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Accelerated incident detection across transportation networks using vehicle kinetics and support vector machine in cooperation with infrastructure agents

机译:与基础设施代理商合作,利用车辆动力学和支持向量机加快交通网络中的事件检测

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摘要

This study presents a framework for highway incident detection using vehicle kinetics, such as speed profile and lane changing behaviour, as envisioned in the vehicle-infrastructure integration (VII, also known as IntelliDrive) in which vehicles and infrastructure communicate to improve mobility and safety. This framework uses an in-vehicle intelligent module, based on a support vector machine (SVM), to determine the vehicle's travel experiences with autonomously generated kinetics data. Roadside infrastructure agents (also known as RSUs: roadside units) detect the incident by compiling travel experiences from several vehicles and comparing the aggregated results with the pre-selected threshold values. The authors developed this VII-SVM incident detection system on a previously calibrated and validated simulation network in rural Spartanburg, South Carolina and deployed it on an urban freeway network in Baltimore, Maryland to evaluate its transportability. The study found no significant differences in the detection performance between the original network and a new network that the VII-SVM system has not seen before. This demonstrated the feasibility of developing a generic VII-SVM system, applicable across transportation networks.
机译:这项研究提出了一种利用车辆动力学(例如速度曲线和变道行为)进行高速公路事件检测的框架,这是在车辆基础设施集成(VII,也称为IntelliDrive)中所设想的,其中车辆和基础设施进行通信以改善机动性和安全性。该框架使用基于支持向量机(SVM)的车载智能模块,通过自动生成的动力学数据来确定车辆的行驶体验。路边基础设施代理(也称为RSU:路边单位)通过汇总多辆车辆的出行经验并将汇总结果与预选阈值进行比较来检测事件。作者在先前经过校准和验证的南卡罗来纳州乡村斯巴达堡乡村模拟网络上开发了该VII-SVM事件检测系统,并将其部署在马里兰州巴尔的摩的城市高速公路网络上,以评估其可运输性。研究发现,原始网络与VII-SVM系统以前从未见过的新网络之间的检测性能没有显着差异。这证明了开发适用于整个运输网络的通用VII-SVM系统的可行性。

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