示例#1
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def copy_mpp(args):
    out = outdir_path_helper(args.out)
    df = read_xcsv(args.jv, read_csv_kwargs=dict(index_col=0))[0]
    df.index.name = 'index'

    df['P'] = -df.j_tot_nc * df.V

    df = df[df.concentration_factor > 0]

    df_mpp = df.sort_values('P', ascending=False).drop_duplicates(CASE_KEYS)
    df_jsc = df[df.V.abs() < 1e-10].drop_duplicates(CASE_KEYS)
    # df1 = df1.sort_values('index')

    df1 = pd.concat([df_mpp, df_jsc])

    for index, row in df1.iterrows():
        filename = row['filename']
        base = osp.dirname(filename)
        for oldname in [
                filename,
                filename.rpartition('.plot_meta.yaml')[0] + '.csv.0',
                osp.join(base, 'submit.yaml')
        ]:
            newname = osp.join(out, oldname)
            mkdirp(osp.dirname(newname))
            print(oldname, newname)
            shutil.copyfile(oldname, newname)

    to_xcsv(df_mpp, out + "JV_mpp.csv")
    to_xcsv(df1, out + "JV_mpp_and_jsc.csv")
示例#2
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def plot_jv_old(args):
    savefig = args.matplotlib_savefig
    out = outdir_path_helper(args.out)

    df = read_xcsv(args.jv)[0]

    df = df[df['IB_sigma_ci'] == 1e-12]

    mus = list(df['IB_mobility'].unique())
    mus.sort(key=float)

    fig, ax = plt.subplots()

    j_min = 0
    for mu in mus:
        df2 = df[((df['IB_mobility'] == mu) &
                  (df['concentration_factor'] == 1e3))]
        j = df2['j_tot_nc'] / df2['concentration_factor']
        j_min = min(j_min, j.min())
        ax.plot(df2['V'], j, label=r"$\mu={}$".format(mu), marker='.')

    ax.set_xlabel(r'applied bias ($\mathrm{V}$)')
    ax.set_ylabel(r'$J_{\mathrm{tot}} / X$ ($\mathrm{mA/cm^2}$)')

    #ax.set_ylim([j_min*1.05, 0])
    ax.set_ylim([-55, -48])

    ax.legend()

    fig.tight_layout()

    savefig(fig, out + 'JV mus')
示例#3
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def extract_jv(args):
    out_dir = outdir_path_helper(args.out_dir)

    input_dirs = args.input_dirs

    rows = []
    for input_dir in tqdm.tqdm(input_dirs):
        submit = h5yaml.load(os.path.join(input_dir, 'submit.yaml'))
        spar = submit['parameters']
        for f in os.listdir(input_dir):
            m = voltage_step_re.match(f)
            if not m:
                continue
            V_ext = m.group(1)

            filename = os.path.join(input_dir, f)
            tree = h5yaml.load(filename)

            integrals = tree['integrals']

            d = dict(IB_mobility=float(spar['IB_mobility']),
                     IB_thickness=float(spar['IB_thickness']),
                     IB_sigma_ci=float(spar['IB_sigma_ci']),
                     IB_sigma_iv=float(spar['IB_sigma_iv']),
                     concentration_factor=float(spar['concentration_factor']),
                     V=float(V_ext),
                     j_tot_nc=(integrals['avg_j_CB:n_contact'] +
                               integrals['avg_j_VB:n_contact']))

            for k, v in integrals.items():
                d["integrals:" + k] = v

            d['filename'] = filename

            rows.append(d)

    df = pd.DataFrame(rows)

    to_xcsv(df, out_dir + "JV.csv")
示例#4
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def plot_detail_j(args):
    savefig = args.matplotlib_savefig
    out = outdir_path_helper(args.out)
    spdir = args.spatial_input_dir

    SILLY = args.silly

    jv = read_xcsv(args.jv_mpp)[0]

    fig = plt.figure(figsize=(4.8, 6.4), dpi=100)

    gs0 = GridSpec(ncols=1,
                   nrows=2,
                   figure=fig,
                   left=0.18,
                   right=0.95,
                   top=0.97,
                   bottom=0.10,
                   wspace=0.00,
                   hspace=0.25,
                   height_ratios=[1, 1])

    ax0 = fig.add_subplot(gs0[0, 0])
    ax1 = fig.add_subplot(gs0[1, 0])

    sigma_ci_to_ls = {
        2e-13: 'solid',
        1e-12: 'dashed',
    }
    mu_to_color = {0.001: COLOR['blue'], 30.0: COLOR['red']}

