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{
"cells": [
{
"cell_type": "code",
"execution_count": 1,
"metadata": {},
"outputs": [],
"source": [
"import uproot\t\n",
"import numpy as np\n",
"import matplotlib.pyplot as plt\n",
"from matplotlib import colormaps\n",
"from mpl_toolkits import mplot3d\n",
"import awkward as ak\n",
"from scipy.optimize import curve_fit\n",
"from scipy import stats\n",
"from methods.fit_linear_regression_model import fit_linear_regression_model\n",
"import sklearn\n",
"import seaborn as sns\n",
"import pandas as pd\n",
"%matplotlib inline"
]
},
{
"cell_type": "code",
"execution_count": 2,
"metadata": {},
"outputs": [],
"source": [
"def round(n, k):\n",
" # function to round number 'n' up/down to nearest 'k'\n",
" # use positive k to round up\n",
" # use negative k to round down\n",
"\n",
" return n - n % k"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"41978 8523\n",
"49865\n"
]
}
],
"source": [
"file = uproot.open(\n",
" \"tracking_losses_ntuple_B_EndVeloP.root:PrDebugTrackingLosses.PrDebugTrackingTool/Tuple;1\"\n",
")\n",
"\n",
"# selektiere nur elektronen von B->K*ee\n",
"allcolumns = file.arrays()\n",
"found = allcolumns[(allcolumns.isElectron) & (~allcolumns.lost) &\n",
" (allcolumns.fromB)] # B: 9056\n",
"lost = allcolumns[(allcolumns.isElectron) & (allcolumns.lost) &\n",
" (allcolumns.fromB)] # B: 1466\n",
"\n",
"electrons = allcolumns[(allcolumns.isElectron)\n",
" & (allcolumns.fromB)\n",
" & (allcolumns.eta <= 5.0)\n",
" & (allcolumns.eta >= 1.5)\n",
" & (np.abs(allcolumns.phi) < 3.142)]\n",
"\n",
"print(ak.num(found, axis=0), ak.num(lost, axis=0))\n",
"print(ak.num(electrons, axis=0))\n",
"# ak.count(found, axis=None)"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"stretch factor: 0.1943140448361755\n"
]
}
],
"source": [
"rad_length_found = ak.to_numpy(\n",
" found[(found.eta <= 5.0) & (found.eta >= 1.5) & (np.abs(found.phi) < 3.142)][\n",
" \"rad_length_frac\"\n",
" ]\n",
")\n",
"eta_found = ak.to_numpy(\n",
" found[(found.eta <= 5.0) & (found.eta >= 1.5) & (np.abs(found.phi) < 3.142)][\"eta\"]\n",
")\n",
"phi_found = ak.to_numpy(\n",
" found[(found.eta <= 5.0) & (found.eta >= 1.5) & (np.abs(found.phi) < 3.142)][\"phi\"]\n",
")\n",
"rad_length_lost = ak.to_numpy(\n",
" lost[(lost.eta <= 5.0) & (lost.eta >= 1.5) & (np.abs(lost.phi) < 3.142)][\n",
" \"rad_length_frac\"\n",
" ]\n",
")\n",
"eta_lost = ak.to_numpy(\n",
" lost[(lost.eta <= 5.0) & (lost.eta >= 1.5) & (np.abs(lost.phi) < 3.142)][\"eta\"]\n",
")\n",
"phi_lost = ak.to_numpy(\n",
" lost[(lost.eta <= 5.0) & (lost.eta >= 1.5) & (np.abs(lost.phi) < 3.142)][\"phi\"]\n",
")\n",
"\n",
"eta_a = ak.to_numpy(electrons[\"eta\"])\n",
"phi_a = ak.to_numpy(electrons[\"phi\"])\n",
"rad_length_frac_a = ak.to_numpy(electrons[\"rad_length_frac\"])\n",
"\n",
"stretch_factor = ak.num(eta_lost, axis=0) / ak.num(eta_found, axis=0)\n",
"print(\"stretch factor: \", stretch_factor)"
]
},
{
"cell_type": "code",
"execution_count": 5,
"metadata": {},
"outputs": [
{
"data": {
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",
"text/plain": [
"<Figure size 640x480 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"plt.hist(\n",
" rad_length_lost,\n",
" bins=100,\n",
" density=True,\n",
" alpha=0.5,\n",
" color=\"darkorange\",\n",
" histtype=\"bar\",\n",
" label=\"lost\",\n",
" range=[0, 1],\n",
")\n",
"plt.hist(\n",
" rad_length_found,\n",
" bins=100,\n",
" density=True,\n",
" alpha=0.5,\n",
" color=\"blue\",\n",
" histtype=\"bar\",\n",
" label=\"found\",\n",
" range=[0, 1],\n",
")\n",
"plt.xlim(0, 1)\n",
"# plt.yscale(\"log\")\n",
"plt.title(\"radiation length fraction endVelo2endUT\")\n",
"plt.xlabel(f\"$x/X_0$\")\n",
"plt.ylabel(\"a.u.\")\n",
"\n",
"plt.legend()\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": 6,
"metadata": {},
"outputs": [
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 2000x800 with 3 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"nbins = 100\n",
"vmax = 80\n",
"\n",
"fig, ((ax0, ax1)) = plt.subplots(nrows=1, ncols=2, figsize=(20, 8))\n",
"\n",
"a0 = ax0.hist2d(\n",
" rad_length_found,\n",
" eta_found,\n",
" density=False,\n",
" bins=nbins,\n",
" cmap=plt.cm.jet,\n",
" cmin=1,\n",
" vmax=vmax,\n",
" range=[[0, 0.6], [2, 5]],\n",
")\n",
"ax0.set_xlabel(f\"$x/X_0$\")\n",
"ax0.set_ylabel(f\"$\\eta$\")\n",
"ax0.set_title(f\"found $\\eta$ rad_length_frac\")\n",
"\n",
"a1 = ax1.hist2d(\n",
" rad_length_lost,\n",
" eta_lost,\n",
" density=False,\n",
" bins=nbins,\n",
" cmap=plt.cm.jet,\n",
" cmin=1,\n",
" vmax=vmax * stretch_factor,\n",
" range=[[0, 0.6], [2, 5]],\n",
")\n",
"ax1.set_xlabel(f\"$x/X_0$\")\n",
"ax1.set_ylabel(f\"$\\eta$\")\n",
"ax1.set_title(f\"lost $\\eta$ rad_length_frac\")\n",
"# ax1.set(xlim=(0,4000), ylim=(-1000,1000))\n",
"\n",
"plt.suptitle(\"radiation length fraction and eta endVelo\")\n",
"plt.colorbar(a0[3], ax=ax1)\n",
"\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": 7,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Parameterisation for rad_length_frac:\n",
"intercept= 0.0\n",
"coef= {'1': 0.19830920321074946, 'x': -4.49175976974402e-05, 'y': 0.00039490060416272056, 'tx': 0.00015102371088508598, 'ty': -0.3004315695136339, 'qop': -15.314945266490128, 'x^2': -1.8619394568578818e-05, 'x y': -4.953907513838906e-06, 'x tx': 0.021617503882699386, 'x ty': 0.03829244150062255, 'x qop': -0.41798007270055415, 'y^2': -2.4410328131494868e-05, 'y tx': -0.03443063985633742, 'y ty': 0.024201355785359608, 'y qop': 0.069823295273139, 'tx^2': -9.507076220830514, 'tx ty': -0.3980701633198789, 'tx qop': -0.04742639222342226, 'ty^2': -5.342167619183405, 'ty qop': 0.04842038611881145, 'qop^2': 0.2070268831284635, 'x^3': 1.5823479402461545e-07, 'x^2 y': -5.806838940825474e-07, 'x^2 tx': -0.00023418353598118923, 'x^2 ty': 0.0037081774556846224, 'x^2 qop': 0.01641641113222204, 'x y^2': 6.398758958085149e-08, 'x y tx': -0.002932641224303519, 'x y ty': -0.001396824762733282, 'x y qop': -0.020888196868450136, 'x tx^2': 0.09096908124129072, 'x tx ty': -2.939755357349759, 'x tx qop': -8.73057282483271, 'x ty^2': -0.15340975596199197, 'x ty qop': 9.249941815315987, 'x qop^2': 0.030205199863621846, 'y^3': 1.6478595155078324e-07, 'y^2 tx': 0.0013152209574444013, 'y^2 ty': -0.000257931039205234, 'y^2 qop': -0.0057816482028933735, 'y tx^2': 2.685350530706497, 'y tx ty': 0.17814134491255038, 'y tx qop': 9.050929476915277, 'y ty^2': 0.10064678584510746, 'y ty qop': 4.6142369495362185, 'y qop^2': -0.00046589334175238057, 