예제 #1
0
 def setUp(self):
     # Setup building
     self.building_source_file_path = os.path.join(self.get_unittest_path(), 'resources', 'building', \
                                                   'LBNL71T_Emulation_JModelica_v2.fmu');   
     self.zone_names = ['wes', 'hal', 'eas'];
     weather_path = os.path.join(self.get_unittest_path(), 'resources', 'weather', \
                                 'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw');
     internal_path = os.path.join(self.get_unittest_path(), 'resources', 'internal', 'sampleCSV.csv');
     internal_variable_map = {'intRad_wes' : ('wes', 'intRad', units.W_m2), \
                              'intCon_wes' : ('wes', 'intCon', units.W_m2), \
                              'intLat_wes' : ('wes', 'intLat', units.W_m2), \
                              'intRad_hal' : ('hal', 'intRad', units.W_m2), \
                              'intCon_hal' : ('hal', 'intCon', units.W_m2), \
                              'intLat_hal' : ('hal', 'intLat', units.W_m2), \
                              'intRad_eas' : ('eas', 'intRad', units.W_m2), \
                              'intCon_eas' : ('eas', 'intCon', units.W_m2), \
                              'intLat_eas' : ('eas', 'intLat', units.W_m2)};        
     control_path = os.path.join(self.get_unittest_path(), 'resources', 'building', 'ControlCSV_0.csv');
     control_variable_map = {'conHeat_wes' : ('conHeat_wes', units.unit1), \
                                  'conHeat_hal' : ('conHeat_hal', units.unit1), \
                                  'conHeat_eas' : ('conHeat_eas', units.unit1)};        
     # Measurements
     self.measurements = {};
     self.measurements['wesTdb'] = {'Sample' : variables.Static('wesTdb_sample', 600, units.s)};
     self.measurements['halTdb'] = {'Sample' : variables.Static('halTdb_sample', 1200, units.s)};
     self.measurements['easTdb'] = {'Sample' : variables.Static('easTdb_sample', 1200, units.s)};           
     # Exodata
     self.weather = exodata.WeatherFromEPW(weather_path);
     self.internal = exodata.InternalFromCSV(internal_path, internal_variable_map, tz_name = self.weather.tz_name);
     self.control = exodata.ControlFromCSV(control_path, control_variable_map, tz_name = self.weather.tz_name);
     # Parameters
     self.parameter_data = {};
     self.parameter_data['lat'] = {};
     self.parameter_data['lat']['Value'] = self.weather.lat;
예제 #2
0
 def test_standard_time(self):
     start_time = '1/1/2015'
     final_time = '1/1/2016'
     weather = exodata.WeatherFromEPW(self.epw_filepath, standard_time=True)
     weather.collect_data(start_time, final_time)
     # Check instantiation
     self.assertAlmostEqual(weather.lat.display_data(), 41.980, places=4)
     self.assertAlmostEqual(weather.lon.display_data(), -87.92, places=4)
     self.assertEqual(weather.tz_name, 'utc')
     # Check reference
     df_test = weather.display_data()
     self.check_df(df_test, 'collect_data_standard_time.csv')
예제 #3
0
 def setUp(self):
     self.MPCPyPath = utility.get_MPCPy_path();
     ## Setup building fmu emulation
     self.building_source_file_path = self.MPCPyPath + os.sep + 'resources' + os.sep + 'building' + os.sep + 'LBNL71T_Emulation_JModelica_v2.fmu';
     self.zone_names = ['wes', 'hal', 'eas'];
     self.weather_path = self.MPCPyPath + os.sep + 'resources' + os.sep + 'weather' + os.sep + 'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw';
     self.internal_path = self.MPCPyPath + os.sep + 'resources' + os.sep + 'internal' + os.sep + 'sampleCSV.csv';
     self.internal_variable_map = {'intRad_wes' : ('wes', 'intRad', units.W_m2), \
