Urban traffic congestion is a persistent issue, leading to prolongs travel times, increased fuel usage, and negative environmental impacts like pollution. To address this issue, we proposed an AI-driven system that optimizes the traffic flow by utilizing machine learning(ML) algorithms. This system predicts traffic density at specific intersections by analyzing historical traffic data, time of the day, day of the week and environmental factors. By providing accurate traffic forecasts, which helps the users to take their comfortable decisions in real-time and reduce congestion.
Worthwhile traffic management is essential for contemporary urban regions to minimize congestion, enhance commute efficiency and promote environmental sustainability. This project aims to develop an AI-driven system capable of predicting traffic patterns by leveraging historical data such as date, time, junctions, and other relevant factors through ML techniques. The primary objective is to provide accurate forecasts of vehicle density at key intersections, empowering authorities, and commuters to make informed, data-based decisions.
This project leverages a detailed dataset containing fields like Date, Time, Junction, Day, and Vehicle Counts. The dataset is carefully preprocessed to address missing values, estimate outliers, and standardize the data. Advanced feature engineering is applied to extract meaningful variables, such as peak hours, weekdays, and weather conditions (if any), which play a crucial role in influencing traffic trends.
The established model is integrated into a web application featuring a user-friendly interface. Users can input parameters such as date, time, and junction to obtain real-time traffic predictions. These insights can assist in optimizing traffic signal timings, suggesting alternative routes, and planning resources allocation to improve traffic management. By leveraging AI technologies, this system seeks to alleviate congestion, reduce travel delays, and enhance urban mobility, contributing to the development of sustainable and smart cities.
This project showcases the effective implementation of AI in addressing real-world traffic issues, alleviating congestion, and promoting sustainable urban mobility. It transforms raw data into actionable insights, playing a vital role in advancing the concepts of smart cities.
Utilizing advanced machine learning techniques, the system provides praises and dependable predictions, aiding the growth of smart cities and promoting a sustainable urban ecosystem. This project highlights the transformative power of AI in tackling complex real-world problems and paving the way for more efficient and livable urban spaces.