Collision prediction method based on vehicle distance probability distribution for internet of vehicles

A probability distribution and prediction method technology, applied in the field of Internet of Vehicles, can solve problems such as the inability to effectively apply multi-vehicle collisions

Inactive Publication Date: 2014-01-29
SUZHOU INST FOR ADVANCED STUDY USTC
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Problems solved by technology

[0004] Although the literature [C.Garcia-Costa, etc, "A stochastic model for chain collisions of vehicles equipped with vehicular communications", IEEE Transactions on Intelligent Transportation Systems, vol.13, no.2, Jun.2012] gives a A stochastic model for predicting multiple vehicle collisions, but since various input variables in the model are assumed to be random variables, it cannot be effectively applied to real-time prediction of multi-vehicle collisions in the actual Internet of Vehicles

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  • Collision prediction method based on vehicle distance probability distribution for internet of vehicles
  • Collision prediction method based on vehicle distance probability distribution for internet of vehicles
  • Collision prediction method based on vehicle distance probability distribution for internet of vehicles

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Embodiment

[0054] Such as figure 1 As shown, a collision prediction method based on the inter-vehicle distance probability distribution in the Internet of Vehicles provided by the present invention, the inter-vehicle distance probability distribution model follows the real-time dynamic maintenance of the motion states of neighboring vehicles around the vehicle, and the method includes the following steps:

[0055] (1) Assume that there are a total of N vehicles numbered V on the entire road section 1 ,V 2 ,...,V N The vehicles move forward one after another, and each mobile vehicle periodically broadcasts Beacons messages containing its own real-time motion status to neighboring vehicles. By parsing Beacons messages from neighboring vehicles, the real-time motion status and vehicle distribution density λ of neighbor nodes in the surrounding environment can be obtained. The motion state information specifically includes velocity v, acceleration a, motion direction and GPS position vec...

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Abstract

The invention discloses a vehicle collision prediction method based on vehicle distance probability distribution under a highway model. The method includes the steps of a vehicle periodically (under 10Hz) broadcasts current motion statuses Beacons (speed, acceleration and GPS); the density of vehicles in the surrounding environment is dynamically calculated to build a vehicle distance distribution probability model; a minimum safety distance required to avoid collision when two adjacent vehicles emergently brake is dynamically calculated according the motion status of one vehicle and the motion status of the adjacent vehicle ahead; the collision probability (the probability for the vehicle distance being smaller than the minimum safety distance) of the two adjacent vehicles is calculated according to vehicle distance probability distribution; a multi-vehicle collision Markov chain and a state transition matrix are established, and expectation for the number of vehicle collisions on the whole section at certain time is estimated. The method is high in innovation level and extensibility; the defects of poor GPS data precision and instability in the current vehicle-location-based collision prediction algorithm are well made up; the method plays an excellent role especially in GPS satellite signal blind areas and has promising application prospect.

Description

technical field [0001] The invention belongs to the technical field of the Internet of Vehicles of an intelligent transportation system, and in particular relates to a multi-vehicle collision prediction method based on the probability distribution of inter-vehicle distances in emergency situations. The vehicle collision prediction method can be used to calculate the safety factor of individual vehicles in real time, and can also be used to evaluate the risk of secondary collisions caused by sudden accidents on the entire road section. Background technique [0002] In recent years, as an emerging technology in the field of intelligent transportation, Vehicle Networking (Vehicle Ad-hoc Network, VANET) has attracted the attention of many automobile manufacturers and scholars. 75MHz communication frequency band. In VANET, each mobile vehicle has the ability of wireless communication. Under normal circumstances, it periodically broadcasts Beacons messages containing its own moti...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G08G1/16
Inventor 黄刘生郭伟杰徐宏力
Owner SUZHOU INST FOR ADVANCED STUDY USTC
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