'tx^3': -0.6242025517665986, 'tx^2 ty': -0.017658603327465147, 'tx^2 qop': -0.022216794668845363, 'tx ty^2': -0.01024816705930792, 'tx ty qop': 0.024042119917448937, 'tx qop^2': 6.093129132646114e-05, 'ty^3': 0.09834545208780196, 'ty^2 qop': 0.011664187426493774, 'ty qop^2': -2.1825340747940462e-05, 'qop^3': -1.559907925017188e-06, 'x^4': -2.9483981922595603e-09, 'x^3 y': -6.13444928188045e-09, 'x^3 tx': 7.101384723817716e-06, 'x^3 ty': 7.16725431293419e-06, 'x^3 qop': 4.00953960828232e-05, 'x^2 y^2': 1.0679747086683733e-08, 'x^2 y tx': 7.616826922074438e-06, 'x^2 y ty': -3.91052449297824e-05, 'x^2 y qop': 9.93899828579223e-05, 'x^2 tx^2': -0.005400741368580057, 'x^2 tx ty': -0.009338160688408294, 'x^2 tx qop': -0.0017215190824096578, 'x^2 ty^2': 0.0007665795500993852, 'x^2 ty qop': 0.08528819041114723, 'x^2 qop^2': 8.037042310903203, 'x y^3': 8.933181749881669e-09, 'x y^2 tx': 1.766907321343325e-05, 'x y^2 ty': -2.1412010806409754e-05, 'x y^2 qop': -7.010215747540322e-05, 'x y tx^2': -0.0021778144582400415, 'x y tx ty': 0.0326584774738, 'x y tx qop': -0.1598215452174385, 'x y ty^2': 0.012945427966444779, 'x y ty qop': -0.23950569088511311, 'x y qop^2': -0.8775916738593352, 'x tx^3': 1.366672968587086, 'x tx^2 ty': 1.7459886700480327, 'x tx^2 qop': 0.4423601484422016, 'x tx ty^2': -1.0803356692637864, 'x tx ty qop': -0.0706577637682464, 'x tx qop^2': 0.006422119173581787, 'x ty^3': -2.2905272843167253, 'x ty^2 qop': -0.0063092971067729734, 'x ty qop^2': -0.001963650254414034, 'x qop^3': -1.0318719588655238e-06, 'y^4': -2.213189409516758e-09, 'y^3 tx': 7.716181404937572e-08, 'y^3 ty': 3.7462658548648164e-06, 'y^3 qop': -2.6897178570957402e-05, 'y^2 tx^2': -0.019391135282039867, 'y^2 tx ty': 0.003922857934752042, 'y^2 tx qop': 0.30048105074735626, 'y^2 ty^2': -0.0014404468920953982, 'y^2 ty qop': 0.017062949506976018, 'y^2 qop^2': -0.5172314152946776, 'y tx^3': 1.1761566789450086, 'y tx^2 ty': -1.8639649790914088, 'y tx^2 qop': -0.07088661078488609, 'y tx ty^2': -2.1282820437243197, 'y tx ty qop': -0.001276549939024397, 'y tx qop^2': -0.0019180156335069092, 'y ty^3': -0.06849699842395515, 'y ty^2 qop': -0.0351395250211265, 'y ty qop^2': -0.0005408300561230844, 'y qop^3': 4.1258598459708434e-06, 'tx^4': -0.02399482130004447, 'tx^3 ty': 0.010297903626621132, 'tx^3 qop': 0.0018304232474417028, 'tx^2 ty^2': -0.01163526658236639, 'tx^2 ty qop': -0.00029701477688915344, 'tx^2 qop^2': 2.0001744822333693e-06, 'tx ty^3': -0.014645131120788562, 'tx ty^2 qop': -2.1232731978440055e-05, 'tx ty qop^2': -3.4544969537609295e-06, 'tx qop^3': 8.78704309226661e-09, 'ty^4': -0.001422061237110601, 'ty^3 qop': -0.0001708364957408537, 'ty^2 qop^2': -7.126783100939319e-07, 'ty qop^3': 6.1964331341077185e-09, 'qop^4': -5.174168949842998e-10, 'x^5': -1.5976409084572651e-10, 'x^4 y': -1.2852829911480512e-10, 'x^4 tx': 4.777915697529167e-07, 'x^4 ty': -9.081653267184464e-07, 'x^4 qop': -7.95855762181219e-07, 'x^3 y^2': -1.3157031020227805e-10, 'x^3 y tx': 1.2230534549573235e-06, 'x^3 y ty': -1.0267895049764775e-06, 'x^3 y qop': 6.863633592146812e-06, 'x^3 tx^2': -0.0005342802093432353, 'x^3 tx ty': 0.0011253536068463917, 'x^3 tx qop': 0.0006881448740720732, 'x^3 ty^2': 0.0033717855327176985, 'x^3 ty qop': -0.006259805047891221, 'x^3 qop^2': -0.0297856432575138, 'x^2 y^3': 1.382156611384744e-10, 'x^2 y^2 tx': 1.322090420252664e-06, 'x^2 y^2 ty': 5.288591697905076e-08, 'x^2 y^2 qop': 2.9553628222434014e-06, 'x^2 y tx^2': -0.0013788732936473938, 'x^2 y tx ty': -0.005451132472848938, 'x^2 y tx qop': -0.0016912696788365421, 'x^2 y ty^2': 0.00031313327173996576, 'x^2 y ty qop': -0.00464221485985505, 'x^2 y qop^2': -0.021052188879644034, 'x^2 tx^3': 0.2645245528224416, 'x^2 tx^2 ty': -0.33220588343665813, 'x^2 tx^2 qop': -0.1711975210821735, 'x^2 tx ty^2': -2.5912873965567513, 'x^2 tx ty qop': 0.6199222216667238, 'x^2 tx qop^2': 0.26554090739446995, 'x^2 ty^3': 0.21995419222883894, 'x^2 ty^2 qop': 0.5566329227084174, 'x^2 ty qop^2': 0.007138707803204316, 'x^2 qop^3': -0.0036233474117857143, 'x y^4': 3.4643399260403385e-11, 'x y^3 tx': -3.715471736942533e-07, 'x y^3 ty': 5.088992998114605e-07, 'x y^3 qop': -2.9562267287452926e-06, 'x y^2 tx^2': 0.001848217429633696, 'x y^2 tx ty': -0.0006914744675563748, 'x y^2 tx qop': -0.0005866344884493824, 'x y^2 ty^2': -0.0007084811094364334, 'x y^2 ty qop': 0.0021049811349424605, 'x y^2 qop^2': 0.010952363514219516, 'x y tx^3': 0.4012187913820339, 'x y tx^2 ty': 4.799588041207373, 'x y tx^2 qop': 1.3345269234332224, 'x y tx ty^2': -0.3492025592669184, 'x y tx ty qop': 0.7401379477245426, 'x y tx qop^2': 0.00853019020452141, 'x y ty^3': 0.2663977835465425, 'x y ty^2 qop': -0.609737555278061, 'x y ty qop^2': 0.04129006001688038, 'x y qop^3': 0.0008163990713127198, 'x tx^4': -48.942089737430436, 'x tx^3 ty': -0.7028902863652343, 'x tx^3 qop': 0.06643076319999941, 'x tx^2 ty^2': -3.4139167347725943, 'x tx^2 ty qop': 0.004841829970654066, 'x tx^2 qop^2': 0.0007186793516648628, 'x tx ty^3': -0.2579234851632811, 'x tx ty^2 qop': 0.005881970664042852, 'x tx ty qop^2': 3.936368237569365e-06, 'x tx qop^3': -6.671449197806545e-06, 'x ty^4': -0.7419058590355208, 'x ty^3 qop': 0.0013112782683548875, 'x ty^2 qop^2': 0.00010835312377364621, 'x ty qop^3': 2.0484219462302866e-06, 'x qop^4': 2.580463321616666e-08, 'y^5': -3.2720492981752614e-12, 'y^4 tx': -5.762284480681501e-07, 'y^4 ty': 2.5788644553159656e-09, 'y^4 qop': -2.837759991436428e-07, 'y^3 tx^2': 0.0006211299557630969, 'y^3 tx ty': 0.000747045380526546, 'y^3 tx qop': 0.0020744456340701305, 'y^3 ty^2': 4.4960392427497754e-06, 'y^3 ty qop': 0.001141710321238258, 'y^3 qop^2': 0.002696814911126153, 'y^2 tx^3': -2.1363036642104674, 'y^2 tx^2 ty': 0.0687773207312733, 'y^2 tx^2 qop': 0.9871972836921945, 'y^2 tx ty^2': -0.2701567032221813, 'y^2 tx ty qop': -0.848252914690415, 'y^2 tx qop^2': 0.03660886322324573, 'y^2 ty^3': -0.005452852127128314, 'y^2 ty^2 qop': -0.7021206166732931, 'y^2 ty qop^2': -0.08018559047526934, 'y^2 qop^3': -0.00011753193330693663, 'y tx^4': -0.6680420541418445, 'y tx^3 ty': -3.384167006412971, 'y tx^3 qop': 0.006637451265825805, 'y tx^2 ty^2': -0.2331985780185122, 'y tx^2 ty qop': 0.006353552479363033, 'y tx^2 qop^2': 5.615722587673721e-06, 'y tx ty^3': -0.7572903037298312, 'y tx ty^2 qop': 0.0005634713263895614, 'y tx ty qop^2': 0.00010068765868206922, 'y tx qop^3': 2.012241389483668e-06, 'y ty^4': 1.5039421870145853, 'y ty^3 qop': -0.004362654564735129, 'y ty^2 qop^2': -0.00021869646501481262, 'y ty qop^3': 2.17774577667171e-07, 'y qop^4': -5.1794510300353154e-09, 'tx^5': -0.3290348306030112, 'tx^4 ty': -0.004713501192249353, 'tx^4 qop': 0.00039080511691431735, 'tx^3 ty^2': -0.02293656439194589, 'tx^3 ty qop': 1.795982117437259e-05, 'tx^3 qop^2': 1.3703545654537173e-06, 'tx^2 ty^3': -0.0016697750693905097, 'tx^2 ty^2 qop': 2.67609154249412e-05, 'tx^2 ty qop^2': -3.12791956432394e-08, 'tx^2 qop^3': -1.1594178303086993e-08, 'tx ty^4': -0.005076176679563355, 'tx ty^3 qop': 1.1834454126493736e-05, 'tx ty^2 qop^2': 1.9879319916637808e-07, 'tx ty qop^3': 4.055187311820455e-09, 'tx qop^4': 4.214995181248244e-11, 'ty^5': 0.010165548951092954, 'ty^4 qop': -1.6822916965291464e-05, 'ty^3 qop^2': -4.4801213131046415e-07, 'ty^2 qop^3': 7.260260169082666e-10, 'ty qop^4': -1.2734042962503632e-11, 'qop^5': -3.472724885502462e-13}\n",
