Advancing Data-Driven Decision-Making in Smart Cities through Big Data Analytics: A Comprehensive Review of Existing Literature

Current Journal of Applied Science and Technology, Volume 42, Issue 25, Page 10-18, 2023

9 Pages Posted: 5 Sep 2023

See all articles by Oluwaseun Oladeji Olaniyi

Oluwaseun Oladeji Olaniyi

University of the Cumberlands

Olalekan J. Okunleye

University of the Cumberlands

Samuel Oladiipo Olabanji

Midcontinent Independent System Operator (MISO energy)

Date Written: August 18, 2023

Abstract

Governments and cities are increasingly launching smart city (SC) schemes to address the challenges posed by rapid urbanization and population growth in municipalities. Smart cities utilize data from various sources within a metropolis to enhance urban development, promote qualitative lifestyles, and focus on economic and environmental sustainability. Big data analytics (BDA) plays a crucial role in collecting and analyzing vast amounts of data from SC infrastructures, enabling effective management and implementation of smart city initiatives. BDA helps explore data collected through Internet of Things (IoT) devices and sensors, identifying trends, and making appropriate changes, ultimately making smart cities more efficient, sustainable, and beneficial for their inhabitants. However, big data in SC also presents potential risks and challenges related to urban security and the well-being of residents.

The literature review examines various research approaches, techniques, algorithms, and architectures proposed to address the challenges of handling big data in smart cities. Urbanization's growing trend is causing challenges in managing basic amenities and resources in urban areas, necessitating innovative solutions to ensure efficient functioning and improved quality of life for citizens. Previous research has highlighted the significance of big data analytics in driving smart city decision-making, yet many smart city big data initiatives have faced difficulties in implementation. To overcome these challenges, researchers have explored techniques like artificial intelligence, machine learning, data mining, and deep learning, as well as architectures encompassing layers of instrumentation, middleware, and application for end-users. Additionally, researchers have emphasized the importance of selecting appropriate sensors for efficient data collection and explored low-cost smart traffic systems to improve urban traffic management. Overall, this review synthesizes insights from nine scholarly papers, shedding light on approaches to handling big data challenges in smart cities.

Keywords: Smart city, big data analytics, urbanization, data mining, machine learning, IoT, sensor networks, urban planning, sustainability, smart traffic systems

Suggested Citation

Olaniyi, Oluwaseun Oladeji and Okunleye, Olalekan J. and Olabanji, Samuel Oladiipo, Advancing Data-Driven Decision-Making in Smart Cities through Big Data Analytics: A Comprehensive Review of Existing Literature (August 18, 2023). Current Journal of Applied Science and Technology, Volume 42, Issue 25, Page 10-18, 2023, Available at SSRN: https://ssrn.com/abstract=4546193

Oluwaseun Oladeji Olaniyi (Contact Author)

University of the Cumberlands ( email )

6178 College Station Drive
Williamsburg, KY 40769
United States

HOME PAGE: http://www.ucumberlands.edu

Olalekan J. Okunleye

University of the Cumberlands

Samuel Oladiipo Olabanji

Midcontinent Independent System Operator (MISO energy)

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
864
Abstract Views
2,583
Rank
55,965
PlumX Metrics