataPortal
from DiseaseEstimation import model

model.pprint()

data = DataPortal(model=model)
data.load(filename='DiseaseEstimation.dat')
data.load(filename='DiseasePop.dat')

instance = model.create(data)
instance.pprint()

solver = SolverFactory("ipopt")
results = solver.solve(instance)

instance.display()
Esempio n. 16
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def run_optimization(path_out):
    # Select Solver
    opt = SolverFactory('cbc')

    # Create DataPortal
    data = DataPortal()

    # Read timeseries
    data.load(filename='input/timeseries_gas.csv', index='t', param='gas')
    data.load(filename='input/timeseries_heat_demand.csv',
              index='t',
              param='dem')
    data.load(filename='input/timeseries_spot.csv', index='t', param='spot')

    # Create instanz
    instance = m.create_instance(data)

    # Solve the optimization problem
    results = opt.solve(instance,
                        symbolic_solver_labels=True,
                        tee=True,
                        load_solutions=True)

    # Write timeseries
    df_output = pd.DataFrame()
    for t in instance.t.value:
        for j in instance.j_chp.value:
            df_output.loc[t, '_'.join([str(j), 'gas'])] = instance.gen_chp_gas[
                j, t].value
            df_output.loc[
                t,
                '_'.join([str(j), 'power'])] = instance.gen_chp_power[j,
                                                                      t].value
            df_output.loc[
                t, '_'.join([str(j), 'heat'])] = instance.gen_chp_heat[j,
                                                                       t].value
            df_output.loc[t,
                          '_'.join([str(j), 'oh'])] = instance.on_chp[j,
                                                                      t].value
            df_output.loc[
                t, '_'.join([str(j), 'grid'])] = instance.gen_chp_gas[j,
                                                                      t].value
        for j in instance.j_heat_plant.value:
            df_output.loc[t, '_'.join([str(j), 'gas']
                                      )] = instance.gen_heat_plant_gas[j,
                                                                       t].value
            df_output.loc[t,
                          '_'.join([str(j), 'heat']
                                   )] = instance.gen_heat_plant_heat[j,
                                                                     t].value
            df_output.loc[
                t, '_'.join([str(j), 'oh'])] = instance.on_heat_plant[j,
                                                                      t].value
            df_output.loc[t, '_'.join([str(j), 'grid']
                                      )] = instance.gen_heat_plant_gas[j,
                                                                       t].value
        for j in instance.j_store.value:
            df_output.loc[
                t,
                '_'.join([str(j), 'charge'])] = instance.store_charge[j,
                                                                      t].value
            df_output.loc[t, '_'.join([str(j), 'capacity']
                                      )] = instance.store_capacity[j, t].value
            df_output.loc[t, '_'.join([str(j), 'discharge']
                                      )] = instance.store_discharge[j, t].value
        df_output.loc[t, 'demand'] = instance.dem[t]
        df_output.loc[t, 'spot'] = instance.spot[t]
        df_output.loc[t, 'gas'] = instance.gas[t]

    df_output.to_csv(path_out + 'timeseries.csv')