"r2 score= -0.008270330873300091\n",
"RMSE = 0.10823208615961777\n",
"\n"
]
},
{
"data": {
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",
"text/plain": [
"<Figure size 640x480 with 2 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"rad_length_frac = found[\"rad_length_frac\"]\n",
"# @ z = 9400.mm or 770.mm\n",
"state = 1\n",
"\n",
"if state == 1:\n",
" slopex = found[\"ideal_state_770_tx\"]\n",
" slopey = found[\"ideal_state_770_ty\"]\n",
" x = found[\"ideal_state_770_x\"]\n",
" y = found[\"ideal_state_770_y\"]\n",
" qop = found[\"ideal_state_770_qop\"]\n",
"elif state == 2:\n",
" slopex = found[\"ideal_state_9410_tx\"]\n",
" slopey = found[\"ideal_state_9410_ty\"]\n",
" x = found[\"ideal_state_9410_x\"]\n",
" y = found[\"ideal_state_9410_y\"]\n",
" qop = found[\"ideal_state_9410_qop\"]\n",
"\n",
"data = ak.zip(\n",
" {\n",
" \"rad_length_frac\": rad_length_frac,\n",
" \"x\": x,\n",
" \"y\": y,\n",
" \"tx\": slopex,\n",
" \"ty\": slopey,\n",
" \"qop\": qop,\n",
" }\n",
")\n",
"lin_reg, features, xx0_test, xx0_predicted = fit_linear_regression_model(\n",
" data,\n",
" \"rad_length_frac\",\n",
" [\"x\", \"y\", \"tx\", \"ty\", \"qop\"],\n",
" 5,\n",
" include_bias=True,\n",
")\n",
"\n",
"nbins = 100\n",
"vmax = 100\n",
"\n",
"a0 = plt.hist2d(\n",
" xx0_test,\n",
" xx0_predicted,\n",
" density=False,\n",
" bins=nbins,\n",
" cmap=plt.cm.jet,\n",
" cmin=1,\n",
" vmax=vmax,\n",
" range=[[0, 0.5], [0, 0.5]],\n",
")\n",
"plt.plot([0, 0.5], [0, 0.5], marker=\"\", alpha=0.8)\n",
"plt.xlabel(f\"True $x/X_0$\")\n",
"plt.ylabel(f\"Predicted $x/X_0$\")\n",
"plt.title(f\"found rad_length_frac\")\n",
"\n",
"plt.colorbar(a0[3])\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": 8,
"metadata": {},
"outputs": [
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 1500x600 with 3 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"nbins = 100\n",
"vmax = 80\n",
"\n",
"fig, ((ax0, ax1)) = plt.subplots(nrows=1, ncols=2, figsize=(15, 6))\n",
"\n",
"# ax0.set_aspect(\"equal\")\n",
"\n",
"a0 = ax0.hist2d(\n",
" xx0_test,\n",
" xx0_predicted,\n",
" density=False,\n",
" bins=nbins,\n",
" cmap=plt.cm.jet,\n",
" cmin=1,\n",
" vmax=vmax,\n",
" range=[[0, 0.5], [0, 0.5]],\n",
")\n",
"ax0.plot([0, 0.5], [0, 0.5], marker=\"\", alpha=0.8)\n",
"ax0.set_box_aspect(1)\n",
"ax0.set_xlabel(f\"True $x/X_0$\")\n",
"ax0.set_ylabel(f\"Predicted $x/X_0$\")\n",
"ax0.set_title(f\"found rad_length_frac\")\n",
"plt.colorbar(a0[3], ax=ax0)\n",
"\n",
"ax1.hist(\n",
" xx0_test,\n",
" bins=100,\n",
" density=True,\n",
" alpha=0.5,\n",
" color=\"darkorange\",\n",
" histtype=\"bar\",\n",
" label=\"test\",\n",
" range=[0, 0.5],\n",
")\n",
"ax1.hist(\n",
" xx0_predicted,\n",
" bins=100,\n",
" density=True,\n",
" alpha=0.5,\n",
" color=\"blue\",\n",
" histtype=\"bar\",\n",
" label=\"predicted\",\n",
" range=[0, 0.5],\n",
")\n",
"ax1.set_xlim(0, 0.5)\n",
"ax1.set_title(\"radiation length fraction endVelo\")\n",
"ax1.set_xlabel(f\"$x/X_0$\")\n",
"ax1.set_ylabel(\"a.u.\")\n",
"ax1.set_box_aspect(1)\n",
"\n",
"ax1.legend()\n",
"\n",
"# plt.gca().set_aspect(\"equal\")\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": 9,
"metadata": {},
"outputs": [
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 640x480 with 1 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"plt.hist(\n",
" xx0_test,\n",
" bins=100,\n",
" density=True,\n",
" alpha=0.5,\n",
" color=\"darkorange\",\n",
" histtype=\"bar\",\n",
" label=\"test\",\n",
" range=[0, 0.5],\n",
")\n",
"plt.hist(\n",
" xx0_predicted,\n",
" bins=100,\n",
" density=True,\n",
" alpha=0.5,\n",
" color=\"blue\",\n",
" histtype=\"bar\",\n",
" label=\"predicted\",\n",
" range=[0, 0.5],\n",
")\n",
"plt.xlim(0, 0.5)\n",
"# plt.yscale(\"log\")\n",
"plt.title(\"radiation length fraction endVelo\")\n",
"plt.xlabel(f\"$x/X_0$\")\n",
"plt.ylabel(\"a.u.\")\n",
"\n",
"plt.legend()\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": 10,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Parameterisation for rad_length_frac:\n",
"intercept= 0.0\n",
"coef= {'1': 0.2484410418213911, 'x': -0.0007601095488043627, 'y': 0.0010569724392146917, 'tx': 0.6185505303064777, 'ty': -0.9394058560136732, 'qop': -9.741031889614183, 'x^2': -0.00016580416280366622, 'x y': 5.149038989659081e-05, 'x tx': 0.22996768886351043, 'x ty': -0.043161009059129354, 'x qop': -0.21658279194428842, 'y^2': 3.9826067539320166e-05, 'y tx': -0.033498957247677735, 'y ty': -0.08085122767618998, 'y qop': 0.06428923004582791, 'tx^2': -83.06687438225835, 'tx ty': 28.76266798578089, 'tx qop': -0.32072666519746007, 'ty^2': 32.80290436519906, 'ty qop': 0.29785759094660047, 'qop^2': 0.7177557091128425, 'x^3': -1.037888276319177e-06, 'x^2 y': 5.744977724613286e-07, 'x^2 tx': 0.0016261562680787358, 'x^2 ty': 0.00819223051446815, 'x^2 qop': 0.014940216048602184, 'x y^2': 1.55836456652794e-06, 'x y tx': -0.009042353485603404, 'x y ty': 0.002769481233443616, 'x y qop': 0.007035099510620806, 'x tx^2': -0.623629094925692, 'x tx ty': -0.5792857627094614, 'x tx qop': 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0.009735740982675399, 'tx^4 ty': -0.013441638488465971, 'tx^4 qop': 0.00015663907591491764, 'tx^3 ty^2': 0.008836930257445317, 'tx^3 ty qop': 4.602358365785842e-05, 'tx^3 qop^2': -1.2528198912759552e-06, 'tx^2 ty^3': 8.384431822878086e-05, 'tx^2 ty^2 qop': 3.2449454369351206e-05, 'tx^2 ty qop^2': 3.870208943851117e-06, 'tx^2 qop^3': 1.1062889336368561e-08, 'tx ty^4': 0.008284216728547011, 'tx ty^3 qop': -8.101830871580909e-05, 'tx ty^2 qop^2': 1.3999083905485367e-06, 'tx ty qop^3': -2.8838718241492492e-08, 'tx qop^4': -7.302022445954643e-11, 'ty^5': 0.033986172363938666, 'ty^4 qop': -0.00011487779463878022, 'ty^3 qop^2': 2.8267877400850516e-06, 'ty^2 qop^3': -1.0303917259481338e-08, 'ty qop^4': 1.343104287668482e-10, 'qop^5': -5.690015320531571e-16}\n",
