示例#1
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def test_simulation_logging(overwrite_desired_data=False):
    """Test the logging of a simulation."""

    TEST_DIR_PATH = 'simulation_logging'

    # Inputs of the test
    INPUTS_DIRPATH = os.path.join(TEST_DIR_PATH, 'inputs')
    ORGANS_INITIAL_STATE_FILENAME = 'organs_initial_state.csv'
    HIDDENZONES_INITIAL_STATE_FILENAME = 'hiddenzones_initial_state.csv'
    ELEMENTS_INITIAL_STATE_FILENAME = 'elements_initial_state.csv'
    SOILS_INITIAL_STATE_FILENAME = 'soils_initial_state.csv'
    ELEMENTS_PHOTOSYNTHESIS_FORCINGS_FILENAME = 'elements_photosynthesis_forcings.csv'
    ROOTS_SENESCENCE_FORCINGS_FILENAME = 'roots_senescence_forcings.csv'
    ELEMENTS_SENESCENCE_FORCINGS_FILENAME = 'elements_senescence_forcings.csv'

    # Outputs of the test
    LOGS_DIRPATH = os.path.join(TEST_DIR_PATH, 'logs')
    DESIRED_AXES_COMPARTMENTS_FILENAME = 'desired_axes_compartments.csv'
    DESIRED_ORGANS_COMPARTMENTS_FILENAME = 'desired_organs_compartments.csv'
    DESIRED_HIDDENZONES_COMPARTMENTS_FILENAME = 'desired_hiddenzones_compartments.csv'
    DESIRED_ELEMENTS_COMPARTMENTS_FILENAME = 'desired_elements_compartments.csv'
    DESIRED_SOILS_COMPARTMENTS_FILENAME = 'desired_soils_compartments.csv'
    DESIRED_AXES_DERIVATIVES_FILENAME = 'desired_axes_derivatives.csv'
    DESIRED_ORGANS_DERIVATIVES_FILENAME = 'desired_organs_derivatives.csv'
    DESIRED_HIDDENZONES_DERIVATIVES_FILENAME = 'desired_hiddenzones_derivatives.csv'
    DESIRED_ELEMENTS_DERIVATIVES_FILENAME = 'desired_elements_derivatives.csv'
    DESIRED_SOILS_DERIVATIVES_FILENAME = 'desired_soils_derivatives.csv'
    ACTUAL_AXES_COMPARTMENTS_FILENAME = 'actual_axes_compartments.csv'
    ACTUAL_ORGANS_COMPARTMENTS_FILENAME = 'actual_organs_compartments.csv'
    ACTUAL_HIDDENZONES_COMPARTMENTS_FILENAME = 'actual_hiddenzones_compartments.csv'
    ACTUAL_ELEMENTS_COMPARTMENTS_FILENAME = 'actual_elements_compartments.csv'
    ACTUAL_SOILS_COMPARTMENTS_FILENAME = 'actual_soils_compartments.csv'
    ACTUAL_AXES_DERIVATIVES_FILENAME = 'actual_axes_derivatives.csv'
    ACTUAL_ORGANS_DERIVATIVES_FILENAME = 'actual_organs_derivatives.csv'
    ACTUAL_HIDDENZONES_DERIVATIVES_FILENAME = 'actual_hiddenzones_derivatives.csv'
    ACTUAL_ELEMENTS_DERIVATIVES_FILENAME = 'actual_elements_derivatives.csv'
    ACTUAL_SOILS_DERIVATIVES_FILENAME = 'actual_soils_derivatives.csv'

    # Config file path for logging
    LOGGING_CONFIG_FILEPATH = os.path.join(TEST_DIR_PATH, 'logging.json')

    # Simulation parameters
    START_TIME = 0
    SIMULATION_LENGTH = 5
    TIME_STEP = 1
    CULM_DENSITY = {1: 410}

    time_step_seconds = TIME_STEP * HOUR_TO_SECOND_CONVERSION_FACTOR

    # Remove actual logs files
    for logs_file in glob.glob(os.path.join(LOGS_DIRPATH, "actual*.csv")):
        os.remove(logs_file)

    # Setup the logging (without removing the desired logs since we need them for the comparison test)
    cnwheat_tools.setup_logging(config_filepath=LOGGING_CONFIG_FILEPATH,
                                level=logging.DEBUG,
                                log_model=True,
                                log_compartments=True,
                                log_derivatives=True,
                                remove_old_logs=False)

    # Read the inputs from CSV files and create inputs dataframes
    inputs_dataframes = {}
    for inputs_filename in (ORGANS_INITIAL_STATE_FILENAME,
                            HIDDENZONES_INITIAL_STATE_FILENAME,
                            ELEMENTS_INITIAL_STATE_FILENAME,
                            SOILS_INITIAL_STATE_FILENAME):
        inputs_dataframes[inputs_filename] = pd.read_csv(
            os.path.join(INPUTS_DIRPATH, inputs_filename))

