Home

Aims and Scope

Instructions for Authors

View Issues & Articles

Editorial Board

Article Search

ATS International Journal
Editor in Chief: Prof. Alessandro Calvi
Address: Via Vito Volterra 62,
00146, Rome, Italy.
Mail to: alessandro.calvi@uniroma3.it

Prediction method of geographical and spatial distribution of traffic accidents based on traffic flow big data

Y. Liu, Z.A. Zhang, Z.L. Shang, Z. Wang
Pages: 113-124

Abstract:

Accurate prediction of the geographical spatial distribution location of traffic accidents can provide drivers with richer traffic geographic information, thereby reducing the rate of traffic accidents. However, the existing methods for predicting the geographical spatial distribution location of traffic accidents have the problems of large error and long time. Therefore, this paper proposes a method for predicting the geographical spatial distribution location of traffic accidents based on the traffic flow gig data. First, collect traffic flow big data during the accident through highway detectors. Secondly, the collected data is processed for exception deletion, missing completion and geocode conversion. Finally, according to the geographical spatial distribution characteristics, the geographical spatial distribution of traffic accidents is predicted through Kalman filter. The experimental results show that this method predicts the geographical spatial distribution of traffic accidents based on actual test results, with good prediction effect and high prediction efficiency.
Keywords: big data of traffic flow; traffic accident; geographical spatial distribution; nearest neighbor; kalman filtering

2025 ISSUES
2024 ISSUES
2023 ISSUES
2022 ISSUES
2021 ISSUES
2020 ISSUES
2019 ISSUES
2018 ISSUES
2017 ISSUES
2016 ISSUES
2015 ISSUES
2014 ISSUES
2013 ISSUES
2012 ISSUES
2011 ISSUES
2010 ISSUES
2009 ISSUES
2008 ISSUES
2007 ISSUES
2006 ISSUES
2005 ISSUES
2004 ISSUES
2003 ISSUES