Prevent Car Accidents by Using AI
Sri Siddhartha Reddy Gudemupati, Yen Ling Chao, Lakshmi Praneetha, Kotikalapudi, Ebrima Ceesay

TL;DR
This paper explores using machine learning models trained on crash and weather data to predict crash severity and improve traffic safety, aiming to reduce car accidents worldwide.
Contribution
It introduces a machine learning approach combining crash and weather data for accident severity prediction, advancing traffic safety research.
Findings
Machine learning models can effectively predict crash severity.
Weather data improves the accuracy of accident prediction.
The approach has potential to reduce traffic accidents.
Abstract
Transportation facilities are becoming more developed as society develops, and people's travel demand is increasing, but so are the traffic safety issues that arise as a result. And car accidents are a major issue all over the world. The cost of traffic fatalities and driver injuries has a significant impact on society. The use of machine learning techniques in the field of traffic accidents is becoming increasingly popular. Machine learning classifiers are used instead of traditional data mining techniques to produce better results and accuracy. As a result, this project conducts research on existing work related to accident prediction using machine learning. We will use crash data and weather data to train machine learning models to predict crash severity and reduce crashes.
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Taxonomy
TopicsTraffic Prediction and Management Techniques · IoT and GPS-based Vehicle Safety Systems
MethodsEmirates Airlines Office in Dubai