    # Convert the inputs dataframes to a population of plants and a dictionary of soils
    population, soils = cnwheat_converter.from_dataframes(
        inputs_dataframes[ORGANS_INITIAL_STATE_FILENAME],
        inputs_dataframes[HIDDENZONES_INITIAL_STATE_FILENAME],
        inputs_dataframes[ELEMENTS_INITIAL_STATE_FILENAME],
        inputs_dataframes[SOILS_INITIAL_STATE_FILENAME])

    # Create the simulation
    simulation_ = cnwheat_simulation.Simulation(
        respiration_model=respiwheat_model,
        delta_t=time_step_seconds,
        culm_density=CULM_DENSITY)

    # Initialize the simulation from the population of plants and the dictionary of soils created previously
    simulation_.initialize(population, soils)

    # Read photosynthesis and senescence forcings from CSV files, create dataframes, and group the dataframes by object index
    photosynthesis_elements_data_filepath = os.path.join(
        INPUTS_DIRPATH, ELEMENTS_PHOTOSYNTHESIS_FORCINGS_FILENAME)
    photosynthesis_elements_data_df = pd.read_csv(
        photosynthesis_elements_data_filepath)
    photosynthesis_elements_data_grouped = photosynthesis_elements_data_df.groupby(
        cnwheat_simulation.Simulation.ELEMENTS_T_INDEXES)
    senescence_roots_data_filepath = os.path.join(
        INPUTS_DIRPATH, ROOTS_SENESCENCE_FORCINGS_FILENAME)
    senescence_roots_data_df = pd.read_csv(senescence_roots_data_filepath)
    senescence_roots_data_grouped = senescence_roots_data_df.groupby(
        cnwheat_simulation.Simulation.AXES_T_INDEXES)
    senescence_elements_data_filepath = os.path.join(
        INPUTS_DIRPATH, ELEMENTS_SENESCENCE_FORCINGS_FILENAME)
    senescence_elements_data_df = pd.read_csv(
        senescence_elements_data_filepath)
    senescence_elements_data_grouped = senescence_elements_data_df.groupby(
        cnwheat_simulation.Simulation.ELEMENTS_T_INDEXES)

    # Force the senescence and photosynthesis of the population
    force_senescence_and_photosynthesis(0, population,
                                        senescence_roots_data_grouped,
                                        senescence_elements_data_grouped,
                                        photosynthesis_elements_data_grouped)

    # Reinitialize the simulation from forced population and soils
    simulation_.initialize(population, soils)

    # Define the time grid of the simulation
    time_grid = range(START_TIME, SIMULATION_LENGTH + TIME_STEP, TIME_STEP)

    # Create empty lists of dataframes to store the outputs at each step of the simulation
    axes_outputs_df_list = []
    organs_outputs_df_list = []
    hiddenzones_outputs_df_list = []
    elements_outputs_df_list = []
    soils_outputs_df_list = []

    for t in time_grid:

        if t > 0:
            # Run the model of CN exchanges ; the population is internally updated by the model
            simulation_.run()

        # Convert the model outputs to dataframes
        _, axes_outputs_df, _, organs_outputs_df, hiddenzones_outputs_df, elements_outputs_df, soils_outputs_df = cnwheat_converter.to_dataframes(
            simulation_.population, simulation_.soils)

        # Append the outputs dataframes at current t to the global lists of dataframes
        for df, list_ in ((axes_outputs_df, axes_outputs_df_list),
                          (organs_outputs_df, organs_outputs_df_list),
                          (hiddenzones_outputs_df,
                           hiddenzones_outputs_df_list),
                          (elements_outputs_df, elements_outputs_df_list),
                          (soils_outputs_df, soils_outputs_df_list)):
            df.insert(0, 't', t)
            list_.append(df)

        if 0 < t < SIMULATION_LENGTH:
            # Force the senescence and photosynthesis of the population
            force_senescence_and_photosynthesis(
                t, population, senescence_roots_data_grouped,
                senescence_elements_data_grouped,
                photosynthesis_elements_data_grouped)
            # Reinitialize the simulation from forced population and soils
            simulation_.initialize(population, soils)

