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多车道道路的碰撞预测模型。

A crash-prediction model for multilane roads.

作者信息

Caliendo Ciro, Guida Maurizio, Parisi Alessandra

机构信息

Department of Civil Engineering, University of Salerno, 84084 Fisciano (SA), Italy.

出版信息

Accid Anal Prev. 2007 Jul;39(4):657-70. doi: 10.1016/j.aap.2006.10.012. Epub 2006 Nov 20.

Abstract

Considerable research has been carried out in recent years to establish relationships between crashes and traffic flow, geometric infrastructure characteristics and environmental factors for two-lane rural roads. Crash-prediction models focused on multilane rural roads, however, have rarely been investigated. In addition, most research has paid but little attention to the safety effects of variables such as stopping sight distance and pavement surface characteristics. Moreover, the statistical approaches have generally included Poisson and Negative Binomial regression models, whilst Negative Multinomial regression model has been used to a lesser extent. Finally, as far as the authors are aware, prediction models involving all the above-mentioned factors have still not been developed in Italy for multilane roads, such as motorways. Thus, in this paper crash-prediction models for a four-lane median-divided Italian motorway were set up on the basis of accident data observed during a 5-year monitoring period extending between 1999 and 2003. The Poisson, Negative Binomial and Negative Multinomial regression models, applied separately to tangents and curves, were used to model the frequency of accident occurrence. Model parameters were estimated by the Maximum Likelihood Method, and the Generalized Likelihood Ratio Test was applied to detect the significant variables to be included in the model equation. Goodness-of-fit was measured by means of both the explained fraction of total variation and the explained fraction of systematic variation. The Cumulative Residuals Method was also used to test the adequacy of a regression model throughout the range of each variable. The candidate set of explanatory variables was: length (L), curvature (1/R), annual average daily traffic (AADT), sight distance (SD), side friction coefficient (SFC), longitudinal slope (LS) and the presence of a junction (J). Separate prediction models for total crashes and for fatal and injury crashes only were considered. For curves it is shown that significant variables are L, 1/R and AADT, whereas for tangents they are L, AADT and junctions. The effect of rain precipitation was analysed on the basis of hourly rainfall data and assumptions about drying time. It is shown that a wet pavement significantly increases the number of crashes. The models developed in this paper for Italian motorways appear to be useful for many applications such as the detection of critical factors, the estimation of accident reduction due to infrastructure and pavement improvement, and the predictions of accidents counts when comparing different design options. Thus this research may represent a point of reference for engineers in adjusting or designing multilane roads.

摘要

近年来,针对双车道乡村道路的撞车事故与交通流量、几何基础设施特征以及环境因素之间的关系展开了大量研究。然而,针对多车道乡村道路的撞车事故预测模型却鲜有研究。此外,大多数研究很少关注诸如停车视距和路面表面特性等变量的安全影响。而且,统计方法通常包括泊松回归模型和负二项式回归模型,而负多项回归模型的使用程度较低。最后,据作者所知,意大利尚未针对多车道道路(如高速公路)开发包含上述所有因素的预测模型。因此,本文基于1999年至2003年为期5年的监测期内观测到的事故数据,建立了意大利四车道中央分隔高速公路的撞车事故预测模型。分别应用于直线段和曲线段的泊松回归模型、负二项式回归模型和负多项回归模型,用于对事故发生频率进行建模。模型参数采用最大似然法估计,并应用广义似然比检验来检测模型方程中应包含的显著变量。通过总变异的解释比例和系统变异的解释比例来衡量拟合优度。还使用累积残差法在每个变量的整个范围内检验回归模型的充分性。解释变量的候选集包括:长度(L)、曲率(1/R)、年平均日交通量(AADT)、视距(SD)、侧向摩擦系数(SFC)、纵向坡度(LS)以及是否存在交叉口(J)。分别考虑了总撞车事故以及仅致命和受伤撞车事故的预测模型。结果表明,对于曲线段,显著变量为L、1/R和AADT;而对于直线段,显著变量为L、AADT和交叉口。基于每小时降雨量数据以及关于干燥时间的假设,分析了降雨的影响。结果表明,湿滑路面会显著增加撞车事故数量。本文为意大利高速公路开发的模型似乎在许多应用中都很有用,例如关键因素的检测、基础设施和路面改善导致的事故减少量的估计,以及比较不同设计方案时事故数量的预测。因此,这项研究可能为工程师调整或设计多车道道路提供一个参考点。

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