Affiliation:
1. Maharaja Surajmal Institute, Guru Gobind Singh Indraprastha University, India
Abstract
A city becomes a smart city when it employs ICT (information and communication technology) to share data with the public, improve government services' quality, and develop operational efficiency. The key objective of a smart city is to optimize the operations of the city and encourage economic growth through data analysis and the use of smart technologies. This chapter focuses on exploring the IoT and soft computing technologies' role in the development of smart cities. These methods are used for designing optimal policies efficiently for complex problems around smart cities. Different case sectors of a smart city are explored, and various machine learning-based algorithms are discussed to help, improve, and resolve their issues. Additionally, comparisons are drawn between the techniques adopted in existing systems and the results they yield, along with identification of the limitations they present.
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