Exemplo n.º 1
0
def plot_bfe_row_for_var(finfo_to_season_to_diff=None, ax_list=None, season_titles=False,
                         varname="", basemap_info=None):
    cmap = cm.get_cmap("RdBu_r", 20)

    assert isinstance(basemap_info, BasemapInfo)

    xx, yy = None, None
    cs = None
    for finfo, season_to_diff in finfo_to_season_to_diff.items():
        assert isinstance(finfo, FieldInfo)

        if finfo.varname != varname:
            continue

        for season in season_to_diff:
            season_to_diff[season] = infovar.get_to_plot(varname, season_to_diff[season], difference=True,
                                                         lons=basemap_info.lons, lats=basemap_info.lats)

        clevs = get_diff_levels(season_to_diff, ncolors=cmap.N, varname=varname)
        for i, (season, diff) in enumerate(season_to_diff.items()):
            ax = ax_list[i]

            if xx is None or yy is None:
                xx, yy = basemap_info.get_proj_xy()

            print(diff.shape)




            cs = basemap_info.basemap.contourf(xx, yy, diff[:], cmap=cmap,
                                               levels=clevs,
                                               extend="both", ax=ax)
            basemap_info.basemap.drawcoastlines(ax=ax)
            # ax.set_aspect("auto")
            basemap_info.basemap.readshapefile(BASIN_BOUNDARIES_SHP[:-4], "basin", ax=ax)

            if season_titles:
                ax.set_title(season)

            if i == 0:
                ax.set_ylabel(infovar.get_long_display_label_for_var(finfo.varname))

            if finfo.varname in ["I5", ] and season.lower() in ["summer"]:
                ax.set_visible(False)

    ax = ax_list[-1]
    # ax.set_aspect(30)
    ax.set_title(infovar.get_units(varname))
    plt.colorbar(cs, cax=ax_list[-1])
Exemplo n.º 2
0
def _plot_row(vname="", level=0, config_dict=None, plot_cc_only_for=None, mark_significance=True):
    """
    if plot_cc_only_for is not None, should be equal to the label of the simulation to be plotted
    """

    lons, lats = config_dict.lons, config_dict.lats

    bmp = config_dict.basemap
    """
    :type bmp: mpl_toolkits.basemap.Basemap
    """


    xx, yy = bmp(lons, lats)
    lons[lons > 180] -= 360

    fig = config_dict.fig
    gs = config_dict.gs
    """:type : matplotlib.gridspec.GridSpec """
    nrows_subplots, ncols_subplots = gs.get_geometry()


    label_base = config_dict.label_base
    label_modif = config_dict.label_modif

    the_row = config_dict.the_row
    season_to_months = config_dict.season_to_months

    if "+" in vname or "-" in vname:
        op = "+" if "+" in vname else "-"
        vname1, vname2 = vname.split(op)

        vname1 = vname1.strip()
        vname2 = vname2.strip()

        current_base = {}
        future_base = {}

        current_modif = {}
        future_modif = {}

        # vname1
        current_base1 = compute_seasonal_means_for_each_year(config_dict["Current"][label_base], var_name=vname1,
                                                             level=level,
                                                             season_to_months=season_to_months)
        future_base1 = compute_seasonal_means_for_each_year(config_dict["Future"][label_base], var_name=vname1,
                                                            level=level,
                                                            season_to_months=season_to_months)

        current_modif1 = compute_seasonal_means_for_each_year(config_dict["Current"][label_modif], var_name=vname1,
                                                              level=level,
                                                              season_to_months=season_to_months)
        future_modif1 = compute_seasonal_means_for_each_year(config_dict["Future"][label_modif], var_name=vname1,
                                                             level=level,
                                                             season_to_months=season_to_months)


        # vname2
        current_base2 = compute_seasonal_means_for_each_year(config_dict["Current"][label_base], var_name=vname2,
                                                             level=level,
                                                             season_to_months=season_to_months)
        future_base2 = compute_seasonal_means_for_each_year(config_dict["Future"][label_base], var_name=vname2,
                                                            level=level,
                                                            season_to_months=season_to_months)

        current_modif2 = compute_seasonal_means_for_each_year(config_dict["Current"][label_modif], var_name=vname2,
                                                              level=level,
                                                              season_to_months=season_to_months)
        future_modif2 = compute_seasonal_means_for_each_year(config_dict["Future"][label_modif], var_name=vname2,
                                                             level=level,
                                                             season_to_months=season_to_months)

        for season in current_base1:
            current_base[season] = eval("current_base2[season]{}current_base1[season]".format(op))
            future_base[season] = eval("future_base2[season]{}future_base1[season]".format(op))
            current_modif[season] = eval("current_modif2[season]{}current_modif1[season]".format(op))
            future_modif[season] = eval("future_modif2[season]{}future_modif1[season]".format(op))


    else:
        current_base = compute_seasonal_means_for_each_year(config_dict["Current"][label_base], var_name=vname,
                                                            level=level,
                                                            season_to_months=season_to_months)
        future_base = compute_seasonal_means_for_each_year(config_dict["Future"][label_base], var_name=vname,
                                                           level=level,
                                                           season_to_months=season_to_months)

        current_modif = compute_seasonal_means_for_each_year(config_dict["Current"][label_modif], var_name=vname,
                                                             level=level,
                                                             season_to_months=season_to_months)
        future_modif = compute_seasonal_means_for_each_year(config_dict["Future"][label_modif], var_name=vname,
                                                            level=level,
                                                            season_to_months=season_to_months)




    # Calculate the differences in cc signal
    season_to_diff = OrderedDict()

    season_to_plot_diff = OrderedDict()

    diff_max = 0
    print(list(current_base.keys()))
    # Get the ranges for colorbar and calculate p-values
    print("------------------ impacts on projected changes to {} -----------------------".format(vname))
    season_to_pvalue = OrderedDict()
    for season in list(current_base.keys()):

        _, pvalue_current = ttest_ind(current_modif[season], current_base[season], axis=0, equal_var=False)
        _, pvalue_future = ttest_ind(future_modif[season], future_base[season], axis=0, equal_var=False)

        if plot_cc_only_for is None:
            season_to_pvalue[season] = np.minimum(pvalue_current, pvalue_future)

            season_to_diff[season] = (future_modif[season] - current_modif[season]) - \
                                     (future_base[season] - current_base[season])

        else:

            if plot_cc_only_for == label_base:
                _, season_to_pvalue[season] = ttest_ind(future_base[season], current_base[season], axis=0, equal_var=False)
                c_data = current_base[season]
                f_data = future_base[season]
            else:
                _, season_to_pvalue[season] = ttest_ind(future_modif[season], current_modif[season], axis=0, equal_var=False)
                c_data = current_modif[season]
                f_data = future_modif[season]

            season_to_diff[season] = f_data - c_data


        # Convert units if required
        if vname in config_dict.multipliers:
            season_to_diff[season] *= config_dict.multipliers[vname]

