Smart City Gnosys

Smart city article details

Title Empowering Things With Intelligence: A Survey Of The Progress, Challenges, And Opportunities In Artificial Intelligence Of Things
ID_Doc 22953
Authors Zhang J.; Tao D.
Year 2021
Published IEEE Internet of Things Journal, 8, 10
DOI http://dx.doi.org/10.1109/JIOT.2020.3039359
Abstract In the Internet-of-Things (IoT) era, billions of sensors and devices collect and process data from the environment, transmit them to cloud centers, and receive feedback via the Internet for connectivity and perception. However, transmitting massive amounts of heterogeneous data, perceiving complex environments from these data, and then making smart decisions in a timely manner are difficult. Artificial intelligence (AI), especially deep learning, is now a proven success in various areas, including computer vision, speech recognition, and natural language processing. AI introduced into the IoT heralds the era of AI of things (AIoT). This article presents a comprehensive survey on AIoT to show how AI can empower the IoT to make it faster, smarter, greener, and safer. Specifically, we briefly present the AIoT architecture in the context of cloud computing, fog computing, and edge computing. Then, we present progress in AI research for IoT from four perspectives: 1) perceiving; 2) learning; 3) reasoning; and 4) behaving. Next, we summarize some promising applications of AIoT that are likely to profoundly reshape our world. Finally, we highlight the challenges facing AIoT and some potential research opportunities. © 2014 IEEE.
Author Keywords 3-D; aged care; artificial intelligence (AI); biometric recognition; causal reasoning; cloud/fog/edge computing; deep learning; human-machine interaction; Internet of Things (IoT); machine translation (MT); privacy; security; sensors; smart agriculture; smart city; smart grids; speech recognition


Similar Articles


Id Similarity Authors Title Published
7122 View0.928Rajasekaran A.S.; Al-Turjman F.; Suganyadevi S.Aiot: Artificial Intelligence Of ThingsAIoT: Artificial Intelligence of Things (2025)
10520 View0.897Kataria A.; Rani S.; Kautish S.Artificial Intelligence Of Things For Sustainable Development Of Smart City InfrastructuresWorld Sustainability Series, Part F3420 (2024)
33581 View0.895Verma A.; Kumar R.Iot And Aiot: Applications, Challenges And OptimizationThe Future of Computing: Ubiquitous Applications and Technologies (2024)
32844 View0.889Banaeian Far S.; Imani Rad A.Internet Of Artificial Intelligence (Ioai): The Emergence Of An Autonomous, Generative, And Fully Human-Disconnected CommunityDiscover Applied Sciences, 6, 3 (2024)
35278 View0.889Gao Y.; Liu S.; Guo B.; Xu X.; Bian H.; Hao J.; Xu W.; Yu Z.Lightweight Sensing-Computing-Decision Collaboration Enhancement For Multi-Mobile Terminals; [多移动终端轻量化感 – 算 – 策协同增强方法]Scientia Sinica Informationis, 54, 9 (2024)
7116 View0.887Maity I.; Mandal A.; Roy P.; Sarkar S.K.Aiot In Smart Education SystemsMerging Artificial Intelligence With the Internet of Things (2025)
10516 View0.887Muhammed D.; Ahvar E.; Ahvar S.; Trocan M.; Montpetit M.-J.; Ehsani R.Artificial Intelligence Of Things (Aiot) For Smart Agriculture: A Review Of Architectures, Technologies And SolutionsJournal of Network and Computer Applications, 228 (2024)
54853 View0.886Zhang J.; Tang J.; Chen Y.; Liu J.; Ye J.; Wolf M.; Narayanan V.; Srivastava M.; Jordan M.I.; Bahl V.The 5Th Artificial Intelligence Of Things (Aiot) WorkshopProceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (2022)
48408 View0.884Djenouri Y.; Belhadi A.; Srivastava G.; Houssein E.H.; Lin J.C.-W.Sensor Data Fusion For The Industrial Artificial Intelligence Of ThingsExpert Systems, 39, 5 (2022)
32139 View0.884Elhanashi A.; Dini P.; Saponara S.; Zheng Q.Integration Of Deep Learning Into The Iot: A Survey Of Techniques And Challenges For Real-World ApplicationsElectronics (Switzerland), 12, 24 (2023)