{ "cells": [ { "cell_type": "markdown", "id": "8382e30e-2fac-41f1-ae50-baf0fc9f4f22", "metadata": {}, "source": [ "# An initial concentration pulse (near the left edge of the system) moving towards equilibrium\n", "\n", "The system starts out with a \"concentration pulse\" in bin 2 (the 3rd bin from the left) - i.e. that bin is initially the only one with a non-zero concentration of the only chemical species.\n", "Then the system is left undisturbed, and followed to equilibrium.\n", "\n", "LAST REVISED: June 23, 2024 (using v. 1.0 beta34.1)" ] }, { "cell_type": "code", "execution_count": 1, "id": "4ed74c66-2717-46c1-945a-c6c082174ee1", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Added 'D:\\Docs\\- MY CODE\\BioSimulations\\life123-Win7' to sys.path\n" ] } ], "source": [ "import set_path # Importing this module will add the project's home directory to sys.path" ] }, { "cell_type": "code", "execution_count": 2, "id": "911ca4cb", "metadata": {}, "outputs": [], "source": [ "from experiments.get_notebook_info import get_notebook_basename\n", "\n", "from life123 import BioSim1D\n", "\n", "import plotly.express as px\n", "import plotly.graph_objects as go\n", "\n", "from life123 import ChemData as chem\n", "from life123 import HtmlLog as log\n", "from life123 import GraphicLog" ] }, { "cell_type": "code", "execution_count": 3, "id": "7a4dd331-d083-4929-b7f1-089f44776f85", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "-> Output will be LOGGED into the file 'diffusion_1.log.htm'\n" ] } ], "source": [ "# Initialize the HTML logging\n", "log_file = get_notebook_basename() + \".log.htm\" # Use the notebook base filename for the log file\n", "\n", "# Set up the use of some specified graphic (Vue) components\n", "GraphicLog.config(filename=log_file,\n", " components=[\"vue_heatmap_11\", \"vue_curves_3\"])" ] }, { "cell_type": "code", "execution_count": 4, "id": "14b4a1c2-9854-41c6-b407-6008bb4738be", "metadata": {}, "outputs": [], "source": [ "# Set the heatmap parameters (for the log file)\n", "heatmap_pars = {\"range\": [0, 2.5],\n", " \"outer_width\": 850, \"outer_height\": 150,\n", " \"margins\": {\"top\": 30, \"right\": 30, \"bottom\": 30, \"left\": 55}\n", " }\n", "\n", "# Set the parameters of the line plots\n", "lineplot_pars = {\"range\": [0, 10],\n", " \"outer_width\": 850, \"outer_height\": 250,\n", " \"margins\": {\"top\": 30, \"right\": 30, \"bottom\": 30, \"left\": 55}\n", " }" ] }, { "cell_type": "code", "execution_count": 5, "id": "01b3a969-5122-4c25-900b-ad6fba315553", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "SYSTEM STATE at Time t = 0:\n", "10 bins and 1 species:\n", " Species 0 (A). Diff rate: 0.1. Conc: [ 0. 0. 10. 0. 0. 0. 0. 0. 0. 0.]\n" ] } ], "source": [ "# Prepare the initial system, with a single non-zero bin, near the left edge of the system\n", "chem_data = chem(names=[\"A\"], diffusion_rates=[0.1])\n", "bio = BioSim1D(n_bins=10, chem_data=chem_data)\n", "\n", "bio.inject_conc_to_bin(bin_address=2, species_index=0, delta_conc=10.)\n", "\n", "bio.describe_state()" ] }, { "cell_type": "code", "execution_count": 6, "id": "db59014c-fc65-4e5a-bca6-8e0a3ffd3d41", "metadata": {}, "outputs": [ { "data": { "text/html": [ "
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Chem. species: %{y}
Concentration: %{z}", "texttemplate": "%{z}", "type": "heatmap", "xgap": 4, "y": [ "A" ], "ygap": 4, "z": [ [ 0, 0, 10, 0, 0, 0, 0, 0, 0, 0 ] ] } ], "layout": { "autosize": true, "template": { "data": { "bar": [ { "error_x": { "color": "#2a3f5f" }, "error_y": { "color": "#2a3f5f" }, "marker": { "line": { "color": "#E5ECF6", "width": 0.5 }, "pattern": { "fillmode": "overlay", "size": 10, "solidity": 0.2 } }, "type": "bar" } ], "barpolar": [ { "marker": { "line": { "color": "#E5ECF6", "width": 0.5 }, "pattern": { "fillmode": "overlay", "size": 10, "solidity": 0.2 } }, "type": "barpolar" } ], "carpet": [ { "aaxis": { "endlinecolor": "#2a3f5f", "gridcolor": "white", "linecolor": "white", "minorgridcolor": "white", "startlinecolor": "#2a3f5f" }, "baxis": { "endlinecolor": "#2a3f5f", "gridcolor": "white", "linecolor": "white", "minorgridcolor": "white", "startlinecolor": "#2a3f5f" }, "type": "carpet" } ], "choropleth": [ { "colorbar": { "outlinewidth": 0, "ticks": "" }, "type": "choropleth" 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", "text/html": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "# ANOTHER APPROACH TO CREATE A PLOTLY HEATMAP, using Heatmap() from plotly.graph_objects\n", "data = go.Heatmap(z=bio.system_snapshot().T,\n", " y=['A'],\n", " colorscale='gray_r', colorbar={'title': 'Concentration'},\n", " xgap=4, ygap=4, texttemplate = '%{z}', hovertemplate= 'Bin number: %{x}
Chem. species: %{y}
Concentration: %{z}')\n", "\n", "fig = go.Figure(data,\n", " layout=go.Layout(title=f\"Diffusion. System snapshot as a heatmap at time t={bio.system_time}\",\n", " xaxis={'title': 'Bin number'}, yaxis={'title': 'Chem. species'}\n", " )\n", " )\n", "fig.show()" ] }, { "cell_type": "code", "execution_count": 10, "id": "d3097f06-8871-4379-8434-84b207d24b1a", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "1-D diffusion to equilibrium of a single species, with Diffusion rate 0.1\n", "\n", "\n", "Initial system state at time t=0:\n", "[GRAPHIC ELEMENT SENT TO LOG FILE `diffusion_1.log.htm`]\n", "[GRAPHIC ELEMENT SENT TO LOG FILE `diffusion_1.log.htm`]\n" ] } ], "source": [ "log.write(\"1-D diffusion to equilibrium of a single species, with Diffusion rate 0.1\",\n", " style=log.h2)\n", "log.write(\"Initial system state at time t=0:\", blanks_before=2, style=log.bold)\n", "\n", "# Output a heatmap to the log file\n", "bio.single_species_heatmap(species_index=0, heatmap_pars=heatmap_pars, graphic_component=\"vue_heatmap_11\")\n", "\n", "# Output a line plot the log file\n", "bio.single_species_line_plot(species_index=0, plot_pars=lineplot_pars, graphic_component=\"vue_curves_3\")" ] }, { "cell_type": "markdown", "id": "42c21d56-3f59-4b7e-a118-f9d2b206d909", "metadata": {}, "source": [ "# Initial Diffusion Step" ] }, { "cell_type": "code", "execution_count": 11, "id": "6e4f2edf-97e0-47dc-9640-2d7c4bca8a3b", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "\n", "\n", "Advancing to time t=10, with time steps of 0.1 ... " ] } ], "source": [ "log.write(\"Advancing to time t=10, with time steps of 0.1 ... \", blanks_before=2, newline=False)" ] }, { "cell_type": "code", "execution_count": 12, "id": "89cde412-b19a-429b-9d23-785df3e8c85f", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "\n", " {'steps': 100}\n", "After delta time 10.0. TOTAL TIME 9.99999999999998 (100 steps taken):\n", "SYSTEM STATE at Time t = 10:\n", "[[1.22598070e+00 2.22414009e+00 3.08221111e+00 2.15823525e+00\n", " 9.37782076e-01 2.88503658e-01 6.79378836e-02 1.28711509e-02\n", " 2.03304706e-03 3.05037621e-04]]\n" ] } ], "source": [ "delta_time = 10.\n", "\n", "status = bio.diffuse(total_duration=delta_time, time_step=0.1)\n", "print(\"\\n\", status)\n", "\n", "log.write(f\"After delta time {delta_time}. TOTAL TIME {bio.system_time} ({status['steps']} steps taken):\")\n", "bio.describe_state(concise=True)" ] }, { "cell_type": "code", "execution_count": 13, "id": "bb45cc38-7aca-47e5-ac83-6e71f53fde9b", "metadata": {}, "outputs": [ { "data": { "application/vnd.plotly.v1+json": { "config": { "plotlyServerURL": "https://plot.ly" }, "data": [ { "hovertemplate": "Chemical=A