        field_to_plot = infovar.get_to_plot(vname, season_to_diff[season].mean(axis=0), lons=lons, lats=lats)
        season_to_plot_diff[season] = field_to_plot


        print("{}: {}".format(season, season_to_plot_diff[season].mean()))

        if hasattr(field_to_plot, "mask"):
            diff_max = max(np.percentile(np.abs(field_to_plot[~field_to_plot.mask]), 95), diff_max)
        else:
            diff_max = max(np.percentile(np.abs(field_to_plot), 95), diff_max)

    print("--------------------------------------------------------")

    img = None
    locator = MaxNLocator(nbins=10, symmetric=True)
    clevels = locator.tick_values(-diff_max, diff_max)

    bn = BoundaryNorm(clevels, len(clevels) - 1)
    cmap = cm.get_cmap("RdBu_r", len(clevels) - 1)
    for col, season in enumerate(current_base.keys()):
        ax = fig.add_subplot(gs[the_row, col])

        if not col:
            ax.set_ylabel(infovar.get_long_display_label_for_var(vname))

        if not the_row:
            ax.set_title(season)

        img = bmp.pcolormesh(xx, yy, season_to_plot_diff[season].copy(),
                             vmin=-diff_max, vmax=diff_max,
                             cmap=cmap, norm=bn, ax=ax)


        # logging
        good_vals = season_to_plot_diff[season]
        good_vals = good_vals[~good_vals.mask]
        print("------" * 10)
        print("{}: min={}; max={}; area-avg={};".format(season, good_vals.min(), good_vals.max(), good_vals.mean()))


        bmp.readshapefile(quebec_info.BASIN_BOUNDARIES_DERIVED_10km[:-4], "basin_edge", ax=ax)

        p = season_to_pvalue[season]
        if hasattr(season_to_plot_diff[season], "mask"):
            p = np.ma.masked_where(season_to_plot_diff[season].mask, p)


        if plot_cc_only_for is not None and mark_significance:
            cs = bmp.contourf(xx, yy, p, hatches=["..."], levels=[0.05, 1], colors='none')

            if (col == ncols_subplots - 2) and (the_row == nrows_subplots - 1):
                # create a legend for the contour set
                artists, labels = cs.legend_elements()
                labels = ["not significant"]
                ax.legend(artists, labels, handleheight=1, loc="upper right",
                          bbox_to_anchor=(1.0, -0.05), borderaxespad=0., frameon=False)


        bmp.drawcoastlines(ax=ax, linewidth=0.4)
        if vname in ["I5"] and season.lower() in ["summer"]:
            ax.set_visible(False)



    cb = plt.colorbar(img, cax=fig.add_subplot(gs[the_row, len(current_base)]), extend="both")

    if hasattr(config_dict, "name_to_units") and vname in config_dict.name_to_units:
        cb.ax.set_title(config_dict.name_to_units[vname])
    else:
        cb.ax.set_title(infovar.get_units(vname))
def compare(paths=None, path_to_control_data=None, control_label="",
            labels=None, varnames=None, levels=None, months_of_interest=None,
            start_year=None, end_year=None):
    """
    Comparing 2D fields
    :param paths: paths to the simulation results
    :param varnames:
    :param labels: Display name for each simulation (number of labels should
     be equal to the number of paths)
    :param path_to_control_data: the path with which the comparison done i.e. a in the following
     formula
            delta = (x - a)/a * 100%

     generates one image file per variable (in the folder images_for_lake-river_paper):
        compare_varname_<control_label>_<label1>_..._<labeln>_startyear_endyear.png

    """
    # get coordinate data  (assumes that all the variables and runs have the same coordinates)
    lons2d, lats2d, basemap = analysis.get_basemap_from_hdf(file_path=path_to_control_data)
    x, y = basemap(lons2d, lats2d)

    lake_fraction = analysis.get_array_from_file(path=path_to_control_data, var_name="lake_fraction")

    if lake_fraction is None:
        lake_fraction = np.zeros(lons2d.shape)

    ncolors = 10
    # +1 to include white
    diff_cmap = cm.get_cmap("RdBu_r", ncolors + 1)

    for var_name, level in zip(varnames, levels):
        sfmt = infovar.get_colorbar_formatter(var_name)
        control_means = analysis.get_mean_2d_fields_for_months(path=path_to_control_data, var_name=var_name,
                                                               months=months_of_interest,
                                                               start_year=start_year, end_year=end_year,
                                                               level=level)

        control_mean = np.mean(control_means, axis=0)
        fig = plt.figure()
        assert isinstance(fig, Figure)
        gs = gridspec.GridSpec(2, len(paths) + 1, wspace=0.5)

        # plot the control
        ax = fig.add_subplot(gs[0, 0])
        assert isinstance(ax, Axes)
        ax.set_title("{0}".format(control_label))
        ax.set_ylabel("Mean: $X_{0}$")
        to_plot = infovar.get_to_plot(var_name, control_mean,
                                      lake_fraction=lake_fraction, mask_oceans=True, lons=lons2d, lats=lats2d)
        # determine colorabr extent and spacing
        field_cmap, field_norm = infovar.get_colormap_and_norm_for(var_name, to_plot, ncolors=ncolors)

        basemap.pcolormesh(x, y, to_plot, cmap=field_cmap, norm=field_norm)
        cb = basemap.colorbar(format=sfmt)

        assert isinstance(cb, Colorbar)
        # cb.ax.set_ylabel(infovar.get_units(var_name))
        units = infovar.get_units(var_name)

        info = "Variable:" \
               "\n{0}" \
               "\nPeriod: {1}-{2}" \
               "\nMonths: {3}" \
               "\nUnits: {4}"

        info = info.format(infovar.get_long_name(var_name), start_year, end_year,
                           ",".join([datetime(2001, m, 1).strftime("%b") for m in months_of_interest]), units)

        ax.annotate(info, xy=(0.1, 0.3), xycoords="figure fraction")

        sel_axes = [ax]

        for the_path, the_label, column in zip(paths, labels, list(range(1, len(paths) + 1))):

            means_for_years = analysis.get_mean_2d_fields_for_months(path=the_path, var_name=var_name,
                                                                     months=months_of_interest,
                                                                     start_year=start_year, end_year=end_year)
            the_mean = np.mean(means_for_years, axis=0)

            # plot the mean value
            ax = fig.add_subplot(gs[0, column])
            sel_axes.append(ax)
            ax.set_title("{0}".format(the_label))
            to_plot = infovar.get_to_plot(var_name, the_mean, lake_fraction=lake_fraction,
                                          mask_oceans=True, lons=lons2d, lats=lats2d)

            basemap.pcolormesh(x, y, to_plot, cmap=field_cmap, norm=field_norm)
            ax.set_ylabel("Mean: $X_{0}$".format(column))
            cb = basemap.colorbar(format=sfmt)
            # cb.ax.set_ylabel(infovar.get_units(var_name))

