Road accident prediction and model interpretation using a hybrid K Circuit Diagram The findings are discussed through a data-driven approach to understand the factors influencing road car accidents and highlight the key ones to propose accident prevention solutions. "Enhancing Road Safety Through AI-Driven Accident Prediction: A Case Study" This case study examines the practical application of AI-driven accident prediction in a specific city or region. It evaluates the effectiveness of the prediction model in identifying high-risk areas and providing actionable insights to transportation authorities.

AI does more than just predict accidents; it helps prevent them too. It spots when drivers are distracted, like using phones. Then, it quickly warns them to pay attention. This helps stop accidents before they happen. To show how AI is changing road safety, here's a table. It shows what AI and ML do to make roads safer: The research addresses road accident prediction as a classification issue. Several studies have been conducted to predict road accidents and investigate the severity of road accidents, however, very few of them focus on analysing the relationships between road accidents and the factors contributing to those accidents.

(PDF) Road Car Accident Prediction Using a Machine Circuit Diagram
Artificial Intelligence (AI) has driven solutions in diverse areas; one of the most prominent fields is Computer Vision (CV). Accordingly, solutions to effectively detect road accidents can be a game-changer for road safety. The focus is on Vision Zero, i.e., eliminate all traffic fatalities and severe injuries.

This project combines predictive analytics and an interactive chatbot to enhance road safety. It uses historical traffic data to train accident prediction models and provides real-time feedback via a chatbot. The system aims to reduce accidents through data-driven insights and user engagement.
Deep Learning applied to Road Accident Detection with Transfer Learning ... Circuit Diagram
A road traffic accident (RTA) is defined as a collision involving at least one vehicle with roadside objects or other vehicles and can result in property damage, injuries, or fatalities (Mamo et al., 2023).It is currently a global challenge that causes approximately 1.3 million fatalities annually (WHO, 2022).This is especially significant for children and young adults aged between 5 and 29 Steps to Enhance Traffic Prediction with AI. Identify Your Unique Goals: Understand specifically what you want to achieve in predicting traffic accidents. Define success metrics. Collect Comprehensive Data: Gather data, including historical accident records, weather reports, and new traffic data. Use AI Tools: Sign up for AI development platforms like Appaca or TensorFlow to start building models.