                                   'intCon_wes' : ('wes', 'intCon', units.W_m2), \
                                   'intLat_wes' : ('wes', 'intLat', units.W_m2), \
                                   'intRad_hal' : ('hal', 'intRad', units.W_m2), \
                                   'intCon_hal' : ('hal', 'intCon', units.W_m2), \
                                   'intLat_hal' : ('hal', 'intLat', units.W_m2), \
                                   'intRad_eas' : ('eas', 'intRad', units.W_m2), \
                                   'intCon_eas' : ('eas', 'intCon', units.W_m2), \
                                   'intLat_eas' : ('eas', 'intLat', units.W_m2)};        
     self.control_path = self.MPCPyPath + os.sep + 'resources' + os.sep + 'building' + os.sep + 'ControlCSV_0.csv';
     self.control_variable_map = {'conHeat_wes' : ('conHeat_wes', units.unit1), \
                                  'conHeat_hal' : ('conHeat_hal', units.unit1), \
                                  'conHeat_eas' : ('conHeat_eas', units.unit1)};        
     # Measurements
     self.measurements = {};
     self.measurements['wesTdb'] = {'Sample' : variables.Static('wesTdb_sample', 1800, units.s)};
     self.measurements['halTdb'] = {'Sample' : variables.Static('halTdb_sample', 1800, units.s)};
     self.measurements['easTdb'] = {'Sample' : variables.Static('easTdb_sample', 1800, units.s)};
     self.measurements['wesPhvac'] = {'Sample' : variables.Static('easTdb_sample', 1800, units.s)};
     self.measurements['halPhvac'] = {'Sample' : variables.Static('easTdb_sample', 1800, units.s)};     
     self.measurements['easPhvac'] = {'Sample' : variables.Static('easTdb_sample', 1800, units.s)};
     self.measurements['Ptot'] = {'Sample' : variables.Static('easTdb_sample', 1800, units.s)};
     ## Setup model
     self.mopath = self.MPCPyPath + os.sep + 'resources' + os.sep + 'model' + os.sep + 'LBNL71T_MPC.mo';
     self.modelpath = 'LBNL71T_MPC.MPC';
     self.libraries = os.environ.get('MODELICAPATH');
     self.estimate_method = models.JModelica; 
     self.validation_method = models.RMSE;
     # Instantiate exo data sources
     self.weather = exodata.WeatherFromEPW(self.weather_path);
     self.internal = exodata.InternalFromCSV(self.internal_path, self.internal_variable_map, tz_name = self.weather.tz_name);
     self.control = exodata.ControlFromCSV(self.control_path, self.control_variable_map, tz_name = self.weather.tz_name);   
     # Parameters        
     self.parameters = exodata.ParameterFromCSV(self.MPCPyPath + os.sep + 'resources' + os.sep + 'model' + os.sep + 'LBNL71T_Parameters.csv');
     self.parameters.collect_data();
     self.parameters.data['lat'] = {};
     self.parameters.data['lat']['Value'] = self.weather.lat;    
     # Instantiate building
     building_parameters_data = {};
     building_parameters_data['lat'] = {};
     building_parameters_data['lat']['Value'] = self.weather.lat;  
     self.building = systems.EmulationFromFMU(self.measurements, \
                                              fmupath = self.building_source_file_path, \
                                              zone_names = self.zone_names, \
                                              parameter_data = building_parameters_data);
예제 #4
0
 def setUp(self):
     self.epw_filepath = os.path.join(
         self.get_unittest_path(), 'resources', 'weather',
         'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw')
     self.weather = exodata.WeatherFromEPW(self.epw_filepath)
예제 #5
0
def get_weather(weather_file, start_time, final_time):
    # Function for getting weather-data
    print("%%%%%%---Getting weather data---%%%%%%%%%%%%%")
    weather = exodata.WeatherFromEPW(weather_file)

