Mobility-based Traffic Forecasting in a Multimodal Transport System
- URL: http://arxiv.org/abs/2411.08052v1
- Date: Tue, 05 Nov 2024 18:58:30 GMT
- Title: Mobility-based Traffic Forecasting in a Multimodal Transport System
- Authors: Henock M. Mboko, Mouhamadou A. M. T. Balde, Babacar M. Ndiaye,
- Abstract summary: We study the analysis of all the movements of the population on the basis of their mobility from one node to another, to observe, measure, and predict the impact of traffic according to this mobility.
Our work focuses on exploring some machine learning methods to predict traffic in a multimodal transportation network from population mobility data.
- Score: 0.0
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- Abstract: We study the analysis of all the movements of the population on the basis of their mobility from one node to another, to observe, measure, and predict the impact of traffic according to this mobility. The frequency of congestion on roads directly or indirectly impacts our economic or social welfare. Our work focuses on exploring some machine learning methods to predict (with a certain probability) traffic in a multimodal transportation network from population mobility data. We analyze the observation of the influence of people's movements on the transportation network and make a likely prediction of congestion on the network based on this observation (historical basis).
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