Пример #1
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def test_reporter_from_westeros(test_mp):
    scen = make_westeros(test_mp, emissions=True, solve=True)

    # Reporter.from_scenario can handle Westeros example model
    rep = Reporter.from_scenario(scen)

    # Westeros-specific configuration: '-' is a reserved character in pint
    configure(units={'replace': {'-': ''}})

    # Default target can be calculated
    rep.get('all')

    # message default target can be calculated
    # TODO if df is empty, year is cast to float
    obs = rep.get('message:default')

    # all expected reporting exists
    assert len(obs.data) == 69

    # custom values are correct
    obs = obs.filter(variable='total om*')
    assert len(obs.data) == 9
    assert all(
        obs['variable'] ==  # noqa: W504
        ['total om cost|coal_ppl'] * 3 +  # noqa: W504
        ['total om cost|grid'] * 3 +  # noqa: W504
        ['total om cost|wind_ppl'] * 3
    )
    assert all(obs['year'] == [700, 710, 720] * 3)

    obs = obs['value'].values
    exp = [4832.177734, 8786.515625, 12666.666016, 5555.555664, 8333.333984,
           10555.555664, 305.748138, 202.247391, 0.]
    assert len(obs) == len(exp)
    assert_allclose(obs, exp)
Пример #2
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def test_reporter_from_dantzig(test_mp):
    scen = make_dantzig(test_mp, solve=True)

    # Reporter.from_scenario can handle Dantzig example model
    rep = Reporter.from_scenario(scen)

    # Default target can be calculated
    rep.get("all")
Пример #3
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def test_reporter(test_mp):
    scen = Scenario(test_mp,
                    'canning problem (MESSAGE scheme)',
                    'standard')

    # Varies between local & CI contexts
    # DEBUG may be due to reuse of test_mp in a non-deterministic order
    if not scen.has_solution():
        scen.solve()

    # IXMPReporter can be initialized on a MESSAGE Scenario
    rep_ix = ixmp_Reporter.from_scenario(scen)

    # message_ix.Reporter can also be initialized
    rep = Reporter.from_scenario(scen)

    # Number of quantities available in a rudimentary MESSAGEix Scenario
    assert len(rep.graph['all']) == 120

    # Quantities have short dimension names
    assert 'demand:n-c-l-y-h' in rep.graph

    # Aggregates are available
    assert 'demand:n-l-h' in rep.graph

    # Quantities contain expected data
    dims = dict(coords=['chicago new-york topeka'.split()], dims=['n'])
    demand = xr.DataArray([300, 325, 275], **dims)

    # NB the call to squeeze() drops the length-1 dimensions c-l-y-h
    obs = rep.get('demand:n-c-l-y-h').squeeze(drop=True)
    # TODO: Squeeze on AttrSeries still returns full index, whereas xarray
    # drops everything except node
    obs = obs.reset_index(['c', 'l', 'y', 'h'], drop=True)
    # check_dtype is false because of casting in pd.Series to float
    # check_attrsis false because we don't get the unit addition in bare xarray
    assert_qty_equal(obs.sort_index(), demand,
                     check_attrs=False, check_dtype=False)

    # ixmp.Reporter pre-populated with only model quantities and aggregates
    assert len(rep_ix.graph) == 5088

    # message_ix.Reporter pre-populated with additional, derived quantities
    assert len(rep.graph) == 7975

    # Derived quantities have expected dimensions
    vom_key = rep.full_key('vom')
    assert vom_key not in rep_ix
    assert vom_key == 'vom:nl-t-yv-ya-m-h'

    # …and expected values
    vom = (
        rep.get(rep.full_key('ACT')) * rep.get(rep.full_key('var_cost'))
    ).dropna()
    # check_attrs false because `vom` multiply above does not add units
    assert_qty_equal(vom, rep.get(vom_key), check_attrs=False)
Пример #4
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def test_as_pyam(message_test_mp):
    scen = Scenario(message_test_mp, **SCENARIO['dantzig'])
    if not scen.has_solution():
        scen.solve()
    rep = Reporter.from_scenario(scen)

    # Quantities for 'ACT' variable at full resolution
    qty = rep.get(rep.full_key('ACT'))

    # Call as_pyam() with an empty quantity
    p = computations.as_pyam(scen, qty[0:0], year_time_dim='ya')
    assert isinstance(p, pyam.IamDataFrame)
def test_as_pyam(message_test_mp):
    scen = Scenario(message_test_mp, **SCENARIO["dantzig"])
    if not scen.has_solution():
        scen.solve()
    rep = Reporter.from_scenario(scen)

    # Quantities for 'ACT' variable at full resolution
    qty = rep.get(rep.full_key("ACT"))

    # Call as_pyam() with an empty quantity
    as_pyam = rep.get_comp("as_pyam")
    p = as_pyam(scen, qty[0:0], rename=dict(nl="region", ya="year"))
    assert isinstance(p, pyam.IamDataFrame)
Пример #6
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def test_reporter_from_scenario(message_test_mp):
    scen = Scenario(message_test_mp, **SCENARIO["dantzig"])

