A decision-making method for rearward collision avoidance driving of heavy-duty commercial vehicles

A decision-making method and vehicle technology, applied in the direction of registration/instruction of vehicle operation, biological neural network model, registration/instruction, etc., can solve driving decisions that do not involve rearward collision avoidance of heavy-duty commercial vehicles, and the driving decision-making method is difficult to apply to heavy-duty vehicles Operational vehicles, lack of effective, reliable, and adaptive traffic environment heavy-duty operating vehicles, etc., to achieve the effect of simple and clear calculation methods and improved effectiveness

Active Publication Date: 2022-04-05
SOUTHEAST UNIV
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  • Application Information

AI Technical Summary

Problems solved by technology

Therefore, the driving decision-making method for passenger vehicles is difficult to apply to heavy-duty commercial vehicles
In general, the existing research does not involve the driving decision-making of heavy-duty commercial vehicles, especially the lack of effective, reliable and adaptive traffic environment characteristics of heavy-duty commercial vehicles.

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  • A decision-making method for rearward collision avoidance driving of heavy-duty commercial vehicles
  • A decision-making method for rearward collision avoidance driving of heavy-duty commercial vehicles
  • A decision-making method for rearward collision avoidance driving of heavy-duty commercial vehicles

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Embodiment Construction

[0084] The technical scheme of the present invention will be further described below in conjunction with the accompanying drawings.

[0085] In order to establish an effective, reliable and adaptive traffic environment decision-making strategy for backward collision avoidance, realize the decision-making of backward collision avoidance driving of heavy-duty commercial vehicles, and fill in the blank of decision-making technology for backward collision avoidance of heavy-duty commercial vehicles in practical applications. Aiming at heavy-duty commercial vehicles, such as semi-trailer tank trucks and semi-trailer trains, the present invention proposes a backward collision avoidance driving decision-making method based on deep reinforcement learning. Firstly, a virtual traffic environment model is established to collect the motion state information of heavy-duty commercial vehicles and the vehicles behind them. Secondly, a rearward collision risk assessment model based on the bac...

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Abstract

The invention discloses a decision-making method for rearward collision avoidance driving of a heavy commercial vehicle. First, a traffic environment model is established, and the movement state information of heavy-duty commercial vehicles and vehicles behind them is collected. Secondly, a rearward collision risk assessment model based on the backward distance to collision time is established to accurately quantify the rearward collision risk. Finally, the backward collision avoidance driving decision-making problem is described as a Markov decision process under a certain reward function, and a backward collision avoidance driving decision-making model based on deep reinforcement learning is established to obtain an effective, reliable and adaptive backward collision avoidance Crash driving decision-making strategy. The method proposed by the present invention overcomes the lack of research on rearward collision avoidance driving decision-making of heavy-duty commercial vehicles in the existing methods, can quantitatively output reasonable steering wheel angle and throttle opening control amount, and provides drivers with effective and reliable rear Suggestions for anti-collision driving to reduce the occurrence of rear collision accidents.

Description

technical field [0001] The invention relates to a decision-making method for anti-collision driving, in particular to a decision-making method for backward anti-collision driving of heavy commercial vehicles, and belongs to the technical field of automobile safety. Background technique [0002] As the main undertaker of road transportation, the safety status of operating vehicles directly affects the safety of road transportation in our country. Vehicle collision is the most important accident form in road transportation. Heavy-duty commercial vehicles represented by dangerous goods transport tankers are mostly loaded with dangerous chemicals such as inflammable, explosive, and highly toxic (methanol, acrylonitrile). Compared with forward collisions, rear collisions are more likely to cause tank damage. If the body is damaged, it will cause serious consequences such as leakage, combustion, and explosion of dangerous goods in the tank. Driving decision-making is an importan...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06N3/04G07C5/08B60W30/08
CPCG07C5/0808B60W30/08G06N3/045B60W30/0956B60W2300/125B60W2420/52B60W2554/4041B60W2554/80B60W2520/06G06N3/092G06N3/0464G06N3/048
Inventor 李旭胡玮明胡锦超祝雪芬
Owner SOUTHEAST UNIV
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