Abstract
We are seeing an explosion in artificial intelligence (AI), which may be defined as a technology that mimics the traits often associated with human intelligence. Today, many industries rely on artificial intelligence, including marketing and banking, healthcare and security; robotics and transportation; chatbots; artificial creativity; and manufacturing. AI has recently started to play a significant role in smart city operations. AI is used to describe how well computers can imitate human thought processes. Expert systems, natural language processing, speech recognition, and machine vision are some areas of AI. Smart City uses information and communication technologies to boost the economy, improve the quality of people’s lives, and support governing. AI can play a significant role in making cities safer and better for people to live in by giving people more access and control over their own homes, monitoring traffic and managing waste. In this paper, the authors have explored the recent artificial intelligence applications for sustainable development in smart cities. These applications can be used in (1) sustainable environmental plans, with requirements with more and better facilities in the limited available area, and (2) enhanced standard of living for urban residents at a more economical expense.
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Alam, T., Gupta, R., Qamar, S., Ullah, A. (2022). Recent Applications of Artificial Intelligence for Sustainable Development in Smart Cities. In: Al-Emran, M., Shaalan, K. (eds) Recent Innovations in Artificial Intelligence and Smart Applications. Studies in Computational Intelligence, vol 1061. Springer, Cham. https://doi.org/10.1007/978-3-031-14748-7_8
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