    return weather.collect_data(start_time, final_time)
예제 #6
0
def param_estimation(model_param, ADD_UNIT_EP_TZONE):

    # Simulation settings
    estimation_start_time = model_param['estimation_start_time']
    estimation_stop_time = model_param['estimation_stop_time']
    validation_start_time = model_param['validation_start_time']
    validation_stop_time = model_param['validation_stop_time']

    pat_wea = model_param['wea']
    variable_map = eval(model_param['var_map'])
    con_fil = model_param['con_fil']
    obs_var = model_param['obs_var']
    step_size = model_param['emulator_step_size']
    fmu_path = model_param['fmu_path']
    param_fil = model_param['param_fil']
    moinfo = model_param['rc_param']

    # Setup for running the weather FMU
    weather = exodata.WeatherFromEPW(pat_wea)

    control = exodata.ControlFromCSV(con_fil,
                                     variable_map,
                                     tz_name=weather.tz_name)

    # Running the weather data FMU
    weather.collect_data(estimation_start_time, estimation_stop_time)

    # Collecting the data from the CSV file
    control.collect_data(estimation_start_time, estimation_stop_time)

    # Setting up parameters for emulator model (EnergyPlusFMU)
    from mpcpy import systems
    measurements = {obs_var: {}}
    measurements[obs_var]['Sample'] = variables.Static('sample_rate_Tzone',
                                                       step_size, units.s)
    fmupath = fmu_path

    print("=========Run emulation model with FMU={!s}".format(fmu_path))
    emulation = systems.EmulationFromFMU(measurements,
                                         fmupath=fmu_path,
                                         control_data=control.data,
                                         tz_name=weather.tz_name)

    # Running the emulator EnergyPlus FMU
    emulation.collect_measurements(estimation_start_time, estimation_stop_time)

    # Add units to EnergyPlus output variables
    if ((ADD_UNIT_EP_TZONE == True) and obs_var == 'Tzone'):
        print(
            "==========WARNING: When using E+FMU, if the output of E+ is the "
            "zone temperature, then the next lines will add the unit degC to the "
            "output results. This is only valid for E+ and an output which is Tzone."
        )
        data = measurements[obs_var]["Measured"].display_data()
        name = measurements[obs_var]["Measured"].name

    # Set new variable with same data and name and units degC
    measurements[obs_var]["Measured"] = variables.Timeseries(
        name, data, units.degC)

    from mpcpy import models
    parameters = exodata.ParameterFromCSV(param_fil)
    parameters.collect_data()
    parameters.display_data()

    # Defning model to be use for parameter estimation
    model = models.Modelica(models.JModelica,
                            models.RMSE,
                            emulation.measurements,
                            moinfo=moinfo,
                            parameter_data=parameters.data,
                            weather_data=weather.data,
                            control_data=control.data,
                            tz_name=weather.tz_name)

    #print("=========Simulate model with default parameters={!s}".format(moinfo))
    #model.simulate('1/1/2017', '1/2/2017')
    #model.parameter_data['zone.T0']['Value'].set_data(model.get_base_measurements('Measured')['Tzone'].loc[start_time_est_utc])

    #model.display_measurements('Simulated')
    print("=========Run parameter estimation for model={!s}".format(moinfo))
    print("=========Start time={!s}, Stop time={!s}, Observed variable={!s}".
          format(estimation_start_time, estimation_stop_time, obs_var))
    model.estimate(estimation_start_time, estimation_stop_time, [obs_var])

    # Validate the estimation model by comparing measured vs. simulated data
    # IMPORTANT: The accuracy of the validation depends on the initial temperature set
    # in the Modelica models. A parameter T0 is defined to set the initial
    # temperatures of the room air or internal mass. this should be set to
    # to the initial temperatures measured from the emulator.
    model.validate(validation_start_time,
                   validation_stop_time,
                   'validate_tra',
                   plot=1)
    print("The Root Mean Square Error={!s}".format(
        model.RMSE['Tzone'].display_data()))

