{ "cells": [ { "cell_type": "code", "execution_count": 1, "metadata": {}, "outputs": [], "source": [ "from copy import deepcopy\n", "import pandas as pd\n", "from pybliometrics.scopus import ScopusSearch\n", "from pybliometrics.scopus import AbstractRetrieval" ] }, { "cell_type": "code", "execution_count": 2, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Downloading results for query \"TITLE-ABS-KEY ( \"Photovoltaic\" OR \"BIPV\" OR \"PV\" OR \"Irradiation\") AND TITLE-ABS-KEY ( \"solar\" OR \"sun\") AND TITLE-ABS-KEY ( \"rooftop\" OR \"roof\" OR \"top\") AND TITLE-ABS-KEY ( \"machine learning\" OR \"prediction\" OR \"modeling\" ) AND ( EXCLUDE ( SUBJAREA , \"MATE\" ) OR EXCLUDE ( SUBJAREA , \"CHEM\" ) OR EXCLUDE ( SUBJAREA , \"CENG\" ) ) AND ( EXCLUDE ( SUBJAREA , \"MEDI\" ) OR EXCLUDE ( SUBJAREA , \"SOCI\" ) OR EXCLUDE ( SUBJAREA , \"AGRI\" ) OR EXCLUDE ( SUBJAREA , \"BIOC\" ) OR EXCLUDE ( SUBJAREA , \"BUSI\" ) OR EXCLUDE ( SUBJAREA , \"ECON\" ) OR EXCLUDE ( SUBJAREA , \"IMMU\" ) OR EXCLUDE ( SUBJAREA , \"NEUR\" ) OR EXCLUDE ( SUBJAREA , \"PHAR\" ) OR EXCLUDE ( SUBJAREA , \"HEAL\" ) OR EXCLUDE ( SUBJAREA , \"PSYC\" ) OR EXCLUDE ( SUBJAREA , \"ARTS\" ) OR EXCLUDE ( SUBJAREA , \"VETE\" ) OR EXCLUDE ( SUBJAREA , \"NURS\" ) OR EXCLUDE ( SUBJAREA , \"DENT\" ) OR EXCLUDE ( SUBJAREA , \"Undefined\" ) ) \":\n", "Progress: |██████████████████████████████████████████████████| 100.00% Complete\n", "1028\n" ] } ], "source": [ "s_sample = ScopusSearch('TITLE-ABS-KEY ( \"Photovoltaic\" OR \"BIPV\" OR \"PV\" OR \"Irradiation\") AND \\\n", " TITLE-ABS-KEY ( \"solar\" OR \"sun\") AND \\\n", " TITLE-ABS-KEY ( \"rooftop\" OR \"roof\" OR \"top\") AND \\\n", " TITLE-ABS-KEY ( \"machine learning\" OR \"prediction\" OR \"modeling\" ) AND \\\n", " ( EXCLUDE ( SUBJAREA , \"MATE\" ) OR EXCLUDE ( SUBJAREA , \"CHEM\" ) OR EXCLUDE ( SUBJAREA , \"CENG\" ) ) AND ( EXCLUDE ( SUBJAREA , \"MEDI\" ) OR EXCLUDE ( SUBJAREA , \"SOCI\" ) OR EXCLUDE ( SUBJAREA , \"AGRI\" ) OR EXCLUDE ( SUBJAREA , \"BIOC\" ) OR EXCLUDE ( SUBJAREA , \"BUSI\" ) OR EXCLUDE ( SUBJAREA , \"ECON\" ) OR EXCLUDE ( SUBJAREA , \"IMMU\" ) OR EXCLUDE ( SUBJAREA , \"NEUR\" ) OR EXCLUDE ( SUBJAREA , \"PHAR\" ) OR EXCLUDE ( SUBJAREA , \"HEAL\" ) OR EXCLUDE ( SUBJAREA , \"PSYC\" ) OR EXCLUDE ( SUBJAREA , \"ARTS\" ) OR EXCLUDE ( SUBJAREA , \"VETE\" ) OR EXCLUDE ( SUBJAREA , \"NURS\" ) OR EXCLUDE ( SUBJAREA , \"DENT\" ) OR EXCLUDE ( SUBJAREA , \"Undefined\" ) ) ', \n", " download=True, verbose=True)\n", "print(s_sample.get_results_size())" ] }, { "cell_type": "code", "execution_count": 4, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "(1028, 34)\n" ] }, { "data": { "text/html": [ "
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