Babacar M. Ndiaye

PE
h-index9
3papers
2citations
Novelty10%
AI Score15

3 Papers

SOC-PHNov 5, 2024
Mobility-based Traffic Forecasting in a Multimodal Transport System

Henock M. Mboko, Mouhamadou A. M. T. Balde, Babacar M. Ndiaye

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).

PENov 12, 2020
Analysis of COVID-19 evolution in Senegal: impact of health care capacity

Mouhamed M. Fall, Babacar M. Ndiaye, Ousmane Seydi et al.

We consider a compartmental model from which we incorporate a time-dependent health care capacity having a logistic growth. This allows us to take into account the Senegalese authorities response in anticipating the growing number of infected cases. We highlight the importance of anticipation and timing to avoid overwhelming that could impact considerably the treatment of patients and the well-being of health care workers. A condition, depending on the health care capacity and the flux of new hospitalized individuals, to avoid possible overwhelming is provided. We also use machine learning approach to project forward the cumulative number of cases from March 02, 2020, until 1st December, 2020.

PEMay 17, 2020
Impact studies of nationwide measures COVID-19 anti-pandemic: compartmental model and machine learning

Mouhamadou A. M. T. Balde, Coura Balde, Babacar M. Ndiaye

In this paper, we deal with the study of the impact of nationwide measures COVID-19 anti-pandemic. We drive two processes to analyze COVID-19 data considering measures. We associate level of nationwide measure with value of parameters related to the contact rate of the model. Then a parametric solve, with respect to those parameters of measures, shows different possibilities of the evolution of the pandemic. Two machine learning tools are used to forecast the evolution of the pandemic. Finally, we show comparison between deterministic and two machine learning tools.