"r2 score= 0.01281806793978646\n",
"RMSE = 0.2644569540509028\n",
"\n"
]
},
{
"data": {
"image/png": 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",
"text/plain": [
"<Figure size 640x480 with 2 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"rad_length_frac = lost[\"rad_length_frac\"]\n",
"# @ z = 9400.mm or 770.mm\n",
"state = 1\n",
"\n",
"if state == 1:\n",
" slopex = lost[\"ideal_state_770_tx\"]\n",
" slopey = lost[\"ideal_state_770_ty\"]\n",
" x = lost[\"ideal_state_770_x\"]\n",
" y = lost[\"ideal_state_770_y\"]\n",
" qop = lost[\"ideal_state_770_qop\"]\n",
"elif state == 2:\n",
" slopex = lost[\"ideal_state_9410_tx\"]\n",
" slopey = lost[\"ideal_state_9410_ty\"]\n",
" x = lost[\"ideal_state_9410_x\"]\n",
" y = lost[\"ideal_state_9410_y\"]\n",
" qop = lost[\"ideal_state_9410_qop\"]\n",
"\n",
"data = ak.zip({\n",
" \"rad_length_frac\": rad_length_frac,\n",
" \"x\": x,\n",
" \"y\": y,\n",
" \"tx\": slopex,\n",
" \"ty\": slopey,\n",
" \"qop\": qop,\n",
"})\n",
"lin_reg, features, xx0_test, xx0_predicted = fit_linear_regression_model(\n",
" data,\n",
" \"rad_length_frac\",\n",
" [\"x\", \"y\", \"tx\", \"ty\", \"qop\"],\n",
" 5,\n",
" include_bias=True,\n",
")\n",
"\n",
"nbins = 100\n",
"vmax = 50\n",
"\n",
"a0 = plt.hist2d(\n",
" xx0_test,\n",
" xx0_predicted,\n",
" density=False,\n",
" bins=nbins,\n",
" cmap=plt.cm.jet,\n",
" cmin=1,\n",
" vmax=vmax * stretch_factor,\n",
" range=[[-0.1, 1.0], [-0.1, 1.0]],\n",
")\n",
"plt.plot([-0.1, 1.0], [-0.1, 1.0], marker=\"\", alpha=0.8)\n",
"plt.xlabel(f\"True $x/X_0$\")\n",
"plt.ylabel(f\"Predicted $x/X_0$\")\n",
"plt.title(f\"lost rad_length_frac\")\n",
"# ax1.set(xlim=(0,4000), ylim=(-1000,1000))\n",
"\n",
"plt.colorbar(a0[3])\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": 11,
"metadata": {},
"outputs": [],
"source": [
"df = pd.DataFrame(\n",
" {\n",
" \"phi\": phi_a * 90.0 / np.pi,\n",
" \"eta\": eta_a,\n",
" \"rad_length_frac\": rad_length_frac_a,\n",
" }\n",
")\n",
"df = df.round({\"phi\": 0, \"eta\": 1, \"rad_length_frac\": 4})"
]
},
{
"cell_type": "code",
"execution_count": 12,
"metadata": {},
"outputs": [],
"source": [
"df_pivoted = df.pivot_table(\n",
" index=\"eta\",\n",
" columns=\"phi\",\n",
" values=\"rad_length_frac\",\n",
" margins=False,\n",
" fill_value=0,\n",
")"
]
},
{
"cell_type": "code",
"execution_count": 13,
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
"<div>\n",
"<style scoped>\n",
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" vertical-align: middle;\n",
" }\n",
"\n",
" .dataframe tbody tr th {\n",
" vertical-align: top;\n",
" }\n",
"\n",
" .dataframe thead th {\n",
" text-align: right;\n",
" }\n",
"</style>\n",
"<table border=\"1\" class=\"dataframe\">\n",
" <thead>\n",
" <tr style=\"text-align: right;\">\n",
" <th>phi</th>\n",
" <th>-90.0</th>\n",
" <th>-89.0</th>\n",
" <th>-88.0</th>\n",
" <th>-87.0</th>\n",
" <th>-86.0</th>\n",
" <th>-85.0</th>\n",
" <th>-84.0</th>\n",
" <th>-83.0</th>\n",
" <th>-82.0</th>\n",
" <th>-81.0</th>\n",
" <th>...</th>\n",
" <th>81.0</th>\n",
" <th>82.0</th>\n",
" <th>83.0</th>\n",
" <th>84.0</th>\n",
" <th>85.0</th>\n",
" <th>86.0</th>\n",
" <th>87.0</th>\n",
" <th>88.0</th>\n",
" <th>89.0</th>\n",
" <th>90.0</th>\n",
" </tr>\n",
" <tr>\n",
" <th>eta</th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" <th></th>\n",
" </tr>\n",
" </thead>\n",
" <tbody>\n",
" <tr>\n",
" <th>1.5</th>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>...</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>1.6</th>\n",
" <td>0.000000</td>\n",
" <td>0.745900</td>\n",
" <td>0.000000</td>\n",
" <td>0.746800</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>...</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>1.7</th>\n",
" <td>0.000000</td>\n",
" <td>1.178400</td>\n",
" <td>0.295200</td>\n",
" <td>0.743500</td>\n",
" <td>0.379000</td>\n",
" <td>0.614800</td>\n",
" <td>1.693300</td>\n",
" <td>0.000000</td>\n",
" <td>0.930075</td>\n",
" <td>0.111500</td>\n",
" <td>...</td>\n",
" <td>0.381300</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.380250</td>\n",
" <td>1.114300</td>\n",
" <td>0.730200</td>\n",
" <td>0.420600</td>\n",
" <td>0.000000</td>\n",
" <td>0.377950</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>1.8</th>\n",
" <td>0.381100</td>\n",
" <td>0.386050</td>\n",
" <td>0.243450</td>\n",
" <td>0.168900</td>\n",
" <td>0.000000</td>\n",
" <td>0.229833</td>\n",
" <td>0.229900</td>\n",
" <td>0.390667</td>\n",
" <td>0.165900</td>\n",
" <td>0.327267</td>\n",
" <td>...</td>\n",
" <td>0.223500</td>\n",
" <td>0.236243</td>\n",
" <td>0.883980</td>\n",
" <td>0.270350</td>\n",
" <td>1.366700</td>\n",
" <td>0.160850</td>\n",
" <td>0.000000</td>\n",
" <td>0.272100</td>\n",
" <td>0.234500</td>\n",
" <td>0.124500</td>\n",
" </tr>\n",
" <tr>\n",
" <th>1.9</th>\n",
" <td>0.153000</td>\n",
" <td>0.000000</td>\n",
" <td>0.142200</td>\n",
" <td>0.239467</td>\n",
" <td>0.295500</td>\n",
" <td>0.150900</td>\n",
" <td>0.273500</td>\n",
" <td>0.161000</td>\n",
" <td>0.867600</td>\n",
" <td>0.000000</td>\n",
" <td>...</td>\n",
" <td>0.220200</td>\n",
" <td>0.171267</td>\n",
" <td>0.163900</td>\n",
" <td>0.151325</td>\n",
" <td>0.154617</td>\n",
" <td>0.251200</td>\n",
" <td>0.139100</td>\n",
" <td>0.191800</td>\n",
" <td>0.224867</td>\n",
" <td>0.144000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.0</th>\n",
" <td>0.151000</td>\n",
" <td>0.137790</td>\n",
" <td>0.139500</td>\n",
" <td>0.141687</td>\n",
" <td>0.162550</td>\n",
" <td>0.160067</td>\n",
" <td>0.161450</td>\n",
" <td>0.149060</td>\n",
" <td>0.169400</td>\n",
" <td>0.176289</td>\n",
" <td>...</td>\n",
" <td>0.172440</td>\n",
" <td>0.176475</td>\n",
" <td>0.153450</td>\n",
" <td>0.152857</td>\n",
" <td>0.178971</td>\n",
" <td>0.154686</td>\n",
" <td>0.141500</td>\n",
" <td>0.140043</td>\n",
" <td>0.141740</td>\n",
" <td>0.134250</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.1</th>\n",
" <td>0.132200</td>\n",
" <td>0.137630</td>\n",
" <td>0.147300</td>\n",
" <td>0.136700</td>\n",
" <td>0.139863</td>\n",
" <td>0.165500</td>\n",
" <td>0.150780</td>\n",
" <td>0.149290</td>\n",
" <td>0.152229</td>\n",
" <td>0.168450</td>\n",
" <td>...</td>\n",
" <td>0.165614</td>\n",
" <td>0.155900</td>\n",
" <td>0.150020</td>\n",