    jv1 = jv.query("(IB_sigma_ci == 2e-13) &" "(IB_mobility == 100.0)")
    assert len(jv1.index) == 1
    df = common_load_spatial_data(spdir, jv1['filename'].iloc[0])
    df_add_drift_diffusion_terms(df)
    ax = ax0
    plot_detail_j_subplot(
        locals(),
        ax=ax0,
        concentration_factor=jv1['concentration_factor'].iloc[0])

    ax = ax1

    jv["j_IB_max_abs"] = jv["filename"].apply(
        partial(extract_max_abs_IB_current, spdir))

    for sigma_ci in [2e-13, 1e-12]:
        jv1 = jv[jv.IB_sigma_ci == sigma_ci]
        jv1 = jv1.sort_values("IB_mobility")
        ax.plot(jv1.IB_mobility,
                jv1.j_IB_max_abs / jv1.concentration_factor,
                color='black',
                label=SIGMA_CI_TO_LABEL[sigma_ci],
                linestyle=SIGMA_CI_TO_LS[sigma_ci],
                marker=SIGMA_CI_TO_MARKER[sigma_ci])

    ax.set_ylim([0, 10.3])
    ax.set_xlabel(r'IB mobility ($\mathrm{cm^2/V/s}$)')
    ax.set_ylabel(r'$\max(|j_{I}| / X)$ ($\mathrm{cm^2/V/s}$)')
    ax.set_xscale('log')
    ax.legend()

    to_xcsv(jv, out + "marti02_final_Jdd_maxIB.csv")

    savefig(fig, out + 'marti02_final_Jdd')
示例#5
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def plot_fs(args):
    savefig = args.matplotlib_savefig
    out = outdir_path_helper(args.out)
    spdir = args.spatial_input_dir

    SILLY = args.silly

    jv = read_xcsv(args.jv_mpp)[0]

    fig = plt.figure(figsize=(4.8, 3.6), dpi=100)

    gs0 = GridSpec(ncols=1,
                   nrows=1,
                   figure=fig,
                   left=0.18,
                   right=0.95,
                   top=0.97,
                   bottom=0.16,
                   wspace=0.00,
                   hspace=0.00,
                   height_ratios=[1])

    ax0 = fig.add_subplot(gs0[0, 0])

    sigma_ci_to_ls = {
        2e-13: 'solid',
        1e-12: 'dashed',
    }
    mu_to_color = {0.001: COLOR['blue'], 30.0: COLOR['red']}

    ax = ax0
    for sigma_ci in [2e-13, 1e-12]:

        jv1 = jv[jv.IB_sigma_ci == sigma_ci]
        jv1 = jv1.sort_values('IB_mobility', ascending=False)
        # if not SILLY:
        #     jv1 = jv1[jv1.IB_mobility.isin([0.001, 30])]

        ls = sigma_ci_to_ls[sigma_ci]

        # position doesn't matter, will be manually adjusted in inkscape
        ax.text(
            0.07,
            0.93,
            SIGMA_CI_TO_LABEL[sigma_ci],
            horizontalalignment='left',
            verticalalignment='top',
            transform=ax.transAxes,
            # fontsize='small'
        )

        for index, row in jv1.iterrows():
            try:
                color = mu_to_color[row['IB_mobility']]
            except KeyError:
                continue

            df = common_load_spatial_data(spdir, row['filename'])

            df = extract_IB_region_only(df)

            df = df[df.x.between(200, 1000)]  # Jacob request; was (250, 1000)

            ax.plot(df['x'],
                    df['f_IB'],
                    color=color,
                    linestyle=ls,
                    label='_nolegend_')
            if sigma_ci == 2e-13:
                mu_label = (r'$\mu_{{I}} = {:.7g}'
                            '\;\mathrm{{cm^2/V/s}}$'.format(
                                row['IB_mobility']))
                ax.plot([], [], label=mu_label, color=color)

        # ax.plot([], [], linestyle=ls, color='black',
        #         label=SIGMA_CI_TO_LABEL[sigma_ci])

    if not SILLY:
        ax.legend()
    ax.set_ylabel(r'IB filling fraction')
    ax.set_xlim([200, 1000])
    ax.set_ylim([0.23, 0.56])
    ax.set_xlabel(r"position ($\mathrm{nm}$)")

    savefig(fig, out + 'marti02_final_f_IB')
示例#6
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def plot_bands(args):
    savefig = args.matplotlib_savefig
    out = outdir_path_helper(args.out)
    spdir = args.spatial_input_dir

