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Machine learning-based detection and mitigation of cyberattacks in adaptive cruise control systems
by
Wan, Nan
, Yang, Li
, Chang, Jie
, Zhang, Yan-Tao
, Zhang, Hao
, Wu, Zi-Wen
, Chen, Jie
in
639/166/987
/ 639/166/988
/ 639/766/25
/ 639/766/259
/ 639/766/530
/ Adaptive cruise control
/ Anomaly detection and mitigation
/ Automobile safety
/ Communication
/ Control systems
/ Cybersecurity
/ Efficiency
/ Energy consumption
/ False information
/ False information injection
/ Humanities and Social Sciences
/ Learning algorithms
/ Literature reviews
/ Machine learning
/ multidisciplinary
/ Performance evaluation
/ Science
/ Science (multidisciplinary)
/ Sensors
/ Simulation
/ Traffic accidents & safety
/ Vehicles
2025
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Machine learning-based detection and mitigation of cyberattacks in adaptive cruise control systems
by
Wan, Nan
, Yang, Li
, Chang, Jie
, Zhang, Yan-Tao
, Zhang, Hao
, Wu, Zi-Wen
, Chen, Jie
in
639/166/987
/ 639/166/988
/ 639/766/25
/ 639/766/259
/ 639/766/530
/ Adaptive cruise control
/ Anomaly detection and mitigation
/ Automobile safety
/ Communication
/ Control systems
/ Cybersecurity
/ Efficiency
/ Energy consumption
/ False information
/ False information injection
/ Humanities and Social Sciences
/ Learning algorithms
/ Literature reviews
/ Machine learning
/ multidisciplinary
/ Performance evaluation
/ Science
/ Science (multidisciplinary)
/ Sensors
/ Simulation
/ Traffic accidents & safety
/ Vehicles
2025
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Machine learning-based detection and mitigation of cyberattacks in adaptive cruise control systems
by
Wan, Nan
, Yang, Li
, Chang, Jie
, Zhang, Yan-Tao
, Zhang, Hao
, Wu, Zi-Wen
, Chen, Jie
in
639/166/987
/ 639/166/988
/ 639/766/25
/ 639/766/259
/ 639/766/530
/ Adaptive cruise control
/ Anomaly detection and mitigation
/ Automobile safety
/ Communication
/ Control systems
/ Cybersecurity
/ Efficiency
/ Energy consumption
/ False information
/ False information injection
/ Humanities and Social Sciences
/ Learning algorithms
/ Literature reviews
/ Machine learning
/ multidisciplinary
/ Performance evaluation
/ Science
/ Science (multidisciplinary)
/ Sensors
/ Simulation
/ Traffic accidents & safety
/ Vehicles
2025
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Machine learning-based detection and mitigation of cyberattacks in adaptive cruise control systems
Journal Article
Machine learning-based detection and mitigation of cyberattacks in adaptive cruise control systems
2025
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Overview
The growing reliance on Vehicle-to-Vehicle (V2V) communication has heightened the vulnerability of Adaptive Cruise Control (ACC) systems to cybersecurity threats, such as manipulation or forgery of V2V messages. This paper investigates the impact of three types of false information injection (FII) on vehicle collision risk and driving efficiency. To address these vulnerabilities, we develop a novel machine learning-based onboard model, ACC anomaly Detection and Mitigation (ACCDM), designed to strengthen ACC resilience against such cyberattacks. ACCDM continuously monitors vehicle parameters under benign conditions, detecting deviations that indicate potential threats and deploying real-time mitigations to maintain safety and efficiency. Simulations across continuous and clustered attack scenarios validate ACCDM’s accuracy in detecting cybersecurity threats, preserving safe following distances, and mitigating the negative impacts of cyberattacks on ACC systems.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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