Bin number=%{x}
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" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "# Heatmap view\n", "fig = px.imshow(bio.system_snapshot().T, \n", " title= f\"Diffusion. System snapshot as a heatmap at time t={bio.system_time}\", \n", " labels=dict(x=\"Bin number\", y=\"Chem. species\", color=\"Concentration\"),\n", " text_auto='.3f', color_continuous_scale=\"gray_r\")\n", "\n", "fig.data[0].xgap=4\n", "fig.data[0].ygap=4\n", "\n", "fig.show()" ] }, { "cell_type": "code", "execution_count": 15, "id": "a5007d92-b757-4769-ad73-8849486ed244", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "[GRAPHIC ELEMENT SENT TO LOG FILE `diffusion_1.log.htm`]\n", "[GRAPHIC ELEMENT SENT TO LOG FILE `diffusion_1.log.htm`]\n" ] } ], "source": [ "# Output a heatmap into the log file\n", "bio.single_species_heatmap(species_index=0, heatmap_pars=heatmap_pars, graphic_component=\"vue_heatmap_11\")\n", "\n", "# Output a line plot the log file\n", "bio.single_species_line_plot(species_index=0, plot_pars=lineplot_pars, graphic_component=\"vue_curves_3\")" ] }, { "cell_type": "markdown", "id": "e7e88e5a-fc8b-4126-8649-d929f1d01c93", "metadata": {}, "source": [ "## This is still an early stage in the diffusion process; let's advance it more... (Visualization from results shown at selected times)" ] }, { "cell_type": "code", "execution_count": 16, "id": "28bfd5d1-39ab-4008-afb5-2de8390642a8", "metadata": { "lines_to_next_cell": 2, "tags": [] }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "\n", "After Delta time 10.0. TOTAL TIME 20.000000000000014 (100 steps taken):\n", "SYSTEM STATE at Time t = 20:\n", "[[1.79154498 2.04604996 2.15752876 1.81408657 1.18572897 0.61493163\n", " 0.26031377 0.09234937 0.02835038 0.00911562]]\n" ] }, { "data": { "application/vnd.plotly.v1+json": { "config": { "plotlyServerURL": "https://plot.ly" }, "data": [ { "hovertemplate": "Chemical=A
Bin number=%{x}
concentration=%{y}", "legendgroup": "A", "line": { "color": "red", "dash": "solid" }, "marker": { "symbol": "circle" }, "mode": "lines", "name": "A", "orientation": "v", "showlegend": true, "type": "scatter", "x": [ 0, 1, 2, 3, 4, 5, 6, 7, 8, 9 ], "xaxis": "x", "y": [ 1.7915449815979623, 2.046049956197253, 2.1575287571012467, 1.8140865655191563, 1.1857289679580865, 0.6149316304187616, 0.2603137725324633, 0.09234937004182237, 0.028350381854367064, 0.009115616778886402 ], "yaxis": "y" } ], "layout": { "autosize": true, "legend": { "title": { "text": "Chemical" }, "tracegroupgap": 0 }, "template": { "data": { "bar": [ { "error_x": { "color": "#2a3f5f" }, "error_y": { "color": "#2a3f5f" }, "marker": { "line": { "color": "#E5ECF6", "width": 0.5 }, "pattern": { "fillmode": "overlay", "size": 10, "solidity": 0.2 } }, "type": "bar" } ], "barpolar": [ { "marker": { "line": { "color": "#E5ECF6", "width": 0.5 }, "pattern": { "fillmode": "overlay", "size": 10, "solidity": 0.2 } }, "type": 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dE6K4U+1JrY7o9ea8XT3dRJL/b2pe6xlMjbHCyCi/J0om+0K9E6cwY8Nce7unx4Vl0zo+TK1hxqZ9Xb162+vfFadOX8v9/z96PUkvyNcAxkAAAhCAAAQgAIFBJTBwUkiJknavTt9U6pBCredRqDNbfvaf/1T+7olfS+NKoXbnVrSKqqBn6LSeC9P4jbVuKeTz7HSWSbdv2Hv9ZL41ZrvrapQDqpZGwdSOaeuYpFYKNYqTxnuu3dlKQQ+a9t/g+fFULPVqPPi4lYc/tts90Xj2R6ugC7pSyM/TeqZKu7zt2PR6Y9d6Xepz4ycbb5d7Nz0qrSvFWs+V6RW79T7xt/cd+fCorL/7waZzcjqtEAn78XZn33Ri1fo1q1O96mlxUV9BRUO7z6le5xOpmhqlUJQY/rlc3Ri13iPdxrby73aWU+vnXafDtLmus09OVD/08F/dPv+CCrZ2ZzW1+0FO1PufeRCAAAQgAAEIQGBQCQyUFBrUJtt63Sz9T6YzSZ85k0zVRIUABCAAAQhAAAIQgAAEIAAB0wSQQqaJk2+CQNyzVUDZngBSiDsDAhCAAAQgAAEIQAACEIAABIIQQAoFocQY7QRYJaQd6URApFBybIkMAQhAAAIQgAAEIAABCECgnwgghfqpm1wLBCAAAQhAAAIQgAAEIAABCEAAAhAISAApFBAUwyAAAQhAAAIQgAAEIAABCEAAAhCAQD8RQAr1Uze5FghAAAIQgAAEIAABCEAAAhCAAAQgEJAAUiggKIZBAAIQgAAEIAABCEAAAhCAAAQgAIF+IoAU6qduci0QgAAEIAABCEAAAhCAAAQgAAEIQCAgAaRQQFAMgwAEIAABCEAAAhCAAAQgAAEIQAAC/UQAKdRP3eRaIAABCEAAAhCAAAQgAAEIQAACEIBAQAJIoYCgGAYBCEAAAhCAAAQgAAEIQAACEIAABPqJAFKon7rJtUAAAhCAAAQgAAEIQAACEIAABCAAgYAEkEIBQTEMAhCAAAQgAAEIQAACEIAABCAAAQj0EwGkUD91k2uBAAQgAAEIQAACEIAABCAAAQhAAAIBCSCFAoJiGAQgAAEIQAACEIAABCAAAQhAAAIQ6CcCSKF+6ibXAgEIQAACEIAABCAAAQhAAAIQgAAEAhJACgUExTAIQAACEIAABCAAAQhAAAIQgAAEINBPBJBC/dRNrgUCEIAABCAAAQhAAAIQgAAEIAABCAQkgBQKCIphEIAABCAAAQhAAAIQgAAEIAABCECgnwgghfqpm1wLBCAAAQhAAAIQgAAEIAABCEAAAhAISAApFBAUwyAAAQhAAAIQgAAEIAABCEAAAhCAQD8RQAr1Uze5FghAAAIQgAAEIAABCEAAAhCAAAQgEJAAUiggKIZBAAIQgAAEIAABCEAAAhCAAAQgAIF+IoAU6qduci0QgAAEIAABCEAAAhCAAAQgAAEIQCAgAaRQQFAMgwAEIAABCEAAAhCAAAQgAAEIQAAC/UQAKdRP3eRaIAABCEAAAhCAAAQgAAEIQAACEIBAQAJIoYCgGAYBCEAAAhCAAAQgAAEIQAACEIAABPqJAFKon7rJtUAAAhCAAAQgAAEIQAACEIAABCAAgYAEkEIBQTEMAhCAAAQgAAEIQAACEIAABCAAAQj0EwGkUD91k2uBAAQgAAEIQAACEIAABCAAAQhAAAIBCSCFAoJiGAQgAAEIQAACEIAABCAAAQhAAAIQ6CcCSKF+6ibXAgEIQAACEIAABCAAAQhAAAIQgAAEAhJACgUExTAIQAACEIAABCAAAQhAAAIQgAAEINBPBJBC/dRNrgUCEIAABCAAAQhAAAIQgAAEIAABCAQkgBQKCIphEIAABCAAAQhAAAIQgAAEIAABCECgnwgghfqpm1wLBCAAAQhAAAIQgAAEIAABCEAAAhAISAApFBAUwyAAAQhAAAIQgAAEIAABCEAAAhCAQD8RQAr1Uze5FghAAAIQgAAEIAABCEAAAhCAAAQgEJAAUiggKIZBAAIQgAAEIAABCEAAAhCAAAQgAIF+IoAU6qduci0QgAAEIAABCEAAAhCAAAQgAAEIQCAgAaRQQFAMgwAEIAABCEAAAhCAAAQgAAEIQAAC/UQAKdRP3eRaIAABCEAAAhCAAAQgAAEIQAACEIBAQAJIoYCgGAYBCEAAAhCAAAQgAAEIQAACEIAABPqJAFKon7rJtUAAAhCAAAQgAAEIQAACEIAABCAAgYAEkEIBQTEMAhCAAAQgAAEIQAACEIAABCAAAQj0EwGkUD91k2uBAAQgAAEIQAACEIAABCAAAQhAAAIBCSCFAoJiGAQgAAEIQAACEIAABCAAAQhAAAIQ6CcCSKF+6ibXAgEIQAACEIAABCAAAQhAAAIQgAAEAhJACgUExTAIQAACEIAABCAAAQhAAAIQgAAEINBPBJBC/dRNrgUCEIAABCAAAQhAAAIQgAAEIAABCAQkgBQKCKrbsCPHTmuIQggTBC6eOSIfHD8tNRPJyBGbwDnDOSnkc/LJqWLsWAQwQ2D29Cly/OSYlCt8lpkhHi/LcD4rU0fycuyzsXiBmG2MwKzzhuXU6ZKMlarGcpIoOoGhXEZmThuWjz45Ez0IM40SmD61IMVSRb4YqxjNS7JoBDIZkTkzRuT947wfi0YwnVlzZ42kk5isbQkghTTcGEghDRANhUAKGQKtKQ1SSBNIg2GQQgZha0iFFNIA0XAIpJBh4DHTIYViAkxhOlIoBegxUiKFYsBLcSpSKEX4bVIjhTT0AymkAaKhEEghQ6A1pUEKaQJpMAxSyCBsDamQQhogGg6BFDIMPGY6pFBMgClMRwqlAD1GSqRQDHgpTkUKpQgfKZQMfKRQMlyTiIoUSoJqcjGRQsmxTSoyUigpssnERQolwzXJqEihJOnqj40U0s806YhIoaQJ642PFNLL01Q0pJAp0sHysFIoGKeuo5BCGiAaCoEUMgRaUxqkkCaQBsMghQzC1pAKKaQBouEQSCHDwGOmQwrFBJjCdKRQCtBjpEQKxYCX4lSkUIrw26RGCmnoB1JIA0RDIZBChkBrSoMU0gTSYBikkEHYGlIhhTRANBwCKWQYeMx0SKGYAFOYjhRKAXqMlEihGPBSnIoUShE+UigZ+EihZLgmERUplATV5GIihZJjm1RkpFBSZJOJixRKhmuSUZFCSdLVHxsppJ9p0hGRQkkT1hsfKaSXp6loSCFTpIPlYaVQME5dRyGFNEA0FAIpZAi0pjRIIU0gDYZBChmErSEVUkgDRMMhkEKGgcdMhxSKCTCF6UihFKDHSIkUigEvxalpS6Enn35Wtrz8uvx4w20yMqWQIol4qU98elLuuOchuWv9LbJq5eLIwZBCkdGNT5w+XSoj50h1xgypTp8pNfX7jJne32szZkl15kypTj/7sYl/GzknbmbmRyCAFIoALcUpSKEU4UdMjRSKCC6laUihlMDHSIsUigEvhalIoRSgx0yJFIoJ0PB0pJBh4JrSJS2F9h8+IuvvflDe//DYRMUXXzRLNt9/lyycN1fSlEIq9xNPPSOP3PcDmXH+tFhEkUKx8GmcrL4SRXjVCsN1keRJozYyaUIu1QWTJ5ZmzpQaMikC7bNTkEKx8BmfjBQyjjx2QqRQbIRGAyCFjOLWkgwppAWjsSBIIWOotSVCCmlDaSQQUsgIZu1JkpRCSrr8xf2Pyc9/dk/T6pntO/bKL596xlsd9I//vIWVQg1dZaVQ3Fv8zBn5cN97kv3khGSPH5fsiePenzMn1N+P1n9v+bfsiROSOXM6Uua2MskXRmplkieT1K/xP3urlGZI7ZxzI+Xrt0lIIbc6ihRyq1+qWqSQWz1DCrnVL1UtUsitniGF3OqXqhYp5FbPkEJu9cuvNikp5K8Q2rTx9q7bqfyVQv/Df7fO236lXo0rifw6W1cc/ckf3Sw/XH+L989KMj24+Qn593/4r+WH/+nhphg7X9vniSn1WrZktGlVULtVSr7I8vP6edqtePrLu2+Tb998kzeUlUIW3f9RzhRSUkjJIeMyaVwYedvcfGE084KzMmn6zIYtb/0nk5BCFn3iBCgFKRQAkmVDkEKWNaRHOUght/qFFHKvX0gh93qGFHKrZ0ght/qVtBQKujXLlzCNkuenm5+QDz46PnHOkBIyf77pUfmrjbd7W85OnynKjx54TObMnumJISWFvvf9+6Q1xt/8/dOTPqau25dJrVKotWaV5x9+9S/yB9/4qhz58Kj85rmX5T/8u2966FqlF1LIovs/ihSKWn6aMqnWKoz8M5PGz1M6e36SvTIJKRT1zktnHlIoHe5xsiKF4tAzPxcpZJ553IysFIpL0Ox8pJBZ3jqyIYV