协同优化受事故影响交叉口的动态车道分配和信号配时

Jiawen Wang, Yuli Chen, Yang Feng, Jing Zhao
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引用次数: 0

摘要

交通事故会导致城市交叉口的交通供需发生急剧变化,从而在特定时段造成严重的交通供需失衡。应对事故需要动态、准确的调整,协同优化交叉口资源,提高事故期间交通流的实时可靠性和稳定性。目前,有关交通事故的研究很少考虑基于实时数据的协同优化理论。因此,本研究在实时事故检测技术和事故数据的支持下,首先考虑交通事故发生的位置和强度,动态更新交叉口交通需求和供给的变化。随后,提出了一种基于车道分配和信号配时的动态协同优化方法,以最小化各种进路车道饱和度的方差之和。最后,设定了各种交通需求情景,并通过数值分析和敏感性分析验证了所提模型的有效性。结果表明,与纯信号优化法和高速公路通行能力法(HCM)相比,本研究提出的协同优化法可将平均车辆延误百分比分别降低 8.54% 和 16.47%。敏感性分析表明,在不同的绕行率和绕行模式下,协同优化方法在不同程度上有效缓解了上游交叉口的平均车辆延误。在实时事故响应方面,协作优化方法展示了及时处理紧急事故的能力,并在绕行后保持持续降低整体延迟水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Optimization of Dynamic Lane Assignment and Signal Timing for Incident-Affected Intersections
Traffic accidents can lead to rapid changes in the traffic supply and demand at urban intersections, thus causing a severe traffic supply/demand imbalance during specific periods. Responding to accidents requires dynamic and accurate adjustments to optimize intersection resources collaboratively and enhance the real-time reliability and stability of traffic flows during such accidents. Currently, research on traffic incidents rarely considers real-time data-based collaborative optimization theories. Therefore, this study, supported by real-time incident detection technology and accident data, first considers the location and intensity of traffic incidents to update dynamically the changes in intersection traffic demand and supply. Subsequently, a dynamically collaborative optimization method is proposed based on lane assignment and signal timings to minimize the sum of variances of the degree of saturation of various approach lanes. Finally, various traffic demand scenarios are set, and the effectiveness of the proposed model is validated based on numerical and sensitivity analyses. The results demonstrate that compared with signal-only optimization and the highway capacity methods (HCM), the collaborative optimization method presented in this study reduces the average vehicular delay percentages by 8.54% and 16.47%, respectively. Sensitivity analysis indicates that, under various detour rates and detour modes, collaborative optimization methods have effectively mitigated the average vehicular delay at upstream intersections to varying degrees. In the context of real-time accident response, collaborative optimization methods demonstrate a capacity to promptly address the urgency of incidents occurring and maintain a sustained reduction in overall delay levels following detours.
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