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Influence of on-network, traffic, signal, demographic, and land use characteristics by area type on red light violation crashes

机译:按区域类型划分的网络,流量,信号,人口统计和土地使用特征对违反红灯的崩溃的影响

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The focus of this research paper is on extraction of predictor variables pertaining to on-network, traffic, signal, demographic, and land use characteristics, by area type, and examining their influence on the number of red light violation crashes. Data for the city of Charlotte, North Carolina was extracted and used for analysis. Three different sets of signalized intersections were selected in the three different area types- Central Business District (CBD), urban, and suburban areas. Each set is comprised of sixty signalized intersections (total 180 signalized intersections). The number of red light violation crashes from January 2010 to December 2014, within the vicinity of each selected signalized intersection, was considered as the dependent variable to develop crash estimation models for each area type. The crash estimation models by area type were compared with the crash estimation model developed considering all the 180 signalized intersections together. Different predictor variables were found to be significant at a 95% confidence level in three different areas. Log-link model with Negative Binomial distribution was observed to best fit the data used in this research. Findings indicate that enforcement, either manually or using red light running cameras (RLCs), at signalized intersections with high traffic volume in the CBD area; at signalized intersections with high traffic volume, high all-red clearance time, near high density of horizontal mixed non-residential and open space/recreational type land uses in urban area; at signalized intersections with high traffic volume, speed limit on the major approach, the number of lanes on the minor approach, and all-red clearance time and areas surrounded with horizontal mixed non-residential and retail type land use in suburban areas, would lead to a reduction in the number of red light violation crashes.
机译:该研究论文的重点是按区域类型提取与网络,交通,信号,人口统计和土地利用特征有关的预测变量,并研究其对违反红灯事故数量的影响。提取了北卡罗来纳州夏洛特市的数据,并将其用于分析。在三种不同的区域类型中选择了三种不同的信号交叉口集:中央商务区(CBD),城市和郊区。每个集合由60个信号交叉口组成(总共180个信号交叉口)。在每个选定的信号交叉口附近,从2010年1月至2014年12月发生的违反红灯的撞车次数被视为因变量,用于开发每种区域类型的撞车估算模型。将按区域类型划分的碰撞估计模型与同时考虑所有180个信号交叉口的碰撞估计模型进行了比较。发现在三个不同区域中,不同的预测变量在95%的置信度上具有显着性。观察到具有负二项式分布的对数链接模型最适合本研究中使用的数据。调查结果表明,在CBD区域交通流量大的信号交叉口,可以通过手动或使用红灯行驶摄像头(RLC)进行执法;在交通量大,全红通行时间长,在市区内水平混合的非住宅和空地/休闲型土地利用的密度接近的信号交叉口;在交通流量大的信号交叉口,主要进场的速度限制,次要进场的车道数量,全红通行时间以及郊区水平混合的非住宅和零售类型土地使用所包围的区域减少了违反红灯的次数。

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