使用机器学习方法中的新算法估计车辆自组织网络中小时交通流数据的服务水平

Ahmed Turki, S. T. Hasson
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引用次数: 0

摘要

交通运输机构和研究人员研究交通运营的主要目标是通过使用车辆特设网络来缓解交通拥堵和提高道路安全。如果没有关于当前交通状况的可靠和一致的数据,机构就无法实现其目标。服务水平(LOS)指标是衡量高速公路交通运行状况的有效指标。传统的固定位置摄像机和传感器在大型网络中收集每条道路的可靠交通密度数据是不切实际和昂贵的。流量数据是一种新的、低成本的选择,有可能提高安全性和作业效率。本研究通过整合MIDAS(高速公路事故检测和自动信号)系统提供的流量数据,提出了一种每小时LOS评估算法。该算法使用机器学习技术对基于交通流量的LOS数据进行分类。需要预测的输入特征是一组技术指标。现实世界的LOS是通过分析来自固定传感器的数据来确定的。结果表明,技术指标可以提高LOS估计的准确性(随机森林= 93.1,k近邻= 92.5,支持向量机= 91.4)。目前的工作介绍了一种新的方法来选择技术指标并将其用作特征,从而可以对LOS估计进行高度准确的短期预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using a new algorithm in Machine learning Approaches to estimate level-of-service in hourly traffic flow data in vehicular ad hoc networks
The primary goals of transportation agencies and researchers studying traffic operations are to ease traffic and increase road safety through the use of vehicular ad hoc networks. Agencies can't achieve their goals without reliable and consistent data on the current traffic situation. The Level-of-Service (LOS) index is a helpful measure of freeway traffic operations. Conventional fixed-location cameras and sensors are impractical and expensive for gathering reliable traffic density data on every road in large networks. Flow data is a new, low-cost option that has the potential to boost safety and operations. This study proposes an algorithm for hourly LOS assessment by incorporating flow data provided by the MIDAS (Motorway Incident Detection and Automatic Signaling) system. The proposed algorithm uses machine learning techniques to classify LOS data based on the flow of traffic. The input features that are subject to prediction are a group of technical indicators. The real-world LOS was determined by analyzing data from stationary sensors. The outcomes demonstrate that technical indicators can be utilized to enhance the accuracy of LOS estimation (Random Forest= 93.1, k-nearest neighbors = 92.5, and Support Vector Machine = 91.4). The current work introduces a novel approach to the selection of technical indicators and their use as features, which allows for highly accurate short-term prediction of LOS estimation.
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