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Automatic parking trajectory planning method based on deep enhanced learning

A technology of automatic parking and enhanced learning, which is applied to simulators of space navigation conditions, space navigation equipment, instruments, etc., can solve the problems of vehicle position control error accumulation, unsatisfactory accuracy and reliability, and difficulty in precise control , to improve the accuracy and reliability of the

Active Publication Date: 2018-11-23
ZHEJIANG LEAPMOTOR TECH CO LTD
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AI Technical Summary

Problems solved by technology

The above two types of methods mainly use the traditional PID control principle to determine the steering wheel angle, vehicle position and control error accumulation for the path planning part, which is easily affected by surrounding environmental factors, and it is difficult to achieve precise control, and the simulation experiment data is relatively small. Therefore, the accuracy and reliability are not ideal

Method used

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  • Automatic parking trajectory planning method based on deep enhanced learning
  • Automatic parking trajectory planning method based on deep enhanced learning
  • Automatic parking trajectory planning method based on deep enhanced learning

Examples

Experimental program
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Embodiment

[0024] Embodiment: A kind of automatic parking trajectory planning method based on deep reinforcement learning of this embodiment, such as image 3 shown, including the following steps:

[0025] ① Obtain the parking space information and the relative position of the vehicle and the parking space through the on-board camera, use different colors to represent obstacles and vehicles in the obtained image, and mark a virtual parking space that is small enough and narrow enough to be used as a parking training space (side parking When driving, the length of the virtual parking space is 1.2 times the length of the car; when parking in reverse, the width of the virtual parking space is 1.2 times the width of the car), to establish a two-dimensional virtual parking environment;

[0026] ②In the case of low speed, that is, the vehicle speed is below 10km / h, simulate the vehicle parking movement, set the steering wheel angle range between -40° and 40°, divide it evenly, and take a corre...

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Abstract

The invention relates to an automatic parking trajectory planning method based on deep enhanced learning. The method comprises the steps that a two-dimensional virtual parking environment is established according to information obtained by a visual system; parking movement of a vehicle is simulated to obtain the steering angles of a steering wheel; a series of corresponding steering wheel steeringangles in the automatic parking process are obtained by establishing an automatic parking model based on deep enhanced learning and adopting a deep enhanced learning method, and an automatic parkingtrajectory is generated; whether or not collision of a vehicle takes place in the virtual parking environment is judged, if yes, the two-dimensional virtual parking environment is initialized, the next parking training is started, otherwise the next step is started; the automatic parking trajectory is planned, and the length and time consumption of the trajectory are comprehensively considered toscreen out the optimal automatic parking trajectory. The method has the advantages that the method can be applied to different parking environments, the planned trajectory is more reasonable and optimized, a controlling strategy is combined, the vehicle can follow the trajectory to rapidly enter a parking space automatically without being operated by a driver, and the accuracy and the reliabilityare improved.

Description

technical field [0001] The present invention relates to the technical field of automobile unmanned driving, in particular to an automatic parking trajectory planning method based on deep reinforcement learning. Background technique [0002] The automatic parking of the car is an important part of the unmanned driving system of the car. The vehicle can automatically park into the parking space without the driver's operation. Existing automatic parking methods are mainly divided into two categories: one based on millimeter-wave radar, and the other based on vision systems. Among them, the method based on the millimeter-wave radar has a relatively large ranging error for objects in the middle and short distances, and the relative cost is relatively high. The above two types of methods mainly use the traditional PID control principle to determine the steering wheel angle, vehicle position and control error accumulation for the path planning part, which is easily affected by sur...

Claims

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Application Information

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IPC IPC(8): B60W30/06G09B9/04
CPCG09B9/04B60W30/06G01C21/3644G01C21/3647G01C21/3655
Inventor 杜卓缪其恒王江明许炜
Owner ZHEJIANG LEAPMOTOR TECH CO LTD
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