动态知情偏差 RRT*-Connect:利用混合双树搜索的动态知情偏差改进启发式指导

IF 3.1 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Intelligent & Robotic Systems Pub Date : 2024-07-18 DOI:10.1007/s10846-024-02144-w
Haotian Li, Yiting Kang, Haisong Han
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引用次数: 0

摘要

RRT*-Connect 算法通过双树偏置增长来提高效率,但这种偏置本身可能是盲目的,可能会影响算法的启发式性能。相比之下,知情 RRT* 算法通过利用知情区域来缩小规划问题的范围,从而提高向最优解收敛的效率。不过,这种方法依赖于事先建立可行路径。将这两种算法结合起来,既能解决知情 RRT 带来的挑战,又能加快向最优收敛的速度,但却无法解决对偶树中的盲偏差问题:本文提出了一种新算法:动态知情偏差 RRT*-Connect。该算法以潜在和明确的知情偏差采样为基础,引入了一个动态偏差点集,以精确目标指导双树生长。此外,我们还通过引入两个创新指标来增强算法启发式的评估框架,这两个指标能有效捕捉算法的特征。在传统指标上观察到的改进表明,与 RRT*-Connect 和 Informed RRT*-Connect 相比,所提出的算法具有更强的启发式。这些发现还表明,我们的评估框架中引入的新指标是可行的。
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Dynamic Informed Bias RRT*-Connect: Improving Heuristic Guidance by Dynamic Informed Bias Using Hybrid Dual Trees Search

The RRT*-Connect algorithm enhances efficiency through dual tree bias growth, yet this bias can be inherently blind, potentially affecting the algorithm’s heuristic performance. In contrast, the Informed RRT* algorithm narrows the planning problem’s scope by leveraging an informed region, thereby improving convergence efficiency towards optimal solutions. However, this approach relies on the prior establishment of feasible paths. Combining these two algorithms can address the challenges posed by Informed RRT while also accelerating convergence towards optimality, albeit without resolving the issue of blind bias in dual trees.In this paper, we proposed a novel algorithm: Dynamic Informed Bias RRT*-Connect. This algorithm, grounded in potential and explicit informed bias sampling, introduces a dynamical bias points set that guides dual tree growth with precision objectives. Additionally, we enhance the evaluation framework for algorithmic heuristics by introducing two innovative metrics that effectively capture the algorithm’s characteristics. The improvements observed in traditional indicators demonstrate that the proposed algorithm exhibits greater heuristic compared to RRT*-Connect and Informed RRT*-Connect. These findings also suggest the viability of the new metrics introduced in our evaluation framework.

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来源期刊
Journal of Intelligent & Robotic Systems
Journal of Intelligent & Robotic Systems 工程技术-机器人学
CiteScore
7.00
自引率
9.10%
发文量
219
审稿时长
6 months
期刊介绍: The Journal of Intelligent and Robotic Systems bridges the gap between theory and practice in all areas of intelligent systems and robotics. It publishes original, peer reviewed contributions from initial concept and theory to prototyping to final product development and commercialization. On the theoretical side, the journal features papers focusing on intelligent systems engineering, distributed intelligence systems, multi-level systems, intelligent control, multi-robot systems, cooperation and coordination of unmanned vehicle systems, etc. On the application side, the journal emphasizes autonomous systems, industrial robotic systems, multi-robot systems, aerial vehicles, mobile robot platforms, underwater robots, sensors, sensor-fusion, and sensor-based control. Readers will also find papers on real applications of intelligent and robotic systems (e.g., mechatronics, manufacturing, biomedical, underwater, humanoid, mobile/legged robot and space applications, etc.).
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