Analysis of Crash data using Machine Learning and Improve design of Road Intersection
Keywords:
Accident Classification, Collision Diagram DevelopmentAbstract
Road crashes are an issue that affects the whole globe and is now ranked as the ninth leading cause of mortality worldwide. It is also a significant issue in our nation because of the very high number of traffic collisions that occur each year. For this reason, it is very important to analyze crash data and factors influencing it. Telangana state police department records all the crashes occurred in the state. In this project the accident data of year 2019 is collected from Hyderabad traffic police and data is studied for identifying accident patterns using machine learning algorithms and develop improved corridor design addressing the proposed counter measures.
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