首页|Findings from Department of Computer Applications Broaden Understanding of Machine Learning (Machine Learning for Enhancing Transportation Security: a Comprehensive Analysis of Electric and Flying Vehicle Systems)

Findings from Department of Computer Applications Broaden Understanding of Machine Learning (Machine Learning for Enhancing Transportation Security: a Comprehensive Analysis of Electric and Flying Vehicle Systems)

扫码查看
New research on Machine Learning is the subject of a report. According to news originating from Punjab, India, by NewsRx correspondents, research stated, "This paper delves into the transformative role of machine learning (ML) techniques in revolutionizing the security of electric and flying vehicles (EnFVs). By exploring key domains such as predictive maintenance, cyberattack detection, and intelligent decisionmaking, the study uncovers pivotal insights that will shape the future of this technology.From a theoretical perspective, ML emerges as a cornerstone for fortifying EnFV safety, offering real-time threat detection, predictive maintenance capabilities, and enhanced anomaly detection." Financial support for this research came from Deanship of Scientific Research at King Khalid University. Our news journalists obtained a quote from the research from the Department of Computer Applications, "In practical terms, MLbased solutions are envisioned as instrumental in preventing cyberattacks, reducing downtime, and improving overall safety.The research contributions of this study encompass a comprehensive overview of ML applications in EnFV security, identification of challenges, and paving the way for future research directions. While acknowledging research limitations, particularly the need for realworld implementation, the study emphasizes the crucial yet underexplored ethical considerations in ML for EnFV security. Future research suggestions focus on Explainable AI techniques, real-time ML algorithms for resource-constrained environments, and privacy-preserving ML techniques, aiming for a transparent, efficient, and privacy-aware integration of ML in EnFV security."

PunjabIndiaAsiaCybersecurityCyborgsEmerging TechnologiesMachine LearningTransportationTransportation SecurityDepartment of Computer Applications

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.29)
  • 4
  • 125