    # Varies between local & CI contexts
    # DEBUG may be due to reuse of test_mp in a non-deterministic order
    if not scen.has_solution():
        scen.solve(quiet=True)

    # IXMPReporter can be initialized on a MESSAGE Scenario
    rep_ix = ixmp_Reporter.from_scenario(scen)

    # message_ix.Reporter can also be initialized
    rep = Reporter.from_scenario(scen)

    # Number of quantities available in a rudimentary MESSAGEix Scenario
    assert len(rep.graph["all"]) == 123

    # Quantities have short dimension names
    assert "demand:n-c-l-y-h" in rep

    # Aggregates are available
    assert "demand:n-l-h" in rep

    # Quantities contain expected data
    dims = dict(coords=["chicago new-york topeka".split()], dims=["n"])
    demand = Quantity(xr.DataArray([300, 325, 275], **dims), name="demand")

    # NB the call to squeeze() drops the length-1 dimensions c-l-y-h
    obs = rep.get("demand:n-c-l-y-h").squeeze(drop=True)
    # check_attrs False because we don't get the unit addition in bare xarray
    assert_qty_equal(obs, demand, check_attrs=False)

    # ixmp.Reporter pre-populated with only model quantities and aggregates
    assert len(rep_ix.graph) == 5225

    # message_ix.Reporter pre-populated with additional, derived quantities
    # This is the same value as in test_tutorials.py
    assert len(rep.graph) == 12690

    # Derived quantities have expected dimensions
    vom_key = rep.full_key("vom")
    assert vom_key not in rep_ix
    assert vom_key == "vom:nl-t-yv-ya-m-h"

    # …and expected values
    var_cost = rep.get(rep.full_key("var_cost"))
    ACT = rep.get(rep.full_key("ACT"))
    product = rep.get_comp("product")
    vom = product(var_cost, ACT)
    # check_attrs false because `vom` multiply above does not add units
    assert_qty_equal(vom, rep.get(vom_key))
Пример #7
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def prepare_plots(rep: Reporter, input_costs="$/GWa") -> None:
    """Prepare `rep` to generate plots for tutorial energy models.

    Makes available several keys:

    - ``plot activity``
    - ``plot demand``
    - ``plot extraction``
    - ``plot fossil supply curve``
    - ``plot capacity``
    - ``plot new capacity``
    - ``plot prices``

    To control the contents of each plot, use :meth:`.set_filters` on `rep`.
    """
    # Conversion factors between input units and plotting units
    # TODO use exact units in all tutorials
    # TODO allow the correct units to pass through reporting
    cost_unit_conv = {
        "$/GWa": 1.0,
        "$/MWa": 1e3,
        "$/kWa": 1e6,
    }.get(input_costs, 1.0)

    # Basic setup of the reporter
    rep.configure(units={"replace": {"-": ""}})

    # Add one node to the reporter for each plot
    for title, func, key_str, units in PLOTS:
        # Convert the string to a Key object so as to reference its .dims
        key = Key.from_str_or_key(key_str)

        # Operation for the reporter
        comp = partial(
            # The function to use, e.g. stacked_bar()
            func,
            # Other keyword arguments to the plotting function
            dims=key.dims,
            units=units,
            title=f"Energy System {title.title()}",
            cf=1.0 if title != "prices" else (cost_unit_conv * 100 / 8760),
            stacked=title != "prices",
        )

        # Add the computation under a key like "plot activity"
        rep.add(f"plot {title}", (comp, key))

    rep.add(
        "plot fossil supply curve",
        (
            partial(
                computations.plot_cumulative,
                labels=("Fossil supply", "Resource volume", "Cost"),
            ),
            "resource_volume:n-g",
            "resource_cost:n-g-y",
        ),
    )
Пример #8
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def test_reporter_no_solution(caplog, message_test_mp):
    scen = Scenario(message_test_mp, **SCENARIO["dantzig"])

    with assert_logs(
            caplog,
        [
            'Scenario "Canning problem (MESSAGE scheme)/standard" has no solution',
            "Some reporting may not function as expected",
        ],
    ):
        rep = Reporter.from_scenario(scen)

    # Input parameters are still available
    demand = rep.full_key("demand")
    result = rep.get(demand)
    assert 3 == len(result)
Пример #9
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def test_reporter_from_westeros(test_mp):
    scen = make_westeros(test_mp, emissions=True, solve=True, quiet=True)

    # Reporter.from_scenario can handle Westeros example model
    rep = Reporter.from_scenario(scen)

    # Westeros-specific configuration: '-' is a reserved character in pint
    configure(units={"replace": {"-": ""}})

    # Default target can be calculated
    rep.get("all")

    # message default target can be calculated
    # TODO if df is empty, year is cast to float
    obs = rep.get("message:default")

