{"title":"基于物联网的十字路口自动驾驶汽车优化决策","authors":"Amin Sahba, Ramin Sahba, P. Rad, M. Jamshidi","doi":"10.1109/UEMCON47517.2019.8992978","DOIUrl":null,"url":null,"abstract":"Applications that use communication networks and distributed systems to control traffic have high latency, especially in critical situations. The performance of these applications largely depends on the computational delay of algorithms that run on local or central processors. Therefore, providing an optimized solution to minimize this delay to a tolerable range is highly needed. This article studies a method in which autonomous vehicles around an intersection try to control the intersection traffic efficiently by communicating and interacting with each other and road-side smart devices. This problem can be addressed in the form of a network utility maximization problem. To achieve a solution that is close to an optimal solution, a gradient descent algorithm with a fixed step size can be utilized. It is necessary to find a balance between latency and accuracy, which leads to finding a velocity close to the optimal velocity. The number of loop repetitions in the scheduling algorithm, determines the latency in preparation for making the proper schedule for autonomous vehicles. In this work, we propose an approach to provide an optimized schedule for autonomous vehicles in intersections considering pedestrian traffic. Autonomous vehicles are able to communicate with each other and road side unites. However, surveillance cameras are required to observe pedestrians passing the intersection. Hence, we utilize cameras, smart sensors, processors, and communication equipment embedded in autonomous vehicles and road side unites, to collect the required data, process it, and distribute the calculated optimal decision to autonomous vehicles. 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引用次数: 12
摘要
使用通信网络和分布式系统控制流量的应用程序具有很高的延迟,特别是在关键情况下。这些应用程序的性能在很大程度上取决于在本地或中央处理器上运行的算法的计算延迟。因此,提供一个优化的解决方案,将延迟最小化到可容忍的范围是非常必要的。本文研究了一种交叉口周围的自动驾驶车辆通过相互之间以及路边智能设备之间的通信和交互来有效控制交叉口交通的方法。这个问题可以用网络效用最大化问题的形式来解决。为了获得接近最优解的解,可以使用固定步长的梯度下降算法。有必要在延迟和精度之间找到平衡,从而找到接近最佳速度的速度。调度算法中的循环重复次数决定了为自动驾驶汽车制定适当调度的准备延迟。在这项工作中,我们提出了一种方法,为自动驾驶汽车在考虑行人交通的十字路口提供优化的调度。自动驾驶汽车可以相互通信,也可以与路边的车辆通信。然而,需要监控摄像头来观察通过十字路口的行人。因此,我们利用嵌入在自动驾驶汽车和道路侧单元中的摄像头、智能传感器、处理器和通信设备来收集所需的数据,对其进行处理,并将计算出的最优决策分发给自动驾驶汽车。为了模拟应用所提出的解决方案所产生的交通行为,使用了Simulation of Urban Mobility软件。
Optimized IoT Based Decision Making For Autonomous Vehicles In Intersections
Applications that use communication networks and distributed systems to control traffic have high latency, especially in critical situations. The performance of these applications largely depends on the computational delay of algorithms that run on local or central processors. Therefore, providing an optimized solution to minimize this delay to a tolerable range is highly needed. This article studies a method in which autonomous vehicles around an intersection try to control the intersection traffic efficiently by communicating and interacting with each other and road-side smart devices. This problem can be addressed in the form of a network utility maximization problem. To achieve a solution that is close to an optimal solution, a gradient descent algorithm with a fixed step size can be utilized. It is necessary to find a balance between latency and accuracy, which leads to finding a velocity close to the optimal velocity. The number of loop repetitions in the scheduling algorithm, determines the latency in preparation for making the proper schedule for autonomous vehicles. In this work, we propose an approach to provide an optimized schedule for autonomous vehicles in intersections considering pedestrian traffic. Autonomous vehicles are able to communicate with each other and road side unites. However, surveillance cameras are required to observe pedestrians passing the intersection. Hence, we utilize cameras, smart sensors, processors, and communication equipment embedded in autonomous vehicles and road side unites, to collect the required data, process it, and distribute the calculated optimal decision to autonomous vehicles. To simulate the traffic behaviors resulting from applying the proposed solution, Simulation of Urban Mobility software is used.