Comparison of Weighted and Simple Linear Regression and Artificial Neural Network Models in Freeway Accidents Prediction

A. Mahmoudabadi
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引用次数: 10

Abstract

A number of models have been used for estimating frequency of accidents. Weighted and simple linear regressions are common and in the recent years artificial neural network models have also been used as prediction models of accidents. Researchers need to select and use some models with the best performance particularly with the minimum of mean square errors. In this paper, traffic volume, surface condition, heavy traffic, and monthly accident data have been analysed in two Iranian major freeways named Tehran-Qom and Karaj-Qazvin-zanjan and three different kinds of models including simple and weighted linear regression and artificial neural network have been developed for estimating the number of monthly accident based on the above input variables. The well-known software of MATLAB has been used for analytical process and principle component analysis technique has been used to ensure that input variables don’t have inter-relations. Principle components and loading have been calculated and results of PCA show that all input variables should be considered in modeling. The effectiveness of input variables based on T-test has been analyzed and the results show that traffic volume and surface condition have more effect in rural accidents. For models’ performance comparison, the mean square errors have been considered. It can be concluded, from the results, that artificial neural network has the best performance with minimum mean square errors.
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加权和简单线性回归与人工神经网络模型在高速公路事故预测中的比较
许多模型被用来估计事故发生的频率。加权和简单线性回归是常见的预测模型,近年来人工神经网络模型也被用作事故预测模型。研究人员需要选择和使用一些性能最好的模型,特别是均方误差最小的模型。本文分析了伊朗两条主要高速公路德黑兰-库姆和卡拉杰-加兹温-赞扬的交通量、路面状况、繁忙交通和月事故数据,并基于上述输入变量开发了三种不同的模型,包括简单和加权线性回归和人工神经网络,用于估计月事故数量。分析过程采用知名软件MATLAB,采用主成分分析技术,保证输入变量之间没有相互关系。主成分和载荷的计算结果表明,在建模时应考虑所有的输入变量。基于t检验对输入变量的有效性进行了分析,结果表明交通量和路面状况对农村交通事故的影响更大。对于模型的性能比较,考虑了均方误差。结果表明,人工神经网络在均方误差最小的情况下具有最佳性能。
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