Smart City Gnosys

Smart city article details

Title Explainable Artificial Intelligence For Smart City Application: A Secure And Trusted Platform
ID_Doc 25365
Authors Kabir M.H.; Hasan K.F.; Hasan M.K.; Ansari K.
Year 2022
Published Studies in Computational Intelligence, 1025
DOI http://dx.doi.org/10.1007/978-3-030-96630-0_11
Abstract Artificial Intelligence (AI) is one of the disruptive technologies that is shaping the future. It has growing applications for data-driven decisions in major smart city solutions, including transportation, education, healthcare, public governance, and power systems. At the same time, it is gaining popularity in protecting critical cyber infrastructure from cyber threats, attacks, damages, or unauthorized access. However, one of the significant issues of those traditional AI technologies (e.g., deep learning) is that the rapid progress in complexity and sophistication propelled and turned out to be uninterpretable black boxes. On many occasions, it is very challenging to understand the decision and bias to control and trust systems’ unexpected or seemingly unpredictable outputs. It is acknowledged that the loss of control over interpretability of decision-making becomes a critical issue for many data-driven automated applications. But how may it affect the system’s security and trustworthiness? This chapter conducts a comprehensive study of machine learning applications in cybersecurity to indicate the need for explainability to address this question. While doing that, this chapter first discusses the black-box problems of AI technologies for Cybersecurity applications in smart city-based solutions. Later, considering the new technological paradigm, Explainable Artificial Intelligence (XAI), this chapter discusses the transition from black-box to white-box. This chapter also discusses the transition requirements concerning the interpretability, transparency, understandability, and Explainability of AI-based technologies in applying different autonomous systems in smart cities. Finally, it has presented some commercial XAI platforms that offer explainability over traditional AI technologies before presenting future challenges and opportunities. © 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.
Author Keywords Cyber security; Deep learning; Explainable AI; Machine learning; Privacy; Transparency


Similar Articles


Id Similarity Authors Title Published
25364 View0.928Lahby M.; Kose U.; Bhoi A.K.Explainable Artificial Intelligence For Smart CitiesExplainable Artificial Intelligence for Smart Cities (2021)
5151 View0.924Javed A.R.; Ahmed W.; Pandya S.; Maddikunta P.K.R.; Alazab M.; Gadekallu T.R.A Survey Of Explainable Artificial Intelligence For Smart CitiesElectronics (Switzerland), 12, 4 (2023)
4464 View0.921Algarni M.; Mishra S.A Secure And Reliable Framework For Explainable Artificial Intelligence (Xai) In Smart City ApplicationsEngineering, Technology and Applied Science Research, 14, 4 (2024)
52957 View0.913Gelbukh A.; Zamir M.T.; Ullah F.; Ali M.; Taiba T.; Usman M.; Hafeez N.; Dudaeva L.; Fasoldt C.State-Of-The-Art Review In Explainable Machine Learning For Smart-Cities ApplicationsStudies in Big Data, 148 (2024)
6615 View0.91Ghonge M.M.; Pradeep N.; Jhanjhi N.Z.; Kulkarni P.M.Advances In Explainable Ai Applications For Smart CitiesAdvances in Explainable AI Applications for Smart Cities (2024)
41158 View0.907Khan A.; Jhanjhi N.Z.; Hamid D.H.T.B.H.A.; bin Haji Omar H.A.H.Overview Of Xai For The Development And Modernization Of Smart Cities: Explainable Artificial IntelligenceAdvances in Explainable AI Applications for Smart Cities (2024)
53141 View0.897Mohammad A.A.S.; Mohammad S.I.S.; Al Oraini B.; Vasudevan A.; Hindieh A.; Altarawneh A.; Alshurideh M.T.; Ali I.Strategies For Applying Interpretable And Explainable Ai In Real World Iot ApplicationsDiscover Internet of Things, 5, 1 (2025)
40118 View0.888Khan A.; Jhanjhi N.Z.; binti Awang Haji Hamid D.H.T.; bin Haji Omar H.A.H.Open Challenges And Research Issues Of Xai In Modern Smart CitiesAdvances in Explainable AI Applications for Smart Cities (2024)
3350 View0.881Sharma V.; Seetharaman T.; Mohammed Essam K.; Alkhayyat A.A Novel Explainable Artificial Intelligence-Based Deep Reinforcement Learning For Secured Smart City ApplicationsLecture Notes in Networks and Systems, 787 LNNS (2023)
31004 View0.881Vallati M.; Chrpa L.In Defence Of Good Old-Fashioned Artificial Intelligence Approaches In Intelligent Transportation SystemsIEEE Conference on Intelligent Transportation Systems, Proceedings, ITSC (2023)