    # all expected reporting exists
    assert len(obs.data) == 69

    # custom values are correct
    obs = obs.filter(variable="total om*")
    assert len(obs.data) == 9
    assert all(obs["variable"] == ["total om cost|coal_ppl"] * 3  # noqa: W504
               + ["total om cost|grid"] * 3  # noqa: W504
               + ["total om cost|wind_ppl"] * 3  # noqa: W504
               )
    assert all(obs["year"] == [700, 710, 720] * 3)

    obs = obs.data["value"].values
    exp = [
        2842.4574905,
        5373.0510978,
        6933.3333333,
        3055.5555555,
        4555.5555555,
        5777.7777777,
        381.57832228,
        43.340541129,
        0.0,
    ]
    assert len(obs) == len(exp)
    assert_allclose(obs, exp)
Пример #10
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    a = rep.convert_pyam('PRICE_COMMODITY:n-c-y', 'y', collapse=collapse_N)
    rep.write(a[0], Path('price_commodity_'+model+'_'+scen+'.xlsx'))

    # 5. Carbon price
    if scen!="baseline":
        rep.set_filters()
        
        a = rep.convert_pyam('PRICE_EMISSION', 'y')
        rep.write(a[0], Path('price_emission_'+model+'_'+scen+'.xlsx'))


# Generate individual xlsx
for sc in scen_names:
    Sc_ref = message_ix.Scenario(mp, model_name, sc)
    repo = Reporter.from_scenario(Sc_ref)
    GenerateOutput(model_name, sc, repo)
    
# Combine xlsx per each output variable    
for cases in ['nf_demand', 'nf_emissions_CO2', 'nf_input', 'price_commodity', 'price_emission']:
    infiles = []
    for sc in scen_names:
        if sc=="baseline" and cases=='price_emission':
            continue
        infiles.append(pd.read_excel(cases + "_"+ model_name +'_' + sc + ".xlsx"))        
    appended_df = pd.concat(infiles, join='outer', sort=False)
    appended_df.to_excel(cases+"-"+model_name+".xlsx", index=False)
    
    
#%% Generate plots
Пример #11
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def dantzig_reporter(message_test_mp):
    scen = Scenario(message_test_mp, **SCENARIO['dantzig'])
    if not scen.has_solution():
        scen.solve()
    yield Reporter.from_scenario(scen)
Пример #12
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def test_reporter_convert_pyam(test_mp, caplog, tmp_path):
    scen = Scenario(test_mp,
                    'canning problem (MESSAGE scheme)',
                    'standard')
    if not scen.has_solution():
        scen.solve()
    rep = Reporter.from_scenario(scen)

    # Key for 'ACT' variable at full resolution
    ACT = rep.full_key('ACT')

    # Add a computation that converts ACT to a pyam.IamDataFrame
    rep.add('ACT IAMC', (partial(computations.as_pyam, drop=['yv'],
                                 year_time_dim='ya'),
                         'scenario', ACT))

    # Result is an IamDataFrame
    idf1 = rep.get('ACT IAMC')
    assert isinstance(idf1, pyam.IamDataFrame)

    # …of expected length
    assert len(idf1) == 8

    # …in which variables are not renamed
    assert idf1['variable'].unique() == 'ACT'

    # Warning was logged because of extra columns
    w = "Extra columns ['h', 'm', 't'] when converting ['ACT'] to IAMC format"
    assert ('message_ix.reporting.pyam', WARNING, w) in caplog.record_tuples

    # Repeat, using the message_ix.Reporter convenience function
    def m_t(df):
        """Callback for collapsing ACT columns."""
        # .pop() removes the named column from the returned row
        df['variable'] = 'Activity|' + df['t'] + '|' + df['m']
        df.drop(['t', 'm'], axis=1, inplace=True)
        return df

    # Use the convenience function to add the node
    keys = rep.convert_pyam(ACT, 'ya', collapse=m_t)

    # Keys of added node(s) are returned
    assert len(keys) == 1
    key2, *_ = keys
    assert key2 == ACT.name + ':iamc'

    caplog.clear()

    # Result
    idf2 = rep.get(key2)
    df2 = idf2.as_pandas()

    # Extra columns have been removed:
    # - m and t by the collapse callback.
    # - h automatically, because 'ya' was used for the year index.
    assert not any(c in df2.columns for c in ['h', 'm', 't'])

    # Variable names were formatted by the callback
    reg_var = pd.DataFrame([
        ['san-diego', 'Activity|canning_plant|production'],
        ['san-diego', 'Activity|transport_from_san-diego|to_chicago'],
        ['san-diego', 'Activity|transport_from_san-diego|to_new-york'],
        ['san-diego', 'Activity|transport_from_san-diego|to_topeka'],
        ['seattle', 'Activity|canning_plant|production'],
        ['seattle', 'Activity|transport_from_seattle|to_chicago'],
        ['seattle', 'Activity|transport_from_seattle|to_new-york'],
        ['seattle', 'Activity|transport_from_seattle|to_topeka'],
    ], columns=['region', 'variable'])
    assert_frame_equal(df2[['region', 'variable']], reg_var)

    # message_ix.Reporter uses pyam.IamDataFrame.to_csv() to write to file
    path = tmp_path / 'activity.csv'
    rep.write(key2, path)

    # File contents are as expected
    expected = Path(__file__).parent / 'data' / 'report-pyam-write.csv'
    assert path.read_text() == expected.read_text()