Liao Yishen, Yu Naigong, Yan Jinhan
Faculty of Information Technology, Beijing University of Technology, Beijing 100124, China.
Beijing Key Laboratory of Computational Intelligence and Intelligent System, Beijing 100124, China.
Biomimetics (Basel). 2023 Sep 14;8(5):427. doi: 10.3390/biomimetics8050427.
Rats possess exceptional navigational abilities, allowing them to adaptively adjust their navigation paths based on the environmental structure. This remarkable ability is attributed to the interactions and regulatory mechanisms among various spatial cells within the rat's brain. Based on these, this paper proposes a navigation path search and optimization method for mobile robots based on the rat brain's cognitive mechanism. The aim is to enhance the navigation efficiency of mobile robots. The mechanism of this method is based on developing a navigation habit. Firstly, the robot explores the environment to search for the navigation goal. Then, with the assistance of boundary vector cells, the greedy strategy is used to guide the robot in generating a locally optimal path. Once the navigation path is generated, a dynamic self-organizing model based on the hippocampal CA1 place cells is constructed to further optimize the navigation path. To validate the effectiveness of the method, this paper designs several 2D simulation experiments and 3D robot simulation experiments, and compares the proposed method with various algorithms. The experimental results demonstrate that the proposed method not only surpasses other algorithms in terms of path planning efficiency but also yields the shortest navigation path. Moreover, the method exhibits good adaptability to dynamic navigation tasks.
大鼠具有卓越的导航能力,使它们能够根据环境结构自适应地调整导航路径。这种非凡的能力归因于大鼠大脑内各种空间细胞之间的相互作用和调节机制。基于此,本文提出了一种基于大鼠大脑认知机制的移动机器人导航路径搜索与优化方法。目的是提高移动机器人的导航效率。该方法的机制基于培养导航习惯。首先,机器人探索环境以寻找导航目标。然后,在边界向量细胞的辅助下,使用贪婪策略引导机器人生成局部最优路径。一旦生成导航路径,就构建基于海马体CA1位置细胞的动态自组织模型以进一步优化导航路径。为了验证该方法的有效性,本文设计了几个二维模拟实验和三维机器人模拟实验,并将所提出的方法与各种算法进行比较。实验结果表明,所提出的方法不仅在路径规划效率方面优于其他算法,而且还能产生最短的导航路径。此外,该方法对动态导航任务具有良好的适应性。