            # plot the difference
            ax = fig.add_subplot(gs[1, column])
            sel_axes.append(ax)
            ax.set_ylabel("$X_{0} - X_0$".format(column))

            # #Mask only if the previous plot (means) is masked
            thediff = the_mean - control_mean

            if hasattr(to_plot, "mask"):
                to_plot = np.ma.masked_where(to_plot.mask, thediff)
            else:
                to_plot = thediff

            if var_name == "PR":  # convert to mm/day
                to_plot = infovar.get_to_plot(var_name, to_plot, mask_oceans=False)

            vmin = np.ma.min(to_plot)
            vmax = np.ma.max(to_plot)

            d = max(abs(vmin), abs(vmax))
            vmin = -d
            vmax = d

            field_norm, bounds, vmn_nice, vmx_nice = infovar.get_boundary_norm(vmin, vmax, diff_cmap.N,
                                                                               exclude_zero=False)
            basemap.pcolormesh(x, y, to_plot, cmap=diff_cmap, norm=field_norm, vmin=vmn_nice, vmax=vmx_nice)

            cb = basemap.colorbar(format=sfmt)

            t, pval = ttest_ind(means_for_years, control_means, axis=0)
            sig = pval < 0.1
            basemap.contourf(x, y, sig.astype(int), nlevels=2, hatches=["+", None], colors="none")

            # cb.ax.set_ylabel(infovar.get_units(var_name))

        # plot coastlines
        for the_ax in sel_axes:
            basemap.drawcoastlines(ax=the_ax, linewidth=common_plot_params.COASTLINE_WIDTH)

        # depends on the compared simulations and the months of interest
        fig_file_name = "compare_{0}_{1}_{2}_months-{3}.jpeg".format(var_name, control_label,
                                                                     "_".join(labels),
                                                                     "-".join([str(m) for m in months_of_interest]))
        figpath = os.path.join(images_folder, fig_file_name)
        fig.savefig(figpath, dpi=cpp.FIG_SAVE_DPI, bbox_inches="tight")
        plt.close(fig)
def plot_control_and_differences_in_one_panel_for_all_seasons_for_all_vars(
        varnames=None, levels=None,
        season_to_months=None,
        start_year=None,
        end_year=None):
    season_list = list(season_to_months.keys())

    pvalue_max = 0.1

    # crcm5-r vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r_spinup.hdf"
    # control_label = "CRCM5-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf", ]
    # labels = ["CRCM5-HCD-R"]

    # crcm5-hcd-rl vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf"
    # control_label = "CRCM5-HCD-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf", ]
    # labels = ["CRCM5-HCD-RL"]

    # compare simulations with and without interflow
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL"]

    # very high hydr cond
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf"
    # control_label = "CRCM5-HCD-RL-INTFL"
    ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_sani-10000.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL-sani=10000"]

    # Interflow effect
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    # ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_spinup_ITFS.hdf5", ]
    # labels = ["ITFS"]


    # total lake effect
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r.hdf5"
    # control_label = "CRCM5-NL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5", ]
    # labels = ["CRCM5-L2", ]



    # lake effect (lake-atm interactions)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r.hdf5"
    # control_label = "CRCM5-R"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5", ]
    # labels = ["CRCM5-HCD-R", ]

    # lake effect (lake-river interactions)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5"
    # control_label = "CRCM5-L1"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5", ]
    # labels = ["CRCM5-HCD-L2", ]


    # interflow effect ()
    control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5"
    control_label = "CRCM5-L2"

    paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5", ]
    labels = ["CRCM5-L2I", ]


    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-HCD-RL-INTFb", ]



    # interflow effect (avoid truncation and bigger slopes)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5"
    # control_label = "CRCM5-HCD-RL-INTF"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-HCD-RL-INTF-improved", ]
    #

    row_labels = [
        r"{} vs {}".format(s, control_label) for s in labels
    ]
    print(labels)

    # varnames = ["QQ", ]
    # levels = [None, ]

    assert len(levels) == len(varnames)

    lons2d, lats2d, basemap = analysis.get_basemap_from_hdf(file_path=control_path)
    x, y = basemap(lons2d, lats2d)
    # save the domain properties for reuse
    domain_props = DomainProperties()
    domain_props.basemap = basemap
    domain_props.lons2d = lons2d
    domain_props.lats2d = lats2d
    domain_props.x = x
    domain_props.y = y

    lake_fraction = analysis.get_array_from_file(path=control_path, var_name=infovar.HDF_LAKE_FRACTION_NAME)
    dpth_to_bedrock = analysis.get_array_from_file(path=control_path, var_name=infovar.HDF_DEPTH_TO_BEDROCK_NAME)

    assert dpth_to_bedrock is not None


    if lake_fraction is None:
        lake_fraction = np.zeros(lons2d.shape)

    ncolors = 10
    # +1 to include white
    diff_cmap = cm.get_cmap("RdBu", ncolors + 1)


    # Do the plotting for each variable
    fig = plt.figure()
    assert isinstance(fig, Figure)

    # plot the control data
    ncols = len(season_list) + 1  # +1 is for the colorbar
    gs = gridspec.GridSpec(len(varnames), ncols, width_ratios=[1.0, ] * (ncols - 1) + [0.07], top=0.95)


    lev_width_3d = np.ones(dpth_to_bedrock.shape + infovar.soil_layer_widths_26_to_60.shape)
    lev_width_3d *= infovar.soil_layer_widths_26_to_60[np.newaxis, np.newaxis, :]
    lev_bot_3d = lev_width_3d.cumsum(axis=2)

    correction = -lev_bot_3d + dpth_to_bedrock[:, :, np.newaxis]
    # Apply the correction only at points where the layer bottom is lower than
    # the bedrock
    lev_width_3d[correction < 0] += correction[correction < 0]
    lev_width_3d[lev_width_3d < 0] = 0


    # plot the plots one file per variable
    for var_name, level, the_row in zip(varnames, levels, list(range(len(varnames)))):
        sfmt = infovar.get_colorbar_formatter(var_name)
        season_to_control_mean = {}
        label_to_season_to_difference = {}
        label_to_season_to_significance = {}

        try:
            # Calculate the difference for each season, and save the results to dictionaries
            # to access later when plotting
            for season, months_of_interest in season_to_months.items():
                print("working on season: {0}".format(season))

                control_means = analysis.get_mean_2d_fields_for_months(path=control_path, var_name=var_name,
                                                                       months=months_of_interest,
                                                                       start_year=start_year, end_year=end_year,
                                                                       level=level)

                control_mean = np.mean(control_means, axis=0)

                control_mean = infovar.get_to_plot(var_name, control_mean,
                                                   lake_fraction=domain_props.lake_fraction,
                                                   lons=lons2d, lats=lats2d, level_width_m=lev_width_3d[:, :, level])

                # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                if var_name in ["PR", "TRAF", "TDRA"]:
                    control_mean *= get_num_days(months_of_interest)
                    infovar.change_units_to(varnames=[var_name, ], new_units=r"${\rm mm}$")

                season_to_control_mean[season] = control_mean

                print("calculated mean from {0}".format(control_path))