    # Printing simulation results
    for key in model.parameter_data.keys():
        print(key, model.parameter_data[key]['Value'].display_data())
예제 #7
0
 def setUp(self):
     ## Setup building fmu emulation
     self.building_source_file_path_est = os.path.join(
         self.get_unittest_path(), 'resources', 'building',
         'RealMeasurements_est.csv')
     self.building_source_file_path_val = os.path.join(
         self.get_unittest_path(), 'resources', 'building',
         'RealMeasurements_val.csv')
     self.building_source_file_path_val_missing = os.path.join(
         self.get_unittest_path(), 'resources', 'building',
         'RealMeasurements_val_missing.csv')
     self.zone_names = ['wes', 'hal', 'eas']
     self.weather_path = os.path.join(
         self.get_unittest_path(), 'resources', 'weather',
         'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw')
     self.internal_path = os.path.join(self.get_unittest_path(),
                                       'resources', 'internal',
                                       'sampleCSV.csv')
     self.internal_variable_map = {'intRad_wes' : ('wes', 'intRad', units.W_m2), \
                                   'intCon_wes' : ('wes', 'intCon', units.W_m2), \
                                   'intLat_wes' : ('wes', 'intLat', units.W_m2), \
                                   'intRad_hal' : ('hal', 'intRad', units.W_m2), \
                                   'intCon_hal' : ('hal', 'intCon', units.W_m2), \
                                   'intLat_hal' : ('hal', 'intLat', units.W_m2), \
                                   'intRad_eas' : ('eas', 'intRad', units.W_m2), \
                                   'intCon_eas' : ('eas', 'intCon', units.W_m2), \
                                   'intLat_eas' : ('eas', 'intLat', units.W_m2)}
     self.control_path = os.path.join(self.get_unittest_path(), 'resources',
                                      'building', 'ControlCSV_0.csv')
     self.control_variable_map = {'conHeat_wes' : ('conHeat_wes', units.unit1), \
                                  'conHeat_hal' : ('conHeat_hal', units.unit1), \
                                  'conHeat_eas' : ('conHeat_eas', units.unit1)}
     # Measurements
     self.measurements = {}
     self.measurements['wesTdb'] = {
         'Sample': variables.Static('wesTdb_sample', 1800, units.s)
     }
     self.measurements['halTdb'] = {
         'Sample': variables.Static('halTdb_sample', 1800, units.s)
     }
     self.measurements['easTdb'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['wesPhvac'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['halPhvac'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['easPhvac'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['Ptot'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurement_variable_map = {
         'wesTdb_mea': ('wesTdb', units.K),
         'halTdb_mea': ('halTdb', units.K),
         'easTdb_mea': ('easTdb', units.K),
         'wesPhvac_mea': ('wesPhvac', units.W),
         'halPhvac_mea': ('halPhvac', units.W),
         'easPhvac_mea': ('easPhvac', units.W),
         'Ptot_mea': ('Ptot', units.W)
     }
     ## Setup model
     self.mopath = os.path.join(self.get_unittest_path(), 'resources',
                                'model', 'LBNL71T_MPC.mo')
     self.modelpath = 'LBNL71T_MPC.MPC'
     self.libraries = os.environ.get('MODELICAPATH')
     self.estimate_method = models.JModelica
     self.validation_method = models.RMSE
     # Instantiate exo data sources
     self.weather = exodata.WeatherFromEPW(self.weather_path)
     self.internal = exodata.InternalFromCSV(self.internal_path,
                                             self.internal_variable_map,
                                             tz_name=self.weather.tz_name)
     self.control = exodata.ControlFromCSV(self.control_path,
                                           self.control_variable_map,
                                           tz_name=self.weather.tz_name)
     # Parameters