" <td>0.148483</td>\n",
" <td>0.160091</td>\n",
" <td>0.141550</td>\n",
" <td>0.143433</td>\n",
" <td>0.137018</td>\n",
" <td>0.137937</td>\n",
" <td>0.137000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.2</th>\n",
" <td>0.138267</td>\n",
" <td>0.136160</td>\n",
" <td>0.137342</td>\n",
" <td>0.136750</td>\n",
" <td>0.138395</td>\n",
" <td>0.161375</td>\n",
" <td>0.155864</td>\n",
" <td>0.150350</td>\n",
" <td>0.148888</td>\n",
" <td>0.153114</td>\n",
" <td>...</td>\n",
" <td>0.155750</td>\n",
" <td>0.149120</td>\n",
" <td>0.148875</td>\n",
" <td>0.158500</td>\n",
" <td>0.159117</td>\n",
" <td>0.139737</td>\n",
" <td>0.136467</td>\n",
" <td>0.136900</td>\n",
" <td>0.136238</td>\n",
" <td>0.146150</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.3</th>\n",
" <td>0.140120</td>\n",
" <td>0.135150</td>\n",
" <td>0.136392</td>\n",
" <td>0.136000</td>\n",
" <td>0.135283</td>\n",
" <td>0.138733</td>\n",
" <td>0.162330</td>\n",
" <td>0.156182</td>\n",
" <td>0.147925</td>\n",
" <td>0.145092</td>\n",
" <td>...</td>\n",
" <td>0.159367</td>\n",
" <td>0.148900</td>\n",
" <td>0.155467</td>\n",
" <td>0.160300</td>\n",
" <td>0.145629</td>\n",
" <td>0.145200</td>\n",
" <td>0.139894</td>\n",
" <td>0.141271</td>\n",
" <td>0.138073</td>\n",
" <td>0.141620</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.4</th>\n",
" <td>0.146343</td>\n",
" <td>0.137150</td>\n",
" <td>0.140820</td>\n",
" <td>0.137143</td>\n",
" <td>0.134425</td>\n",
" <td>0.138600</td>\n",
" <td>0.153840</td>\n",
" <td>0.162650</td>\n",
" <td>0.154400</td>\n",
" <td>0.144275</td>\n",
" <td>...</td>\n",
" <td>0.143763</td>\n",
" <td>0.151444</td>\n",
" <td>0.157156</td>\n",
" <td>0.153878</td>\n",
" <td>0.138533</td>\n",
" <td>0.138200</td>\n",
" <td>0.138525</td>\n",
" <td>0.136667</td>\n",
" <td>0.135871</td>\n",
" <td>0.139700</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.5</th>\n",
" <td>0.138550</td>\n",
" <td>0.137725</td>\n",
" <td>0.135490</td>\n",
" <td>0.134900</td>\n",
" <td>0.136400</td>\n",
" <td>0.137218</td>\n",
" <td>0.139250</td>\n",
" <td>0.156625</td>\n",
" <td>0.159414</td>\n",
" <td>0.147300</td>\n",
" <td>...</td>\n",
" <td>0.149229</td>\n",
" <td>0.158000</td>\n",
" <td>0.151414</td>\n",
" <td>0.143550</td>\n",
" <td>0.135358</td>\n",
" <td>0.136343</td>\n",
" <td>0.134927</td>\n",
" <td>0.134337</td>\n",
" <td>0.136756</td>\n",
" <td>0.136367</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.6</th>\n",
" <td>0.137725</td>\n",
" <td>0.134624</td>\n",
" <td>0.135183</td>\n",
" <td>0.134150</td>\n",
" <td>0.135617</td>\n",
" <td>0.134246</td>\n",
" <td>0.135311</td>\n",
" <td>0.144350</td>\n",
" <td>0.158150</td>\n",
" <td>0.156129</td>\n",
" <td>...</td>\n",
" <td>0.157864</td>\n",
" <td>0.157836</td>\n",
" <td>0.145880</td>\n",
" <td>0.135780</td>\n",
" <td>0.134319</td>\n",
" <td>0.134755</td>\n",
" <td>0.134533</td>\n",
" <td>0.135633</td>\n",
" <td>0.135900</td>\n",
" <td>0.134450</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.7</th>\n",
" <td>0.135840</td>\n",
" <td>0.135129</td>\n",
" <td>0.132957</td>\n",
" <td>0.132900</td>\n",
" <td>0.133153</td>\n",
" <td>0.132860</td>\n",
" <td>0.135122</td>\n",
" <td>0.136907</td>\n",
" <td>0.148817</td>\n",
" <td>0.159080</td>\n",
" <td>...</td>\n",
" <td>0.161543</td>\n",
" <td>0.151389</td>\n",
" <td>0.139600</td>\n",
" <td>0.134067</td>\n",
" <td>0.132920</td>\n",
" <td>0.133156</td>\n",
" <td>0.133244</td>\n",
" <td>0.133837</td>\n",
" <td>0.132917</td>\n",
" <td>0.134400</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.8</th>\n",
" <td>0.146100</td>\n",
" <td>0.139309</td>\n",
" <td>0.138750</td>\n",
" <td>0.138678</td>\n",
" <td>0.136657</td>\n",
" <td>0.135780</td>\n",
" <td>0.135900</td>\n",
" <td>0.133218</td>\n",
" <td>0.140078</td>\n",
" <td>0.150836</td>\n",
" <td>...</td>\n",
" <td>0.153625</td>\n",
" <td>0.144011</td>\n",
" <td>0.136418</td>\n",
" <td>0.137729</td>\n",
" <td>0.137500</td>\n",
" <td>0.138112</td>\n",
" <td>0.141614</td>\n",
" <td>0.137290</td>\n",
" <td>0.140292</td>\n",
" <td>0.144650</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2.9</th>\n",
" <td>0.138650</td>\n",
" <td>0.137057</td>\n",
" <td>0.140111</td>\n",
" <td>0.136422</td>\n",
" <td>0.135869</td>\n",
" <td>0.136715</td>\n",
" <td>0.138400</td>\n",
" <td>0.133900</td>\n",
" <td>0.140856</td>\n",
" <td>0.138470</td>\n",
" <td>...</td>\n",
" <td>0.142667</td>\n",
" <td>0.134730</td>\n",
" <td>0.136569</td>\n",
" <td>0.137010</td>\n",
" <td>0.136192</td>\n",
" <td>0.137589</td>\n",
" <td>0.139643</td>\n",
" <td>0.138133</td>\n",
" <td>0.135671</td>\n",
" <td>0.143737</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.0</th>\n",
" <td>0.140580</td>\n",
" <td>0.132220</td>\n",
" <td>0.132673</td>\n",
" <td>0.132340</td>\n",
" <td>0.132370</td>\n",
" <td>0.132330</td>\n",
" <td>0.132350</td>\n",
" <td>0.132364</td>\n",
" <td>0.132364</td>\n",
" <td>0.132875</td>\n",
" <td>...</td>\n",
" <td>0.132560</td>\n",
" <td>0.132367</td>\n",
" <td>0.132367</td>\n",
" <td>0.132330</td>\n",
" <td>0.132321</td>\n",
" <td>0.132323</td>\n",
" <td>0.132336</td>\n",
" <td>0.132500</td>\n",
" <td>0.132250</td>\n",
" <td>0.131733</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.1</th>\n",
" <td>0.140850</td>\n",
" <td>0.133550</td>\n",
" <td>0.132243</td>\n",
" <td>0.133160</td>\n",
" <td>0.132200</td>\n",
" <td>0.135089</td>\n",
" <td>0.133630</td>\n",
" <td>0.135355</td>\n",
" <td>0.136069</td>\n",
" <td>0.135850</td>\n",
" <td>...</td>\n",
" <td>0.134755</td>\n",
" <td>0.134214</td>\n",
" <td>0.135983</td>\n",
" <td>0.134942</td>\n",
" <td>0.132553</td>\n",
" <td>0.132840</td>\n",
" <td>0.133667</td>\n",
" <td>0.132217</td>\n",
" <td>0.132188</td>\n",
" <td>0.140175</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.2</th>\n",
" <td>0.141883</td>\n",
" <td>0.138843</td>\n",
" <td>0.137400</td>\n",
" <td>0.138456</td>\n",
" <td>0.135829</td>\n",
" <td>0.134738</td>\n",
" <td>0.133143</td>\n",
" <td>0.132936</td>\n",
" <td>0.133822</td>\n",
" <td>0.134731</td>\n",
" <td>...</td>\n",
" <td>0.136450</td>\n",
" <td>0.139473</td>\n",
" <td>0.134975</td>\n",
" <td>0.135812</td>\n",
" <td>0.136360</td>\n",
" <td>0.135514</td>\n",
" <td>0.136362</td>\n",
" <td>0.137678</td>\n",
" <td>0.142022</td>\n",
" <td>0.136033</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.3</th>\n",
" <td>0.139400</td>\n",
" <td>0.136378</td>\n",
" <td>0.137167</td>\n",
" <td>0.134940</td>\n",
" <td>0.132460</td>\n",
