Developing Models for Managing Drones in the Transportation System in Smart Cities

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Electrical Control and Communication Engineering Pub Date : 2019-12-01 DOI:10.2478/ecce-2019-0010
Nguyen Dinh Dung
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引用次数: 11

Abstract

Abstract Unmanned aerial vehicles (UAVs), especially drones, have advantages of having applications in different areas, including agriculture, transportation, such as land use surveys and traffic surveillance, and weather research. Many network protocols are architected for the communication between multiple drones. The present study proposes drone-following models for managing drones in the transportation management system in smart cities. These models are based on the initial idea that drones flight towards a leading drone in the traffic flow. Such models are described by the relative distance and velocity functions. Two types of drone-following models are presented in the study. The first model is a safe distance model (SD model), in which a safe distance between a drone and its ahead is maintained. By applying the stochastic diffusion process, an improved model, called Markov model, is deduced. These drone-following models are simulated in a 2D environment using numerical simulation techniques. With the simulation results, it could be noted that: i) there is no accident and no unrealistic deceleration; ii) the velocity of the followed drone is changed according to the speed of the drone ahead; iii) the followed drones keep a safe distance to drone ahead even the velocities are changed; iv) the performance of the Markov model is better than that of the SD model.
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开发智能城市交通系统中无人机管理模型
摘要无人机,特别是无人机,具有在不同领域应用的优势,包括农业、交通运输,如土地利用调查和交通监测,以及天气研究。许多网络协议都是为多架无人机之间的通信而设计的。本研究提出了在智能城市交通管理系统中管理无人机的无人机跟踪模型。这些模型基于无人机朝着交通流中领先的无人机飞行的最初想法。这种模型是用相对距离和速度函数来描述的。研究中提出了两种类型的无人机跟随模型。第一个模型是安全距离模型(SD模型),其中无人机与其前方之间保持安全距离。应用随机扩散过程,推导了一种改进的马尔可夫模型。这些无人机跟随模型是使用数值模拟技术在2D环境中模拟的。根据模拟结果,可以注意到:i)没有发生事故,也没有不切实际的减速;ii)跟随的无人机的速度根据前方无人机的速率而改变;iii)即使速度发生变化,跟随的无人机也与前方无人机保持安全距离;iv)马尔可夫模型的性能优于SD模型的性能。
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来源期刊
Electrical Control and Communication Engineering
Electrical Control and Communication Engineering ENGINEERING, ELECTRICAL & ELECTRONIC-
自引率
14.30%
发文量
0
审稿时长
12 weeks
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