     self.parameters = exodata.ParameterFromCSV(
         os.path.join(self.get_unittest_path(), 'resources', 'model',
                      'LBNL71T_Parameters.csv'))
     self.parameters.collect_data()
     self.parameters.data['lat'] = {}
     self.parameters.data['lat']['Value'] = self.weather.lat
     # Instantiate test building
     self.building_est = systems.RealFromCSV(
         self.building_source_file_path_est,
         self.measurements,
         self.measurement_variable_map,
         tz_name=self.weather.tz_name)
     # Exogenous collection time
     self.start_time_exodata = '1/1/2015'
     self.final_time_exodata = '1/30/2015'
     # Estimation time
     self.start_time_estimation = '1/1/2015'
     self.final_time_estimation = '1/4/2015'
     # Validation time
     self.start_time_validation = '1/4/2015'
     self.final_time_validation = '1/5/2015'
     # Measurement variables for estimate
     self.measurement_variable_list = ['wesTdb', 'easTdb', 'halTdb']
     # Exodata
     self.weather.collect_data(self.start_time_exodata,
                               self.final_time_exodata)
     self.internal.collect_data(self.start_time_exodata,
                                self.final_time_exodata)
     self.control.collect_data(self.start_time_exodata,
                               self.final_time_exodata)
     # Collect measurement data
     self.building_est.collect_measurements(self.start_time_estimation,
                                            self.final_time_estimation)
     # Instantiate model
     self.model = models.Modelica(self.estimate_method, \
                                  self.validation_method, \
                                  self.building_est.measurements, \
                                  moinfo = (self.mopath, self.modelpath, self.libraries), \
                                  zone_names = self.zone_names, \
                                  weather_data = self.weather.data, \
                                  internal_data = self.internal.data, \
                                  control_data = self.control.data, \
                                  parameter_data = self.parameters.data, \
                                  tz_name = self.weather.tz_name)
     # Simulate model with initial guess
     self.model.simulate(self.start_time_estimation,
                         self.final_time_estimation)
 def update_weather(self, start, end):
     # Next we get exogenous data from epw-file
     print("%%%%%%---Getting weather data---%%%%%%%%%%%%%")
     self.weather = exodata.WeatherFromEPW(self.weather_file)
     self.weather.collect_data(start, end)
     store_namespace('weather', self.weather.display_data())
예제 #9
0
    def setUp(self):
        ## Setup model
        self.mopath = os.path.join(self.get_unittest_path(), 'resources',
                                   'model', 'LBNL71T_MPC.mo')
        self.modelpath = 'LBNL71T_MPC.MPC'
        self.libraries = os.environ.get('MODELICAPATH')
        self.estimate_method = models.JModelica
        self.validation_method = models.RMSE
        self.zone_names = ['wes', 'hal', 'eas']
        # Measurements
        self.measurements = {}
        self.measurements['wesTdb'] = {
            'Sample': variables.Static('wesTdb_sample', 1800, units.s)
        }
        self.measurements['halTdb'] = {
            'Sample': variables.Static('halTdb_sample', 1800, units.s)
        }
        self.measurements['easTdb'] = {
            'Sample': variables.Static('easTdb_sample', 1800, units.s)
        }
        self.measurements['wesPhvac'] = {
            'Sample': variables.Static('easTdb_sample', 1800, units.s)
        }
        self.measurements['halPhvac'] = {
            'Sample': variables.Static('easTdb_sample', 1800, units.s)
        }
        self.measurements['easPhvac'] = {
            'Sample': variables.Static('easTdb_sample', 1800, units.s)
        }
        self.measurements['Ptot'] = {
            'Sample': variables.Static('easTdb_sample', 1800, units.s)
        }