" <td>0.136362</td>\n",
" <td>0.133274</td>\n",
" <td>0.132863</td>\n",
" <td>0.136533</td>\n",
" <td>0.130312</td>\n",
" <td>...</td>\n",
" <td>0.131400</td>\n",
" <td>0.131879</td>\n",
" <td>0.130691</td>\n",
" <td>0.131740</td>\n",
" <td>0.132938</td>\n",
" <td>0.134318</td>\n",
" <td>0.136760</td>\n",
" <td>0.138513</td>\n",
" <td>0.140400</td>\n",
" <td>0.146788</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.4</th>\n",
" <td>0.141000</td>\n",
" <td>0.130790</td>\n",
" <td>0.129220</td>\n",
" <td>0.129329</td>\n",
" <td>0.130916</td>\n",
" <td>0.129267</td>\n",
" <td>0.128655</td>\n",
" <td>0.132400</td>\n",
" <td>0.128681</td>\n",
" <td>0.128758</td>\n",
" <td>...</td>\n",
" <td>0.131280</td>\n",
" <td>0.128478</td>\n",
" <td>0.128667</td>\n",
" <td>0.128831</td>\n",
" <td>0.133727</td>\n",
" <td>0.133914</td>\n",
" <td>0.130500</td>\n",
" <td>0.128700</td>\n",
" <td>0.128457</td>\n",
" <td>0.136000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.5</th>\n",
" <td>0.133933</td>\n",
" <td>0.140282</td>\n",
" <td>0.135745</td>\n",
" <td>0.147691</td>\n",
" <td>0.127075</td>\n",
" <td>0.134500</td>\n",
" <td>0.130312</td>\n",
" <td>0.146278</td>\n",
" <td>0.128320</td>\n",
" <td>0.142617</td>\n",
" <td>...</td>\n",
" <td>0.135367</td>\n",
" <td>0.147464</td>\n",
" <td>0.135347</td>\n",
" <td>0.135480</td>\n",
" <td>0.131614</td>\n",
" <td>0.128662</td>\n",
" <td>0.140411</td>\n",
" <td>0.134522</td>\n",
" <td>0.137387</td>\n",
" <td>0.137213</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.6</th>\n",
" <td>0.157160</td>\n",
" <td>0.150125</td>\n",
" <td>0.190522</td>\n",
" <td>0.163414</td>\n",
" <td>0.153340</td>\n",
" <td>0.182489</td>\n",
" <td>0.146633</td>\n",
" <td>0.174283</td>\n",
" <td>0.164600</td>\n",
" <td>0.156060</td>\n",
" <td>...</td>\n",
" <td>0.167818</td>\n",
" <td>0.175760</td>\n",
" <td>0.172300</td>\n",
" <td>0.170070</td>\n",
" <td>0.172709</td>\n",
" <td>0.160782</td>\n",
" <td>0.165338</td>\n",
" <td>0.150207</td>\n",
" <td>0.169028</td>\n",
" <td>0.172525</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.7</th>\n",
" <td>0.212600</td>\n",
" <td>0.203550</td>\n",
" <td>0.182613</td>\n",
" <td>0.217033</td>\n",
" <td>0.196530</td>\n",
" <td>0.192733</td>\n",
" <td>0.196800</td>\n",
" <td>0.196678</td>\n",
" <td>0.194400</td>\n",
" <td>0.193862</td>\n",
" <td>...</td>\n",
" <td>0.207025</td>\n",
" <td>0.213778</td>\n",
" <td>0.199458</td>\n",
" <td>0.195767</td>\n",
" <td>0.202582</td>\n",
" <td>0.193050</td>\n",
" <td>0.203717</td>\n",
" <td>0.188890</td>\n",
" <td>0.187186</td>\n",
" <td>0.219900</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.8</th>\n",
" <td>0.258014</td>\n",
" <td>0.226800</td>\n",
" <td>0.214507</td>\n",
" <td>0.220812</td>\n",
" <td>0.212843</td>\n",
" <td>0.213190</td>\n",
" <td>0.214863</td>\n",
" <td>0.214723</td>\n",
" <td>0.225433</td>\n",
" <td>0.221414</td>\n",
" <td>...</td>\n",
" <td>0.258750</td>\n",
" <td>0.219029</td>\n",
" <td>0.216213</td>\n",
" <td>0.218565</td>\n",
" <td>0.214589</td>\n",
" <td>0.215342</td>\n",
" <td>0.212015</td>\n",
" <td>0.208669</td>\n",
" <td>0.218762</td>\n",
" <td>0.209350</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3.9</th>\n",
" <td>0.312460</td>\n",
" <td>0.259640</td>\n",
" <td>0.229650</td>\n",
" <td>0.263078</td>\n",
" <td>0.252018</td>\n",
" <td>0.237225</td>\n",
" <td>0.237745</td>\n",
" <td>0.297200</td>\n",
" <td>0.298883</td>\n",
" <td>0.219567</td>\n",
" <td>...</td>\n",
" <td>0.281725</td>\n",
" <td>0.263557</td>\n",
" <td>0.288811</td>\n",
" <td>0.296427</td>\n",
" <td>0.269145</td>\n",
" <td>0.287975</td>\n",
" <td>0.327073</td>\n",
" <td>0.329788</td>\n",
" <td>0.274791</td>\n",
" <td>0.319000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.0</th>\n",
" <td>0.261700</td>\n",
" <td>0.265618</td>\n",
" <td>0.158400</td>\n",
" <td>0.276025</td>\n",
" <td>0.353650</td>\n",
" <td>0.274587</td>\n",
" <td>0.289418</td>\n",
" <td>0.250657</td>\n",
" <td>0.247240</td>\n",
" <td>0.233933</td>\n",
" <td>...</td>\n",
" <td>0.230525</td>\n",
" <td>0.312200</td>\n",
" <td>0.261683</td>\n",
" <td>0.321733</td>\n",
" <td>0.295550</td>\n",
" <td>0.319608</td>\n",
" <td>0.270450</td>\n",
" <td>0.303856</td>\n",
" <td>0.355400</td>\n",
" <td>0.277650</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.1</th>\n",
" <td>0.141975</td>\n",
" <td>0.146789</td>\n",
" <td>0.188287</td>\n",
" <td>0.179920</td>\n",
" <td>0.178042</td>\n",
" <td>0.198750</td>\n",
" <td>0.169862</td>\n",
" <td>0.183632</td>\n",
" <td>0.133243</td>\n",
" <td>0.188200</td>\n",
" <td>...</td>\n",
" <td>0.259920</td>\n",
" <td>0.189321</td>\n",
" <td>0.252600</td>\n",
" <td>0.117550</td>\n",
" <td>0.130433</td>\n",
" <td>0.203973</td>\n",
" <td>0.167662</td>\n",
" <td>0.189260</td>\n",
" <td>0.194700</td>\n",
" <td>0.145700</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.2</th>\n",
" <td>0.208650</td>\n",
" <td>0.172833</td>\n",
" <td>0.240123</td>\n",
" <td>0.270567</td>\n",
" <td>0.174783</td>\n",
" <td>0.187754</td>\n",
" <td>0.257860</td>\n",
" <td>0.179833</td>\n",
" <td>0.161525</td>\n",
" <td>0.129600</td>\n",
" <td>...</td>\n",
" <td>0.233350</td>\n",
" <td>0.357600</td>\n",
" <td>0.230143</td>\n",
" <td>0.198875</td>\n",
" <td>0.153750</td>\n",
" <td>0.207388</td>\n",
" <td>0.251690</td>\n",
" <td>0.198325</td>\n",
" <td>0.178300</td>\n",
" <td>0.300800</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.3</th>\n",
" <td>0.488733</td>\n",
" <td>0.894550</td>\n",
" <td>0.438914</td>\n",
" <td>0.666500</td>\n",
" <td>0.436417</td>\n",
" <td>0.223957</td>\n",
" <td>0.315433</td>\n",
" <td>0.287644</td>\n",
" <td>0.346513</td>\n",
" <td>0.350088</td>\n",
" <td>...</td>\n",
" <td>0.347413</td>\n",
" <td>0.602767</td>\n",
" <td>0.622100</td>\n",
" <td>0.784133</td>\n",
" <td>0.214943</td>\n",
" <td>0.308667</td>\n",
" <td>0.246850</td>\n",
" <td>0.686620</td>\n",
" <td>0.189040</td>\n",
" <td>0.310000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.4</th>\n",
" <td>0.104350</td>\n",
" <td>0.507614</td>\n",
" <td>1.530550</td>\n",
" <td>0.909633</td>\n",
" <td>0.000000</td>\n",
" <td>0.779233</td>\n",
" <td>0.098667</td>\n",
" <td>1.691500</td>\n",
" <td>0.099500</td>\n",
" <td>0.609345</td>\n",
" <td>...</td>\n",
" <td>0.267200</td>\n",
" <td>0.247160</td>\n",
" <td>0.756825</td>\n",
" <td>0.685763</td>\n",
" <td>0.519725</td>\n",
" <td>0.519360</td>\n",
" <td>1.221350</td>\n",
" <td>0.127637</td>\n",
" <td>0.169967</td>\n",
