Adaptive Signal Control of an Isolated Intersection Using Stop-Line Detection

IF 0.7 Q4 TRANSPORTATION European Transport-Trasporti Europei Pub Date : 2022-03-01 DOI:10.48295/et.2022.86.1
S. Nuli
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引用次数: 0

Abstract

Adaptive traffic signal controllers offer better signal time management especially when the traffic flow pattern is not uniform on all approaches. Traditional adaptive traffic controller use upstream or advance vehicle detection which works well in situations where traffic follows good lane discipline. However, when the spacing between intersections increases or in the case of complex geometry these systems may not be efficient. This is primarily because of the inability of traffic flow models to accurately estimate the traffic demand from the upstream detectors. Using stop-line detector information is best suited in such traffic conditions as they do not require any explicit prediction models. Furthermore, there are many intersections which works using stop-line detectors with preset maximum green timings as vehicle actuated controllers. These controllers can be easily converted into truly adaptive by changing their maximum green timings continuously with respect to changing traffic flow pattern. Hence, this paper proposes an adaptive traffic control model which uses stop-line detector information instead of upstream detector. The model aims at real-time allocation of green time through reinforcement learning; an approach originated from the machine learning community. This approach has the ability to learn relationships between signal control actions and their effect on the queue while pursuing the goal of maximizing throughput which is a distinct improvement over the traditional vehicle actuated system. To demonstrate the performance of the proposed model a typical four-way intersection with four-phase scheme is evaluated for various flow conditions with the proposed model as well as with the traditional vehicle actuated system. The results show improvement over traditional system, especially when the flow is near the capacity.
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基于停止线检测的孤立交叉口自适应信号控制
自适应交通信号控制器提供了更好的信号时间管理,特别是在各种方法的交通流模式不均匀的情况下。传统的自适应交通控制器采用上游或超前的车辆检测方法,在交通遵循良好车道规则的情况下效果良好。然而,当交叉口间距增加或在复杂几何的情况下,这些系统可能不是有效的。这主要是因为交通流模型无法准确地估计来自上游检测器的交通需求。在不需要任何明确预测模型的交通条件下,使用停车线检测器信息是最合适的。此外,还有许多交叉口使用预设最大绿灯时间的停车线检测器作为车辆驱动控制器。这些控制器可以很容易地转换为真正的自适应,通过不断改变其最大绿灯时间相对于不断变化的交通流模式。为此,本文提出了一种使用停止线检测器信息代替上游检测器的自适应交通控制模型。该模型旨在通过强化学习实现绿色时间的实时分配;一种源自机器学习社区的方法。该方法具有学习信号控制动作之间的关系及其对队列的影响的能力,同时追求吞吐量最大化的目标,这是传统车辆驱动系统的一个明显改进。为了验证所提模型的性能,用所提模型和传统的车辆驱动系统对一个典型的四相四向交叉口进行了不同流量条件下的评估。结果表明,该系统比传统系统有很大的改进,特别是在流量接近容量时。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
19
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