Data Analytics for Smart cities: Challenges and Promises
- URL: http://arxiv.org/abs/2109.05581v1
- Date: Sun, 12 Sep 2021 18:33:24 GMT
- Title: Data Analytics for Smart cities: Challenges and Promises
- Authors: Farid Ghareh Mohammadi, Farzan Shenavarmasouleh, M. Hadi Amini, and
Hamid R. Arabnia
- Abstract summary: The goal of this study is to provide a comprehensive survey of data analytics in smart cities.
In this paper, we aim to focus on one of the smart cities important branches, namely Smart Mobility.
Intelligent decision-making systems in smart mobility offer many advantages such as saving energy, relaying city traffic, and more importantly, reducing air pollution by offering real-time useful information and imperative knowledge.
- Score: 3.1498833540989413
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The explosion of advancements in artificial intelligence, sensor
technologies, and wireless communication activates ubiquitous sensing through
distributed sensors. These sensors are various domains of networks that lead us
to smart systems in healthcare, transportation, environment, and other relevant
branches/networks. Having collaborative interaction among the smart systems
connects end-user devices to each other which enables achieving a new
integrated entity called Smart Cities. The goal of this study is to provide a
comprehensive survey of data analytics in smart cities. In this paper, we aim
to focus on one of the smart cities important branches, namely Smart Mobility,
and its positive ample impact on the smart cities decision-making process.
Intelligent decision-making systems in smart mobility offer many advantages
such as saving energy, relaying city traffic, and more importantly, reducing
air pollution by offering real-time useful information and imperative
knowledge. Making a decision in smart cities in time is challenging due to
various and high dimensional factors and parameters, which are not frequently
collected. In this paper, we first address current challenges in smart cities
and provide an overview of potential solutions to these challenges. Then, we
offer a framework of these solutions, called universal smart cities decision
making, with three main sections of data capturing, data analysis, and decision
making to optimize the smart mobility within smart cities. With this framework,
we elaborate on fundamental concepts of big data, machine learning, and deep
leaning algorithms that have been applied to smart cities and discuss the role
of these algorithms in decision making for smart mobility in smart cities.
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