                # calculate the difference for each simulation
                for the_path, the_label in zip(paths, row_labels):
                    modified_means = analysis.get_mean_2d_fields_for_months(path=the_path, var_name=var_name,
                                                                            months=months_of_interest,
                                                                            start_year=start_year, end_year=end_year,
                                                                            level=level)

                    tval, pval = ttest_ind(modified_means, control_means, axis=0, equal_var=False)
                    significance = ((pval <= pvalue_max) & (~control_mean.mask)).astype(int)
                    print("pval ranges: {} to {}".format(pval.min(), pval.max()))

                    modified_mean = np.mean(modified_means, axis=0)
                    if the_label not in label_to_season_to_difference:
                        label_to_season_to_difference[the_label] = OrderedDict()
                        label_to_season_to_significance[the_label] = OrderedDict()

                    modified_mean = infovar.get_to_plot(var_name, modified_mean,
                                                        lake_fraction=domain_props.lake_fraction, lons=lons2d,
                                                        lats=lats2d, level_width_m=lev_width_3d[:, :, level])

                    # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                    if var_name in ["PR", "TRAF", "TDRA"]:
                        modified_mean *= get_num_days(months_of_interest)

                    diff_vals = modified_mean - control_mean

                    print("diff ranges: min: {0};  max: {1}".format(diff_vals.min(), diff_vals.max()))
                    label_to_season_to_difference[the_label][season] = diff_vals
                    label_to_season_to_significance[the_label][season] = significance

                    print("Calculated mean and diff from {0}".format(the_path))
        except NoSuchNodeError:
            print("Could not find {0}, skipping...".format(var_name))
            continue





        for the_label, data in label_to_season_to_difference.items():
            axes = []
            for col in range(ncols):
                axes.append(fig.add_subplot(gs[the_row, col]))

            # Set season titles
            if the_row == 0:
                for the_season, ax in zip(season_list, axes):
                    ax.set_title(the_season)


            _plot_row(axes, data, the_label, var_name, increments=True, domain_props=domain_props,
                      season_list=season_list, significance=label_to_season_to_significance[the_label])

            var_label = infovar.get_long_display_label_for_var(var_name)
            if var_name in ["I1"]:
                var_label = "{}\n{} layer".format(var_label, ordinal(level + 1))

            axes[0].set_ylabel(var_label)

    fig.suptitle("({}) vs ({})".format(labels[0], control_label), font_properties=FontProperties(weight="bold"))
    folderpath = os.path.join(images_folder, "seasonal_mean_maps/{0}_vs_{1}_for_{2}_{3}-{4}".format(
        "_".join(labels), control_label, "-".join(list(season_to_months.keys())), start_year, end_year))

    if not os.path.isdir(folderpath):
        os.mkdir(folderpath)

    imname = "{0}_{1}.png".format("-".join(varnames), "_".join(labels + [control_label]))
    impath = os.path.join(folderpath, imname)
    fig.savefig(impath, bbox_inches="tight")
Exemplo n.º 5
0
def plot_control_and_differences_in_one_panel_for_all_seasons(varnames=None,
                                                              levels=None,
                                                              season_to_months=None,
                                                              start_year=None,
                                                              end_year=None):
    season_list = list(season_to_months.keys())

    pvalue_max = 0.1

    # crcm5-r vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r_spinup.hdf"
    # control_label = "CRCM5-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf", ]
    # labels = ["CRCM5-HCD-R"]

    # crcm5-hcd-rl vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf"
    # control_label = "CRCM5-HCD-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf", ]
    # labels = ["CRCM5-HCD-RL"]

    # compare simulations with and without interflow
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL"]

    # very high hydr cond
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf"
    # control_label = "CRCM5-HCD-RL-INTFL"
    ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_sani-10000.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL-sani=10000"]

    # Interflow effect
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    # ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_spinup_ITFS.hdf5", ]
    # labels = ["ITFS"]


    # lake effect (lake-atm interactions)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r.hdf5"
    # control_label = "CRCM5-NL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5", ]
    # labels = ["CRCM5-L1", ]


    # lake effect (lake-atm interactions) radiative fluxes
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r_radiation_fluxes.hdf5"
    # control_label = "CRCM5-NL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r-1980-2010_radiation_fluxes.hdf5", ]
    # labels = ["CRCM5-L1", ]




    # lake effect (lake-river interactions)
    control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5"
    control_label = "CRCM5-L1"
    paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5", ]
    labels = ["CRCM5-L2", ]


    # interflow effect ()
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5"
    # control_label = "CRCM5-L2"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5", ]
    # labels = ["CRCM5-L2I", ]
    #

    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-L2I-short", ]



    # interflow effect (avoid truncation and bigger slopes)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5"
    # control_label = "CRCM5-HCD-RL-INTF"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-HCD-RL-INTF-improved", ]
    #

    row_labels = [
        r"({}) - ({})".format(s, control_label) for s in labels
    ]
    print(labels)

    # varnames = ["QQ", ]
    # levels = [None, ]

    assert len(levels) == len(varnames)


    lons2d, lats2d, basemap = analysis.get_basemap_from_hdf(file_path=control_path)
    x, y = basemap(lons2d, lats2d)
    # save the domain properties for reuse
    domain_props = DomainProperties()
    domain_props.basemap = basemap
    domain_props.lons2d = lons2d
    domain_props.lats2d = lats2d
    domain_props.x = x
    domain_props.y = y

    lake_fraction = analysis.get_array_from_file(path=control_path, var_name="lake_fraction")

    if lake_fraction is None:
        lake_fraction = np.zeros(lons2d.shape)

    ncolors = 50 # change to 10 for the paper plots
    # +1 to include white
    diff_cmap = cm.get_cmap("RdBu", ncolors + 1)

    # plot the plots one file per variable
    for var_name, level in zip(varnames, levels):
        sfmt = infovar.get_colorbar_formatter(var_name)
        season_to_control_mean = {}
        label_to_season_to_difference = {}
        label_to_season_to_significance = {}

        try:
            # Calculate the difference for each season, and save the results to dictionaries
            # to access later when plotting
            for season, months_of_interest in season_to_months.items():
                print("working on season: {0}".format(season))

                control_means = analysis.get_mean_2d_fields_for_months(path=control_path, var_name=var_name,
                                                                       months=months_of_interest,
                                                                       start_year=start_year, end_year=end_year,
                                                                       level=level)

                control_mean = np.mean(control_means, axis=0)

                control_mean = infovar.get_to_plot(var_name, control_mean,
                                                   lake_fraction=domain_props.lake_fraction,
                                                   lons=lons2d, lats=lats2d)

                # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                if var_name in ["PR", "TRAF", "TDRA"]:
                    control_mean *= get_num_days(months_of_interest)

                season_to_control_mean[season] = control_mean

                print("calculated mean from {0}".format(control_path))

