Modelling driver expectations for safe speeds on freeway curves using Bayesian belief networks

Johan Vos, Haneen Farah, Marjan Hagenzieker
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Abstract

Sharp curves in freeways are known to be unsafe design elements since drivers do not expect them. It is difficult for drivers to estimate the radius of a curve. Therefore, drivers are believed to use other cues to decelerate when approaching a curve. Based on previous successful experiences of driven speeds in curves, drivers are thought to have built expectations of safe speeds given certain cues, minimalising risks. This research employs a Bayesian Belief Network to model driver expectations using measured speeds in 153 curves and data on the characteristics of the curve approaches. This model mimics expectations as the probability of measured speeds given certain cues. Using Bayes theorem, prior beliefs on safe speeds are updated towards a posterior belief when a new cue is observed during curve approach. We refer to this posterior belief as expected safe speed. Drivers are assumed to adjust their operating speed if it does not match their expected safe speed. The model shows that the visible deflection angle has a large influence in setting the expectations of a safe speed for an upcoming curve. In addition, the preceding type of roadway and the number of lanes are both important cues to set a driver’s expectations of a safe speed. Speed and warning signs are shown to be interdependent on the road scene and hence have less influence in setting expectations. This research shows that design and safety assessment of freeway curves should be considered aligned with the road scene upstream of the curve.

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利用贝叶斯信念网络模拟驾驶员对高速公路弯道安全速度的预期
众所周知,高速公路上的急弯是不安全的设计元素,因为驾驶员不会预料到会出现急弯。驾驶员很难估计弯道的半径。因此,人们认为驾驶员在接近弯道时会利用其他提示减速。根据以往在弯道中驾驶速度的成功经验,驾驶员会根据某些线索建立对安全速度的预期,从而将风险降至最低。本研究采用贝叶斯信念网络,利用 153 个弯道中的实测速度和弯道接近特征数据,对驾驶员的预期进行建模。该模型将预期模拟为在特定提示下测量速度的概率。利用贝叶斯定理,在弯道接近过程中观察到新线索时,对安全速度的先验信念会更新为后验信念。我们将这种后验信念称为预期安全速度。假定驾驶员的车速与预期安全车速不一致时,驾驶员会调整车速。模型显示,可见偏转角对设定即将到来的弯道的预期安全速度有很大影响。此外,前面的道路类型和车道数量也是设定驾驶员安全车速预期的重要线索。而速度和警告标志则与道路场景相互依存,因此对设定预期的影响较小。这项研究表明,高速公路弯道的设计和安全评估应考虑与弯道上游的道路场景保持一致。
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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来源期刊
Transportation Research Interdisciplinary Perspectives
Transportation Research Interdisciplinary Perspectives Engineering-Automotive Engineering
CiteScore
12.90
自引率
0.00%
发文量
185
审稿时长
22 weeks
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