Abstract
Improving travel time prediction for public transit effectively enhances service reliability, optimizes travel structure, and alleviates traffic problems. Its greater time-variance and uncertainty make predictions for short travel times (≤35min) more subject to be influenced by random factors. It requires higher precision and is more complicated than long-term predictions. Effectively extracting and mining real-time, accurate, reliable, and low-cost multi-source data such as GPS, AFC, and IC can provide data support for travel time prediction. Kalman filter model has high accuracy in one-step prediction and can be used to calculate a large amount of data. This paper adopts the Kalman filter as a travel time prediction model for a single bus based on single-line detection: including the travel time prediction model of route (RTM) and the stop dwell time prediction model (DTM); the evaluation criteria and indexes of the models are given. The error analysis of the prediction results is carried out based on AVL data by case study. Results show that under the precondition of multi-source data, the public transportation prediction model can meet the accuracy requirement for travel time prediction and the prediction effect of the whole route is superior to that of the route segment between stops.
Funder
Zhejiang Provincial Natural Science Foundation of China
Zhejiang Provincial Educational Committee
the Scientific Research Foundation for the Returned Scholars, Ministry of Education of China
Publisher
Public Library of Science (PLoS)
Reference37 articles.
1. Bus travel time prediction with real-time traffic information;J Ma;Transportation Research Part C: Emerging Technologies,2019
2. Multi-output bus travel time prediction with convolutional LSTM neural network;CP Niklas;Expert Systems with Applications,2019
3. A Novel Bus-Dispatching Model Based on Passenger Flow and Arrival Time Prediction.;Z Huang;IEEE Access,2019
4. Real-time bus travel time prediction using k-NN classifier.;BA Kumar;Transportation Letters.,2017
Cited by
8 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献