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Prediction method after vehicle changes lane to front vehicle of target lane during automatic driving

A technology of target lane and automatic driving, which is applied in the field of prediction after the vehicle changes lanes to the vehicle in front of the target lane in automatic driving, which can solve the problems of interference decision-making, increasing the operation difficulty and operating cost of the automatic driving system, increasing the amount of data analysis and calculation, etc.

Active Publication Date: 2020-03-27
GOODGRID AUTOMOTIVE TECH SUZHOU CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

These interesting surrounding vehicles with low willingness to change lanes will interfere with the decision-making of the own vehicle, and will also increase the calculation amount of the data analysis of the vehicle's driving status, increasing the difficulty and cost of the automatic driving system operation

Method used

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  • Prediction method after vehicle changes lane to front vehicle of target lane during automatic driving
  • Prediction method after vehicle changes lane to front vehicle of target lane during automatic driving
  • Prediction method after vehicle changes lane to front vehicle of target lane during automatic driving

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Embodiment

[0103] This embodiment discloses a method for predicting when a vehicle changes lanes to the vehicle in front of the target lane during automatic driving. Refer to figure 1 shown, including the following steps,

[0104] Obtain the driving status data of the following vehicles in the current sampling period: the pre-lane-changing vehicle 3, the first vehicle in front of the lane where the pre-lane-changing vehicle is located 8, the first vehicle in the target lane in front of the pre-lane-changing vehicle 4, and the target lane The first vehicle behind the pre-change vehicle is 0. refer to figure 2 As shown, vehicle 3 represents the pre-change lane vehicle (hereinafter referred to as "vehicle 3"), vehicle 8 represents the first vehicle in front of the lane where the pre-change lane vehicle is located (hereinafter referred to as "vehicle 8"), and vehicle 4 represents the vehicle located in the target lane. The first vehicle in front of the pre-changing vehicle (hereinafter re...

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Abstract

The invention discloses a prediction method after a vehicle changes a lane to a vehicle in front of a target lane in automatic driving. Acquiring driving state data of the following vehicles in the current sampling period: a pre-lane-changing vehicle, a first vehicle in front of the lane where the pre-lane-changing vehicle is located, a first vehicle located in front of the pre-lane-changing vehicle in the target lane, and a first vehicle located behind the pre-lane-changing vehicle in the target lane; calculating the willingness of the pre-lane-changing vehicle after the pre-lane-changing vehicle changes the lane to the front vehicle of the target lane according to the acquired driving state data of each vehicle and the lane environment data; and when the willingness exceeds the willingness threshold, predicting that the pre-lane-changing vehicle will change lanes to the position behind the front vehicle of the target lane at the future moment. According to the prediction method, thefactor that surrounding vehicles disturb the decision of the vehicle is effectively eliminated, and the confirmation degree of the decision of the vehicle is improved; Meanwhile, the data analysis calculation amount of a prediction module in the automatic driving system is effectively reduced, the operation difficulty and the operation cost of the automatic driving system are reduced, and the delay of decision making is effectively improved.

Description

technical field [0001] The invention relates to the technical field of automatic driving, in particular to a method for predicting after a vehicle changes lanes to a vehicle in front of a target lane during automatic driving. Background technique [0002] Autonomous driving includes four modules: prediction, decision-making, planning and control. The prediction module predicts whether the vehicle will change lanes in the future based on the vehicle driving status data and lane environment data of each lane, as well as the lane change trajectory in the case of lane change. Lane changing includes left lane changing and right lane changing, and left and right lane changing includes changing lanes before the vehicle in front of the target lane and after changing lanes to the vehicle in front of the target lane. The decision-making module calculates the next expected state of the vehicle according to the predicted output results of the prediction module, environmental information...

Claims

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Application Information

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IPC IPC(8): B60W40/00B60W40/04
CPCB60W40/00B60W40/04
Inventor 杜光辉经建峰袁雁城张尧文
Owner GOODGRID AUTOMOTIVE TECH SUZHOU CO LTD
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