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Abstract
Transportation and logistics systems are becoming increasingly complex and critical to modern infrastructure. This paper proposes a novel AI-enhanced fault-tolerant control framework to address the dual challenges of physical malfunctions and cyber threats. By leveraging advanced machine learning algorithms and real-time data analytics, the proposed methodology aims to enhance the reliability, safety, and security of transportation and logistics systems. This research explores the foundations and practical implementations of AI-driven anomaly detection, predictive maintenance, and autonomous response systems. The findings demonstrate significant improvements in system resilience and robustness, making a substantial contribution to the field of intelligent transportation management.
Keywords
AI-enabled supply chain
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predictive maintenance
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cybersecurity in logistics
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anomaly detection
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fault-tolerant control
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Hajar Fatorachian, Hadi Kazemi.
AI-enhanced fault-tolerant control and security in transportation and logistics systems: addressing physical and cyber threats.
Complex Engineering Systems, 2024, 4(3): 17 DOI:10.20517/ces.2024.35
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