    # python3 -m ecd_thesis2018.marti2002_plot plot-bands --usetex --out out.marti2002_plot/ --jv out.marti2002_plot_datafiles/JV_mpp_and_jsc.csv --spatial-input-dir out.marti2002_plot_datafiles/
    # thesis2018=d0332dc0382ea2b5cd609c931e7b7970c218bd29
    # simudo=682f18db136c86b6342e6fbbd2ff7a4df3ea67c1

    jv = read_xcsv(args.jv)[0]

    jv = jv[jv.V.abs() < 1e-10]  # short circuit

    fig = plt.figure(figsize=(4.8, 2.6), dpi=100)

    gs0 = GridSpec(ncols=1,
                   nrows=1,
                   figure=fig,
                   left=0.14,
                   right=0.95,
                   top=0.97,
                   bottom=0.22,
                   wspace=0.00,
                   hspace=0.00,
                   height_ratios=[1])

    ax0 = fig.add_subplot(gs0[0, 0])

    jv1 = jv[(jv.IB_sigma_ci == 1e-12) & (jv['IB_mobility'] == 10.0)]

    (_, row), = list(jv1.iterrows())

    df = common_load_spatial_data(spdir, row['filename'])
    print(row['filename'])

    df_mask_IB(df)

    XS = 1e-3

    ax = ax0
    for band_name, band in BANDS.items():
        ax.plot(df['x'] * XS,
                df['Ephi_' + band_name],
                label='_nolegend_',
                color=band['color'],
                alpha=0.5)
        ax.text(0.5,
                0.5,
                r"$\mathcal{{E}}_{}$".format(band['sym']),
                color='black')  # as my soul

    for band_name, band in BANDS.items():
        ax.plot(df['x'] * XS,
                df['qfl_' + band_name],
                label='$w_{{{}}}$'.format(band['sym']),
                color=band['color'],
                linestyle='dashed')
        ax.text(0.5, 0.5, "$w_{}$".format(band['sym']), color=band['color'])

    # print(df['qfl_VB'])

    ax.set_xlabel(r'position ($\mathrm{\mu m}$)')
    ax.set_ylabel(r'Energy ($\mathrm{eV}$)')

    ax.set_xlim(np.array([0 - 10, (df['x'].max() + 10)]) * XS)
    ax.set_ylim([-1.63, 1.76])

    # ax.legend()

    # fig.tight_layout()

    savefig(fig, out + 'marti02_final_bands')
示例#7
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def plot_jv(args):
    savefig = args.matplotlib_savefig
    out = outdir_path_helper(args.out)

    df = read_xcsv(args.jv)[0]

    fig = plt.figure(figsize=(4.8, 6.4), dpi=100)

    gs0 = GridSpec(ncols=1,
                   nrows=2,
                   figure=fig,
                   left=0.2,
                   right=0.95,
                   top=0.97,
                   bottom=0.1,
                   wspace=0.00,
                   hspace=0.25,
                   height_ratios=[1, 1])

    ax0 = fig.add_subplot(gs0[0, 0])
    ax1 = fig.add_subplot(gs0[1, 0])

    def _ll(ax, *args, **kwargs):
        ax.plot([], [], *args, **kwargs)

    sigma_ci_to_ls = SIGMA_CI_TO_LS
    sigma_ci_to_label = SIGMA_CI_TO_LABEL

    ax = ax0
    for sigma_ci, mu in itertools.product([2e-13, 1e-12], [0.001, 300.0]):
        df1 = df[(df.IB_mobility == mu) & (df.IB_sigma_ci == sigma_ci) &
                 (df.concentration_factor > 0)]
        color = COLOR['red' if mu == 300.0 else 'blue']
        ls = sigma_ci_to_ls[sigma_ci]
        j = df1['j_tot_nc'] / df1['concentration_factor']
        ax.plot(df1.V,
                j,
                color=color,
                linestyle=ls,
                label='_nolegend_'
                # label="${}$ ${}$".format(sigma_ci, mu)
                )
    # by Jacob's request
    # _ll(ax, color='black', linestyle='solid',
    #     label=sigma_ci_to_label[2e-13])
    # _ll(ax, color='black', linestyle='dotted',
    #     label=sigma_ci_to_label[1e-12])
    _ll(ax, color=COLOR['red'], label=r'$\mu_{I} = 300\;\mathrm{cm^2/V/s}$')
    _ll(ax, color=COLOR['blue'], label=r'$\mu_{I} = 0.001\;\mathrm{cm^2/V/s}$')
    ax.set_ylim([-55, -48.5])
    ax.set_xlim([0, 1.35])
    ax.legend()
    ax.set_xlabel(r'applied bias ($\mathrm{V}$)')
    ax.set_ylabel(r'$J_{\mathrm{tot}} / X$ ($\mathrm{mA/cm^2}$)')

