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Smart Cities Secured: Utilizing AI Firewalls for Sustainable Urban Environments

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08 wrz 2025

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Figure 1:

Smart cities secure: utilizing AI firewall for sustainable urban environments. AI, artificial intelligence.
Smart cities secure: utilizing AI firewall for sustainable urban environments. AI, artificial intelligence.

Figure 2:

Implementing an AI firewall in smart cities. AI, artificial intelligence.
Implementing an AI firewall in smart cities. AI, artificial intelligence.

Figure 3:

Performance metrics of AI firewall in smart cities. AI, artificial intelligence.
Performance metrics of AI firewall in smart cities. AI, artificial intelligence.

Figure 4:

AI-driven firewall for secure and sustainable digital cities. AI, artificial intelligence.
AI-driven firewall for secure and sustainable digital cities. AI, artificial intelligence.

Figure 5:

Comparative analysis of AI firewall functionalities. AI, artificial intelligence.
Comparative analysis of AI firewall functionalities. AI, artificial intelligence.

Figure 6:

Core elements in building sustainable smart cities.
Core elements in building sustainable smart cities.

Comparative table

Reference Key findings Advantages Disadvantages Accuracy (%) Remarks
Smith et al. (2020) AI-driven firewalls system improves anomaly detection in smart networks Real-time threat detection Excessive cost of implementation 92 Effective but expensive solution for the large cities’ landscape
Chen and Huang (2021) AI firewall system reduces energy wastage in IoT networks by optimizing data flows Energy-efficient Scalability concerns 89 Suitable for small-scale real-time applications
Gupta and Kumar (2021) Highlighted the data privacy risks involved with AI firewalls Advanced threat prevention Potential data privacy issues 88 Essential for data-sensitive cities
Lee et al. (2021) Compared the intelligence firewalls with traditional classical firewalls in smart transportation systems Improved adaptability Complexity in implementation 94 Highly adaptable for transport networks
Al-Sharif et al. (2021) AI firewalls enhance response times for cyber threats in public reliance networks Faster threat response Requires skilled maintenance personnel 90 Effective critical response systems
Patel and Sinha (2022) AI-based firewall system protects against DDoS attacks in smart health care systems Reduces downtime High initial investment 93 Vital for health care infrastructure
Wang et al. (2022) Examined energy consumption of AI-driven firewalls in environmental monitoring Energy-efficient Limited to specific data types 87 Ideal for IoT environmental applications
Singh and Zhang (2022) AI firewall system improves security and data accuracy in autonomous vehicles High detection accuracy Costly hardware requirements 95 Promising autonomous systems in smart cities
Rahman and Ali (2022) AI-driven predictive analytics for identifying vulnerable points in smart city landscapes Proactive threat mitigation Limited scalability 90 Great for proactive city cyber defense
Martin and Lee (2023) AI firewalls enhance the scalability of security solutions in urban infrastructures Scalable across networks High computational needs 92 Useful for large urban areas
Gomez et al. (2023) Evaluated the impact of AI firewall systems on protecting public IoT devices in parks and public spaces Enhanced protection Frequent updates needed 88 Suitable for public IoT devices
Lee and Nakamura (2023) Analyzed the adaptability of AI-driven firewalls in urban traffic systems Real-time adaptability Expensive maintenance 91 Effective for adaptive traffic control
Hussein and Omar (2023) AI firewalls contribute to low energy consumption in smart grids, enhancing sustainability Energy-efficient May affect data latency 89 Best for smart energy networks
Malik and Rahim (2023) Highlighted data privacy concerns when using AI-driven firewalls for citizen information Secures personal data Data privacy challenges 87 Vital for privacy-focused cities
Brown et al. (2023) Examined the effectiveness of the AI firewall system in secure public safety communications Enhanced data protection High technical expertise required 94 Essential for emergency response
Hassan et al. (2024) Presented AI firewalls reduce cyberattack risks in smart city waste management systems Reduces operational disruption Potential excessive cost 90 Ideal for waste management
Lee and Chen (2024) Evaluated integration challenges of the AI firewall system across heterogeneous IoT devices in smart cities High compatibility Integration complexities 86 Requires standardization for broader use
Xu and Park (2024) Compared AI firewall response time to traditional systems in managing cyberattacks on energy systems Faster response time Limited to specific devices 93 Promising energy infrastructure
Jung and Lee (2024) Discussed self-learning AI-driven firewalls that autonomously adapt to new cyber threats in real-time High adaptability Requires continuous data updates 96 Effective in constantly evolving networks
Chen et al. (2024) Reviewed AI-driven firewall applications in managing secure data flow in transportation systems, highlighting its impact on reducing energy and data processing costs Cost-effective High installation cost 92 Ideal for energy-efficient transport systems

