An Overview of Cyber Threats, Attacks, and Countermeasures on the Primary Domains of Smart Cities
July 10, 2022 ยท The Cartographer ยท ๐ Applied Sciences
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"Title-pattern auto-detect: An Overview of Cyber Threats, Attacks, and Countermeasures on the Primary Domains of Smart Cities"
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Authors
Vasiliki Demertzi, Stavros Demertzis, Konstantinos Demertzis
arXiv ID
2207.04424
Category
cs.CR: Cryptography & Security
Citations
69
Venue
Applied Sciences
Last Checked
8 days ago
Abstract
A smart city is a place where existing facilities and services are enhanced by digital technology to benefit people and companies. The most critical infrastructures in this city are interconnected. Increased data exchange across municipal domains aims to manage the essential assets, leading to more automation in city governance and optimization of the dynamic offered services. However, no clear guideline or standard exists for modeling these data flows. As a result, operators, municipalities, policymakers, manufac-turers, solution providers, and vendors are forced to accept systems with limited scalability and varying needs. Nonetheless, it is critical to raise awareness about smart city cybersecurity and implement suitable measures to safeguard citizens' privacy and security because the cyber threats seem to be well-organized, diverse, and sophisticated. This study aims to present an overview of cyber threats, attacks, and countermeasures on the primary domains of smart cities (smart government, smart mobility, smart environment, smart living, smart healthcare, smart economy, and smart people) to present information extracted from state-of-the-art to policymakers to perceive the critical situation and, at the same time, to be a valuable resource for the scientific community.
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