Research on Intelligent Algorithms for Early Warning and Emergency Handling in Vehicle Safety Monitoring Systems

Research on Intelligent Algorithms for Early Warning and Emergency Handling in Vehicle Safety Monitoring Systems

Authors

  • Jian Yang Xingruan Group Co., Ltd. Hangzhou 310000, Zhejiang

DOI:

https://doi.org/10.53469/ijomsr.2025.08(08).01

Keywords:

Intelligent algorithm, Vehicle safety monitoring, Early warning system, Urgent handling, Deep learning

Abstract

The application of intelligent algorithms in vehicle safety monitoring systems can significantly improve the efficiency and accuracy of early warning and emergency handling. By integrating deep learningBy combining advanced algorithms such as Xi Jinping and machine learning with vehicle monitoring data, the system can analyze and predict potential safety risks in real time, issue warning signals in a timely manner, and take corresponding measures quickly in emergency situations. This article focuses on a case study of an intelligent vehicle monitoring system and explores in detail the specific applications and effects of intelligent algorithms in safety warning and emergency handling. Through the analysis of the system, the enormous potential and practical application value of intelligent algorithms in improving vehicle safety have been demonstrated.

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Published

2025-08-31

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