    # compare actual to desired logs at each scale level (an exception is raised if the test failed)
    # Compartments logs
    for (desired_compartments_filename,
         actual_compartments_filename) \
            in ((DESIRED_AXES_COMPARTMENTS_FILENAME, ACTUAL_AXES_COMPARTMENTS_FILENAME),
                (DESIRED_ORGANS_COMPARTMENTS_FILENAME, ACTUAL_ORGANS_COMPARTMENTS_FILENAME),
                (DESIRED_HIDDENZONES_COMPARTMENTS_FILENAME, ACTUAL_HIDDENZONES_COMPARTMENTS_FILENAME),
                (DESIRED_ELEMENTS_COMPARTMENTS_FILENAME, ACTUAL_ELEMENTS_COMPARTMENTS_FILENAME),
                (DESIRED_SOILS_COMPARTMENTS_FILENAME, ACTUAL_SOILS_COMPARTMENTS_FILENAME)):
        try:
            actual_compartments_df = pd.read_csv(
                os.path.join(LOGS_DIRPATH, actual_compartments_filename))
        except pd.errors.EmptyDataError:
            continue  # This file is empty: ignore it.
        cnwheat_tools.compare_actual_to_desired(
            LOGS_DIRPATH,
            actual_compartments_df,
            desired_compartments_filename,
            precision=PRECISION,
            overwrite_desired_data=overwrite_desired_data)
    # Derivatives logs
    for (desired_derivatives_filename,
         actual_derivatives_filename) \
            in ((DESIRED_AXES_DERIVATIVES_FILENAME, ACTUAL_AXES_DERIVATIVES_FILENAME),
                (DESIRED_ORGANS_DERIVATIVES_FILENAME, ACTUAL_ORGANS_DERIVATIVES_FILENAME),
                (DESIRED_HIDDENZONES_DERIVATIVES_FILENAME, ACTUAL_HIDDENZONES_DERIVATIVES_FILENAME),
                (DESIRED_ELEMENTS_DERIVATIVES_FILENAME, ACTUAL_ELEMENTS_DERIVATIVES_FILENAME),
                (DESIRED_SOILS_DERIVATIVES_FILENAME, ACTUAL_SOILS_DERIVATIVES_FILENAME)):
        try:
            actual_derivatives_df = pd.read_csv(
                os.path.join(LOGS_DIRPATH, actual_derivatives_filename))
        except pd.errors.EmptyDataError:
            continue  # This file is empty: ignore it.
        cnwheat_tools.compare_actual_to_desired(
            LOGS_DIRPATH,
            actual_derivatives_df,
            desired_derivatives_filename,
            precision=PRECISION,
            overwrite_desired_data=overwrite_desired_data)
示例#2
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SOILS_INDEX_COLUMNS = ['t', 'plant', 'axis']

# Define culm density (culm m-2)
DENSITY = 410.
NPLANTS = 1
CULM_DENSITY = {i: DENSITY / NPLANTS for i in range(1, NPLANTS + 1)}

INPUTS_OUTPUTS_PRECISION = 5  # 10

LOGGING_CONFIG_FILEPATH = os.path.join('logging.json')

LOGGING_LEVEL = logging.INFO  # can be one of: DEBUG, INFO, WARNING, ERROR, CRITICAL

cnwheat_tools.setup_logging(LOGGING_CONFIG_FILEPATH,
                            LOGGING_LEVEL,
                            log_model=False,
                            log_compartments=False,
                            log_derivatives=False)


def calculate_PARa_from_df(g,
                           Eabs_df,
                           PARi,
                           multiple_sources=False,
                           ratio_diffus_PAR=None):
    """
    Compute PARa from an input dataframe having Eabs values.
    """

    Eabs_df_grouped = Eabs_df.groupby(['plant', 'metamer', 'organ'])
示例#3
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                                         ELEMENTS_STATE)].dropna().to_dict()
                        element.__dict__.update(
                            photosynthesis_elements_data_to_use)


if RUN_SIMU:

    print('Prepare the simulation...')

    time_step_seconds = TIME_STEP * HOUR_TO_SECOND_CONVERSION_FACTOR

    if LOG_EXECUTION:
        # Setup the logging
        cnwheat_tools.setup_logging(config_filepath=LOGGING_CONFIG_FILEPATH,
                                    level=logging.DEBUG,
                                    log_model=True,
                                    log_compartments=True,
                                    log_derivatives=True,
                                    remove_old_logs=True)

    # Read the inputs from CSV files and create inputs dataframes
    inputs_dataframes = {}
    for inputs_filename in (ORGANS_INITIAL_STATE_FILENAME,
                            HIDDENZONES_INITIAL_STATE_FILENAME,
                            ELEMENTS_INITIAL_STATE_FILENAME,
                            SOILS_INITIAL_STATE_FILENAME):
        inputs_dataframes[inputs_filename] = pd.read_csv(
            os.path.join(INPUTS_DIRPATH, inputs_filename))

    # Convert the inputs dataframes to a population of plants and a dictionary of soils
    population, soils = cnwheat_converter.from_dataframes(
        inputs_dataframes[ORGANS_INITIAL_STATE_FILENAME],