" <td>0.296950</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.5</th>\n",
" <td>0.000000</td>\n",
" <td>0.104690</td>\n",
" <td>0.118533</td>\n",
" <td>0.121583</td>\n",
" <td>0.092800</td>\n",
" <td>0.092717</td>\n",
" <td>0.100013</td>\n",
" <td>0.100217</td>\n",
" <td>0.103375</td>\n",
" <td>0.108060</td>\n",
" <td>...</td>\n",
" <td>0.098950</td>\n",
" <td>0.097314</td>\n",
" <td>0.099140</td>\n",
" <td>0.104000</td>\n",
" <td>0.114250</td>\n",
" <td>0.098533</td>\n",
" <td>0.089100</td>\n",
" <td>0.176213</td>\n",
" <td>0.116700</td>\n",
" <td>0.106100</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.6</th>\n",
" <td>0.104450</td>\n",
" <td>0.103500</td>\n",
" <td>0.095200</td>\n",
" <td>0.096600</td>\n",
" <td>0.100317</td>\n",
" <td>0.097909</td>\n",
" <td>0.099567</td>\n",
" <td>0.095550</td>\n",
" <td>0.101467</td>\n",
" <td>0.096550</td>\n",
" <td>...</td>\n",
" <td>0.000000</td>\n",
" <td>0.101150</td>\n",
" <td>0.103700</td>\n",
" <td>0.102917</td>\n",
" <td>0.089000</td>\n",
" <td>0.102150</td>\n",
" <td>0.109400</td>\n",
" <td>0.100788</td>\n",
" <td>0.102500</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.7</th>\n",
" <td>0.094300</td>\n",
" <td>0.101400</td>\n",
" <td>0.099475</td>\n",
" <td>0.098700</td>\n",
" <td>0.095050</td>\n",
" <td>0.095020</td>\n",
" <td>0.095925</td>\n",
" <td>0.099850</td>\n",
" <td>0.000000</td>\n",
" <td>0.098260</td>\n",
" <td>...</td>\n",
" <td>0.000000</td>\n",
" <td>0.096500</td>\n",
" <td>0.096100</td>\n",
" <td>0.090350</td>\n",
" <td>0.096900</td>\n",
" <td>0.087700</td>\n",
" <td>0.097950</td>\n",
" <td>0.089450</td>\n",
" <td>0.097233</td>\n",
" <td>0.094300</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.8</th>\n",
" <td>0.000000</td>\n",
" <td>0.094333</td>\n",
" <td>0.097750</td>\n",
" <td>0.099525</td>\n",
" <td>0.094929</td>\n",
" <td>0.089000</td>\n",
" <td>0.092600</td>\n",
" <td>0.095250</td>\n",
" <td>0.095100</td>\n",
" <td>0.094150</td>\n",
" <td>...</td>\n",
" <td>0.091200</td>\n",
" <td>0.090000</td>\n",
" <td>0.100500</td>\n",
" <td>0.095100</td>\n",
" <td>0.098800</td>\n",
" <td>0.097100</td>\n",
" <td>0.096000</td>\n",
" <td>0.094133</td>\n",
" <td>0.094067</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4.9</th>\n",
" <td>0.092200</td>\n",
" <td>0.092300</td>\n",
" <td>0.091700</td>\n",
" <td>0.088420</td>\n",
" <td>0.092600</td>\n",
" <td>0.089000</td>\n",
" <td>0.085100</td>\n",
" <td>0.090667</td>\n",
" <td>0.090650</td>\n",
" <td>0.000000</td>\n",
" <td>...</td>\n",
" <td>0.000000</td>\n",
" <td>0.082850</td>\n",
" <td>0.000000</td>\n",
" <td>0.089667</td>\n",
" <td>0.093100</td>\n",
" <td>0.000000</td>\n",
" <td>0.092000</td>\n",
" <td>0.087850</td>\n",
" <td>0.091650</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>5.0</th>\n",
" <td>0.000000</td>\n",
" <td>0.141100</td>\n",
" <td>0.076200</td>\n",
" <td>0.119100</td>\n",
" <td>0.000000</td>\n",
" <td>0.178500</td>\n",
" <td>0.090000</td>\n",
" <td>0.098400</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>...</td>\n",
" <td>0.301800</td>\n",
" <td>0.104250</td>\n",
" <td>0.103567</td>\n",
" <td>0.085500</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.081600</td>\n",
" <td>0.081500</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" </tbody>\n",
"</table>\n",
"<p>36 rows × 181 columns</p>\n",
"</div>"
],
"text/plain": [
"phi -90.0 -89.0 -88.0 -87.0 -86.0 -85.0 -84.0 \\\n",
"eta \n",
"1.5 0.000000 0.000000 0.000000 0.000000 0.000000 0.000000 0.000000 \n",
"1.6 0.000000 0.745900 0.000000 0.746800 0.000000 0.000000 0.000000 \n",
"1.7 0.000000 1.178400 0.295200 0.743500 0.379000 0.614800 1.693300 \n",
"1.8 0.381100 0.386050 0.243450 0.168900 0.000000 0.229833 0.229900 \n",
"1.9 0.153000 0.000000 0.142200 0.239467 0.295500 0.150900 0.273500 \n",
"2.0 0.151000 0.137790 0.139500 0.141687 0.162550 0.160067 0.161450 \n",
"2.1 0.132200 0.137630 0.147300 0.136700 0.139863 0.165500 0.150780 \n",
"2.2 0.138267 0.136160 0.137342 0.136750 0.138395 0.161375 0.155864 \n",
"2.3 0.140120 0.135150 0.136392 0.136000 0.135283 0.138733 0.162330 \n",
"2.4 0.146343 0.137150 0.140820 0.137143 0.134425 0.138600 0.153840 \n",
"2.5 0.138550 0.137725 0.135490 0.134900 0.136400 0.137218 0.139250 \n",
"2.6 0.137725 0.134624 0.135183 0.134150 0.135617 0.134246 0.135311 \n",
"2.7 0.135840 0.135129 0.132957 0.132900 0.133153 0.132860 0.135122 \n",
"2.8 0.146100 0.139309 0.138750 0.138678 0.136657 0.135780 0.135900 \n",
"2.9 0.138650 0.137057 0.140111 0.136422 0.135869 0.136715 0.138400 \n",
"3.0 0.140580 0.132220 0.132673 0.132340 0.132370 0.132330 0.132350 \n",
"3.1 0.140850 0.133550 0.132243 0.133160 0.132200 0.135089 0.133630 \n",
"3.2 0.141883 0.138843 0.137400 0.138456 0.135829 0.134738 0.133143 \n",
"3.3 0.139400 0.136378 0.137167 0.134940 0.132460 0.136362 0.133274 \n",
"3.4 0.141000 0.130790 0.129220 0.129329 0.130916 0.129267 0.128655 \n",
"3.5 0.133933 0.140282 0.135745 0.147691 0.127075 0.134500 0.130312 \n",
"3.6 0.157160 0.150125 0.190522 0.163414 0.153340 0.182489 0.146633 \n",
"3.7 0.212600 0.203550 0.182613 0.217033 0.196530 0.192733 0.196800 \n",
"3.8 0.258014 0.226800 0.214507 0.220812 0.212843 0.213190 0.214863 \n",
"3.9 0.312460 0.259640 0.229650 0.263078 0.252018 0.237225 0.237745 \n",
"4.0 0.261700 0.265618 0.158400 0.276025 0.353650 0.274587 0.289418 \n",
"4.1 0.141975 0.146789 0.188287 0.179920 0.178042 0.198750 0.169862 \n",
"4.2 0.208650 0.172833 0.240123 0.270567 0.174783 0.187754 0.257860 \n",
"4.3 0.488733 0.894550 0.438914 0.666500 0.436417 0.223957 0.315433 \n",
"4.4 0.104350 0.507614 1.530550 0.909633 0.000000 0.779233 0.098667 \n",
"4.5 0.000000 0.104690 0.118533 0.121583 0.092800 0.092717 0.100013 \n",
"4.6 0.104450 0.103500 0.095200 0.096600 0.100317 0.097909 0.099567 \n",
"4.7 0.094300 0.101400 0.099475 0.098700 0.095050 0.095020 0.095925 \n",
"4.8 0.000000 0.094333 0.097750 0.099525 0.094929 0.089000 0.092600 \n",
"4.9 0.092200 0.092300 0.091700 0.088420 0.092600 0.089000 0.085100 \n",
"5.0 0.000000 0.141100 0.076200 0.119100 0.000000 0.178500 0.090000 \n",
"\n",
"phi -83.0 -82.0 -81.0 ... 81.0 82.0 83.0 \\\n",
"eta ... \n",
"1.5 0.000000 0.000000 0.000000 ... 0.000000 0.000000 0.000000 \n",
"1.6 0.000000 0.000000 0.000000 ... 0.000000 0.000000 0.000000 \n",
"1.7 0.000000 0.930075 0.111500 ... 0.381300 0.000000 0.000000 \n",
"1.8 0.390667 0.165900 0.327267 ... 0.223500 0.236243 0.883980 \n",
"1.9 0.161000 0.867600 0.000000 ... 0.220200 0.171267 0.163900 \n",
