Traffic Congestion Prediction Using Machine Learning Techniques
- URL: http://arxiv.org/abs/2206.10983v1
- Date: Wed, 22 Jun 2022 11:17:46 GMT
- Title: Traffic Congestion Prediction Using Machine Learning Techniques
- Authors: Moumita Asad, Rafed Muhammad Yasir, Dr. Naushin Nower, Dr. Mohammad
Shoyaib
- Abstract summary: We propose a prediction model for traffic congestion that can predict congestion based on day, time and several weather data.
With this model, congestion of a road can be predicted one week ahead with an average RMSE of 1.12.
- Score: 2.034025911158587
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The prediction of traffic congestion can serve a crucial role in making
future decisions. Although many studies have been conducted regarding
congestion, most of these could not cover all the important factors (e.g.,
weather conditions). We proposed a prediction model for traffic congestion that
can predict congestion based on day, time and several weather data (e.g.,
temperature, humidity). To evaluate our model, it has been tested against the
traffic data of New Delhi. With this model, congestion of a road can be
predicted one week ahead with an average RMSE of 1.12. Therefore, this model
can be used to take preventive measure beforehand.
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