0UDQXAylkjrXOTEmtFGoVO51qbrdax1/545/1o2LNv2zOxKocFatxzL6D73krhRrPBmqN0TpHnSHUmPvM2Fjog6Ib60IK6bwrY8YyKYWiltpJJqktb5kTx9pvc1P/NnYmUsqJbW5q61ovmdR4OHfC29yQQpHamdokpFBq6CMnRgpFRpfKRKRQKthjJUUKxcJnfDJSyDjy2AmRQrERGg2AFDKKW1sy26XQlOFhb1XQr36zZdI1+9vBdEghtRLogYcfl0333t7x0Gl/RVJjIf7qJKSQtlsyfiAXpFDUqzQvkwpnn96mZFLr09waDuduOoA7oExCCkW9E9KZhxRKh3ucrEihOPTMz0UKmWceNyNSKC5Bs/ORQmZ568iGFNJB0VwMpJA51jozJSWFwmwfa30kfeMqH18Krb32qqaVQo0MgqwKUuNbxzWuFOolhdSqoKf/eevEU9NUPPUx9VLb0ZBCOu/KmLH6WQpFRZM5/cXZM5O8Q7ePTZyfpFYmeYdtqwO41b+N/z33wftR03nzqhfOrp+HpLa1TZ8+ceB2zXvCW/3A7RkLLpGPz5stpfmjsXIx2QwBpJAZzjqzIIV00kw+FlIoeca6MyCFdBNNNh5SKFm+SURHCiVBNbmYSKHk2CYZOSkp1O2g6cazeto9fazd9jFfvrRjoUMKdds+5p9h9J1vfq3p0GykUJJ3ZozYSKEY8FqmmpRJ5fmjUlkwKuUF478vvEIql8+X0uIl+i6ISLEIIIVi4UtlMlIoFeyRkyKFIqNLbSJSKDX0kRIjhSJhS3USUihV/KGTI4VCI7NiQlJSSF1cu0fS+ytqLp87u+Mj6Vslj79tq/VpX3/7+D/KHd/9t7Jn74HYZwqNTCl4K3+27dg7cTaRL69u/vo6ue+//p8TB1ura2s93JqVQlbczvUikELpNyOITMqeOC5TPjsh1TffkuxHH3YtujLnYimPLpLKvPlSWbhIyvMXSGXeAikt+pLUpk1L/4IHpAKkkHuNRgq51TOkkFv9UtUihdzqGVLIrX6papFCbvUMKeRWv/xqk5RCKke7R7k3PiUsyEHTneL4kkjHSiElhdRLiSH11DL/1Xpm0O43Dnj/pD7uv9g+Ztm9jxSyrCFdyvHPFJIzp2Xo4EHJHdwvQ4cOSO7A+O8HD8rQu2+LVCodo6gtahOrjLzVRgulPDoqFfXn2Re5A8OBSpFCDjSppUSkkFs9Qwq51S+kkHv9Qgq51zOkkFs9Qwq51S9TUshNKulVnanVarX00vdHZqSQO30MdNB0uSxD7xyW3KGDMnRgv+QOHpAhXx4dOtT1iWy1c871VhV5W9LU6qJRtcpotC6NLrlMJJt1B5YFlSKFLGhCyBKQQiGBpTwcKZRyAyKkZ6VQBGgpTkEKpQg/YmqkUERwKU1DCqUEPmbapFcKxSxv4KYjhTS0HCmkAaKhEIGkULdaajXJvX+kvrro0EHJHdjnrThS0ih36IBkP/us4+xaPi+Vy+ZNnGFUP89oYX3V0fwFUivUlw/yOksAKeTe3YAUcqtnSCG3+qWqRQq51TOkkFv9UtUihdzqGVLIrX751SKF7OobUkhDP5BCGiAaChFbCvWoM3v8+LggOji+Le2sNMp+/FHn2ZmMVOZeMiGIvBVGC9SKo4Xer9q0pbD/AAAgAElEQVTUqYYI2ZUGKWRXP4JUgxQKQsmeMUghe3oRtBKkUFBSdoxDCtnRhzBVIIXC0Ep/LFIo/R5EqQApFIVacnMGVgqpk7o3/uRR2XDnrbJw3tyOhNsdUrVsyejE6eBqIlIouRtUd+SkpVC3etVh2ENqK5rakqZWGaktad62tIOSe+/dHucYzZLyqFpVtKB+dpEvjeaPSvXC2boxWRMPKWRNKwIXghQKjMqKgUghK9oQqgikUChcqQ9GCqXegtAFIIVCI0t1AlIoVfyRkyOFIqNLZOLASSH1iLcfPfCY/Oo3W+Tii2bJ5vvv6imF/nzTo/JXG2/vOA4plMi9mUjQNKVQV2FUKknu7UN1QaS2oh044K008ralHT4smeJYx+m1c6eePcdInWU0viXNO9fokkudPscIKZTIp0GiQZFCieLVHhwppB1p4gGRQokj1poAKaQVp5FgSCEjmLUlQQppQ2k0EFLIKO6eyQZOCvlEwqwUQgr1vI+cGWCrFOoKUJ1j9N67njBSoijrn2M0Lo0yp051FkaFglQunze+LW1UKgvrZxh55xjNm2/9OUZIIWc+tSYKRQq51TOkkFv9UtUihdzqGVLIrX6papFCbvUMKeRWv/xqkUJ29Q0pFHL7WOvWMdXOD0+csaurVNORgHrD+vEnZ6SfHrmXPXp0fCuaOvxaSSO1Le2A99S07NGPO98N2ax3jlF9O1p9hZE6/NpbaTQ6KmoFUtqvkUJW8vmcfPZ5Ke1SyB+QgHrD+unnRSlX+umzLODFOziskM/KucNDcuJU0cHqu5dck5pkJNN31zVjakE+HytLsVTtu2vrxwtSUuj8cwty7LPOK3778bpdvqbzzs1LqVSR00U+x1zoo5JCF54/RT76hPdjLvTLr/GiGVNcKrfva0UK9ZBCrXfATzc/IR98dFx+vOE2GZlSf1pUucJ/Gq58puSUCKkOUL9OnZLM/v2S2bdP5MB+kX37JbNf/fmAZN59V6Qbi9mzpabk0MKFIosWiYwu9P7s/f3CC420PJOpv6Wr1hAMRoBrSJLLZqRSpV8aUBoJoT6/MtmMVPuwZ8VyVQpDWSMcTSbJZjNSqyrlxcsVAnxddKVT9TqzmYz3+VXjew9nGjdw398705nOhQ7l+u//Z5fbghQKKYXUwdMPPPy4bLr3dplx/jSv95wp5M6ngJPbxxLCmykWJXdYnWM0fnbRgfpKI2+V0TvqHKPOKwfU09C8bWje09EWSHX8KWneQdjqHCP1YxsNL7aPaYBoOATbxwwDj5mO7WMxAaYwne1jKUCPkZLtYzHgpTSV7WMpgY+Ylu1jEcGlPI3tYyk3oCU9UggpZNcdmXA1SKGAgKtVyb33jgwdrJ9jlDuwz3timvf0tEMHJfN5t3OMhqUyr36OkZJG3tY078+jUrl8vtTy+YBFiCCFAqOyZiBSyJpWBCoEKRQIk1WDkEJWtaNnMUihnoisG4AUsq4lXQtCCrnVL7/aQZVC23fsle99/z75y7tvk2/ffJM1zUMKtUihJ59+Vp546pmJR87/+pltsmjBpRNPHlPbx9Trh+tvmWgiK4WsuZ97FoIU6oko0IDsxx95T0ZT0kg9Lc17Stq4NMoeP9Y5htq+d8mlniDyDrseP8fI+7vanjZyTtNcpFCgdlg1CClkVTt6FoMU6onIugFIIeta0rUgpJBb/VLVIoXc6hlSyK1+DboU8l1C63E0aXdx4KRQ4yPpffjf+PraiTOCWqWQb/PajfU/hhRK+zYOnh8pFJxV1JHqaWhD+96sb0s7dFByB3xhtF9y7x/pGrZ6wYVSHl0k5fnzPWGUu2KRZJcsluNXLo9aDvMME0AKGQYeMx1SKCbAFKYjhVKAHiMlUigGvJSmIoVSAh8xLVIoIriUpw3iSiH19PNNf/0L+Z+/+y25/3/9e9kQcsdSki0bOCmUBEykUBJUk4mJFEqGa5io+b1vSO7tQzK0/y3vCWn+k9KUROr2Ki25WkrLlkt52QopLVspxRVfltq0+rlevOwhgBSypxdBKkEKBaFk1xikkF396FUNUqgXIfv+HSlkX0+6VYQUcqtffrWJS6F33hHZv988nMsvFxkdbZtXLTZ5busub8eRWjE0/7I51mwhQwppuFWQQhogGgqBFDIEOmKaocMHJXfokAypM4wOH5Th/W/J0N7XJXPwYNuIlcvnSXHZCimv+LKUlCxaulwqF8+NmJ1pOggghXRQNBcDKWSOta5MSCFdJM3EQQqZ4awzC1JIJ83kYyGFkmecRIbEpdD994v8x/+YROndY959t8h/+S9txygR9JU1y2XVysWiBNGDm5+YOLLGfKHNGZFCGjqAFNIA0VAIpJAh0JrS+GcKffrBcSns3iH53TtlaJf6fZcMvblXMqXSpExqC5oSRMXlK6S8fKUnitSWNF1PRNN0aX0bBinkVmuRQm71S1WLFHKrZ0ght/qlqkUKudUzpJBb/fKrTVwKPf64yObN5uHceqvI+vWT8rY+wVxtJbvjnofkrvW3eJIo7RdSSEMHkEIaIBoKgRQyBFpTmm4HTWeKRW8VkRJFeSWKdu2U/Gu7JfPF55Oy186dKqWrl0lp+QopKVGkVhdduURqhYKmSgnjE0AKuXUvIIXc6hdSyL1+IYXc6xlSyK2eIYXc6pcxKWQZFnVu8V/c/9ikqv7kj25ueoBVWmUjhTSQRwppgGgoBFLIEGhNaUI/faxWk6H9+ySvVhV5K4qUMNop7Z6IVsvnPTHkbTtbURdFalWREki8ohNACkVnl8ZMpFAa1OPlZKVQPH6mZyOFTBOPnw8pFJ+hyQhIIZO09eVKfKWQvlJjR/IfdLX22quazhBqXT0UO1GMAEihGPD8qUghDRANhUAKGQKtKU1oKdQhb+7Ie3VB5K8q2rNLcm8fnjw6k5Hy/NH6SiK1omi52oa2UtSWNF7BCCCFgnGyZRRSyJZOBK8DKRSclQ0jkUI2dCFcDUihcLzSHo0USrsD0fIPkhRS8ufPNz0qf7Xxdlk47+zZp74s+s43v5b6FjKkULT7uGkWUkgDREMhkEKGQGtKo0sKtSsn+8knkt+zy1tVVD+naKfk33pTpFKZNLxy0Zz6SqIGWVSet0DTVfZXGKSQW/1ECrnVL1UtUsitniGF3OqXqhYp5FbPkEJu9cuvdpCkkAsdQgpp6BJSSANEQyGQQoZAa0qTpBRqV2Jm7IzkX9vTcKD1Tsm//ppkzpyeNLx63nlSWlrfcuavKip9abHI0JCmq3czDFLIrb4hhdzqF1LIvX4hhdzrGVLIrZ4hhdzqF1LIzn4hhTT0BSmkAaKhEEghQ6A1pTEthdqWXal4K4jOPvlsh7fCSK00an3VCsNSXnKVFP0VRd45RcukNnKOJiL2h0EK2d+jxgqRQm71CynkXr+QQu71DCnkVs+QQm71CylkZ7+QQhr6ghTSANFQCKSQIdCa0lghhTpcS+6dt8+eUTR+XpE6u2jSK5uV8sJFUlqmziha6a0sUr9XZ87URMmuMEghu/rRqxqkUC9C9v0728fs60m3ipBCbvVLVYsUcqtnSCG3+oUUsrNfSCENfUEKaYBoKARSyBBoTWlslkLtLjF7/HjDU8/UOUU7ZOjAfpFqddLwytxLJs4p8mTRshVSuexyTeTSC4MUSo99lMxIoSjU0p2DFEqXf9jsSKGwxNIfjxRKvwdhKkAKhaFlz1jOFLKnF6oSpJCGfiCFNEA0FAIpZAi0pjSuSaF2l5354nPJv7Zb8rt2Tgijob1vSKY4Nml4dfr0cVG0sn5OkVpVdMWXRHI5TUSTD4MUSp6xzgxIIZ00zcRCCpnhrCsLUkgXSXNxkELmWOvIhBTSQdF8DKSQeebdMhqVQic+PSl33POQ7H7jwKSali0ZlUfu+4HMOH+aXYQCVIMUCgDJkiFIIUsaEbCMfpBCbS+1XJb8m3s9UeQ/+aywZ6dkTp6cNLw2ZURKV1199sln6pyiq5dKbXhKQIpmhyGFzPKOmw0pFJeg+flIIfPM42RECsWhl85cpFA63KNmRQpFJZfuPKRQuvxbsxuVQj/d/ISX/4frb7GLQsxqkEIxARqcjhQyCFtDqr6VQu3Y1GoydPhg/UDrnWrr2U7vV+6jDyePzuW8FURqy5m3okidV7R0uaiVRmm/kEJpdyBcfqRQOF42jEYK2dCF4DUghYKzsmUkUsiWTgSrAykUjJNto5BCdnXEmBRSq4Q2/uRR2XDnrbJw3ly7KMSsBikUE6DB6Ughg7A1pBooKdSBV/box1LY+WqTLFLySGq1STPUmURKFPlnFHnnFM29REMngodACgVnZcNIpJANXQhXA1IoHK+0RyOF0u5A+PxIofDM0pyBFEqTfvTcSKHo7JKYiRTSQBUppAGioRBIIUOgNaVBCrUHmTl1SvJ7dkpBrSrataO+De3NvZIplSZNqM6cJaXlKxpk0Uopjy4UyWY1dak5DFIoEayJBUUKJYY2scBIocTQJhIYKZQI1kSDIoUSxas9OFJIO1IjAZFCRjAHTmJMCqmK1Pax+ZfNkW/ffFPgAl0YiBRyoUv1GpFC7vRKVYoUCt6vTLEoQ3tfr287GxdF6oBrddB166t2zrlSunqZlJYt97afFdU2tCVXS61QCJ6ww0ikUGyERgMghYzi1pIMKaQFo7EgSCFjqLUlQgppQ2kkEFLICGbtSZBC2pHGCmhUCu0/fER+8eQ/yYY7bpWRKfHffMS6co2TkUIaYSYcCimUMGDN4ZFCMYGqc4r275P8brWayD+naJdkjx2dLIryeSlfcaW3qqh+TtEKKS5bKbWpU0MVgRQKhSv1wUih1FsQugCkUGhkqU5ACqWKP1JypFAkbKlNQgqlhj5WYqRQLHzaJxuTQt2ePKauiqePae8tAdsQQAq5dVsghZLpV+79IxMHWavtZ2obWu7tw5OTZTJSnregfqD1ivph1t45RRfN6VgYUiiZniUVFSmUFNnk4iKFkmObRGSkUBJUk42JFEqWr+7oSCHdRM3EQwqZ4Rw0izEpFLQgF8exUsidriGF3OmVqhQpZK5f2c8+G19NtKN+TpHahvbWmyKVyqQiqhfO9racNa4qKs8fFclkBClkrmc6MiGFdFA0GwMpZJZ33GxIobgEzc9HCplnHicjUigOvfTmIoXSY98uM1JIQz+QQhogGgqBFDIEWlMapJAmkBHDZMbOSH7P7vqTz17bLfkdr0j+9ddEfbz1VTt3qreSaGjVtXJq2ZflzHVrvFVGvOwmgBSyuz/tqkMKudUzpJBb/VLVIoXc6hlSyK1++dUihezqm3EptH3HXvne9+9rovDzn90jq1YutotMiGqQQiFgpTwUKZRyA0KmRwqFBGZoeH7vG3VR5B1q/ar35+ynn07K7q0oWrVGiqvXSXHVaimuud5QhaQJSgApFJSUPeOQQvb0IkglSKEglOwagxSyqx+9qkEK9SJk578jhezqi1EppITQg5ufkEfu+4HMOH+aR0IdPr3+7gflzu9+y9mnkiGF7Lqpu1WDFHKnV6pSpJA7/cq9c9hbVTT9jZ1S/u3zkn9pe9snnxWvW+1JotK4JKrMvsidi+zDSpFC7jUVKeRWz5BCbvVLVYsUcqtnSCG3+uVXixSyq2/GpNDpM0X50QOPyXe++bVJq4KULPrlU8/Ijzfc5uRTyZBCdt3USCF3+tGrUqRQL0L2/fvEmUKliuRf3yOFbVskv+1FKWzfJkOHD04quHLZ5VJctVaKq+u/SlcvE8nl7LuwPq0IKeReY5FCbvUMKeRWv5BC7vULKeRez1TFSCG7+mZMCqmnj238yaOy4c5bZeG8uU0U1GqhBx5+XDbde/vECiK7MHWvBinkTrdYKeROr1SlSCG3+qWq7XbQdPboxzK89cUJSaTOKMoUx5ousnbOuVL88rXetrPSGrXtbK1Up093D4QjFSOFHGlUQ5lIIbd6hhRyq19IIff6hRRyr2dIIft6ZkwKsVLIvuYPYkVIIbe6jhRyq1+9pFDr1WSKRe+JZ4XtajXRFils3yq5D95vHpbJSHnhIk8OKUk0tmqtlL90pfekM17xCSCF4jM0HQEpZJp4vHxIoXj80pjN9rE0qEfPiRSKzi7NmawUSpP+5NzGpJBK/eTTz8oTTz3DmUJ23QMDVQ1SyK12I4Xc6ldYKdTu6nLvvO1JIrXtzNt69voekXK5aWj1/POleO3qiZVExWuvE/X0M17hCSCFwjNLewZSKO0OhMuPFArHy4bRSCEbuhC8BqRQcFY2jUQK2dQNEaNSSF06Tx+z6wYYtGqQQm51HCnkVr90SKHWK86cOS2Fl1+qryba+qIUXt4m2ePHm4flclJafFX9TCL1pLPVa6Q8b4F78FKoGCmUAvSYKZFCMQEano4UMgxcQzqkkAaIBkMghQzC1pgKKaQRpoZQxqWQhpqtC8GZQta1pGNBSCF3eqUqRQq51a8kpFA7AkP73pqQRMPbt8jQm78TqdWahlYvnO2dS6SedKYkUWnlNVIrDLsHNOGKkUIJA04gPFIoAagJhkQKJQg3odBIoYTAJhQWKZQQ2ITDIoUSBhwyPFIoJLB2w5FCGiAaCoEUMgRaUxqkkCaQBsN0O2g6qTKyn30mhZe21lcSqa1nr7wkmVOnmtLVCgUpLVsxfjbRWimuuV4qsy9KqiRn4iKFnGnVRKFIIbd6hhRyq1+qWqSQWz1DCrnVL79apJBdfUMKaegHUkgDREMhkEKGQGtKgxTSBNJgmDSk0KTLq1Yl/8Zr9TOJtr0ohW1bZejwwUnDKpde5kmi4pq1dVm0dLlILmeQVvqpkELp9yBsBUihsMTSHY8USpd/lOxIoSjU0puDFEqPfZzMSKE49PTPTVwKqUfR33HPQ/Lv//Bfy9/+t/9Hdr9xoO1VLFsy2nQAtf5LTS4iUig5trojI4V0E002HlIoWb5JRLdCCrW5sOyxo1JQK4nGJVF+56uSGTvTNLI2co4Uv3xtfbuZ2na2aq1UZ8xIApM1MZFC1rQicCFIocCorBiIFLKiDaGKQAqFwpX6YKRQ6i2IVABSKBK2xCYlLoX8ypUc2viTR2XDnbfKwnlzmy5IHT79y6eekR9vuE1GphQSu9ikAiOFkiKrPy5SSD/TJCMihZKkm0xsW6VQ69VmSiXJ79oxfjbRFu/33AfvT4JSXnhFkyQqXblYRH0H2icvpJB7jUQKudUzpJBb/VLVIoXc6hlSyK1++dUihezqmxVSaP/hI/LAw4/LpntvlxnnT7OLUIBqkEIBIFkyBClkSSMCloEUCgjKomGuSKF2yHLvvlM/k2hrXRLlX9stUi43Da2ed56Url0txTX1lUTFa1dJbepUizoQrhSkUDheNoxGCtnQheA1IIWCs7JlJFLIlk4EqwMpFIyTbaOQQnZ1xAop9OTTz8qWl19npZBd90ZfVoMUcqutSCG3+qWqdVkKtdLOnDntHVqtziTyziZ6aatkjx9vHpbNSmnxVVJcvba+5Wz1GinPH3WmcUghZ1o1UShSyK2eIYXc6peqFinkVs+QQm71y68WKWRX3xKXQmoV0Pq7H5T3PzzW8covvmiWbL7/rknbyuxC1bkaVgq50ikRpJA7vVKVIoXc6le/SaF29If2vyWF7WefdJb/3V6RWq1paPWCC6W4ao0UxyVR6cvXSq0wbGUzkUJWtqVrUUght3qGFHKrX0gh9/qFFHKvZ6pipJBdfUtcCvmX2+1MIbuQhK8GKRSeWVozkEJpkY+WFykUjVuas/pppVAQjpmTJ70VRN4h1mrr2cvbJXPqVNPUWj4vpWUr6k84U086W71OKnMuDhI+8TFIocQRa0+AFNKONNGASKFE8SYSnJVCiWBNLChSKDG0iQZGCiWKN3RwY1IodGUOTUAKudMspJA7vVKVIoXc6peqdtCk0KQOVauS3/u6FLZtqW8527ZVhg5Nfupm5ZJLJyTRmJJFS5eLDA0ZbzhSyDjy2AmRQrERGg2AFDKKW0sypJAWjMaCIIWModaaCCmkFWfsYEih2AhFkEIaIBoKgRQyBFpTGqSQJpAGwwy8FGrDOnvsqCeJCuOSKL/jFcmMnWkaWZsyIsUvX9v0pLPqzJmJdw4plDhi7QmQQtqRJhoQKZQo3kSCI4USwZpYUKRQYmgTDYwUShRv6OBGpVC384WWLRmVR+77AU8fC91CJoQhgBQKQyv9sUih9HsQtgKkUG9imVJJ8rt31p9wNv6ks9z7RyZNLI8uapJEpcVLRNR3vxpfSCGNMA2FQgoZAq0pDVJIE0iDYZBCBmFrSIUU0gAxhRBIoRSgd0lpTAqdPlOUHz3wmKy99ipZcfUi+cWT/yQb7rhVRqYU5Kebn5CvrFkuq1YutotOwGpYKRQQlAXDkEIWNCFECUihELAsGYoUitaI3LvveGcTKUk0rGTRnl0i5XJTsOp550np2lX1A6xXrZXidaulNnVqtITjs5BCsfClMhkplAr2yEmRQpHRpTYRKZQa+kiJkUKRsKU+CSmUeguaCjAmhRoPmlYVPPDw47Lp3tu9lUHbd+yVXz71DI+kt+ve6MtqkEJutRUp5Fa/VLVIIT09U9vL1KHVhe3b6mcTbd8q2eMtT/HMZqV05RIprl4rJU8UrRa1uijMCykUhpYdY5FCdvQhaBVIoaCk7BmHFLKnF0EqQQoFoWTfGKSQXT1JRQrNnD5NNv31L2Tjn/2xJ4XUtrJGSWQXot7VsFKoNyNbRiCFbOlEsDqQQsE42TQKKZRcN4b2v9UgibZI/nd7RarVpoTVWRdIcdUaTxKNrV4jpS9fK7XhKR2LQgol16+kIiOFkiKbTFykUDJck4yKFEqSrv7YSCH9TE1ERAqZoBw8hzEp1Lh97Ns33+RtGZt/2RxRf37y6Wdly8uvs1IoeN8YGZEAUigiuJSmIYVSAh8jLVIoBryQUzMnT3pbzrxDrLdv8VYWqY81vmr5vPdkM7XdrLRGbTlbI+rJZ/4LKRQSugXDkUIWNCFECUihELAsGYoUsqQRActACgUEZdkwpJBdDTEmhVovW20nu+Oeh2T3Gwfk4otmyeb775KF8+baRSdgNawUCgjKgmFIIQuaEKIEpFAIWJYMRQql2IhqVfJ7X/e2mnlbzrZtlaGD+ycVVJl7yYQkqq27XqasuU6OfVFJsXBShyGAFApDK/2xSKH0exC2AqRQWGLpjkcKpcs/anakUFRyycxLTQolcznpREUKpcM9SlakUBRq6c1BCqXHPmpmpFBUcsnMyx4/LoWtL0h++xYZ3rZV8jtekcyZ083JRkZkTB1gvfYGKa67UYpr1kptykgyBRE1NgGkUGyERgMghYzi1pIMKaQFo7EgSCFjqLUmQgppxRk7mDEp1HjQtKsrgjrRRgrFvg+NBUAKGUOtJRFSSAtGo0GQQkZxh06WKZUkv3unt90sv22r96Sz7JH3muMMDUlx+cpxSVQXRdXp00PnYkIyBJBCyXBNKipSKCmyycVFCiXHNonISKEkqCYfEymUPOMwGZBCYWh1GIsU0gDRUAikkCHQmtIghTSBNBgGKWQQtoZU6kyhaUffly/+3/9P8i/+Voa3PC9Db/6uOXImI6UrF9cl0fU3SvHGr0pl9kUashMiCgGkUBRq6c1BCqXHPmpmpFBUcunMQwqlwz1uVqRQXIJ65xuTQqpsdbj0V9Ysl1UrF+u9ipSjIYVSbkCI9EihELAsGIoUsqAJIUtACoUElvLwdgdNZ0+ckOEXnpP8i8/L8Iu/lfyeXSKV5jOHKpfPk7F1N0hp3Y0ytvYGKS+6IuUrGZz0SCG3eo0UcqtfqlqkkFs9Qwq51S+/WqSQXX0zKoXUo+d/8eQ/yYY7bpWRKQW7SMSoBikUA57hqUghw8BjpkMKxQSYwnSkUArQY6QM8vSxzOkvpLDlRSm88JwUtrwghVdekszYmaas1QsuHJdEN8jYuhuldPUykWw2RmVM7UQAKeTWvYEUcqtfSCH3+oUUcq9nqmKkkF19MyaFGp821g7BsiWj8sh9P5AZ50+zi1CAapBCASBZMgQpZEkjApaBFAoIyqJhSCGLmhGglCBSqDVMpliU/KsvyfCLL9S3nG17UTInTzYNq02bJmOr1krp+hvrsujL10mt0D8/DAqANrEhSKHE0CYSGCmUCNZEg7JSKFG82oMjhbQjNRIQKWQEc+AkxqRQ4IocHIgUcqdpSCF3eqUqRQq51S9VLVLIrZ5FkUKTrrBalfxru73ziPIvPO/9nv34o2ZJVBiW0jXXeYLIO5do9VqpnTvVLViWVIsUsqQRActACgUEZdEwpJBFzQhQClIoACQLhyCF7GqKMSnU7elj23fslV8+9Yz8eMNtTm4rQwrZdVN3qwYp5E6vkEJu9cqvFinkVt+0SKE2lzy0/636VrMXnvNWFOXePtQ8KpeT0tLl3nlEpXU3yNgNN0l1xgy34KVULVIoJfAR0yKFIoJLcRpSKEX4EVIjhSJAs2AKUsiCJjSUYIUUUmcNPfDw47Lp3tvZPmbX/dF31SCF3GopK4Xc6peqFinkVs+SkkKtFHIffSiF3/6LFF58XgpqRdHeN0RqtaZh5Su+NC6J6lvOKpdd7hZMQ9UihQyB1pQGKaQJpMEwSCGDsDWkQgppgJhCCKRQCtC7pLRCCj359LOy5eXXrV4p1E1csVLIrpu6WzVIIXd6pSpFCrnVL6SQe/0yJYVayWQ/+6x+cPWLv62Lol07RMrlpmGVSy6V4trrpXj9V+pPOLuyv55cGvVuQQpFJZfOPKRQOtzjZEUKxaFnfi5SyDxzHRmRQjoo6ouRuBRSMmX93Q/K+x8e61j1xRfNks333yUL583Vd2WaIjUekN3pMGykkCbYBsIghQxA1pgCKaQRpqFQrBQyBFpTmrSkUGv5mTOnpbBt6/gTzp6XwkvbRX2s8VWdOVOKa2+QojqXSP2+fKVILqeJhDthkELu9K5YZBUAACAASURBVEpVihRyq1+qWqSQWz1DCrnVL79apJBdfUtcCvmX2+1MIbuQtK+GlUIudKl3jUih3oxsGoEUsqkbwWpBCgXjZMsoW6TQJB7lshRefbl+LpFaTbTtRcl+8knTMHVQdXHVaimuu7Euiq5bLbXCsC1oE6sDKZQY2kQCI4USwZpoUKRQoni1B0cKaUdqJCBSyAjmwEmMSaHAFVk6EClkaWNCloUUCgks5eFIoZQbECE9UigCtBSnWCuFWpnUapJ/47X6VjPv128l9+EHzZKoUJDSimtkbN31Uhrfclab2n9POEMKpfgJEyE1UigCtJSnIIVSbkDI9EihkMAsGY4UsqQR42UghQL2o5sUOnm6+RyEgCEZlgKBaSNDcup0WZqPN02hEFIGIpDPZSSXy8qZYiXQeAalT+DcKUNyeqwsVT7J0m9GgAqGshkp5LPyxZh7n2PZAwck98JvJffcs97v2f37m684m5XK1UulcuNXpHrDV6R8001Su+DCAFTsHqJkebFUlTKfZHY3ary6bEZkZHhIPj/D94pONExEphRyUqlUpVThPzIXepYRkakjQ8L7MRe6dbZG9Z6Mlz0EjEqhxvN5WhF0Oq/HFlRdpdAXJVvKpI4eBKaO5OXUafrlyo2SH8pKLptBCrnSMBHxpFCxIlXesDrRtVwuI4WhnCfyXH9ljn4sQ8/+i2R/+5zkXnhecq/tEalWmy6runCRVG64cfzXV6S6YIFzl60EQ7FckQpvWJ3oXTabkZFCDinkRLfqRXpSqFqTUrn564dDlzBYpWZEpk7h+3vXmj7tnLxrJfd1vUal0E83P+HB/OH6W5yDyvYx51rWtmC2j7nVR7aPudUvVS3bx9zqmTPbxyJgzZw8KcNbnpf8i7+V4Refl/zOVyVTLDZFqsy5+Ozh1dffKKXFV4movQgWv9g+ZnFz2pTG9jG3+qWqZfuYWz1j+5hb/fKrZfuYXX0zJoU4aNquxg9qNUghtzqPFHKrX0gh9/rVz1KotRuZ4pgUtm+rH1ytfm3fJpkvPm8aVp0+XYqr10nx+q9Ice31Ulx5jciQXUvckUJufZ4hhdzqF1LIvX4hhdzrmaoYKWRX35BCPfrRbsvbn/zRzU2rnXgkvV03dbdqkELu9EpVihRyq19IIff6NUhSaFJ3KhUp7HxVClvGD6/e+oJkjx9vGlYbOUeK160aX010oxRXr5HalJFUG40UShV/6ORIodDIUp/ASqHUWxCqAKRQKFzWDEYKWdMKrxBjUkglU9vH5l82R7598012UYhZDVIoJkCD05FCBmFrSIUU0gDRcAi2jxkGHjPdQEuhNuzye98Yl0RqNdHzkjvyXrMkyueltHxlfRWRWk207kapnndezC6Em44UCscr7dFIobQ7ED4/Uig8szRnIIXSpB89N1IoOrskZhqVQupcnl88+U+y4Y5bZWRKIYnrSSUmUigV7JGSIoUiYUttElIoNfSREyOFIqNLZSJSqDv23DuHZfjFFyT/wnPe+URD+95qnpDJSGnxkvpKoutvlOINN0ll9kWJ9hIplChe7cGRQtqRJh4QKZQ4Yq0JkEJacRoLhhQyhjpQImNSqNuTx1Sltj99rBtNpFCge82KQUghK9oQuAikUGBU1gxEClnTikCFIIUCYZoYpLaXDT//rORffL5+iPVru0UqlaYglcvny9j1N3iriNSKovLCK8Il6TEaKaQVZ+LBkEKJI9aeACmkHWmiAZFCieJNLDhSKDG0kQIbk0KRqnNkElLIkUaJCFLInV6pSpFCbvVLVYsUcqtnSKF4/cp8fkqGt74o+RfGn3D26suiDrRufFUvnC1ja2+Q0vU3yNi6G6V01VKRbDZyYqRQZHSpTEQKpYI9VlKkUCx8xicjhYwj15IQKaQFo7YgSCENKJFCGiAaCoEUMgRaUxqkkCaQBsMghQzC1pAKKaQBYkMIJYTyr7wkwy8+L4UX1BPOtkjm1KlmSXTeeVJctVZK139FxtZdL6WV10qtEHxLPVJIb8+SjoYUSpqw/vhIIf1Mk4yIFEqSbnKxkULJsY0S2agUOn2mKD964DH51W+2yMUXzZLN998lcy+6wPvY2muvcvYAaqRQlFsvnTlIoXS4R82KFIpKLr15SKH02EfJjBSKQi3EnGpV8rt31reaqS1nLz4v2WNHmwLUhqdI8ZrrpLjO33K2TtRTzzq9kEIh+FswFClkQRNCloAUCgks5eFIoZQbEDE9UigiuISmGZVC/tPH/s3vrZUHHnlc/vjbvy8L582V7Tv2yi+fekZ+vOE2Jw+gRgoldHcmEBYplADUBEMihRKEm1BopFBCYBMKixRKCGyXsENvvTkuiepbznLvvN08OpeT0rIV9S1n626Qseu/ItUZMybGIIXM9yxORqRQHHrpzEUKpcM9alakUFRy6c5DCqXLvzW7MSmkDpre+JNHZcOdt3qrgxqlkHoq2QMPPy6b7r1dZpw/zS5CAapBCgWAZMkQpJAljQhYBlIoICiLhiGFLGpGgFKQQgEgJTwk98H7Unj+OSn4Tzh783citVpT1vKXrhw/l+grcs6/+X05Of1CGStVE66M8DoIIIV0UDQbAylklnfcbEihuATTmY8USod7p6xWSCFWCtl1U/RzNUght7qLFHKrX6papJBbPUMK2dev7CefeIKooM4l2vK8FHbvFCmXmwqtzr1ExtS5RKvX1M8nWrZCavm8fRdDRYIUcu8mQAq51TOkkFv98qtFCtnVN2NSSF32k08/K1tefl02/tkfy3997P/yto/NnD5N7rjnIbnlm1/jTCG77o2+rAYp5FZbkUJu9Qsp5F6/kEL29yxz+gspbN0ihRd/64mi4VdfEjl9uqnw2pQRKa28RoqrVktx9ToprrleqjNn2n9xA1AhUsi9JiOF3OoZUsitfiGF7OyXUSmkEKhVQd/7/n1NNH7+s3tk1crFdhIKUBXbxwJAsmQIUsiSRgQsAykUEJRFw1gpZFEzApSCFAoAybIhs0aycmbLdslseVHyShZt3yK5949MqrK8YKEUV6+R0qq1Uly9VkqLrxLJZi27mv4vBynkXo+RQm71DCnkVr+QQnb2y7gUshNDvKqQQvH4mZyNFDJJO34upFB8hqYjIIVME4+XDykUj18as9sdNJ179x0pvLTVk0TD27dIfs+uSVvOatOmSfHaVd52MyWJitetEfUxXskSQAolyzeJ6EihJKgmFxMplBzbJCOzfSxJuuFjG5VC6uljH3x0vOkpY/5j6nkkffjmMSM8AaRQeGZpzkAKpUk/Wm6kUDRuac1CCqVFPnreIE8fy4ydkcIrL0lh21bJb3tRCtu3Svb4seak2ayUrlxcP5NIbTlbtVrKC6+IXhgz2xJACrl3YyCF3OoZUsitfvnVIoXs6psxKeTLn+9882uTtopx0LRdN0U/V4MUcqu7SCG3+qWqRQq51TOkkFv9UtUGkULtrmpo/1tS2L5tXBJtkfzv9opUm59gVp05S4qr1kxIIrWyqDY8xT1IFlWMFLKoGQFLQQoFBGXJMKSQJY0IWQZSKCSwhIcbk0KNj6RfOG9u02XxSPqEu0z4CQJIIbduBqSQW/1CCrnXL6SQez2LKoVarzRz8qQUXtomBW8l0RYpvLxd1MeaXkNDUlq6vP6kszX1LWeVSy9zD1qKFSOFUoQfMTVSKCK4lKYhhVICHzMtUigmQM3TjUkhVgpp7hzhIhFACkXCltokpFBq6CMnZqVQZHSpTEQKpYI9VlJdUmhSEdWq5H/3hhS2bamvJtq2VYYO7p80rHLx3PqWMyWJ1O/LVkgtn491Tf08GSnkXneRQm71DCnkVr/8apFCdvXNmBRSl622iW3c9Khsvv8u8VcLqVVC6+9+UO787rd4JL1d90ZfVoMUcqutSCG3+qWqRQq51TOkkFv9UtUmJoXaoMgeP+6tJFKSaFidT7TjFcmcOd00Um0vK628xnvSWVGdTbR6rVRnXeAe2IQqRgolBDbBsEihBOEmEBoplABUAyGRQgYgh0hhVAqpunwJ9P6HZw885JH0ITrG0FgEkEKx8BmfjBQyjjx2QqRQbIRGAyCFjOLWksykFJpUcLkshd07ve1m6kln6vfckfcmD5s/6kki7wDr1WultPgqkWxWy/W7FgQp5FrHRJBCbvUMKeRWv/xqkUJ29c24FLLr8vVUwyPp9XA0EQUpZIKyvhxIIX0sTUVCCpkirScPUkgPR5NRUpVCbS4098H7Utj6woQkyu/ZJZlSqWlkbepUUYdWq+1mxTXrvLOJatOmmcSWWi6kUGroIydGCkVGl8pEpFAq2GMnRQrFRqg1AFJIA06kkAaIhkIghQyB1pQGKaQJpMEwSCGDsDWkQgppgGg4hG1SqPXyM2NnJP/qy/XtZt4h1lsle+xo87BMRkpXLh4/m2id98Sz8sIrDJM0kw4pZIazzixIIZ00k4+FFEqecRIZkEJJUI0e06gUUk8gu+Oeh2T3GwcmVbxsyag8ct8PZMb57v3kCCkU/QY0PRMpZJp4vHxIoXj80piNFEqDevScSKHo7NKaabsUasdFHVitDq6uH2C9xTvQWqrVpqHVmTO9FUT1LWdrpHjNdVKbMpIWZm15kULaUBoLhBQyhlpLIqSQFozGgyCFjCPvmtCoFPrp5ie8Yn64/ha7KMSsBikUE6DB6Ughg7A1pEIKaYBoOARSyDDwmOmQQjEBpjDdRSnUiilz6pQUXtrmnUnkHWT98nbJfvZZ87ChISktXe6JouL4k84ql16WAvF4KZFC8filMRsplAb16DmRQtHZpTkTKZQm/cm5jUkhtUpo408elQ133jrx5DG7UESvBikUnZ3pmUgh08Tj5UMKxeOXxmykUBrUo+dECkVnl9bMfpBCk9jVapLf+0b9AGtvy9k2Gdr/1qRhlYvn1lcTjUui0vKVUsvn02pFoLxIoUCYrBqEFLKqHT2LQQr1RGTlAKSQXW1BCmnoB1JIA0RDIZBChkBrSoMU0gTSYBikkEHYGlIhhTRANByiL6VQG4bZEyfqq4jGJVHh1Zclc/qLppG14SlSWnmNFFetlqLadrZmnVRnXWC4I93TIYWsakegYpBCgTBZMwgpZE0rQhWCFAqFK/HBxqSQuhK1fWz+ZXPk2zfflPiFmUyAFDJJO14upFA8fqZnI4VME4+fDykUn6HJCEghk7T15BoUKTSJVrks6slmw2o10dYtUnhpq+TefWfysPmj3plEJfWks9VrpbTkapFsVg/8CFGQQhGgpTwFKZRyA0KmRwqFBGbJcKSQJY0YL8OoFNp/+Ij84sl/kg133CojUwp2kYhRDVIoBjzDU5FChoHHTIcUigkwhelIoRSgx0iJFIoBL6WpAyuF2vDOffB+fTXRuCTK79ohmVKpaWRt6lQpXruq/qSz1WtlbNVaqU0z91ATpFBKnygx0iKFYsBLYSpSKAXoGlIihTRA1BjCmBTq9uQxdT08fUxjVwnVkQBSyK2bAynkVr9UtUght3qGFHKrX6papFDnnmWKY5J/9WXvSWf1Q6y3SPbox80TMhkpXbl4QhIpWVRedEViNwJSKDG0iQVGCiWGNpHASKFEsCYeFCmUOOJQCYxJoVBVOTaYlULuNAwp5E6vVKVIIbf6hRRyr19IIfd6hhQK17OhQwc8SZQfl0T5N14TqVabglRnzqwfYK3OJVq1RorXXie1KSPhEnUYjRTSgtFoEKSQUdyxkyGFYiNMJQBSKBXsHZMihTT0AymkAaKhEEghQ6A1pUEKaQJpMAwrhQzC1pAKKaQBouEQSKF4wDOfn5LCS9vHn3S2RQovb5Psp582Bx0aktLVy7zVREX1pLPr1kjlsssjJUYKRcKW6iSkUKr4QydHCoVGZsUEpJAVbZgowrgU2r5jr3zv+/c1Ufj5z+6RVSsX20UmRDVIoRCwUh6KFEq5ASHTI4VCArNgOFLIgiaEKAEpFAKWJUORQpobUatJ/nd7z0qi7VtkaN9bk5JU5lxc33KmJJH6fflKqeXzPYtBCvVEZN0ApJB1LelaEFLIrX751SKF7OqbUSmkhNCDm5+QR+77gcw4v37Inzp8ev3dD8qd3/2Ws08lQwrZdVN3qwYp5E6vVKVIIbf6papFCrnVM6SQW/1S1SKFku9Z9sSJBkm0VQqvvCSZ0180Ja4NT5HSii97Tzorqm1na9ZJddYFk4pDCiXfL90ZkEK6iSYbDymULN+koiOFkiIbLa4xKXT6TFF+9MBj8p1vfm3SqiAli3751DPy4w23OflUMqRQtJsvjVlIoTSoR8+JFIrOLq2ZSKG0yEfLixSKxi3NWUihFOhXKpLfs0sK27d6h1erQ6xz77w9qZDyvAWeJPLOJlq9VkpLrpahfE5mThuWjz45k0LhpIxCACkUhVp6c5BC6bGPkxkpFIee/rnGpJB6+tjGnzwqG+68VRbOm9t0JWq10AMPPy6b7r19YgWR/ktNLiJSKDm2uiMjhXQTTTYeUihZvklERwolQTW5mEih5NgmFRkplBTZcHFzH30ohS3PS377tvqTzl7aNilA7dypUrr2Ohm69Q/lxCWjUr58XuSzicJVx+g4BJBCceiZn4sUMs9cR0akkA6K+mIYk0KsFNLXNCJFJ4AUis4ujZlIoTSox8uJFIrHz/RspJBp4vHzIYXiM0wqQmHrC1JQkmjbi96KouzRjyelqp5/vpSWrfC2npWXrqj/efGSpEoibgQCSKEI0FKcghRKEX6M1EihGPASmGpMCqnan3z6WXniqWc4UyiBRhIyGAGkUDBOtoxCCtnSieB1IIWCs7JhJFLIhi6EqwEpFI5XmqOHDh2QKS9vk6m7XpHy9pcl/9puUU8/a3155xNdvXRcFC33RFHxmuvSLH2gcyOF3Go/UsitfvnVIoXs6ptRKaQunaeP2XUDDFo1SCG3Oo4UcqtfqlqkkFs9Qwq51S9VLVLIrZ41HTRdq8nQwf2S371ThnbvlPyunVLYvVOyH380+aKGhqR0xZc8QVRevlJKy9SvFVI97zy3ADhYLVLIraYhhdzqF1LIzn4Zl0J2YohXFWcKxeNncjZSyCTt+LmQQvEZmo6AFDJNPF4+pFA8fmnMRgqlQT16ziBPH8t9+IEnijxZtGuHJ4uG3j4kUqtNSly5fL4Uly0fF0X17WeVi5vP6oxeLTMVAaSQW/cBUsitfiGF7OyXUSn0081PyAcfHW96yph/1tDaa6/ikfR23iN9VRVSyK12IoXc6peqFinkVs+QQm71S1WLFHKrZ0GkULsrypw8KYXdO86Kot27JP/mXpFyedLw6qwLpLR8hRQnVhWtkPLoIhH1bplXaAJIodDIUp2AFEoVf+TkbB+LjC6RicakEAdNJ9I/goYkgBQKCSzl4UihlBsQIT1SKAK0FKcghVKEHzE1UigiuJSmRZVCbUVRsShDb7zmbTnzVhSp1UWv7ZHMF59PGu49+ezqZZ4sKnnbz1ZI+colUisUUiLhTlqkkDu9UpUihdzql18tUsiuvhmTQjyS3q7GD2o1SCG3Oo8UcqtfqlqkkFs9Qwq51S9VLVLIrZ7plEJtr7xalaH9+ySvVhX5omj3LskePzZZFOXznhgqjW8/UyuLlCxSAonXWQJIIbfuBqSQW/1CCtnZL2NSiJVCdt4Ag1YVUsitjiOF3OoXUsi9fiGF3OsZUsitniUuhTrgyB15b+KcIl8W5d55e/LoTEbK80fPHmittqEtXynVCy50C7TGapFCGmEaCIUUMgA5gRSsFEoAaoyQxqSQqlE9eWzjpkdl8/13ycJ59UPx9h8+IuvvflDu/O63OFMoRiOZGowAUigYJ1tGIYVs6UTwOlgpFJyVDSORQjZ0IVwNSKFwvNIenZYUanfd2U8+GRdFO7ztZ942tH1viVQqk4ZXLprjiaKJp58tXyHleQvSxmkkP1LICGZtSZBC2lAaDYQUMoq7ZzKjUqhRAr3/4dllrT//2T2yauXinsXaOoCnj9namcl1IYXc6ZWqFCnkVr9UtUght3qGFHKrX6papJBbPbNJCrUjlxk7I/k9uyW/Z9fZc4pef00yZ05PGl497zwpLV0hpaXjTz9T5xV9abHI0JBbTelRLVLIrXYihdzql18tUsiuvhmXQnZdvp5qkEJ6OJqIghQyQVlfDqSQPpamIiGFTJHWkwcppIejyShIIZO04+eyXQq1vcJKRfJvvdnw5LMdnjRSK41aX7XCsJSXXNX05LPS0mVSGzknPryUIiCFUgIfMS1SKCK4lKchhVJuQEt6pJCGfiCFNEA0FAIpZAi0pjRIIU0gDYZBChmErSEVUkgDRMMhkEKGgcdM56QU6nDNuXcOS2HXThlSTz0b/6XOLpr0ymalvHCRlJatnHjymXoCWnXGjJg0zUxHCpnhrCsLUkgXSbNxkEJmeffKhhTqRSjAvyOFAkCyZAhSyJJGBCwDKRQQlEXDkEIWNSNAKUihAJAsG4IUsqwhPcrpJynU7lKzx4+ffeqZ9/SzHTJ0YL9ItTppeOWSS+vnFC1dPiGLKpddbl1DkULWtaRrQUght/rlV4sUsqtvSCEN/UAKaYBoKARSyBBoTWmQQppAGgyDFDIIW0MqpJAGiIZDIIUMA4+Zrt+lUDs8mS8+l/xruyW/a2ddGKnzit54XTLFsUnD1eohTxItWynl5Svr29Cu+JJINhuTfPTpSKHo7NKYiRRKg3r8nEih+Ax1RkAKaaCJFNIA0VAIpJAh0JrSIIU0gTQYBilkELaGVEghDRANh0AKGQYeM90gSqG2yMplyb+51xNF6slnavtZYc9OyZw8OWl4bcqIlK5eevbJZ2p10VVXS214SsxuBJuOFArGyZZRSCFbOhGuDqRQOF5Jj0YKaSCMFNIA0VAIpJAh0JrSIIU0gTQYBilkELaGVEghDRANh0AKGQYeMx1SqAvAWk2GDh+sH2i9sy6K1K/cRx9OnpTLSelLV9ZFkZJE4+cVqSei6X4hhXQTTTYeUihZvklFRwolRTZaXKRQNG5Ns5BCGiAaCoEUMgRaUxqkkCaQBsMghQzC1pAKKaQBouEQSCHDwGOmQwqFB5g9+rEU1GqihlVFQ4cOiNRqk4JVLp/X/OSzZSukcvHc8EkbZiCFYuEzPhkpZBy5loRIIS0YtQVBCmlAiRTSANFQCKSQIdCa0iCFNIE0GAYpZBC2hlRIIQ0QDYdAChkGHjMdUigmwPHpmVOnJL9npxTUqiJfGL25VzKl0qQE1VkXSGn5iiZZVB5dJKLsQYAXUigAJIuGIIUsakaIUpBCIWAZGIoU0gAZKaQBoqEQSCFDoDWlQQppAmkwDFLIIGwNqZBCGiAaDoEUMgw8ZjqkUEyAXaZnikUZ2vu6d5C1d6C1Otj6td2S+fzUpFm1c6dK6eplnizynoCmtqEtvkpqhcKksUih5HqWRGSkUBJUk4+JFEqecZgMSKEwtDqMRQppgGgoBFLIEGhNaZBCmkAaDIMUMghbQyqkkAaIhkMghQwDj5kOKRQTYNjp6pyiA/vq5xTt2uGtLFKyKHvs6GRRlM9L+UuLPVHkP/mstHSFnD9nphRLFflirBI2O+NTIIAUSgG6hpRIIQ0QNYZACmmAiRTSANFQCKSQIdCa0iCFNIE0GAYpZBC2hlRIIQ0QDYdAChkGHjMdUigmQE3Tc0fe81YR5Xe+Wl9VtGeX5N4+3DZ6dXRUiv/TH0qplpHq7ItEbT2rzJ8v5XkLNFVDGJ0EkEI6aZqLhRQyxzpIJqRQEEo9xiCFNEA0FAIpZAi0pjRIIU0gDYZBChmErSEVUkgDRMMhkEKGgcdMhxSKCTDB6dnPPqsLot076ucUqVVFe9/omrG8YKFU5i+Q8oJRqYwulPL8UanMH5XS4iUJVkrobgSQQm7eH0ghu/o2kFJo+4698r3v3+d1YtmSUXnkvh/IjPOnte3M/sNHZP3dD8r7Hx6b+PfWOUghu27qbtUghdzplaoUKeRWv1S1SCG3eoYUcqtfqlqkkFs9Qwq51S9V7cy9O6W693dS2bdfcvvfkqFDB2Xo4AFRT0Xr9lJPPfNWFc2bL5XRRVJesMCTRuWFV0ht6lT3QDhSMVLIkUa1lIkUsqtvAyeFlOT5802Pyl9tvF0WzpsrTz79rGx5+XX58YbbZGTK5MPmWse3ax9SyK6bGinkTj96VYoU6kXIvn9HCtnXk24VIYXc6hdSyL1+IYXc61mng6Yzp7+QoQP7PUGU837tl6FDB+p/f+9dkWq148VWZ87yVhd5K4zU6qIFC6U8OupJo+qFs92DZFHFSCGLmhGiFKRQCFgGhg6cFFIS6NA7H8gP19/i4e0lfXr9u4qBFDJwp2pKwUohTSANhUEKGQKtMQ1SSCNMA6GQQgYga07BSiHNQBMOhxRKGHAC4aM8fSxTKknu7UN1QXTogOT2jwsj9efDhyVTHOtYqXoyWtnfkqakkRJGaoWR+vMll4pkswlcZf+ERAq52UukkF19Gzgp9NPNT3gd8KXQiU9Pyh33PCR3rb9FVq1cPKk7rdvH2m03QwrZdVN3qwYp5E6vVKVIIbf6papFCrnVM6SQW/1S1SKF3OoZUsitfqlqo0ihrldZq3krierb0PZLVq0wOlj/s1pplDl1qrMwKhSkcvm8ibOLKgvHhZFabTRvvtQKk3c5uEc8XsVIoXj80pqNFEqLfPu8AymF5l82R759800ekV5SqBWbkkoffHS8abtZpVqzq6tU05FALpsR+uXODZIRkUwmI9Uan2OudC2bzUiVr4mutEv6+XOsXKmJekPeb69sJiO1Wk34quhOZ/m66E6vVKXGP8c+/lgy+/eJ7D8gsu8tyezf7/3Z+9jHXc4xUiuILr1UagsXer8yCxdJbdEikYWjUlt0hci557oFPka1fH8fA15KU1XPeNlDYCClkMIfdKVQa6vUyqEHHn5cNt17+8Th1B9+csae+Wg7GwAAGKdJREFUjlJJVwKzz58iH396hm+mHblPRgo5yQ/l5LMvio5UTJkXnDcsn5wqShkx5MTNMDyUlXOmDMmJU/33OZapZaSW6T91MmNqQb44U5axcufzS5y4+QakyKFsxlt5cvSzztuHBgSFM5d53jkFKZUrcrpYSb3mzOenZOhA/fwi7xyjA+O/qz8fea/7OUYXXuidX1QeXShVb1ta/c/qY9ULLkj92nQVoNTChedPkY8+5f2YLqYm4lw0fYqJNOQISGDgpFDYM4WCSCG2jwW82ywYxvYxC5oQogS2j4WAZclQto9Z0oiAZbB9LCAoi4axfcyiZgQohe1jASBZNkT79rGEri9TLEru8KHxw673S07JI//g63fUOUadZX9t2rT6uUWeNBqVauM5RnMvUcu0E6paf1i2j+lnaiIi28dMUA6eY+CkUK+njylp9MRTz0w8pv7Xz2yTRQsu9Z5Upl6tZxKpjyGFgt9waY9ECqXdgXD5kULheNkwGilkQxeC14AUCs7KlpFIIVs6EawOpFAwTjaNckUKdWVWrdbPMTp4wJNG/kqj+t8PilqB1OlVKwxLZd48KY+LoopaXaRWGc1fIJXL50stn7epXZ6/mjNjRN4/ftqquiimOwGkkF13yMBJIYV/+4698r3v3+d1ovXg6FYp1DhWjf/G19dOenw9Usium7pbNUghd3qlKkUKudUvVS1SyK2eIYXc6peqFinkVs+QQm71S1XbF1KoB/bsxx/VVxj5W9PGVxgpaZQ9fqzz7FzOeyJa/WlpShaNCyMljRaMSm3kHOMNRwoZR64lIVJIC0ZtQQZSCmmjNx4IKaSbaHLxkELJsU0iMlIoCarJxkQKJctXd3SkkG6iycdDCiXPWGcGpJBOmmZiDYIU6kZSPQ1t6MC+8W1pByV3YJ/k1JPT1IojdY5Rl4d/VGZfVD/HaMECqYwuqj81zVtlNCrVmTMTaSBSKBGsiQdFCiWOOFQCpFAoXO0HI4U0QDQUAilkCLSmNEghTSANhkEKGYStIRVSSANEwyGQQoaBx0yHFIoJMIXpgy6FugojdY7RuCAaajj8Wm1Jy6lzjEqljtOr553nrSzyzjEal0YVf8XRnIsjn2OEFErhk0RDSqSQBogaQyCFNMBECmmAaCgEUsgQaE1pkEKaQBoMgxQyCFtDKqSQBoiGQyCFDAOPmQ4pFBNgCtORQhGhq3OM3n1bhg6OryryVxj55xh98XnHwLXhKVKZP//sOUYTT0pbIOXL5okMDXWcixSK2K+UpyGFUm5AS3qkkIZ+IIU0QDQUAilkCLSmNEghTSANhkEKGYStIRVSSANEwyGQQoaBx0yHFIoJMIXpSKFkoOc++rD+dLTxc4zU+UXe3w+pc4yOd06ay0n50sulssA/x0itNFo4sU1NRkY4aDqZliUaFSmUKN7QwZFCoZFNnoAU0gDRUAikkCHQmtIghTSBNBgGKWQQtoZUSCENEA2HQAoZBh4zHVIoJsAUpiOFzEPPnDwp+X1vSu6wWmV0UHL7x88xUlvUPni/a0GVi+ZI9qtflVPzFp4dN3KOVGfMkOr0GVKdOevsn2fMSOUwbPNE7c+IFLKrR0ghDf1ACmmAaCgEUsgQaE1pkEKaQBoMgxQyCFtDKqSQBoiGQyCFDAOPmQ4pFBNgCtORQilA75Eyv/cNyb19SIbeenNidVFufJta2GrVVjVPGHm/6sKopuSR+n3mBQ0CaaZ3OLYnlpBJYTH3HI8U6onI6ACkkAbcSCENEA2FQAoZAq0pDVJIE0iDYZBCBmFrSIUU0gDRcAikkGHgMdMhhWICTGE6UigF6DFS5g8fkAs/+VBOHDoi2RMnJPvJCckcOybZT47X/+79Olb//eOPImdCJkVG13YiUkgvz7jRkEJxCYoIUkgDREMhkEKGQGtKgxTSBNJgGKSQQdgaUiGFNEA0HAIpZBh4zHRIoZgAU5iOFEoBeoyUYQ+aznx+akIeNQmjEycko+TR8eOeWPL/LeOLpmIxUpW1KSNtVx/V1EqlmReI97u3GqllZdKUkUj5XJmEFLKrU0ghDf1ACmmAaCgEUsgQaE1pkEKaQBoMgxQyCFtDKqSQBoiGQyCFDAOPmQ4pFBNgCtORQilAj5EyrBSKmirzxefNwkitRFICqY1Myvj/plYtmZRJs2ZJrTAc9RKNzkMKGcXdMxlSqCei3gOQQr0Z2TICKWRLJ4LVgRQKxsmmUUghm7rRuxakUG9Gto1ACtnWke71IIXc6peqFinkVs9MSaGoVDyZ5G1hG9/O1iqTGv7Nk0njf9cikxoO2Z60Mkmdl6RWJ6lVSinIJKRQ1DsqmXlIIQ1ckUIaIBoKgRQyBFpTGqSQJpAGwyCFDMLWkAoppAGi4RBIIcPAY6ZDCsUEmMJ0pFAK0GOktF0KRb20tjJJCaPjx+vb3Ma3tXl/bzg/KVMci5SyaZubAZmEFIrUpsQmIYU0oEUKaYBoKARSyBBoTWmQQppAGgyDFDIIW0MqpJAGiIZDIIUMA4+ZDikUE2AK05FCKUCPkbJfpVBUJBMySZ2L5J2PdPbA7czxo2cP4248gFttgTMsky6+eHrUS2ReAgSQQhqgIoU0QDQUAilkCLSmNEghTSANhkEKGYStIRVSSANEwyGQQoaBx0yHFIoJMIXpSKEUoMdIiRSKAa9hapNMahVGCcgkqdX0FE4ULQSQQhowIoU0QDQUAilkCLSmNEghTSANhkEKGYStIRVSSANEwyGQQoaBx0yHFIoJMIXpSKEUoMdIiRSKAU/D1MzpLyY9sa1+LlLz09zqT3GrH86dOXNasp98oiE7IXQRQAppIIkU0gDRUAikkCHQmtIghTSBNBgGKWQQtoZUSCENEA2HQAoZBh4zHVIoJsAUpiOFUoAeIyVSKAa8FKdyplCK8NukRgpp6AdSSANEQyGQQoZAa0qDFNIE0mAYpJBB2BpSIYU0QDQcAilkGHjMdEihmABTmI4USgF6jJRIoRjwUpyKFEoRPlIoGfhIoWS4JhEVKZQE1eRiIoWSY5tUZKRQUmSTiYsUSoZrklGRQknS1R8bKaSfadIRkUJJE9YbHymkl6epaEghU6SD5WGlUDBOXUchhTRANBQCKWQItKY0SCFNIA2GQQoZhK0hFVJIA0TDIZBChoHHTIcUigkwhelIoRSgx0iJFIoBL8WpSKEU4bdJjRTS0A+kkAaIhkIghQyB1pQGKaQJpMEwSCGDsDWkQgppgGg4BFLIMPCY6ZBCMQGmMB0plAL0GCmRQjHgpTgVKZQifKRQMvCRQslwTSIqUigJqsnFRAolxzapyEihpMgmExcplAzXJKMihZKkqz82Ukg/06QjIoWSJqw3PlJIL09T0ZBCpkgHy8NKoWCcuo5CCmmAaCgEUsgQaE1pkEKaQBoMgxQyCFtDKqSQBoiGQyCFDAOPmQ4pFBNgCtORQilAj5ESKRQDXopTkUIpwm+TGimkoR9IIQ0QDYVAChkCrSkNUkgTSINhkEIGYWtIhRTSANFwCKSQYeAx0yGFYgJMYTpSKAXoMVIihWLAS3EqUihF+Eghu+BTDQQgAAEIQAACEIAABCAAAQhAAAIQSIsAK4XSIk9eCEAAAhCAAAQgAAEIQAACEIAABCCQIgGkUIrwSQ0BCEAAAhCAAAQgAAEIQAACEIAABNIigBRKizx5IQABCEAAAhCAAAQgAAEIQAACEIBAigSQQhHhP/n0s/IX9z/mzf7G19fKjzfcJiNTChGjMc0UgZ9ufkLmXzZHvn3zTaZSkicCge079sr3vn/fxEw+xyJANDxFfW79zd8/PZH15z+7R1atXGy4CtJFIbD/8BFZf/eDcud3v8XXxigADc1p/L7DT/knf3Sz/HD9LYYqIE0UAo1fG+lXFIJm5pz49KTccc9DsvuNA00Jly0ZlUfu+4HMOH+amULIEoqA///X+x8e8+b95d238f9YKILmBzd+TeT7e/P8O2VECkXohXrD+uDmJyb+k1A3t3rxjVkEmIamNH4zzX8YhqDHSKP6ddnc2Z5UOH2mKD964DGZM3smn2MxmCY5VX0z/beP/6Pc8d1/68lx9U3an296VP5q4+2ycN7cJFMTOyaBxm+o+doYE2bC09XXxS0vv84PoRLmrDM83x/qpGk+lvqcO/TOB3zvYR59oIy+yLtr/S3e94utfw8UhEFGCTT+P6YS8/29UfxdkyGFIvSidbVJqySKEJIphgiwUsgQaM1peDOkGWjC4fjGLGHAmsKrPm38yaPyp7f9j/J3T/xa1l57FT9h1cQ2iTB8HUyCanIx1feGv3zqGSRecogTjex/fdxw5638cCNR0tGDt/4Ayv8hIv+XRWea5Mx23xvyHjpJ4uFiI4XC8ZpYtdD4BYefioeEmOJwpFCK8GOk5qetMeClMFX9J79x06Oy+f67+GY6Bf5BUjZ+c7Z08aj30zq+kQ5CLr0xrdvH2IqUXi+CZG633Y9ttUHI2TGGVUJ29KFXFer7w6f/eav3/YZ6PfDw47Lp3tvZ7tcLXAr/3k4K8R46hUZ0SIkUCtkL30J/55tfmzgvgxs6JMQUhyOFUoQfMTU/RYgILoVpjVuRePOTQgMCpmz9f4yfrgYEZ9Ew/5vrW775NVZ3WdSXxlLarSpHllvarJayWCXkRp9Uld73iP/bf5OjJz4Tda4Q26Dt7l3rD3l5D21Pv5BCIXvR7ptnbuiQEFMcjhRKEX6E1Kw4iQDNgilsH7OgCV1K6HSgqprCN9R2966xOlYy2N2r1u83kK9296tV6Km/c1ao3T1T778aVwYhy+3ul6qu3fcfHOZuR9+QQhH6wJlCEaBZMgUpZEkjApSBEAoAyeIhfK5Z3JyW0niz6k6vkELu9KpV2rVbae7O1QxOpfyg151etzu3i+MG3OmfqlT18LmtuxCwFrQNKRShCTx9LAI0S6bwRtWSRvQogy1jbvTJr1J9E/2b516W//Dvvul9yN9Gtmnj7TyW3oFWIoXsb5Lq0T/86l/kD77xVe8Jf6zGs79nrV8H+X/N/p6pCpEKbvSp3fcarBRyp3d+/3hSrT09QwpF7EXjAYLf+Ppani4RkaOpaa0HPl580SwOwTUFP0Ie9U3Z3/z9000z6VkEkIam+FLhV7/ZMpGRM4UMwdeQBimkAaKBEK1fF9nqZwB6zBRKBH3v+/d5Ufg/LCZMA9MRdwYga07R+DmmQvN1UTNgzeEaz55k25hmuDHDIYViAmQ6BCAAAQhAAAIQgAAEIAABCEAAAhBwkQBSyMWuUTMEIAABCEAAAhCAAAQgAAEIQAACEIhJACkUEyDTIQABCEAAAhCAAAQgAAEIQAACEICAiwSQQi52jZohAAEIQAACEIAABCAAAQhAAAIQgEBMAkihmACZDgEIQAACEIAABCAAAQhAAAIQgAAEXCSAFHKxa9QMAQhAAAIQgAAEIAABCEDg/2/v/kHkKMM4AH+VaBE1FzDGRjAWGvEPiBAbEUSQqAgWp2KhRsJhQFCPhBwiIqIXTqKChRzBaCPiFTbiaWMQq1MRgkJME1ECMQZUxEKxkhmYdW6cjbtM3s03m+e67M68887zbpof831DgAABAh0FhEIdAZ1OgAABAgQIECBAgAABAgQIEOijgFCoj1PTMwECBAgQIECAAAECBAgQIECgo4BQqCOg0wkQIECAAAECBAgQIECAAAECfRQQCvVxanomQIAAAQIECBAgQIAAAQIECHQUEAp1BHQ6AQIECBAgQIAAAQIECBAgQKCPAkKhPk5NzwQIECBAgAABAgQIECBAgACBjgJCoY6ATidAgAABAgQIECBAgAABAgQI9FFAKNTHqemZAAECBAgQIECAAAECBAgQINBRQCjUEdDpBAgQIECAAAECBAgQIECAAIE+CgiF+jg1PRMgQIAAAQIECBAgQIAAAQIEOgoIhToCOp0AAQIECBAgQIAAAQIECBAg0EcBoVAfp6ZnAgQIECBAYGICH6x+nta+Pppe2LMzXXThBRO7rgsRIECAAAECBKIFhELRwuoTIECAAIEpFPjzr7/T868cSh99urbu7rZs3pSWl+bT1iuvKD8vApWVDz9Lb+5/Om28ZEMvJYRCvRybpgkQIECAAIERBIRCIyA5hAABAgQIEFgvUIVCl182k56Zmx18+erySvryyLFeh0DNWQuF/PoJECBAgACBaRUQCk3rZN0XAQIECBAIFBgWCjWfDGoGKtW/77nz1vTEvtfKDptPFzXbrq61/eZt6YcTp9Jb762Wh9x9x/bBkq7ffv+jrDc/N5tuuema8vv6effvuC1Vxzz2wF3p7fc/Sd9+93153It7d6Ybr7s6ze09kH76+Zfys3de3zeoU/V8w7atafGNd8vvr7/2qv8EX8Vxzy0dGrTfVqN+3/XvA0elNAECBAgQIEBgqIBQyI+DAAECBAgQGFugLRRq+6wtFCqCk8cf2jF4wqh4uujU6V+H7tlTX6pWBSlVwDN77+2pHviMEgoVN1stZ/vqyLH06FP714U8xWcHllcGx1RhTxEeFdcq/po9N+/z+I8ny5BpcWFXGS5VNer3PTa6EwgQIECAAAECZ1lAKHSWQZUjQIAAAQLng8CwPYWKe6+HJ8OeFKpv2twMYZp+zSd+qu+LYKb4K5avjfOkUD04ajuv+Vnb8rEi9Hl28WB6aWFXmrl0Q1p4+WDas/vBwV5KVXBU9WcJ2vnwv8I9EiBAgACB/gkIhfo3Mx0TIECAAIFzLjBs+VjzCZ5pDYXqwdHMxovXLT2rD6d6MkgodM5/shogQIAAAQIEWgSEQn4WBAgQIECAwNgCw0KholA9APn48Nq617m3hSN9fFKoGQpVTw1Vb11rggqFxv6JOYEAAQIECBCYgIBQaALILkGAAAECBKZN4EyhUH2/nWkNhZrLx5qbXAuFpu0X734IECBAgMB0CgiFpnOu7ooAAQIECIQKDAuFqg2Wdz9yX7kp86SWjw3b5LrY1Lra42iU/YMKtP/bU6jtWkUQtnr4i7S8ND/YV6h4AurEydOtDqHDUZwAAQIECBAgMKKAUGhEKIcRIECAAAEC/wqcaaPptlexVxtLRy0fq4c51avmF558OH1z9HgqXmU/7A1lowRFzVfNF9dqe4tY87gtmzcNQiLLx/zvIUCAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggWEQsHAyhMgQIAAAQIECBAgQIAAAQIEchQQCuU4FT0RIECAAAECBAgQIECAAAECBIIFhELBwMoTIECAAAECBAgQIECAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggWEQsHAyhMgQIAAAQIECBAgQIAAAQIEchQQCuU4FT0RIECAAAECBAgQIECAAAECBIIFhELBwMoTIECAAAECBAgQIECAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggWEQsHAyhMgQIAAAQIECBAgQIAAAQIEchQQCuU4FT0RIECAAAECBAgQIECAAAECBIIFhELBwMoTIECAAAECBAgQIECAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggWEQsHAyhMgQIAAAQIECBAgQIAAAQIEchQQCuU4FT0RIECAAAECBAgQIECAAAECBIIFhELBwMoTIECAAAECBAgQIECAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggWEQsHAyhMgQIAAAQIECBAgQIAAAQIEchQQCuU4FT0RIECAAAECBAgQIECAAAECBIIFhELBwMoTIECAAAECBAgQIECAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggWEQsHAyhMgQIAAAQIECBAgQIAAAQIEchQQCuU4FT0RIECAAAECBAgQIECAAAECBIIFhELBwMoTIECAAAECBAgQIECAAAECBHIUEArlOBU9ESBAgAABAgQIECBAgAABAgSCBYRCwcDKEyBAgAABAgQIECBAgAABAgRyFBAK5TgVPREgQIAAAQIECBAgQIAAAQIEggX+ARSy7y52dG23AAAAAElFTkSuQmCC", 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TOTAL TIME 119.99999999999746 (100 steps taken):\n", "SYSTEM STATE at Time t = 120:\n", "[[1.43120344 1.38903875 1.30879999 1.19829836 1.06833665 0.93166317\n", " 0.80170171 0.69120023 0.61096132 0.56879638]]\n", "\n", "After Delta time 10.0. TOTAL TIME 129.9999999999969 (100 steps taken):\n", "SYSTEM STATE at Time t = 130:\n", "[[1.39100434 1.35274953 1.27996855 1.17976686 1.06194682 0.93805314\n", " 0.82023316 0.72003151 0.64725048 0.60899562]]\n", "\n", "After Delta time 10.0. TOTAL TIME 139.99999999999633 (100 steps taken):\n", "SYSTEM STATE at Time t = 140:\n", "[[1.35453928 1.31984299 1.25383973 1.16298212 1.05616129 0.94383869\n", " 0.83701788 0.74616029 0.68015701 0.6454607 ]]\n", "\n", "After Delta time 10.0. TOTAL TIME 149.99999999999577 (100 steps taken):\n", "SYSTEM STATE at Time t = 150:\n", "[[1.32146906 1.29000514 1.23015414 1.14777111 1.0509191 0.9490809\n", " 0.8522289 0.76984587 0.70999486 0.67853094]]\n", "\n", "After Delta time 10.0. TOTAL TIME 159.9999999999952 (100 steps taken):\n", "SYSTEM STATE at Time t = 160:\n", "[[1.29148094 1.26295037 1.20868068 1.13398258 1.04616753 0.95383247\n", " 0.86601742 0.79131932 0.73704963 0.70851906]]\n", "\n", "After Delta time 10.0. TOTAL TIME 169.99999999999463 (100 steps taken):\n", "SYSTEM STATE at Time t = 170:\n", "[[1.26428912 1.23841937 1.18921159 1.1214819 1.04185994 0.95814006\n", " 0.8785181 0.81078841 0.76158063 0.73571088]]\n", "\n", "After Delta time 10.0. TOTAL TIME 179.99999999999406 (100 steps taken):\n", "SYSTEM STATE at Time t = 180:\n", "[[1.2396335 1.21617681 1.17155929 1.1101481 1.0379545 0.9620455\n", " 0.8898519 0.82844071 0.78382319 0.7603665 ]]\n", "\n", "After Delta time 10.0. TOTAL TIME 189.9999999999935 (100 steps taken):\n", "SYSTEM STATE at Time t = 190:\n", "[[1.21727779 1.19600926 1.15555401 1.09987193 1.03441355 0.96558645\n", " 0.90012807 0.84444599 0.80399074 0.78272221]]\n", "\n", "After Delta time 10.0. TOTAL TIME 199.99999999999292 (100 steps taken):\n", "SYSTEM STATE at Time t = 200:\n", "[[1.19700758 1.17772317 1.14104198 1.09055457 1.03120299 0.96879701\n", " 0.90944543 0.85895802 0.82227683 0.80299242]]\n", "\n", "After Delta time 10.0. TOTAL TIME 209.99999999999235 (100 steps taken):\n", "SYSTEM STATE at Time t = 210:\n", "[[1.17862837 1.16114301 1.12788385 1.08210651 1.02829198 0.97170802\n", " 0.91789349 0.87211615 0.83885699 0.82137163]]\n", "\n", "After Delta time 10.0. TOTAL TIME 219.9999999999918 (100 steps taken):\n", "SYSTEM STATE at Time t = 220:\n", "[[1.16196378 1.14610965 1.11595329 1.0744466 1.02565255 0.97434745\n", " 0.9255534 0.88404671 0.85389035 0.83803622]]\n", "\n", "After Delta time 10.0. TOTAL TIME 229.99999999999122 (100 steps taken):\n", "SYSTEM STATE at Time t = 230:\n", "[[1.14685385 1.13247878 1.10513576 1.06750132 1.02325937 0.97674063\n", " 0.93249868 0.89486424 0.86752122 0.85314615]]\n", "\n", "After Delta time 10.0. TOTAL TIME 239.99999999999065 (100 steps taken):\n", "SYSTEM STATE at Time t = 240:\n", "[[1.13315355 1.12011956 1.09532742 1.06120397 1.02108945 0.97891055\n", " 0.93879603 0.90467258 0.87988044 0.86684645]]\n", "\n", "After Delta time 10.0. TOTAL TIME 249.99999999999008 (100 steps taken):\n", "SYSTEM STATE at Time t = 250:\n", "[[1.12073138 1.10891335 1.08643413 1.05549413 1.01912197 0.98087803\n", " 0.94450587 0.91356587 0.89108665 0.87926862]]\n", "\n", "After Delta time 10.0. TOTAL TIME 259.9999999999906 (100 steps taken):\n", "SYSTEM STATE at Time t = 260:\n", "[[1.1094681 1.0987526 1.07837051 1.05031696 1.01733804 0.98266196\n", " 0.94968304 0.92162949 0.9012474 0.8905319 ]]\n", "\n", "After Delta time 10.0. TOTAL TIME 269.9999999999929 (100 steps taken):\n", "SYSTEM STATE at Time t = 270:\n", "[[1.09925559 1.08953976 1.07105916 1.04562279 1.01572054 0.98427946\n", " 0.95437721 0.92894084 0.91046024 0.90074441]]\n", "\n", "After Delta time 10.0. TOTAL TIME 279.99999999999517 (100 steps taken):\n", "SYSTEM STATE at Time t = 280:\n", "[[1.08999583 1.08118641 1.0644299 1.04136654 1.01425394 0.98574606\n", " 0.95863346 0.9355701 0.91881359 0.91000417]]\n", "\n", "After Delta time 10.0. TOTAL TIME 289.99999999999744 (100 steps taken):\n", "SYSTEM STATE at Time t = 290:\n", "[[1.08159993 1.07361236 1.0584191 1.03750737 1.01292416 0.98707584\n", " 0.96249263 0.9415809 0.92638764 0.91840007]]\n", "\n", "After Delta time 10.0. TOTAL TIME 299.9999999999997 (100 steps taken):\n", "SYSTEM STATE at Time t = 300:\n", "[[1.07398731 1.06674491 1.05296906 1.03400823 1.01171844 0.98828156\n", " 0.96599177 0.94703094 0.93325509 0.92601269]]\n", "\n", "After Delta time 10.0. TOTAL TIME 310.000000000002 (100 steps taken):\n", "SYSTEM STATE at Time t = 310:\n", "[[1.06708488 1.06051814 1.04802747 1.03083553 1.0106252 0.9893748\n", " 0.96916447 0.95197253 0.93948186 0.93291512]]\n", "\n", "After Delta time 10.0. TOTAL TIME 320.00000000000426 (100 steps taken):\n", "SYSTEM STATE at Time t = 320:\n", "[[1.06082639 1.05487228 1.04354689 1.02795882 1.00963395 0.99036605\n", " 0.97204118 0.95645311 0.94512772 0.93917361]]\n", "\n", "After Delta time 10.0. TOTAL TIME 330.00000000000654 (100 steps