Identification of Road Black Spots Based on the Sliding Window Optimization and Safety Performance Function Development

Shahin Shabani, Jalal Ayoubinejad, N. B. Rahmanian
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Abstract

The sliding window method is a road network screening approach commonly used for identifying black spots. Previous studies have indicated that the selection of window length significantly impacts the black spot identification process. This research proposes a new method that optimizes the sliding window framework by examining its characteristics. The optimization methodology employed in this study is as follows: Firstly, the road is segmented, and for each segment, different scenarios of window lengths are chosen using the Density-Based Spatial Clustering of Applications with Noise algorithm. Next, a Safety Performance Function is developed to calculate the predicted and expected number of crashes, as well as the Potential Safety Improvement, for each window movement across all selected scenarios within the segment. Subsequently, the average differences are calculated using the analysis of variance, and the window length with the lowest dispersion of difference values from the mean is identified as the optimal length for each segment. The case study yielded noteworthy results, indicating that the utilization of the sliding window with optimal lengths led to the identification of 122 high-risk black spot-candidates. These points exhibit a higher crash density, effective length, and greater value in quantitative evaluation tests compared to the results obtained using windows with common fixed lengths.
基于滑动窗口优化和安全性能函数开发的道路黑点识别
滑动窗口法是一种路网筛选方法,常用于识别黑点。以往的研究表明,窗口长度的选择会对黑点识别过程产生重大影响。本研究提出了一种新方法,通过研究滑动窗口框架的特点对其进行优化。本研究采用的优化方法如下:首先,对道路进行分段,并使用基于密度的噪声应用空间聚类算法为每个分段选择不同的窗口长度方案。然后,开发一个安全性能函数,以计算该路段内所有选定场景中每个窗口移动的预测和预期碰撞次数,以及潜在安全改进。随后,使用方差分析计算平均差异,并将差异值与平均值离散度最小的窗口长度确定为每个路段的最佳长度。案例研究得出了值得注意的结果,表明使用最佳长度的滑动窗口可识别出 122 个高风险黑点候选点。与使用普通固定长度窗口得出的结果相比,这些点在碰撞密度、有效长度和定量评估测试中都表现出更高的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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