        ## Exodata
        # Exogenous collection time
        self.start_time_exodata = '1/1/2015'
        self.final_time_exodata = '1/30/2015'
        # Optimization time
        self.start_time_optimization = '1/2/2015'
        self.final_time_optimization = '1/3/2015'
        # Weather
        self.weather_path = os.path.join(
            self.get_unittest_path(), 'resources', 'weather',
            'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw')
        self.weather = exodata.WeatherFromEPW(self.weather_path)
        self.weather.collect_data(self.start_time_exodata,
                                  self.final_time_exodata)
        # Internal
        self.internal_path = os.path.join(self.get_unittest_path(),
                                          'resources', 'internal',
                                          'sampleCSV.csv')
        self.internal_variable_map = {'intRad_wes' : ('wes', 'intRad', units.W_m2), \
                                      'intCon_wes' : ('wes', 'intCon', units.W_m2), \
                                      'intLat_wes' : ('wes', 'intLat', units.W_m2), \
                                      'intRad_hal' : ('hal', 'intRad', units.W_m2), \
                                      'intCon_hal' : ('hal', 'intCon', units.W_m2), \
                                      'intLat_hal' : ('hal', 'intLat', units.W_m2), \
                                      'intRad_eas' : ('eas', 'intRad', units.W_m2), \
                                      'intCon_eas' : ('eas', 'intCon', units.W_m2), \
                                      'intLat_eas' : ('eas', 'intLat', units.W_m2)}
        self.internal = exodata.InternalFromCSV(self.internal_path,
                                                self.internal_variable_map,
                                                tz_name=self.weather.tz_name)
        self.internal.collect_data(self.start_time_exodata,
                                   self.final_time_exodata)
        # Control (as initialization)
        self.control_path = os.path.join(self.get_unittest_path(), 'resources',
                                         'optimization', 'ControlCSV.csv')
        self.control_variable_map = {'conHeat_wes' : ('conHeat_wes', units.unit1), \
                                     'conHeat_hal' : ('conHeat_hal', units.unit1), \
                                     'conHeat_eas' : ('conHeat_eas', units.unit1)}
        self.control = exodata.ControlFromCSV(self.control_path,
                                              self.control_variable_map,
                                              tz_name=self.weather.tz_name)
        self.control.collect_data(self.start_time_exodata,
                                  self.final_time_exodata)
        # Parameters
        self.parameters_path = os.path.join(self.get_unittest_path(),
                                            'outputs', 'model_parameters.txt')
        self.parameters = exodata.ParameterFromCSV(self.parameters_path)
        self.parameters.collect_data()
        # Constraints
        self.constraints_path = os.path.join(
            self.get_unittest_path(), 'resources', 'optimization',
            'sampleConstraintCSV_Constant.csv')
        self.constraints_variable_map = {'wesTdb_min' : ('wesTdb', 'GTE', units.degC), \
                                         'wesTdb_max' : ('wesTdb', 'LTE', units.degC), \
                                         'easTdb_min' : ('easTdb', 'GTE', units.degC), \
                                         'easTdb_max' : ('easTdb', 'LTE', units.degC), \
                                         'halTdb_min' : ('halTdb', 'GTE', units.degC), \
                                         'halTdb_max' : ('halTdb', 'LTE', units.degC), \
                                         'der_wesTdb_min' : ('wesTdb', 'dGTE', units.K), \
                                         'der_wesTdb_max' : ('wesTdb', 'dLTE', units.K), \
                                         'der_easTdb_min' : ('easTdb', 'dGTE', units.K), \
                                         'der_easTdb_max' : ('easTdb', 'dLTE', units.K), \
                                         'der_halTdb_min' : ('halTdb', 'dGTE', units.K), \
                                         'der_halTdb_max' : ('halTdb', 'dLTE', units.K), \
                                         'conHeat_wes_min' : ('conHeat_wes', 'GTE', units.unit1), \
                                         'conHeat_wes_max' : ('conHeat_wes', 'LTE', units.unit1), \
                                         'conHeat_hal_min' : ('conHeat_hal', 'GTE', units.unit1), \
                                         'conHeat_hal_max' : ('conHeat_hal', 'LTE', units.unit1), \
                                         'conHeat_eas_min' : ('conHeat_eas', 'GTE', units.unit1), \
                                         'conHeat_eas_max' : ('conHeat_eas', 'LTE', units.unit1)}
        self.constraints = exodata.ConstraintFromCSV(
            self.constraints_path,
            self.constraints_variable_map,
            tz_name=self.weather.tz_name)
        self.constraints.collect_data(self.start_time_exodata,
                                      self.final_time_exodata)
        self.constraints.data['wesTdb']['Cyclic'] = variables.Static(
            'wesTdb_cyclic', 1, units.boolean_integer)
        self.constraints.data['easTdb']['Cyclic'] = variables.Static(
            'easTdb_cyclic', 1, units.boolean_integer)
        self.constraints.data['halTdb']['Cyclic'] = variables.Static(
            'halTdb_cyclic', 1, units.boolean_integer)
        # Prices
        self.prices_path = os.path.join(self.get_unittest_path(), 'resources',
                                        'optimization', 'PriceCSV.csv')
        self.price_variable_map = {
            'pi_e': ('pi_e', units.unit1)
        }
        self.prices = exodata.PriceFromCSV(self.prices_path,
                                           self.price_variable_map,
                                           tz_name=self.weather.tz_name)
        self.prices.collect_data(self.start_time_exodata,
                                 self.final_time_exodata)

