Abstract:
Trajectory planning is essential for self-driving vehicles and has stringent requirements for accuracy and efficiency. The existing trajectory planning methods have limit...Show MoreMetadata
Abstract:
Trajectory planning is essential for self-driving vehicles and has stringent requirements for accuracy and efficiency. The existing trajectory planning methods have limitations in the feasibility of planned trajectories and computational efficiency. This paper proposes a life-long learning framework to achieve effective and high-accuracy direct trajectory planning (DTP) tasks. Based on generative adversarial networks (GANs), this study develops a lightweight GDTP model to map the initial/final states and the control action sequence. Additionally, by embedding the GDTP into the rapidly-exploring random tree (RRT), a GDTP-RRT algorithm is further designed for long-distance and multi-stage planning tasks. Taking the tractor-trailer as an application case, we test the proposed method in multiple scenarios with varying characteristics. The experimental results show that the method can plan highly feasible trajectories in a short time, compared with the most applied algorithm – the cubic curve RRT* (CCRRT*). It is found that the tracking errors of our method are 29.1% and 44.1% lower than the CCRRT* in terms of position and heading angle. This paper provides an effective and stable vehicle trajectory planning method for complex self-driving tasks.
Published in: IEEE Transactions on Intelligent Transportation Systems ( Volume: 23, Issue: 10, October 2022)
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- IEEE Keywords
- Index Terms
- Generative Adversarial Networks ,
- Random Tree ,
- Trajectory Planning ,
- Rapidly-exploring Random Tree ,
- Active Control ,
- Lifelong Learning ,
- Multiple Scenarios ,
- Task Planning ,
- Heading Angle ,
- Cubic Curve ,
- Model Analysis ,
- Neural Network ,
- Model Performance ,
- Training Data ,
- Deep Learning ,
- Convolutional Neural Network ,
- Deep Neural Network ,
- Hidden Layer ,
- Efficient Algorithm ,
- Long Short-term Memory ,
- Steering Angle ,
- Target State ,
- Tracking Control ,
- Reference Model ,
- Model Predictive Control ,
- Linear Quadratic Regulator ,
- Front Wheel ,
- Final Error ,
- Tree Nodes ,
- Complex Scenarios
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Generative Adversarial Networks ,
- Random Tree ,
- Trajectory Planning ,
- Rapidly-exploring Random Tree ,
- Active Control ,
- Lifelong Learning ,
- Multiple Scenarios ,
- Task Planning ,
- Heading Angle ,
- Cubic Curve ,
- Model Analysis ,
- Neural Network ,
- Model Performance ,
- Training Data ,
- Deep Learning ,
- Convolutional Neural Network ,
- Deep Neural Network ,
- Hidden Layer ,
- Efficient Algorithm ,
- Long Short-term Memory ,
- Steering Angle ,
- Target State ,
- Tracking Control ,
- Reference Model ,
- Model Predictive Control ,
- Linear Quadratic Regulator ,
- Front Wheel ,
- Final Error ,
- Tree Nodes ,
- Complex Scenarios
- Author Keywords