taken):\n", "SYSTEM STATE at Time t = 330:\n", "[[1.05515177 1.04975313 1.03948431 1.02535049 1.00873518 0.99126482\n", " 0.97464951 0.96051569 0.95024687 0.94484823]]\n", "\n", "After Delta time 10.0. TOTAL TIME 340.0000000000088 (100 steps taken):\n", "SYSTEM STATE at Time t = 340:\n", "[[1.05000655 1.04511156 1.03580073 1.02298549 1.00792026 0.99207974\n", " 0.97701451 0.96419927 0.95488844 0.94999345]]\n", "\n", "After Delta time 10.0. TOTAL TIME 350.0000000000111 (100 steps taken):\n", "SYSTEM STATE at Time t = 350:\n", "[[1.04534133 1.04090301 1.03246081 1.02084112 1.00718136 0.99281864\n", " 0.97915888 0.96753919 0.95909699 0.95465867]]\n", "\n", "After Delta time 10.0. TOTAL TIME 360.00000000001336 (100 steps taken):\n", "SYSTEM STATE at Time t = 360:\n", "[[1.04111134 1.03708708 1.02943247 1.01889681 1.0065114 0.9934886\n", " 0.98110319 0.97056753 0.96291292 0.95888866]]\n", "\n", "After Delta time 10.0. TOTAL TIME 370.00000000001563 (100 steps taken):\n", "SYSTEM STATE at Time t = 370:\n", "[[1.03727598 1.03362715 1.02668666 1.01713389 1.00590394 0.99409606\n", " 0.98286611 0.97331334 0.96637285 0.96272402]]\n", "\n", "After Delta time 10.0. TOTAL TIME 380.0000000000179 (100 steps taken):\n", "SYSTEM STATE at Time t = 380:\n", "[[1.03379843 1.03049 1.024197 1.01553543 1.00535315 0.99464685\n", " 0.98446457 0.975803 0.96951 0.96620157]]\n", "\n", "After Delta time 10.0. TOTAL TIME 390.0000000000202 (100 steps taken):\n", "SYSTEM STATE at Time t = 390:\n", "[[1.0306453 1.02764553 1.02193961 1.0140861 1.00485374 0.99514626\n", " 0.9859139 0.97806039 0.97235447 0.9693547 ]]\n", "\n", "After Delta time 10.0. TOTAL TIME 400.00000000002245 (100 steps taken):\n", "SYSTEM STATE at Time t = 400:\n", "[[1.02778634 1.02506642 1.01989282 1.01277198 1.00440092 0.99559908\n", " 0.98722802 0.98010718 0.97493358 0.97221366]]\n", "\n", "After Delta time 10.0. TOTAL TIME 410.0000000000247 (100 steps taken):\n", "SYSTEM STATE at Time t = 410:\n", "[[1.02519409 1.02272792 1.01803698 1.01158045 1.00399035 0.99600965\n", " 0.98841955 0.98196302 0.97727208 0.97480591]]\n", "\n", "After Delta time 10.0. TOTAL TIME 420.000000000027 (100 steps taken):\n", "SYSTEM STATE at Time t = 420:\n", "[[1.02284368 1.02060758 1.01635427 1.01050009 1.00361808 0.99638192\n", " 0.98949991 0.98364573 0.97939242 0.97715632]]\n", "\n", "After Delta time 10.0. TOTAL TIME 430.0000000000293 (100 steps taken):\n", "SYSTEM STATE at Time t = 430:\n", "[[1.02071255 1.01868506 1.01482855 1.00952051 1.00328055 0.99671945\n", " 0.99047949 0.98517145 0.98131494 0.97928745]]\n", "\n", "After Delta time 10.0. TOTAL TIME 440.00000000003155 (100 steps taken):\n", "SYSTEM STATE at Time t = 440:\n", "[[1.01878023 1.01694189 1.01344516 1.00863233 1.0029745 0.9970255\n", " 0.99136767 0.98655484 0.98305811 0.98121977]]\n", "\n", "After Delta time 10.0. TOTAL TIME 450.0000000000338 (100 steps taken):\n", "SYSTEM STATE at Time t = 450:\n", "[[1.01702819 1.01536135 1.01219083 1.007827 1.002697 0.997303\n", " 0.992173 0.98780917 0.98463865 0.98297181]]\n", "\n", "After Delta time 10.0. TOTAL TIME 460.0000000000361 (100 steps taken):\n", "SYSTEM STATE at Time t = 460:\n", "[[1.01543959 1.01392826 1.01105353 1.0070968 1.00244539 0.99755461\n", " 0.9929032 0.98894647 0.98607174 0.98456041]]\n", "\n", "After Delta time 10.0. TOTAL TIME 470.00000000003837 (100 steps taken):\n", "SYSTEM STATE at Time t = 470:\n", "[[1.0139992 1.01262886 1.01002232 1.00643473 1.00221726 0.99778274\n", " 0.99356527 0.98997768 0.98737114 0.9860008 ]]\n", "\n", "After Delta time 10.0. TOTAL TIME 480.00000000004064 (100 steps taken):\n", "SYSTEM STATE at Time t = 480:\n", "[[1.01269318 1.01145069 1.00908732 1.00583442 1.0020104 0.9979896\n", " 0.99416558 0.99091268 0.98854931 0.98730682]]\n", "\n", "After Delta time 10.0. TOTAL TIME 490.0000000000429 (100 steps taken):\n", "SYSTEM STATE at Time t = 490:\n", "[[1.01150901 1.01038243 1.00823954 1.00529011 1.00182285 0.99817715\n", " 0.99470989 0.99176046 0.98961757 0.98849099]]\n", "\n", "After Delta time 10.0. TOTAL TIME 500.0000000000452 (100 steps taken):\n", "SYSTEM STATE at Time t = 500:\n", "[[1.01043531 1.00941383 1.00747086 1.00479659 1.00165279 0.99834721\n", " 0.99520341 0.99252914 0.99058617 0.98956469]]\n", "\n", "After Delta time 10.0. TOTAL TIME 510.00000000004746 (100 steps taken):\n", "SYSTEM STATE at Time t = 510:\n", "[[1.00946178 1.00853559 1.00677389 1.0043491 1.0014986 0.9985014\n", " 0.9956509 0.99322611 0.99146441 0.99053822]]\n" ] }, { "data": { "application/vnd.plotly.v1+json": { "config": { "plotlyServerURL": "https://plot.ly" }, "data": [ { "hovertemplate": "Chemical=A
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System snapshot at time t=510.00000000004746" }, "xaxis": { "anchor": "y", "autorange": true, "domain": [ 0, 1 ], "range": [ 0, 9 ], "title": { "text": "Bin number" }, "type": "linear" }, "yaxis": { "anchor": "x", "autorange": true, "domain": [ 0, 1 ], "range": [ 0.9894869115313046, 1.0105130884686881 ], "title": { "text": "concentration" }, "type": "linear" } } }, "image/png": 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"text/html": [ "
" ] }, "metadata": {}, "output_type": "display_data" }, { "name": "stdout", "output_type": "stream", "text": [ "[GRAPHIC ELEMENT SENT TO LOG FILE `diffusion_1.log.htm`]\n", "[GRAPHIC ELEMENT SENT TO LOG FILE `diffusion_1.log.htm`]\n" ] } ], "source": [ "for i in range(50):\n", " status = bio.diffuse(total_duration=delta_time, time_step=0.1)\n", "\n", " print(f\"\\nAfter Delta time {delta_time}. TOTAL TIME {bio.system_time} ({status['steps']} steps taken):\")\n", " bio.describe_state(concise=True)\n", "\n", " if i<2 or i==6 or i>=49:\n", " # Line curve view\n", " fig = px.line(data_frame=bio.system_snapshot(), y=[\"A\"], \n", " title= f\"Diffusion. System snapshot at time t={bio.system_time}\",\n", " color_discrete_sequence = ['red'],\n", " labels={\"value\":\"concentration\", \"variable\":\"Chemical\", \"index\":\"Bin number\"})\n", " fig.show()\n", " \n", " # Heatmap view\n", " fig = px.imshow(bio.system_snapshot().T, \n", " title= f\"Diffusion. System snapshot as a heatmap at time t={bio.system_time}\", \n", " labels=dict(x=\"Bin number\", y=\"Chem. species\", color=\"Concentration\"),\n", " text_auto='.2f', color_continuous_scale=\"gray_r\")\n", " fig.data[0].xgap=4\n", " fig.data[0].ygap=4\n", " fig.show()\n", " \n", " # Output a heatmap to the log file\n", " bio.single_species_heatmap(species_index=0, heatmap_pars=heatmap_pars, header=f\"Time {bio.system_time} :\\n\", graphic_component=\"vue_heatmap_11\")\n", " # Output a line plot the log file\n", " bio.single_species_line_plot(species_index=0, plot_pars=lineplot_pars, graphic_component=\"vue_curves_3\")" ] }, { "cell_type": "markdown", "id": "4793d583-67d4-4561-bc03-a73237392fe2", "metadata": {}, "source": [ "## All bins now have essentially uniform concentration\n", "\n", "**Mass conservations**: The \"10 units of concentration\" are now uniformly spread across the 10 bins, leading to a near-constant concentration of 10/10 = **1.0**" ] }, { "cell_type": "code", "execution_count": null, "id": "1a1dd41d", "metadata": {}, "outputs": [], "source": [] } ], "metadata": { "kernelspec": { "display_name": "Python 3 (ipykernel)", "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": "3.8.10" } }, "nbformat": 4, "nbformat_minor": 5 }