Comparative study of related works and current research on AI firewalls for smart cities

Aspect Previous work Current work (smart cities secured) Research gaps addressed
Focus Emphasized the vulnerabilities of IoT devices and traditional classical firewalls in smart cities (Zhu et al., 2021; Patel & Sinha, 2022) It explores AI-driven firewall systems as adaptive and robust solutions for cybersecurity in smart cities By highlighting the transformative role of AI firewall systems in combating evolving cyber threats
Technological approach Investigated traditional classical firewalls and initial machine-learning models for anomaly detection (Chen et al., 2024) Introduces advanced AI algorithms, such as self-learning and predictive analytics, for real-time threat management Demonstrates how advanced AI capabilities are superior to traditional methods in smart city applications
Cybersecurity challenges Prioritizing individual vulnerabilities in IoT systems without a comprehensive framework (Yin et al., 2020) Provides a comprehensive approach to addressing interconnected vulnerabilities across different smart city services Integrates fragmented insights into an integrated AI powered cybersecurity approach
Sustainability impact Limited focus on the cybersecurity and sustainability relationship (Hassan et al., 2024) Connects robust cybersecurity measures with sustainable urban development objectives, utilizing efficient energy utilization Expands the discussion to include the distinct advantages of security and environmental sustainability
Implementation challenges Highlighted excessive cost and data privacy concerns as obstacles to adoption (Malik & Rahim, 2023) Discusses solutions such as federated learning and edge AI-driven firewalls to overcome cost, scalability, and privacy concerns Provides innovative approaches to tackle financial and technical issues
Future trends Scalability and interoperability were identified as emerging cyber issues but provided limited solutions (Lee & Chen, 2024) It explores emerging trends such as XAI and edge computing for improved scalability and transparency Creates effective strategies for future research and real-world implementation

AI firewall metrics for smart city security and efficiency

Metric Example data Description Data source
Detection accuracy 97.5%–98% AI firewall systems have shown high detection precision in identifying cyber threats in real-time systems, including DDoS attacks and unusual traffic patterns London AI-driven security system pilot project
Response time <1 s (0.8 s) The response time of AI firewalls to eliminate and eliminate threats is extremely rapid, ensuring minimal impact from cyberattacks New York City smart city utility environment
Energy efficiency 30% reduction in energy consumption AI-driven firewalls optimize energy utilization by adjusting resources during low-risk periods, eliminating the energy consumption of monitoring systems without compromising security New York City data Centre energy optimization case study
Proactive threat detection 35% improvement in cybersecurity posture, detecting cyber threats two weeks in advance AI-driven firewalls utilize ML models to predict vulnerabilities and detect cyber threats proactively, allowing cities to mitigate potential risks Singapore predictive anomaly detection system
Cost efficiency 25% reduction in cybersecurity-related costs over the first year AI firewalls reduce cybersecurity costs, including service downtime and manual intervention, leading to greater cost-effectiveness Barcelona Smart City Initiative Scheme
Scalability and adaptability 500,000+ devices covered without performance degradation The AI firewall systems’ ability to scale encompasses many devices across various urban areas, maintaining consistent performance and reliability Singapore smart city network scalability tests

Traditional firewalls vs AI firewalls

Feature Traditional firewalls AI firewalls
Threat detection Relies on predefined rules and signatures Uses ML and DL algorithms to detect new and unknown threats based on data patterns
Adaptability Static rules require manual updates for new threats Continuously learn and adapt to evolving threats
Real-time response Limited real-time capabilities Can autonomously detect and mitigate threats in real-time
Scalability May struggle with large, dynamic IoT environments Scalable; adapts seamlessly as new IoT devices are integrated into the network
Response speed Slower response time; human intervention is often required Instant response with minimal human intervention
Anomaly detection Limited to known attack signatures Detects new anomalies and behavioral changes in real-time
Resource efficiency May cause delay due to rule-based operations Optimized for resource efficiency, using ML to process data efficiently
Deployment complexity It is easier to deploy but requires regular manual updates It is more complex to deploy but provides automated and long-term security benefits
Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Inżynieria, Wstępy i przeglądy, Inżynieria, inne