Real Time Big Data Analytics For Public Safety In Smart City
Date
2023
Authors
., Manjunatha
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute Of Technology Karnataka Surathkal
Abstract
Advancement in Information Communication Technology (ICT) and the Internet of
Things (IoT) has led to the continuous generation of a large amount of data. Smart city
projects have been implemented in various parts of the world where public data
analysis helps provide a better quality of life. Recently, big data analytics has played
an essential role in many data-driven applications. Big data technologies are moving
towards knowledge discovery from the raw data in real time. Real-time data analytics
is essential in industries such as finance, healthcare and e-commerce, where decisions
need to be made quickly to stay competitive.
Multiple data sources also enable
organizations to gain a more complete picture of their business, customers and
operations. However, processing and analyzing data from multiple sources in real-time
present significant challenges including data integration, data quality and scalability.
To overcome these challenges, organizations must have a well-designed architecture,
the right tools and technologies, skilled data analysts and engineers.
Real-time analytics for finding valuable insights at the right time using smart city
data is crucial in making appropriate decisions for city administration. It is essential to
use multiple data sources as input for the analysis to achieve more accurate data-driven
solutions. Public safety is one of the major concerns in any smart city project in which
real-time analytics is useful in the early detection of valuable data patterns. It is crucial
to find early predictions of crime-related incidents and generate emergency alerts for
making appropriate decisions to provide security to the people and the safety of the
city’s infrastructure.
In this research, we propose a real-time big data analytics
framework using multiple data sources from a smart city to find better data-driven
solutions for public safety. Public safety is one of the major concerns in any smart city
project where real-time analytics is much useful to provide security to the people and
safety to city infrastructure. Analytics using multiple data sources for a specific
data-driven solution helps to find more data patterns, increasing the accuracy ofanalytics results. Data preprocessing is challenging in data analytics when data is
ingested continuously in real time into the analytics system. The proposed system
helps preprocess the real-time data with data blending of multiple data sources used in
the analytics.
The proposed framework is beneficial when data from various sources are ingested
in real time as input data and is also flexible to use any additional data source of
interest. The experimental work was carried out with the proposed framework using
multiple data sources to find real time crime-related insights that help the smart city’s
public safety solutions. The experimental outcome using the proposed data blending
mechanism shows a significant increase in the number of identified useful data patterns
as number of data sources increase. A real time emergency alert system to help the
public safety solution is implemented using a machine learning based classification
model with the proposed framework. Early detection and crime prevention are critical
challenges to provide better safety within the city. Predictive policing has been around
for a long time to monitor crimes based on past crime records by identifying the crime
hotspots. Previous works on crime prediction have used historical data from specific
sources to build the prediction model. In this work, real time data from multiple sources
and historical data are used to improve the prediction model’s performance.