Real-time estimation of turning movement proportions based on genetic algorithm

Pengpeng Jiao, Huapu Lu, Lang Yang
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引用次数: 18

Abstract

Real-time turning movement proportions at intersections are important input data for adaptive traffic signal control system. To estimate them, a revised parameter optimization model with the objective function to minimize the sum of absolute deviations between measured and estimated traffic counts is proposed. A genetic algorithm is put forward to solve the problem according to its characteristics. The detailed encoding and decoding methods satisfying the inherent constraints of split parameters automatically are presented, and five other key issues are illustrated. Computational results are reported on a set of test problems using simulated as well as practical traffic data, and the capability to track dynamic turning movement proportions is compared with both least-square and Kaiman filtering methods. The results indicate that the proposed method is quite accurate, efficient and robust.
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基于遗传算法的车削运动比例实时估计
交叉口实时转弯运动比例是自适应交通信号控制系统的重要输入数据。为了估计它们,提出了一种改进的参数优化模型,其目标函数是最小化实测和估计交通量之间的绝对偏差之和。针对该问题的特点,提出了一种遗传算法来解决该问题。给出了满足分割参数固有约束的详细编解码方法,并对其他五个关键问题进行了说明。通过模拟和实际交通数据对一组测试问题进行了计算,并比较了最小二乘法和Kaiman滤波方法对动态转弯运动比例的跟踪能力。结果表明,该方法具有较高的精度、效率和鲁棒性。
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