应用神经网络技术控制交通信号灯

Aleksey Fadyushin, Anatoly Pistsov
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引用次数: 0

摘要

本文介绍了利用人工神经网络根据交通流强度确定交通灯调节最佳参数的方法。在受管制的交叉路口,交通流强度存在不平衡,因此交叉路口交通灯的一种运行模式可能无效。研究目标是开发预测交通信号灯运行模式的软件,同时考虑交通需求的时空不平衡性。根据对一个管制路口交通流的模拟,确定了不同交通信号灯运行模式和交通流强度(包括转弯)下的平均延迟时间值。人工神经网络根据 1.6 万次模拟的数据进行了训练,并在 4000 次模拟中进行了测试。使用人工神经网络计算交通信号灯的最佳运行模式,可将两个高峰时段的延误时间减少 20-50%。预先训练好的人工神经网络可以在一秒钟内计算出特定管制路口的最佳交通信号灯运行模式。开发的软件可用于在自动交通控制系统中实施智能交通系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APPLICATION OF NEURAL NETWORK TECHNOLOGIES FOR CONTROL OF TRAFFIC LIGHTS
The paper describes the use of an artificial neural network to determine the optimal parameters of traffic light regulation based on the intensity of traffic flow. At regulated intersections, there is an imbalance in the intensity of traffic flow, due to which one operation mode of traffic lights at an intersection may be ineffective. The study objective is to develop software for predicting the operating modes of traffic lights, taking into account the spatial and temporal unevenness of transport demand. Based on the simulation of traffic flows at one regulated intersection, the values of the average delay time were determined for different traffic light operating modes and traffic flow intensities, including turning ones. The artificial neural network was trained on data from 16 thousand simulations and tested on four thousand simulations. Using an artificial neural network to calculate the optimal operating mode of traffic lights reduces the delay time by 20-50% for two rush hours. A pre-trained artificial neural network can calculate the optimal operating mode of traffic lights for a specific regulated intersection in one second. The developed software can be used to implement an intelligent transport system in an automated traffic control system.
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