Author:
Pritee Kumari, ,Garg R.D.,
Abstract
Safety on roads and prevention of accidents are the prime concern of any highway system. Data mining is a source of retrieval of information for knowledge discovery approach. Many data mining methodologies have been applied to accident data in the recent past years. There is need to analyze the relationship between different factors related to accidents i.e. number of persons affected by fatal, minor, grievous, non-injury, road feature (ROF), road condition (ROC), cause of accident (CAU) and vehicle responsible (VR) according to daily, fortnightly, semi-fortnightly and monthly basis. The objective of this study is divided into three sub-objectives. The First sub-objective of this study is to divide number of accident dataset of National Highway sections of Karnataka state implemented by Project Implementation Unit i.e. PIU (Bangalore, Chitradurga, Dharwad, Gulbarga, Hospet and Mangalore) during January 2012 to January 2017 collected from NHAI (National Highway Authority of India) in homogeneous clusters using K-means clustering. The second sub-objective is to reflect the relationship between different factors i.e. a number of persons affected by fatal, minor, grievous, non-injury, CAU, ROC, ROF and VR using Apriori association rule. The last sub-objective is to perform temporal trend analysis for each cluster on the basis of rules generated by Association Rule Mining.
Publisher
Lattice Science Publication (LSP)
Reference34 articles.
1. MORTH (2014) Road Accidents in India 2013. New Delhi: Ministry of Road Transport and Highways Transport Research Wing, Government of India.
2. Tan PN, Steinbach M, Kumar V (2006) Introduction to data mining. Pearson Addison-Wesley.
3. Road traffic crashes and risk groups in India: analysis, interpretations, and prevention strategies;Ponnaluri;IATSS Research 35(2),2012
4. Parida M, Jain SS, Kumar CN (2012) Road traffic crash prediction on national highways. Indian Highways 40(6).
5. Poisson family regression techniques for prediction of crash counts using Bayesian inference;Kumar;Procedia-Social and Behavioral Sciences,2013
Cited by
2 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
1. The Caste System in India;Indian Journal of Social Science and Literature;2023-12-30
2. Information Categorization for Canopy Mapping using Quality Control (QC) Tool – Affinity Diagram (KJ Method);International Journal of Engineering and Advanced Technology;2023-10-30