Search Everything

Find articles, journals, projects, researchers, and more

Back to Articles

Bayesian Mixture Model for Prediction of Bus Arrival Time

Authors:
Misbahuddin, Riri Fitri Sari

Abstract

Providing travelers with accurate bus arrival time is an essential need to plan their traveling and reduce long waiting time for buses. In this paper, we proposed a new approach based on a Bayesian mixture model for the prediction. The Gaussian mixture model (GMM) was used as the joint probability density function of the Bayesian network to formulate the conditional probability. Furthermore, the Expectation maximization (EM) Algorithm was also used to estimate the new parameters of the GMM through an iterative method to obtain the maximum likelihood estimation (MLE) as a convergence of the algorithm. The performance of the prediction model was tested in the bus lanes in the University of Indonesia. The results show that the model can be a potential model to predict effectively the bus arrival time.

Keywords: Arrival time prediction Bayesian network Gaussian mixture model
DOI: https://doi.ms/10.00420/ms/7876/J4YQY/SZR | Volume: 6 | Issue: 6 | Views: 0
Download Full Text (Free)
Article Document
1 / 1
100%

Subscription Required

Your subscription has expired. Please renew your subscription to continue downloading articles and access all premium features.

  • Unlimited article downloads
  • Access to premium content
  • Priority support
  • No ads or interruptions

Upload

To download this article, you can either subscribe for unlimited downloads, or upload 0 items (articles and/or projects) to download this specific article.

Total: 0 / 0
  • Choose any combination (e.g., 2 articles + 1 project = 3 total)
  • After uploading, you can download this specific article
  • Or subscribe for unlimited downloads of all articles