Hasheminejad Seyed Hessam-Allah, Zahedi Mohsen, Hasheminejad Seyed Mohammad Hossein
a Department of Civil Engineering , Razi University , Kermanshah , Iran.
b Department of Computer Engineering , Alzahra University , Tehran , Iran.
Int J Inj Contr Saf Promot. 2018 Mar;25(1):85-101. doi: 10.1080/17457300.2017.1341933. Epub 2017 Jul 10.
As a threat for transportation system, traffic crashes have a wide range of social consequences for governments. Traffic crashes are increasing in developing countries and Iran as a developing country is not immune from this risk. There are several researches in the literature to predict traffic crash severity based on artificial neural networks (ANNs), support vector machines and decision trees. This paper attempts to investigate the crash injury severity of rural roads by using a hybrid clustering and classification approach to compare the performance of classification algorithms before and after applying the clustering. In this paper, a novel rule-based genetic algorithm (GA) is proposed to predict crash injury severity, which is evaluated by performance criteria in comparison with classification algorithms like ANN. The results obtained from analysis of 13,673 crashes (5600 property damage, 778 fatal crashes, 4690 slight injuries and 2605 severe injuries) on rural roads in Tehran Province of Iran during 2011-2013 revealed that the proposed GA method outperforms other classification algorithms based on classification metrics like precision (86%), recall (88%) and accuracy (87%). Moreover, the proposed GA method has the highest level of interpretation, is easy to understand and provides feedback to analysts.
作为对交通系统的一种威胁,交通事故给政府带来了广泛的社会后果。发展中国家的交通事故数量在不断增加,伊朗作为一个发展中国家也不能免于这种风险。文献中有几项研究基于人工神经网络(ANN)、支持向量机和决策树来预测交通事故的严重程度。本文试图通过使用一种混合聚类和分类方法来研究农村道路的碰撞伤害严重程度,以比较应用聚类前后分类算法的性能。本文提出了一种新颖的基于规则的遗传算法(GA)来预测碰撞伤害严重程度,并与人工神经网络等分类算法相比,通过性能标准对其进行评估。对2011年至2013年期间伊朗德黑兰省农村道路上的13673起事故(5600起财产损失事故、778起致命事故、4690起轻伤事故和2605起重伤事故)进行分析所得结果表明,所提出的遗传算法方法在基于精度(86%)、召回率(88%)和准确率(87%)等分类指标方面优于其他分类算法。此外,所提出的遗传算法方法具有最高的解释水平,易于理解,并能为分析人员提供反馈。