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Extended pheromone-based short-term traffic forecasting models for vehicular systems

机译:基于信息素的短期交通预测模型用于车辆系统

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An accurate short-term traffic forecasting model serves as an integral part to enhance the efficiency of vehicle rerouting and traffic light control strategies. The information exchange (pheromone) behavior of ants has been applied to forecast traffic conditions in existing pheromone models. These models were developed to forecast congestion on roads with signalized intersections by considering only green and red phases. Motivated by this issue, three short-term traffic forecasting models are proposed: (i) Extended Pheromone Model (EPM), (ii) Extended Pheromone Model with epsilon-Support Vector Regression (epsilon SVR-EPM), and (iii) Extended Pheromone Model with Artificial Neural Network and Particle Swarm Optimization (ANNPSO-EPM). It is worth noticing that EPM is an algorithmic model whereas the other two are machine learning models. In all proposed models, a new color pheromone concept is proposed with two significant contributions. First, the color pheromone concept is developed to capture stochastic traffic conditions on the roads with non-signalized intersections. Second, the proposed concept is further extended to include all three color phases (red, yellow and green) to forecast dynamic changing traffic behaviors for roads with signalized intersections. The proposed color pheromone concept in EPM, eSVR-EPM, and ANNPSO-EPM is different from the existing models as it dynamically switches its computation techniques based on traffic light phases. All three proposed models can be realized through a Pheromone-based Multi-Agent System composed of Vehicle Agents and Intersection Agents coordinating locally with one another To promote practicality, Singapore City Hall map is employed in a microscopic simulator of Simulation of Urban Mobility (SUMO), showing that all proposed models outperform the other existing pheromone models.
机译:准确的短期交通预测模型用作增强车辆重新路由和交通灯控制策略效率的组成部分。蚂蚁的信息交换(信息素)行为已被应用于预测现有信息素模型中的交通状况。通过考虑仅考虑绿色和红色阶段,开发了这些模型以预测有信号交叉口的道路拥堵。通过这个问题的推动,提出了三种短期交通预测模型:(i)扩展信息素模型(EPM),(II)延长信息素模型,具有ε-支持载体回归(Epsilon SVR-EPM)和(III)延长信息素具有人工神经网络和粒子群优化的模型(AnnPSO-EPM)。值得注意的是,EPM是一种算法模型,而另外两个是机器学习模型。在所有拟议的模型中,提出了一种具有两种重大贡献的新型信息素概念。首先,开发了彩色信息素概念,以捕获具有非信号交叉口的道路上的随机交通条件。其次,所提出的概念进一步扩展到包括所有三个颜色阶段(红色,黄色和绿色),以预测具有信号交叉口的道路的动态变化的交通行为。 EPM,ESVR-EPM和AnnPSO-EPM中提出的彩色信息素概念与现有模型不同,因为它根据交通灯阶段动态切换其计算技术。所有三种拟议的模型都可以通过基于信息素的多种子体系统来实现,该系统由车辆代理和交叉路口彼此协调,互相协调,以促进实用性,新加坡市政厅地图采用了城市移动性仿真的微观模拟器(SUMO) ,显示所有提出的模型都优于其他现有的信息素模型。

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