        ## Parameters
        self.parameters.data['lat'] = {}
        self.parameters.data['lat']['Value'] = self.weather.lat
        ## Instantiate model
        self.model = models.Modelica(self.estimate_method, \
                                     self.validation_method, \
                                     self.measurements, \
                                     moinfo = (self.mopath, self.modelpath, self.libraries), \
                                     zone_names = self.zone_names, \
                                     weather_data = self.weather.data, \
                                     internal_data = self.internal.data, \
                                     control_data = self.control.data, \
                                     parameter_data = self.parameters.data, \
                                     tz_name = self.weather.tz_name)
예제 #10
0
 def setUp(self):
     self.epw_filepath = utility.get_MPCPy_path(
     ) + os.sep + 'resources' + os.sep + 'weather' + os.sep + 'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw'
     self.weather = exodata.WeatherFromEPW(self.epw_filepath)
예제 #11
0
 def setUp(self):
     ## Setup building fmu emulation
     self.building_source_file_path_est = os.path.join(
         self.get_unittest_path(), 'resources', 'building',
         'RealMeasurements_est.csv')
     self.building_source_file_path_val = os.path.join(
         self.get_unittest_path(), 'resources', 'building',
         'RealMeasurements_val.csv')
     self.zone_names = ['wes', 'hal', 'eas']
     self.weather_path = os.path.join(
         self.get_unittest_path(), 'resources', 'weather',
         'USA_IL_Chicago-OHare.Intl.AP.725300_TMY3.epw')
     self.internal_path = os.path.join(self.get_unittest_path(),
                                       'resources', 'internal',
                                       'sampleCSV.csv')
     self.internal_variable_map = {'intRad_wes' : ('wes', 'intRad', units.W_m2), \
                                   'intCon_wes' : ('wes', 'intCon', units.W_m2), \
                                   'intLat_wes' : ('wes', 'intLat', units.W_m2), \
                                   'intRad_hal' : ('hal', 'intRad', units.W_m2), \
                                   'intCon_hal' : ('hal', 'intCon', units.W_m2), \
                                   'intLat_hal' : ('hal', 'intLat', units.W_m2), \
                                   'intRad_eas' : ('eas', 'intRad', units.W_m2), \
                                   'intCon_eas' : ('eas', 'intCon', units.W_m2), \
                                   'intLat_eas' : ('eas', 'intLat', units.W_m2)}
     self.control_path = os.path.join(self.get_unittest_path(), 'resources',
                                      'building', 'ControlCSV_0.csv')
     self.control_variable_map = {'conHeat_wes' : ('conHeat_wes', units.unit1), \
                                  'conHeat_hal' : ('conHeat_hal', units.unit1), \
                                  'conHeat_eas' : ('conHeat_eas', units.unit1)}
     # Measurements
     self.measurements = {}
     self.measurements['wesTdb'] = {
         'Sample': variables.Static('wesTdb_sample', 1800, units.s)
     }
     self.measurements['halTdb'] = {
         'Sample': variables.Static('halTdb_sample', 1800, units.s)
     }
     self.measurements['easTdb'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['wesPhvac'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['halPhvac'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['easPhvac'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurements['Ptot'] = {
         'Sample': variables.Static('easTdb_sample', 1800, units.s)
     }
     self.measurement_variable_map = {
         'wesTdb_mea': ('wesTdb', units.K),
         'halTdb_mea': ('halTdb', units.K),
         'easTdb_mea': ('easTdb', units.K),
         'wesPhvac_mea': ('wesPhvac', units.W),
         'halPhvac_mea': ('halPhvac', units.W),
         'easPhvac_mea': ('easPhvac', units.W),
         'Ptot_mea': ('Ptot', units.W)
     }
     ## Setup model
     self.mopath = os.path.join(self.get_unittest_path(), 'resources',
                                'model', 'LBNL71T_MPC.mo')
     self.modelpath = 'LBNL71T_MPC.MPC'
     self.libraries = os.environ.get('MODELICAPATH')
     self.estimate_method = models.JModelica
     self.validation_method = models.RMSE
     # Instantiate exo data sources
     self.weather = exodata.WeatherFromEPW(self.weather_path)
     self.internal = exodata.InternalFromCSV(self.internal_path,
                                             self.internal_variable_map,
                                             tz_name=self.weather.tz_name)
     self.control = exodata.ControlFromCSV(self.control_path,
                                           self.control_variable_map,
                                           tz_name=self.weather.tz_name)
     # Parameters
     self.parameters = exodata.ParameterFromCSV(
         os.path.join(self.get_unittest_path(), 'resources', 'model',
                      'LBNL71T_Parameters.csv'))
     self.parameters.collect_data()
     self.parameters.data['lat'] = {}
     self.parameters.data['lat']['Value'] = self.weather.lat
     # Instantiate test building
     self.building_est = systems.RealFromCSV(
         self.building_source_file_path_est,
         self.measurements,
         self.measurement_variable_map,
         tz_name=self.weather.tz_name)
     # Instantiate validate building
     self.building_val = systems.RealFromCSV(
         self.building_source_file_path_val,
         self.measurements,
         self.measurement_variable_map,
         tz_name=self.weather.tz_name)