                # calculate the difference for each simulation
                for the_path, the_label in zip(paths, row_labels):
                    modified_means = analysis.get_mean_2d_fields_for_months(path=the_path, var_name=var_name,
                                                                            months=months_of_interest,
                                                                            start_year=start_year, end_year=end_year,
                                                                            level=level)

                    tval, pval = ttest_ind(modified_means, control_means, axis=0, equal_var=False)
                    significance = ((pval <= pvalue_max) & (~control_mean.mask)).astype(int)
                    print("pval ranges: {} to {}".format(pval.min(), pval.max()))

                    modified_mean = np.mean(modified_means, axis=0)
                    if the_label not in label_to_season_to_difference:
                        label_to_season_to_difference[the_label] = OrderedDict()
                        label_to_season_to_significance[the_label] = OrderedDict()

                    modified_mean = infovar.get_to_plot(var_name, modified_mean,
                                                        lake_fraction=domain_props.lake_fraction, lons=lons2d,
                                                        lats=lats2d)

                    # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                    if var_name in ["PR", "TRAF", "TDRA"]:
                        modified_mean *= get_num_days(months_of_interest)

                    diff_vals = modified_mean - control_mean

                    print("diff ranges: min: {0};  max: {1}".format(diff_vals.min(), diff_vals.max()))
                    label_to_season_to_difference[the_label][season] = diff_vals
                    label_to_season_to_significance[the_label][season] = significance

                    print("Calculated mean and diff from {0}".format(the_path))
        except NoSuchNodeError:
            print("Could not find {0}, skipping...".format(var_name))
            continue

        # Do the plotting for each variable
        fig = plt.figure()
        assert isinstance(fig, Figure)

        # plot the control data
        ncols = len(season_to_control_mean) + 1  # +1 is for the colorbar
        gs = gridspec.GridSpec(len(paths) + 1, ncols, width_ratios=[1.0, ] * (ncols - 1) + [0.07])
        axes = []
        for col in range(ncols):
            axes.append(fig.add_subplot(gs[0, col]))
        _plot_row(axes, season_to_control_mean, control_label, var_name, domain_props=domain_props,
                  season_list=season_list)

        the_row = 1
        for the_label, data in label_to_season_to_difference.items():
            axes = []
            for col in range(ncols):
                axes.append(fig.add_subplot(gs[the_row, col]))

            _plot_row(axes, data, the_label, var_name, increments=True, domain_props=domain_props,
                      season_list=season_list, significance=label_to_season_to_significance[the_label])
            the_row += 1

            for the_ax, the_season in zip(axes, season_list):
                the_ax.set_title(the_season)

        folderpath = os.path.join(images_folder, "seasonal_mean_maps/{0}_vs_{1}_for_{2}_{3}-{4}".format(
            "_".join(labels), control_label, "-".join(list(season_to_months.keys())), start_year, end_year))
        if not os.path.isdir(folderpath):
            os.mkdir(folderpath)

        imname = "{0}_{1}.png".format(var_name, "_".join(labels + [control_label]))
        impath = os.path.join(folderpath, imname)
        fig.savefig(impath, bbox_inches="tight", dpi=cpp.FIG_SAVE_DPI, transparent=True)
Exemplo n.º 6
0
def compare(paths=None,
            path_to_control_data=None,
            control_label="",
            labels=None,
            varnames=None,
            levels=None,
            months_of_interest=None,
            start_year=None,
            end_year=None):
    """
    Comparing 2D fields
    :param paths: paths to the simulation results
    :param varnames:
    :param labels: Display name for each simulation (number of labels should
     be equal to the number of paths)
    :param path_to_control_data: the path with which the comparison done i.e. a in the following
     formula
            delta = (x - a)/a * 100%

     generates one image file per variable (in the folder images_for_lake-river_paper):
        compare_varname_<control_label>_<label1>_..._<labeln>_startyear_endyear.png

    """
    # get coordinate data  (assumes that all the variables and runs have the same coordinates)
    lons2d, lats2d, basemap = analysis.get_basemap_from_hdf(
        file_path=path_to_control_data)
    x, y = basemap(lons2d, lats2d)

    lake_fraction = analysis.get_array_from_file(path=path_to_control_data,
                                                 var_name="lake_fraction")

    if lake_fraction is None:
        lake_fraction = np.zeros(lons2d.shape)

    ncolors = 10
    # +1 to include white
    diff_cmap = cm.get_cmap("RdBu_r", ncolors + 1)

    for var_name, level in zip(varnames, levels):
        sfmt = infovar.get_colorbar_formatter(var_name)
        control_means = analysis.get_mean_2d_fields_for_months(
            path=path_to_control_data,
            var_name=var_name,
            months=months_of_interest,
            start_year=start_year,
            end_year=end_year,
            level=level)

        control_mean = np.mean(control_means, axis=0)
        fig = plt.figure()
        assert isinstance(fig, Figure)
        gs = gridspec.GridSpec(2, len(paths) + 1, wspace=0.5)

        # plot the control
        ax = fig.add_subplot(gs[0, 0])
        assert isinstance(ax, Axes)
        ax.set_title("{0}".format(control_label))
        ax.set_ylabel("Mean: $X_{0}$")
        to_plot = infovar.get_to_plot(var_name,
                                      control_mean,
                                      lake_fraction=lake_fraction,
                                      mask_oceans=True,
                                      lons=lons2d,
                                      lats=lats2d)
        # determine colorabr extent and spacing
        field_cmap, field_norm = infovar.get_colormap_and_norm_for(
            var_name, to_plot, ncolors=ncolors)

        basemap.pcolormesh(x, y, to_plot, cmap=field_cmap, norm=field_norm)
        cb = basemap.colorbar(format=sfmt)

        assert isinstance(cb, Colorbar)
        # cb.ax.set_ylabel(infovar.get_units(var_name))
        units = infovar.get_units(var_name)

        info = "Variable:" \
               "\n{0}" \
               "\nPeriod: {1}-{2}" \
               "\nMonths: {3}" \
               "\nUnits: {4}"

        info = info.format(
            infovar.get_long_name(var_name), start_year, end_year, ",".join([
                datetime(2001, m, 1).strftime("%b") for m in months_of_interest
            ]), units)

        ax.annotate(info, xy=(0.1, 0.3), xycoords="figure fraction")

        sel_axes = [ax]

        for the_path, the_label, column in zip(paths, labels,
                                               list(range(1,
                                                          len(paths) + 1))):

            means_for_years = analysis.get_mean_2d_fields_for_months(
                path=the_path,
                var_name=var_name,
                months=months_of_interest,
                start_year=start_year,
                end_year=end_year)
            the_mean = np.mean(means_for_years, axis=0)

