An optimization similarity fuzzy inference method for traffic signal control at an isolated intersection

Mahin Esmaeili , Ali Anjomshoae , Nasser Shahsavari-Pour , Punyaanek Srisurin , Ruth Banomyong
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引用次数: 0

Abstract

Managing urban traffic is challenging because traffic patterns change unpredictably. Although fuzzy logic-based traffic signal control (TSC) systems like Mamdani and Sugeno work well, they struggle to adjust effectively to real-time traffic changes. This study introduces the Optimization Similarity Fuzzy Inference (OSFI) method, which improves traffic signal control at isolated intersections by continuously adjusting fuzzy rules based on the similarity between actual and desired outcomes. Unlike traditional models, OSFI uses truth tables to dynamically adjust signal timing and phase sequencing based on real-time factors such as vehicle arrival rates and queue lengths. Simulation results show that OSFI reduces average vehicle delays by 1.11–5.73% compared to Mamdani controllers and 0.69–4.84% compared to Sugeno controllers, with traffic throughput improvements of up to 18.75% during heavy traffic. These findings demonstrate OSFI’s ability to consistently improve traffic flow. Future research will focus on expanding OSFI to control networks of intersections and testing its real-world performance to address current challenges related to scalability and efficiency.
孤立交叉口交通信号控制的优化相似度模糊推理方法
管理城市交通具有挑战性,因为交通模式的变化不可预测。尽管Mamdani和Sugeno等基于模糊逻辑的交通信号控制(TSC)系统运行良好,但它们难以有效地适应实时交通变化。本研究引入了优化相似模糊推理(OSFI)方法,该方法基于实际结果与期望结果的相似度,通过不断调整模糊规则来改善孤立交叉口的交通信号控制。与传统模型不同,OSFI使用真值表根据车辆到达率和队列长度等实时因素动态调整信号时序和相位排序。仿真结果表明,OSFI比Mamdani控制器减少了1.11-5.73%的平均车辆延误,比Sugeno控制器减少了0.69-4.84%的平均车辆延误,在交通繁忙的情况下,交通吞吐量提高了18.75%。这些发现证明了OSFI持续改善交通流量的能力。未来的研究将集中于扩展OSFI以控制路口网络,并测试其实际性能,以解决当前与可扩展性和效率相关的挑战。
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CiteScore
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