"2.0 0.149060 0.169400 0.176289 ... 0.172440 0.176475 0.153450 \n",
"2.1 0.149290 0.152229 0.168450 ... 0.165614 0.155900 0.150020 \n",
"2.2 0.150350 0.148888 0.153114 ... 0.155750 0.149120 0.148875 \n",
"2.3 0.156182 0.147925 0.145092 ... 0.159367 0.148900 0.155467 \n",
"2.4 0.162650 0.154400 0.144275 ... 0.143763 0.151444 0.157156 \n",
"2.5 0.156625 0.159414 0.147300 ... 0.149229 0.158000 0.151414 \n",
"2.6 0.144350 0.158150 0.156129 ... 0.157864 0.157836 0.145880 \n",
"2.7 0.136907 0.148817 0.159080 ... 0.161543 0.151389 0.139600 \n",
"2.8 0.133218 0.140078 0.150836 ... 0.153625 0.144011 0.136418 \n",
"2.9 0.133900 0.140856 0.138470 ... 0.142667 0.134730 0.136569 \n",
"3.0 0.132364 0.132364 0.132875 ... 0.132560 0.132367 0.132367 \n",
"3.1 0.135355 0.136069 0.135850 ... 0.134755 0.134214 0.135983 \n",
"3.2 0.132936 0.133822 0.134731 ... 0.136450 0.139473 0.134975 \n",
"3.3 0.132863 0.136533 0.130312 ... 0.131400 0.131879 0.130691 \n",
"3.4 0.132400 0.128681 0.128758 ... 0.131280 0.128478 0.128667 \n",
"3.5 0.146278 0.128320 0.142617 ... 0.135367 0.147464 0.135347 \n",
"3.6 0.174283 0.164600 0.156060 ... 0.167818 0.175760 0.172300 \n",
"3.7 0.196678 0.194400 0.193862 ... 0.207025 0.213778 0.199458 \n",
"3.8 0.214723 0.225433 0.221414 ... 0.258750 0.219029 0.216213 \n",
"3.9 0.297200 0.298883 0.219567 ... 0.281725 0.263557 0.288811 \n",
"4.0 0.250657 0.247240 0.233933 ... 0.230525 0.312200 0.261683 \n",
"4.1 0.183632 0.133243 0.188200 ... 0.259920 0.189321 0.252600 \n",
"4.2 0.179833 0.161525 0.129600 ... 0.233350 0.357600 0.230143 \n",
"4.3 0.287644 0.346513 0.350088 ... 0.347413 0.602767 0.622100 \n",
"4.4 1.691500 0.099500 0.609345 ... 0.267200 0.247160 0.756825 \n",
"4.5 0.100217 0.103375 0.108060 ... 0.098950 0.097314 0.099140 \n",
"4.6 0.095550 0.101467 0.096550 ... 0.000000 0.101150 0.103700 \n",
"4.7 0.099850 0.000000 0.098260 ... 0.000000 0.096500 0.096100 \n",
"4.8 0.095250 0.095100 0.094150 ... 0.091200 0.090000 0.100500 \n",
"4.9 0.090667 0.090650 0.000000 ... 0.000000 0.082850 0.000000 \n",
"5.0 0.098400 0.000000 0.000000 ... 0.301800 0.104250 0.103567 \n",
"\n",
"phi 84.0 85.0 86.0 87.0 88.0 89.0 90.0 \n",
"eta \n",
"1.5 0.000000 0.000000 0.000000 0.000000 0.000000 0.000000 0.000000 \n",
"1.6 0.000000 0.000000 0.000000 0.000000 0.000000 0.000000 0.000000 \n",
"1.7 0.380250 1.114300 0.730200 0.420600 0.000000 0.377950 0.000000 \n",
"1.8 0.270350 1.366700 0.160850 0.000000 0.272100 0.234500 0.124500 \n",
"1.9 0.151325 0.154617 0.251200 0.139100 0.191800 0.224867 0.144000 \n",
"2.0 0.152857 0.178971 0.154686 0.141500 0.140043 0.141740 0.134250 \n",
"2.1 0.148483 0.160091 0.141550 0.143433 0.137018 0.137937 0.137000 \n",
"2.2 0.158500 0.159117 0.139737 0.136467 0.136900 0.136238 0.146150 \n",
"2.3 0.160300 0.145629 0.145200 0.139894 0.141271 0.138073 0.141620 \n",
"2.4 0.153878 0.138533 0.138200 0.138525 0.136667 0.135871 0.139700 \n",
"2.5 0.143550 0.135358 0.136343 0.134927 0.134337 0.136756 0.136367 \n",
"2.6 0.135780 0.134319 0.134755 0.134533 0.135633 0.135900 0.134450 \n",
"2.7 0.134067 0.132920 0.133156 0.133244 0.133837 0.132917 0.134400 \n",
"2.8 0.137729 0.137500 0.138112 0.141614 0.137290 0.140292 0.144650 \n",
"2.9 0.137010 0.136192 0.137589 0.139643 0.138133 0.135671 0.143737 \n",
"3.0 0.132330 0.132321 0.132323 0.132336 0.132500 0.132250 0.131733 \n",
"3.1 0.134942 0.132553 0.132840 0.133667 0.132217 0.132188 0.140175 \n",
"3.2 0.135812 0.136360 0.135514 0.136362 0.137678 0.142022 0.136033 \n",
"3.3 0.131740 0.132938 0.134318 0.136760 0.138513 0.140400 0.146788 \n",
"3.4 0.128831 0.133727 0.133914 0.130500 0.128700 0.128457 0.136000 \n",
"3.5 0.135480 0.131614 0.128662 0.140411 0.134522 0.137387 0.137213 \n",
"3.6 0.170070 0.172709 0.160782 0.165338 0.150207 0.169028 0.172525 \n",
"3.7 0.195767 0.202582 0.193050 0.203717 0.188890 0.187186 0.219900 \n",
"3.8 0.218565 0.214589 0.215342 0.212015 0.208669 0.218762 0.209350 \n",
"3.9 0.296427 0.269145 0.287975 0.327073 0.329788 0.274791 0.319000 \n",
"4.0 0.321733 0.295550 0.319608 0.270450 0.303856 0.355400 0.277650 \n",
"4.1 0.117550 0.130433 0.203973 0.167662 0.189260 0.194700 0.145700 \n",
"4.2 0.198875 0.153750 0.207388 0.251690 0.198325 0.178300 0.300800 \n",
"4.3 0.784133 0.214943 0.308667 0.246850 0.686620 0.189040 0.310000 \n",
"4.4 0.685763 0.519725 0.519360 1.221350 0.127637 0.169967 0.296950 \n",
"4.5 0.104000 0.114250 0.098533 0.089100 0.176213 0.116700 0.106100 \n",
"4.6 0.102917 0.089000 0.102150 0.109400 0.100788 0.102500 0.000000 \n",
"4.7 0.090350 0.096900 0.087700 0.097950 0.089450 0.097233 0.094300 \n",
"4.8 0.095100 0.098800 0.097100 0.096000 0.094133 0.094067 0.000000 \n",
"4.9 0.089667 0.093100 0.000000 0.092000 0.087850 0.091650 0.000000 \n",
"5.0 0.085500 0.000000 0.000000 0.000000 0.081600 0.081500 0.000000 \n",
"\n",
"[36 rows x 181 columns]"
]
},
"execution_count": 13,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"df_pivoted"
]
},
{
"cell_type": "code",
"execution_count": 14,
"metadata": {},
"outputs": [
{
"data": {
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",
"text/plain": [
"<Figure size 640x480 with 2 Axes>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"ax = sns.heatmap(\n",
" df_pivoted,\n",
" robust=True,\n",
" square=False,\n",
" cmap=colormaps[\"rainbow\"],\n",
" xticklabels=False,\n",
" yticklabels=False,\n",
" vmax=0.7,\n",
")\n",
"ax.set_yticks([5, 15, 25, 35], [2, 3, 4, 5])\n",
"ax.set_xticks([39, 89, 139],\n",
" [-100, 0, 100]) # ([79, 179, 279], [-100, 0, 100])\n",
"ax.set_xlabel(f\"$\\phi$ [deg]\")\n",
"ax.set_ylabel(f\"$\\eta$\")\n",
"\n",
"# ax.set_yticklabels([])\n",
"ax.invert_yaxis()\n",
"ax.set_title(\"LHCb EndVelo to EndUT $x/X_0$\")\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"# make these smaller to increase the resolution\n",
"dy, dx = 0.1, 1.0\n",
"\n",
"# generate 2 2d grids for the x & y bounds\n",
"y, x = np.mgrid[slice(1.5, 5 + dy, dy), slice(-180, 180 + dx, dx)]\n",
"\n",
"plt.pcolormesh(x, y, df_pivoted, cmap=colormaps[\"jet\"], vmax=0.7)\n",
"\n",
"plt.colorbar()\n",
"plt.show()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
}
],
"metadata": {
"kernelspec": {
"display_name": "tuner",
"language": "python",
"name": "python3"
},
"language_info": {
"codemirror_mode": {
"name": "ipython",
"version": 3
},
"file_extension": ".py",
"mimetype": "text/x-python",
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
"version": "3.10.12"
}
},
"nbformat": 4,
"nbformat_minor": 2
}