Routing Autonomous Emergency Vehicles in Smart Cities Using Real Time Systems Analogy: A Conceptual Model

Subash Humagain, R. Sinha
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引用次数: 4

Abstract

Emergency service vehicles like ambulance, fire, police etc. should respond to emergencies on time. Existing barriers like increased congestion, multiple signalized intersections, queued vehicles, traffic phase timing etc. can prevent emergency vehicles (EVs) achieving desired response times. Existing solutions to route EVs have not been successful because they do not use dynamic traffic parameters. Real time information on increased congestion, halts on road, pedestrian flow, queued vehicles, real and adaptive speed, can be used to properly actuate pre-emption and minimise the impact that EV movement can have on other traffic.Smart cities provide the necessary infrastructure to enable two critical factors in EV routing: real-time traffic data and connectivity. In addition, using autonomous vehicles (AVs) in place of normal emergency service vehicles can have further advantages in terms of safety and adaptability in smart city environments. AVs feature several sensors and connectivity that can help them make real-time decisions. We propose a novel idea of using autonomous emergency vehicles (AEVs) that can meet the critical response time and drive through a complex road network in smart cities efficiently and safely. This is achieved by considering traffic network analogous to real-time systems (RTS) where we use mixed-criticality real-time system (MCRTS) task scheduling to schedule AEVs for meeting response time.
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基于实时系统类比的智能城市自动应急车辆路径选择:一个概念模型
救护车、消防车、警车等紧急服务车辆应及时响应紧急情况。现有的障碍,如拥堵加剧、多个信号交叉口、排队车辆、交通相位定时等,都可能阻碍应急车辆(ev)实现预期的响应时间。现有的电动汽车路由解决方案并不成功,因为它们没有使用动态交通参数。有关日益严重的交通堵塞、道路停车、行人流量、排队车辆、实际和自适应速度的实时信息,可用于适当地启动先发制人,并最大限度地减少电动汽车运动对其他交通的影响。智慧城市提供必要的基础设施,以实现电动汽车路线的两个关键因素:实时交通数据和连接。此外,在智慧城市环境中,使用自动驾驶汽车(AVs)代替普通的应急服务车辆在安全性和适应性方面具有进一步的优势。自动驾驶汽车具有多个传感器和连接功能,可以帮助他们做出实时决策。我们提出了一种新颖的想法,即使用能够满足关键响应时间的自动应急车辆(aev),并在智能城市的复杂道路网络中高效安全地行驶。这是通过考虑类似于实时系统(RTS)的交通网络来实现的,其中我们使用混合临界实时系统(MCRTS)任务调度来调度aev以满足响应时间。
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