    ax = ax1
    df1 = df[(df.V == 0.0) & (df.concentration_factor > 0)]
    # mus = list(sorted(df['IB_mobility'].unique()))
    for sigma_ci in [2e-13, 1e-12]:
        df2 = df1[df1['IB_sigma_ci'] == sigma_ci]
        df2 = df2.sort_values('IB_mobility')
        j = df2['j_tot_nc'] / df2['concentration_factor']
        ls = sigma_ci_to_ls[sigma_ci]
        ax.plot(df2.IB_mobility,
                j,
                linestyle=ls,
                color='black',
                label=sigma_ci_to_label[sigma_ci],
                marker=SIGMA_CI_TO_MARKER[sigma_ci])
    # ax.set_xlim([1e-3, 300])
    ax.set_ylim([-54.5, -53])
    ax.set_xscale('log')
    ax.legend()
    ax.yaxis.set_major_locator(MultipleLocator(0.5))
    ax.set_xlabel(r'IB mobility ($\mathrm{cm^2/V/s}$)')
    ax.set_ylabel(r'$J_{SC} / X$ ($\mathrm{mA/cm^2}$)')

    savefig(fig, out + 'marti02_final_JVs')
示例#8
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def make_fs_plot(args):
    savefig = args.matplotlib_savefig
    out = outdir_path_helper(args.out)

    V = args.V
    input_dir = args.input_dir

    input_dir = input_dir.rstrip('/') + '/'

    fig, ax = plt.subplots()
    fig2, ax2 = plt.subplots()
    fig3, ax3 = plt.subplots()
    fig4, ax4 = plt.subplots()
    fig5, ax5 = plt.subplots()

    x_unit = r'$\mathrm{nm}$'

    for mu_str in ['0.001', '0.01', '0.1', '1', '30', '100', '300']:
        mdir = 'marti02 X=1e3 mu={} s_ci=1e-12 s_iv=2e-13'.format(mu_str)
        base = os.path.join(input_dir, mdir,
                            'a parameter={} csvplot'.format(V))
        df = pd.read_csv(base + '.csv.0')

        df['x'] = df['coord_x'] * 1e3

        df = extract_IB_region_only(df, None)

        df = df[df['x'].between(250, 1000)]  # Jacob request

        label = r'$\mu={}$'.format(mu_str)

        N_IB = 1e17
        ax.plot(df['x'], df['u_IB'] / N_IB, label=label, alpha=0.6)

        grad_qfl = np.gradient(df['qfl_IB'], df['x'])
        ax2.plot(df['x'], grad_qfl, label=label, alpha=0.6)

        ax3.plot(df['x'], df['E'], label=label, alpha=0.6)

        ax4.plot(df['x'], df['qfl_IB'], label=label, alpha=0.6)

        ax5.plot(df['x'], df['qfl_IB'] - df['Ephi_IB'], label=label, alpha=0.6)

    for a in (ax, ax2, ax3, ax4, ax5):
        a.set_xlabel(r'position ({})'.format(x_unit))
        a.grid(True)

    ax.set_ylabel(r'IB filling fraction')
    ax2.set_ylabel(r'$\nabla w_{\mathrm{IB}}$ ($\mathrm{eV/nm}$)')
    ax3.set_ylabel(r'electric field ($\mathrm{V/cm}$)')
    ax4.set_ylabel(r'$w_{\mathrm{IB}}$ ($\mathrm{eV}$)')
    ax5.set_ylabel(
        r'$w_{\mathrm{IB}} + eV - \mathcal{E}_{\mathrm{IB}}$ ($\mathrm{eV}$)')

    ax2.set_yscale('symlog', linthreshy=1e-8)
    ax3.set_yscale('symlog', linthreshy=1e-8)
    # ax4.set_yscale('symlog', linthreshy=1e-8)

    # ax.set_ylim([0, 1])

    ax.legend()
    ax2.legend()
    ax3.legend()
    ax4.legend()
    ax5.legend()

    fig.tight_layout()
    fig2.tight_layout()
    fig3.tight_layout()
    fig4.tight_layout()
    fig5.tight_layout()

    savefig(fig, input_dir + 'IBfs V={}'.format(V))
    savefig(fig2, input_dir + 'IBgradqfls V={}'.format(V))
    savefig(fig3, input_dir + 'IBE V={}'.format(V))
    savefig(fig4, input_dir + 'IBqfls V={}'.format(V))
    savefig(fig5, input_dir + 'IBphiqfl V={}'.format(V))