            # plot the mean value
            ax = fig.add_subplot(gs[0, column])
            sel_axes.append(ax)
            ax.set_title("{0}".format(the_label))
            to_plot = infovar.get_to_plot(var_name,
                                          the_mean,
                                          lake_fraction=lake_fraction,
                                          mask_oceans=True,
                                          lons=lons2d,
                                          lats=lats2d)

            basemap.pcolormesh(x, y, to_plot, cmap=field_cmap, norm=field_norm)
            ax.set_ylabel("Mean: $X_{0}$".format(column))
            cb = basemap.colorbar(format=sfmt)
            # cb.ax.set_ylabel(infovar.get_units(var_name))

            # plot the difference
            ax = fig.add_subplot(gs[1, column])
            sel_axes.append(ax)
            ax.set_ylabel("$X_{0} - X_0$".format(column))

            # #Mask only if the previous plot (means) is masked
            thediff = the_mean - control_mean

            if hasattr(to_plot, "mask"):
                to_plot = np.ma.masked_where(to_plot.mask, thediff)
            else:
                to_plot = thediff

            if var_name == "PR":  # convert to mm/day
                to_plot = infovar.get_to_plot(var_name,
                                              to_plot,
                                              mask_oceans=False)

            vmin = np.ma.min(to_plot)
            vmax = np.ma.max(to_plot)

            d = max(abs(vmin), abs(vmax))
            vmin = -d
            vmax = d

            field_norm, bounds, vmn_nice, vmx_nice = infovar.get_boundary_norm(
                vmin, vmax, diff_cmap.N, exclude_zero=False)
            basemap.pcolormesh(x,
                               y,
                               to_plot,
                               cmap=diff_cmap,
                               norm=field_norm,
                               vmin=vmn_nice,
                               vmax=vmx_nice)

            cb = basemap.colorbar(format=sfmt)

            t, pval = ttest_ind(means_for_years, control_means, axis=0)
            sig = pval < 0.1
            basemap.contourf(x,
                             y,
                             sig.astype(int),
                             nlevels=2,
                             hatches=["+", None],
                             colors="none")

            # cb.ax.set_ylabel(infovar.get_units(var_name))

        # plot coastlines
        for the_ax in sel_axes:
            basemap.drawcoastlines(
                ax=the_ax, linewidth=common_plot_params.COASTLINE_WIDTH)

        # depends on the compared simulations and the months of interest
        fig_file_name = "compare_{0}_{1}_{2}_months-{3}.jpeg".format(
            var_name, control_label, "_".join(labels),
            "-".join([str(m) for m in months_of_interest]))
        figpath = os.path.join(images_folder, fig_file_name)
        fig.savefig(figpath, dpi=cpp.FIG_SAVE_DPI, bbox_inches="tight")
        plt.close(fig)
Exemplo n.º 7
0
def plot_control_and_differences_in_one_panel_for_all_seasons_for_all_vars(
        varnames=None,
        levels=None,
        season_to_months=None,
        start_year=None,
        end_year=None):
    season_list = list(season_to_months.keys())

    pvalue_max = 0.1

    # crcm5-r vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r_spinup.hdf"
    # control_label = "CRCM5-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf", ]
    # labels = ["CRCM5-HCD-R"]

    # crcm5-hcd-rl vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf"
    # control_label = "CRCM5-HCD-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf", ]
    # labels = ["CRCM5-HCD-RL"]

    # compare simulations with and without interflow
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL"]

    # very high hydr cond
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf"
    # control_label = "CRCM5-HCD-RL-INTFL"
    ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_sani-10000.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL-sani=10000"]

    # Interflow effect
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    # ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_spinup_ITFS.hdf5", ]
    # labels = ["ITFS"]

    # total lake effect
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r.hdf5"
    # control_label = "CRCM5-NL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5", ]
    # labels = ["CRCM5-L2", ]

    # lake effect (lake-atm interactions)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r.hdf5"
    # control_label = "CRCM5-R"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5", ]
    # labels = ["CRCM5-HCD-R", ]

    # lake effect (lake-river interactions)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5"
    # control_label = "CRCM5-L1"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5", ]
    # labels = ["CRCM5-HCD-L2", ]

    # interflow effect ()
    control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5"
    control_label = "CRCM5-L2"

    paths = [
        "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5",
    ]
    labels = [
        "CRCM5-L2I",
    ]

    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-HCD-RL-INTFb", ]

    # interflow effect (avoid truncation and bigger slopes)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5"
    # control_label = "CRCM5-HCD-RL-INTF"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-HCD-RL-INTF-improved", ]
    #

    row_labels = [r"{} vs {}".format(s, control_label) for s in labels]
    print(labels)

    # varnames = ["QQ", ]
    # levels = [None, ]

    assert len(levels) == len(varnames)

    lons2d, lats2d, basemap = analysis.get_basemap_from_hdf(
        file_path=control_path)
    x, y = basemap(lons2d, lats2d)
    # save the domain properties for reuse
    domain_props = DomainProperties()
    domain_props.basemap = basemap
    domain_props.lons2d = lons2d
    domain_props.lats2d = lats2d
    domain_props.x = x
    domain_props.y = y

    lake_fraction = analysis.get_array_from_file(
        path=control_path, var_name=infovar.HDF_LAKE_FRACTION_NAME)
    dpth_to_bedrock = analysis.get_array_from_file(
        path=control_path, var_name=infovar.HDF_DEPTH_TO_BEDROCK_NAME)

    assert dpth_to_bedrock is not None

    if lake_fraction is None:
        lake_fraction = np.zeros(lons2d.shape)

    ncolors = 10
    # +1 to include white
    diff_cmap = cm.get_cmap("RdBu", ncolors + 1)

    # Do the plotting for each variable
    fig = plt.figure()
    assert isinstance(fig, Figure)

    # plot the control data
    ncols = len(season_list) + 1  # +1 is for the colorbar
    gs = gridspec.GridSpec(len(varnames),
                           ncols,
                           width_ratios=[
                               1.0,
                           ] * (ncols - 1) + [0.07],
                           top=0.95)

    lev_width_3d = np.ones(dpth_to_bedrock.shape +
                           infovar.soil_layer_widths_26_to_60.shape)
    lev_width_3d *= infovar.soil_layer_widths_26_to_60[np.newaxis,
                                                       np.newaxis, :]
    lev_bot_3d = lev_width_3d.cumsum(axis=2)

    correction = -lev_bot_3d + dpth_to_bedrock[:, :, np.newaxis]
    # Apply the correction only at points where the layer bottom is lower than
    # the bedrock
    lev_width_3d[correction < 0] += correction[correction < 0]
    lev_width_3d[lev_width_3d < 0] = 0

    # plot the plots one file per variable
    for var_name, level, the_row in zip(varnames, levels,
                                        list(range(len(varnames)))):
        sfmt = infovar.get_colorbar_formatter(var_name)
        season_to_control_mean = {}
        label_to_season_to_difference = {}
        label_to_season_to_significance = {}

        try:
            # Calculate the difference for each season, and save the results to dictionaries
            # to access later when plotting
            for season, months_of_interest in season_to_months.items():
                print("working on season: {0}".format(season))

                control_means = analysis.get_mean_2d_fields_for_months(
                    path=control_path,
                    var_name=var_name,
                    months=months_of_interest,
                    start_year=start_year,
                    end_year=end_year,
                    level=level)

                control_mean = np.mean(control_means, axis=0)

                control_mean = infovar.get_to_plot(
                    var_name,
                    control_mean,
                    lake_fraction=domain_props.lake_fraction,
                    lons=lons2d,
                    lats=lats2d,
                    level_width_m=lev_width_3d[:, :, level])

                # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                if var_name in ["PR", "TRAF", "TDRA"]:
                    control_mean *= get_num_days(months_of_interest)
                    infovar.change_units_to(varnames=[
                        var_name,
                    ],
                                            new_units=r"${\rm mm}$")

                season_to_control_mean[season] = control_mean

                print("calculated mean from {0}".format(control_path))

                # calculate the difference for each simulation
                for the_path, the_label in zip(paths, row_labels):
                    modified_means = analysis.get_mean_2d_fields_for_months(
                        path=the_path,
                        var_name=var_name,
                        months=months_of_interest,
                        start_year=start_year,
                        end_year=end_year,
                        level=level)

                    tval, pval = ttest_ind(modified_means,
                                           control_means,
                                           axis=0,
                                           equal_var=False)
                    significance = ((pval <= pvalue_max) &
                                    (~control_mean.mask)).astype(int)
                    print("pval ranges: {} to {}".format(
                        pval.min(), pval.max()))

                    modified_mean = np.mean(modified_means, axis=0)
                    if the_label not in label_to_season_to_difference:
                        label_to_season_to_difference[the_label] = OrderedDict(
                        )
                        label_to_season_to_significance[
                            the_label] = OrderedDict()

                    modified_mean = infovar.get_to_plot(
                        var_name,
                        modified_mean,
                        lake_fraction=domain_props.lake_fraction,
                        lons=lons2d,
                        lats=lats2d,
                        level_width_m=lev_width_3d[:, :, level])

                    # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                    if var_name in ["PR", "TRAF", "TDRA"]:
                        modified_mean *= get_num_days(months_of_interest)

                    diff_vals = modified_mean - control_mean

                    print("diff ranges: min: {0};  max: {1}".format(
                        diff_vals.min(), diff_vals.max()))
                    label_to_season_to_difference[the_label][
                        season] = diff_vals
                    label_to_season_to_significance[the_label][
                        season] = significance

                    print("Calculated mean and diff from {0}".format(the_path))
        except NoSuchNodeError:
            print("Could not find {0}, skipping...".format(var_name))
            continue

        for the_label, data in label_to_season_to_difference.items():
            axes = []
            for col in range(ncols):
                axes.append(fig.add_subplot(gs[the_row, col]))

            # Set season titles
            if the_row == 0:
                for the_season, ax in zip(season_list, axes):
                    ax.set_title(the_season)

            _plot_row(axes,
                      data,
                      the_label,
                      var_name,
                      increments=True,
                      domain_props=domain_props,
                      season_list=season_list,
                      significance=label_to_season_to_significance[the_label])

            var_label = infovar.get_long_display_label_for_var(var_name)
            if var_name in ["I1"]:
                var_label = "{}\n{} layer".format(var_label,
                                                  ordinal(level + 1))

            axes[0].set_ylabel(var_label)

    fig.suptitle("({}) vs ({})".format(labels[0], control_label),
                 font_properties=FontProperties(weight="bold"))
    folderpath = os.path.join(
        images_folder, "seasonal_mean_maps/{0}_vs_{1}_for_{2}_{3}-{4}".format(
            "_".join(labels), control_label,
            "-".join(list(season_to_months.keys())), start_year, end_year))

    if not os.path.isdir(folderpath):
        os.mkdir(folderpath)

    imname = "{0}_{1}.png".format("-".join(varnames),
                                  "_".join(labels + [control_label]))
    impath = os.path.join(folderpath, imname)
    fig.savefig(impath, bbox_inches="tight")
Exemplo n.º 8
0
def plot_bfe_row_for_var(finfo_to_season_to_diff=None,
                         ax_list=None,
                         season_titles=False,
                         varname="",
                         basemap_info=None):
    cmap = cm.get_cmap("RdBu_r", 20)

    assert isinstance(basemap_info, BasemapInfo)

    xx, yy = None, None
    cs = None
    for finfo, season_to_diff in finfo_to_season_to_diff.items():
        assert isinstance(finfo, FieldInfo)

        if finfo.varname != varname:
            continue

        for season in season_to_diff:
            season_to_diff[season] = infovar.get_to_plot(
                varname,
                season_to_diff[season],
                difference=True,
                lons=basemap_info.lons,
                lats=basemap_info.lats)

        clevs = get_diff_levels(season_to_diff,
                                ncolors=cmap.N,
                                varname=varname)
        for i, (season, diff) in enumerate(season_to_diff.items()):
            ax = ax_list[i]

            if xx is None or yy is None:
                xx, yy = basemap_info.get_proj_xy()

            print(diff.shape)

            cs = basemap_info.basemap.contourf(xx,
                                               yy,
                                               diff[:],
                                               cmap=cmap,
                                               levels=clevs,
                                               extend="both",
                                               ax=ax)
            basemap_info.basemap.drawcoastlines(ax=ax)
            # ax.set_aspect("auto")
            basemap_info.basemap.readshapefile(BASIN_BOUNDARIES_SHP[:-4],
                                               "basin",
                                               ax=ax)

            if season_titles:
                ax.set_title(season)

            if i == 0:
                ax.set_ylabel(
                    infovar.get_long_display_label_for_var(finfo.varname))

            if finfo.varname in [
                    "I5",
            ] and season.lower() in ["summer"]:
                ax.set_visible(False)

    ax = ax_list[-1]
    # ax.set_aspect(30)
    ax.set_title(infovar.get_units(varname))
    plt.colorbar(cs, cax=ax_list[-1])
Exemplo n.º 9
0
def plot_control_and_differences_in_one_panel_for_all_seasons(
        varnames=None,
        levels=None,
        season_to_months=None,
        start_year=None,
        end_year=None):
    season_list = list(season_to_months.keys())

    pvalue_max = 0.1

    # crcm5-r vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r_spinup.hdf"
    # control_label = "CRCM5-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf", ]
    # labels = ["CRCM5-HCD-R"]

    # crcm5-hcd-rl vs crcm5-hcd-r
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r_spinup2.hdf"
    # control_label = "CRCM5-HCD-R"
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf", ]
    # labels = ["CRCM5-HCD-RL"]

    # compare simulations with and without interflow
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL"]

    # very high hydr cond
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_do_not_discard_small.hdf"
    # control_label = "CRCM5-HCD-RL-INTFL"
    ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_sani-10000.hdf", ]
    # labels = ["CRCM5-HCD-RL-INTFL-sani=10000"]

