BIG DATA ANALYTICS FOR SAFE AND SECURE CITY

According to the UN around 68% of the world population in 2050 will live in urban areas. With the increasing population of the city every year, it will cause several problems that arise, among others, problems of security, health, education, traffic congestion, energy, and so on. Smart solutions are...

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Main Author: Setiyono
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/45596
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:45596
spelling id-itb.:455962020-01-09T07:29:37ZBIG DATA ANALYTICS FOR SAFE AND SECURE CITY Setiyono Indonesia Theses Safe and secure city, big data analytics, maturity level. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/45596 According to the UN around 68% of the world population in 2050 will live in urban areas. With the increasing population of the city every year, it will cause several problems that arise, among others, problems of security, health, education, traffic congestion, energy, and so on. Smart solutions are needed from the city government to overcome this problem. One solution is smart city. To realize a smart city one of the main challenges is the solution to the problem of security. Based on the results of a literature study, research on urban problems is still global in nature to get to smart cities. The research topic in this thesis is about one component of smart city, namely city safe and secure city. The method used in this study uses quantitative research methods. From this research topic, a literature study is conducted to find the focus and research problem that we want to study, namely how to design a model to find out the level of security of cities in Indonesia by utilizing big data through predictive analysis of people's perception sentiments on Twitter? In this study a security analysis of 25 cities in Indonesia will be conducted using primary data from the 2019 RKCI (Indonesian Smart Cities Rating) questionnaire in the security sector and secondary data from the big data analysis in the form of twitter sentiment analysis about the perceptions of citizens' security. The measurement of security indicators in this study uses the measurement of safe and secure city maturity level by adopting the Garuda Smart City Model (GSCM). The results of the prediction model of public perception sentiment analysis designed in this study in general are not much different from the results of the 2019 RKCI survey. The results of performance measurement of this model are for an Accuracy value of 80.10% while a precision value of 81.10% and a recall value by 82.62%. From the results of this study it was found that 5 cities were at the level of Integrative maturity (score 60 to 79), namely Tangerang, Kediri, Parepare, Probolinggo and Bogor, while the other 20 cities were at the Scattered level (score 40 to 59). The average score of big cities category in Indonesia in this study was 57.73, medium cities was 56.81 and small cities was 54.21. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description According to the UN around 68% of the world population in 2050 will live in urban areas. With the increasing population of the city every year, it will cause several problems that arise, among others, problems of security, health, education, traffic congestion, energy, and so on. Smart solutions are needed from the city government to overcome this problem. One solution is smart city. To realize a smart city one of the main challenges is the solution to the problem of security. Based on the results of a literature study, research on urban problems is still global in nature to get to smart cities. The research topic in this thesis is about one component of smart city, namely city safe and secure city. The method used in this study uses quantitative research methods. From this research topic, a literature study is conducted to find the focus and research problem that we want to study, namely how to design a model to find out the level of security of cities in Indonesia by utilizing big data through predictive analysis of people's perception sentiments on Twitter? In this study a security analysis of 25 cities in Indonesia will be conducted using primary data from the 2019 RKCI (Indonesian Smart Cities Rating) questionnaire in the security sector and secondary data from the big data analysis in the form of twitter sentiment analysis about the perceptions of citizens' security. The measurement of security indicators in this study uses the measurement of safe and secure city maturity level by adopting the Garuda Smart City Model (GSCM). The results of the prediction model of public perception sentiment analysis designed in this study in general are not much different from the results of the 2019 RKCI survey. The results of performance measurement of this model are for an Accuracy value of 80.10% while a precision value of 81.10% and a recall value by 82.62%. From the results of this study it was found that 5 cities were at the level of Integrative maturity (score 60 to 79), namely Tangerang, Kediri, Parepare, Probolinggo and Bogor, while the other 20 cities were at the Scattered level (score 40 to 59). The average score of big cities category in Indonesia in this study was 57.73, medium cities was 56.81 and small cities was 54.21.
format Theses
author Setiyono
spellingShingle Setiyono
BIG DATA ANALYTICS FOR SAFE AND SECURE CITY
author_facet Setiyono
author_sort Setiyono
title BIG DATA ANALYTICS FOR SAFE AND SECURE CITY
title_short BIG DATA ANALYTICS FOR SAFE AND SECURE CITY
title_full BIG DATA ANALYTICS FOR SAFE AND SECURE CITY
title_fullStr BIG DATA ANALYTICS FOR SAFE AND SECURE CITY
title_full_unstemmed BIG DATA ANALYTICS FOR SAFE AND SECURE CITY
title_sort big data analytics for safe and secure city
url https://digilib.itb.ac.id/gdl/view/45596
_version_ 1821999405467697152