2017
DOI: 10.1016/j.arcontrol.2017.03.005
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Traffic state estimation on highway: A comprehensive survey

Abstract: Traffic state estimation (TSE) refers to the process of the inference of traffic state variables (i.e., flow, density, speed and other equivalent variables) on road segments using partially observed traffic data. It is a key component of traffic control and operations, because traffic variables are measured not everywhere due to technological and financial limitations, and their measurement is noisy. Therefore, numerous studies have proposed TSE methods relying on various approaches, traffic flow models, and i… Show more

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Cited by 301 publications
(177 citation statements)
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“…This data partially reflect the real-time traffic conditions. The goal of traffic state estimation is to provide accurate prediction of the current traffic information both microscopically and macroscopically based on apriori knowledge and partial observation [3]. The Section III provides a comprehensive review of current research of traffic state estimation.…”
Section: System Architecturementioning
confidence: 99%
See 1 more Smart Citation
“…This data partially reflect the real-time traffic conditions. The goal of traffic state estimation is to provide accurate prediction of the current traffic information both microscopically and macroscopically based on apriori knowledge and partial observation [3]. The Section III provides a comprehensive review of current research of traffic state estimation.…”
Section: System Architecturementioning
confidence: 99%
“…Since it is difficult and expensive to obtain complete information on the traffic (e.g., 100% penetration rate of connected vehicles), estimation of traffic states, such as flow, density, and speed, from partially observed traffic data plays an important role. Seo et al performed a comprehensive survey about traffic state estimation which provides a guideline into this field [3]. The categories listed below are on the basis of their suggestion.…”
Section: Traffic State Estimationmentioning
confidence: 99%
“…For example, stochastic extensions of the cell transmission model [5,6] have been proposed [37,18]; other approaches have extended the link transmission model [44], both at the individual link level and the network level [33,32,34,26]. In general, there still remain issues related to the physical accuracy of the sample paths of existing stochastic traffic models, particularly those developed for purposes of traffic state estimation (see [36,39] for recent reviews). The main culprit is the dominance of time-stochasticity (or noise) in the stochastic models, mostly developed in Eulerian coordinates [15,38,28,16,40,2,41,43,10,37,1,19], but also in Lagrangian coordinates [46,45,3].…”
Section: Introductionmentioning
confidence: 99%
“…Other approaches for VANET-based vehicle density estimation can be reviewed in the survey presented in Darwish and Bakar. 76 Additionally, a comprehensive survey for density estimation techniques based on scenario modeling and historical data is presented in Seo et al 77 If all the vehicles detecting an attack override the rebroadcast decision rule, solutions based on vehicle density estimation could lead to a scenario where all receiving vehicles retransmit the packet. Considering a single attacker, this will occur only in the current hop.…”
Section: Vulnerability Analysis Of Receiver-oriented Broadcast Dissemmentioning
confidence: 99%
“…The periodic exchange of beacon messages in senderoriented broadcast dissemination protocols can be exploited to implement data-centric security solutions. 66,77,85 For instance, in Jaballah et al, 47 a cooperative position verification mechanism, based on the exchange of an active neighbors table, is proposed to secure the broadcast dissemination process.…”
Section: Vulnerability Analysis Of Sender-oriented Broadcast Disseminmentioning
confidence: 99%