    # Interflow effect
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl_spinup.hdf"
    # control_label = "CRCM5-HCD-RL"
    # ##
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_spinup_ITFS.hdf5", ]
    # labels = ["ITFS"]

    # lake effect (lake-atm interactions)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r.hdf5"
    # control_label = "CRCM5-NL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5", ]
    # labels = ["CRCM5-L1", ]

    # lake effect (lake-atm interactions) radiative fluxes
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-r_radiation_fluxes.hdf5"
    # control_label = "CRCM5-NL"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r-1980-2010_radiation_fluxes.hdf5", ]
    # labels = ["CRCM5-L1", ]

    # lake effect (lake-river interactions)
    control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-r.hdf5"
    control_label = "CRCM5-L1"
    paths = [
        "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5",
    ]
    labels = [
        "CRCM5-L2",
    ]

    # interflow effect ()
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl.hdf5"
    # control_label = "CRCM5-L2"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5", ]
    # labels = ["CRCM5-L2I", ]
    #

    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-L2I-short", ]

    # interflow effect (avoid truncation and bigger slopes)
    # control_path = "/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS.hdf5"
    # control_label = "CRCM5-HCD-RL-INTF"
    #
    # paths = ["/skynet3_rech1/huziy/hdf_store/quebec_0.1_crcm5-hcd-rl-intfl_ITFS_avoid_truncation1979-1989.hdf5", ]
    # labels = ["CRCM5-HCD-RL-INTF-improved", ]
    #

    row_labels = [r"({}) - ({})".format(s, control_label) for s in labels]
    print(labels)

    # varnames = ["QQ", ]
    # levels = [None, ]

    assert len(levels) == len(varnames)

    lons2d, lats2d, basemap = analysis.get_basemap_from_hdf(
        file_path=control_path)
    x, y = basemap(lons2d, lats2d)
    # save the domain properties for reuse
    domain_props = DomainProperties()
    domain_props.basemap = basemap
    domain_props.lons2d = lons2d
    domain_props.lats2d = lats2d
    domain_props.x = x
    domain_props.y = y

    lake_fraction = analysis.get_array_from_file(path=control_path,
                                                 var_name="lake_fraction")

    if lake_fraction is None:
        lake_fraction = np.zeros(lons2d.shape)

    ncolors = 50  # change to 10 for the paper plots
    # +1 to include white
    diff_cmap = cm.get_cmap("RdBu", ncolors + 1)

    # plot the plots one file per variable
    for var_name, level in zip(varnames, levels):
        sfmt = infovar.get_colorbar_formatter(var_name)
        season_to_control_mean = {}
        label_to_season_to_difference = {}
        label_to_season_to_significance = {}

        try:
            # Calculate the difference for each season, and save the results to dictionaries
            # to access later when plotting
            for season, months_of_interest in season_to_months.items():
                print("working on season: {0}".format(season))

                control_means = analysis.get_mean_2d_fields_for_months(
                    path=control_path,
                    var_name=var_name,
                    months=months_of_interest,
                    start_year=start_year,
                    end_year=end_year,
                    level=level)

                control_mean = np.mean(control_means, axis=0)

                control_mean = infovar.get_to_plot(
                    var_name,
                    control_mean,
                    lake_fraction=domain_props.lake_fraction,
                    lons=lons2d,
                    lats=lats2d)

                # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                if var_name in ["PR", "TRAF", "TDRA"]:
                    control_mean *= get_num_days(months_of_interest)

                season_to_control_mean[season] = control_mean

                print("calculated mean from {0}".format(control_path))

                # calculate the difference for each simulation
                for the_path, the_label in zip(paths, row_labels):
                    modified_means = analysis.get_mean_2d_fields_for_months(
                        path=the_path,
                        var_name=var_name,
                        months=months_of_interest,
                        start_year=start_year,
                        end_year=end_year,
                        level=level)

                    tval, pval = ttest_ind(modified_means,
                                           control_means,
                                           axis=0,
                                           equal_var=False)
                    significance = ((pval <= pvalue_max) &
                                    (~control_mean.mask)).astype(int)
                    print("pval ranges: {} to {}".format(
                        pval.min(), pval.max()))

                    modified_mean = np.mean(modified_means, axis=0)
                    if the_label not in label_to_season_to_difference:
                        label_to_season_to_difference[the_label] = OrderedDict(
                        )
                        label_to_season_to_significance[
                            the_label] = OrderedDict()

                    modified_mean = infovar.get_to_plot(
                        var_name,
                        modified_mean,
                        lake_fraction=domain_props.lake_fraction,
                        lons=lons2d,
                        lats=lats2d)

                    # multiply by the number of days in a season for PR and TRAF to convert them into mm from mm/day
                    if var_name in ["PR", "TRAF", "TDRA"]:
                        modified_mean *= get_num_days(months_of_interest)

                    diff_vals = modified_mean - control_mean

                    print("diff ranges: min: {0};  max: {1}".format(
                        diff_vals.min(), diff_vals.max()))
                    label_to_season_to_difference[the_label][
                        season] = diff_vals
                    label_to_season_to_significance[the_label][
                        season] = significance

                    print("Calculated mean and diff from {0}".format(the_path))
        except NoSuchNodeError:
            print("Could not find {0}, skipping...".format(var_name))
            continue

        # Do the plotting for each variable
        fig = plt.figure()
        assert isinstance(fig, Figure)

        # plot the control data
        ncols = len(season_to_control_mean) + 1  # +1 is for the colorbar
        gs = gridspec.GridSpec(len(paths) + 1,
                               ncols,
                               width_ratios=[
                                   1.0,
                               ] * (ncols - 1) + [0.07])
        axes = []
        for col in range(ncols):
            axes.append(fig.add_subplot(gs[0, col]))
        _plot_row(axes,
                  season_to_control_mean,
                  control_label,
                  var_name,
                  domain_props=domain_props,
                  season_list=season_list)

        the_row = 1
        for the_label, data in label_to_season_to_difference.items():
            axes = []
            for col in range(ncols):
                axes.append(fig.add_subplot(gs[the_row, col]))

            _plot_row(axes,
                      data,
                      the_label,
                      var_name,
                      increments=True,
                      domain_props=domain_props,
                      season_list=season_list,
                      significance=label_to_season_to_significance[the_label])
            the_row += 1

            for the_ax, the_season in zip(axes, season_list):
                the_ax.set_title(the_season)

        folderpath = os.path.join(
            images_folder,
            "seasonal_mean_maps/{0}_vs_{1}_for_{2}_{3}-{4}".format(
                "_".join(labels), control_label,
                "-".join(list(season_to_months.keys())), start_year, end_year))
        if not os.path.isdir(folderpath):
            os.mkdir(folderpath)

        imname = "{0}_{1}.png".format(var_name,
                                      "_".join(labels + [control_label]))
        impath = os.path.join(folderpath, imname)
        fig.savefig(impath,
                    bbox_inches="tight",
                    dpi=cpp.FIG_SAVE_DPI,
                    transparent=True)