Predicting Number of Accidents and Black Spot of a Route Using Genetic Algorithm
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Because of its importance in saving human lives, traffic accident prediction is a motor vehicletraffic challenge. There are various studies in the literature that use artificial neural networks (ANNs),support vector machines (SVMs), decision trees (DTs), and other categorization approaches to predictthe severity of traffic accidents. Indeed, the fundamental shortcoming of ANNs and SVMs is their lack ofhuman interpretation, whereas the main disadvantage of traditional DTs like C4.5, ID3, and CART is theirlow accuracy. To solve these flaws, we present a Genetic Algorithm-based method to predict trafficaccidents based on user preferences instead of traditional DTs in this review.We customised a geneticalgorithm, to optimise and find rules based on Support, Confidence, and Comprehensibility metrics inthe suggested method. The suggested method's goal is to provide facilities for users, such as trafficcops, road and transportation engineers, to make use of their knowledge while balancing all of thecompeting objectives. A traffic accident data set of accidents in rural and urban roadways in TehranProvince, Iran, was used to assess the suggested technique during a five-year period (2008–2013).According to the evaluation results, the proposed technique outperforms classification methods such asANN, SVM, and traditional DTs in terms of classification metrics such as accuracy and rule performancemetrics such as support and confidence.
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- Seyed Hessam-Allah Hashmienejad & Seyed Mohammad Hossein Hasheminejad (2017) Traffic accident severity prediction using a novel multi-objective genetic algorithm, International Journal of Crashworthiness.
- Graphical Prediction of Road Accidents using Data Analysis Swetha P.C, Vaishalli A., Devika M., Sneha Balaji,Vol-4 Issue-2 2018 IJARIIE.
- Camilo Gutierrez-Osorio*, Cesar Pedraza Departamento de Ingenierı ́a de Sistemas e Industrial, Universidad Nacional de Colombia, Bogota, Colombia,15 May 2020“Modern Data Sources And Techniques For Analysis And Forecast Of Road Accidents: A Review” Journal of traffic and transportation engineering,
- QiangLu1 and Kyoung-Dae Kim2, 11 October 2017,“A Genetic Algorithm Approach For Expedited Crossing Of Emergency Vehicles In Connected And Autonomous Intersection Traffic” Journal of Advanced Transportation Volume 2017, Article ID 7318917, 14 pages.
- Prediction for traffic accident severity: comparing the artificial neural network, genetic algorithm, combined genetic algorithm and pattern search methods, Mehmet Metin Kunt , Iman Aghayan & Nima Noii,21 March 2014, At: 06:19 Publisher: Taylor & Francis
- Predicting Crash Injury Severity with Machine Learning Algorithm Synergized with Clustering Technique: A Promising Protocol Khaled Assi, Syed Masiur Rahman, Umer Mansoor and Nedal Ratrout, 27 June 2020
- A stable and optimized neural network model for crash injury severity prediction Qiang Zeng, Helai Huang, Received 29 May 2014
- A cluster analysis on road traffic accidents using genetic algorithms Sabariah Saharan and Roberto Baragona, 2017
- Application of Support Vector Machine for Crash Injury Severity Prediction: A Model Comparison Approach Iman Aghayan1, Mansour Hadji Hosseinlou2 , Mehmet Metin Kunt3,,Journal of Civil Engineering and Urbanism Volume 5, Issue 5: 193-199; September 25, 2015
- Efficient Analysis of Traffic Accident Using Mining Techniques S.Vigneswaran1 A. Arun Joseph2; E.Rajamanickam3,march 2014
- Analysis Of Roadway Fatal Accidents Using Ensemble-Based Meta-Classifiers Waheeda Almayyan, July 2020
- Prediction of Road Traffic using Naive Bayes Algorithm. Baby Anitha1,R. Aravinth2, S. Deepak3 ,RTICCT – 2019
- Evaluation of Accidental Death Records Using Hybrid Genetic Algorithm Nikhil Sharma, Ila Kaushik, Rajat Rathi, Santosh Kumar, International Conference on Innovative Computing and Communication (ICICC-2020)
- A comparative study on machine learning based algorithms for prediction of motorcycle crash severity Lukuman WahabID, Haobin Jiang, April 4, 2019
- Overview of traffic incident duration analysis and prediction Ruimin Li, Francisco C. Pereira and Moshe E. Ben-Akiva, European Transport Research Review (2018)
- Graphical Prediction of Road Accidents using Data Analysis Swetha P.C, Vaishalli A., Devika M., Sneha Balaji,Vol-4 Issue-2 2018 IJARIIE-ISSN(O)-2395-4396
- Prediction of Accident Severity Using Artificial Neural Network: A Comparison of Analytical Capabilities between Python and R Imran Chowdhury Dipto1, Md Ashiqur Rahman1, Tanzila Islam2, H M Mostafizur Rahman3,Journal of Data Analysis and Information Processing, 2020, August 7, 2020
- Data quality analysis of interregional travel demand: Extracting travel patterns using matrix decomposition☆ Canh Xuan Do, Makoto Tsukai, Akimasa Fujiwara a,2020
- Boosted Genetic Algorithm using Machine Learning for traffic control optimization Tuo Mao, Adriana-Simona Mihait Senior Member, IEEE, Fang Chen, and Hai L. Vu., March 2021
- Macro prediction model of road traffic accident based on neural network and genetic algorithm, QIN Liyan SHAG Chunfu, 2009
- Mortality-Risk Prediction Model from Road-Traffic Injury in Drunk Drivers: Machine Learning Approach, Wachiranun Sirikul, Nida Buawangpong, Ratana Sapbamrer 1 and Penprapa Siviroj, 8 October 2021,