搜索

x
中国物理学会期刊

蚁群元胞优化算法在人群疏散路径规划中的应用

CSTR: 32037.14.aps.69.20191774

Application research of ant colony cellular optimization algorithm in population evacuation path planning

CSTR: 32037.14.aps.69.20191774
PDF
HTML
导出引用
  • 针对疏散路径规划问题, 以栅格化地图为背景的基础上, 提出了蚁群元胞优化算法. 首先为统一仿真时间步长, 建立以六边形元胞为基础的栅格地图; 然后利用静态势场对启发函数进行优化, 利用分段更新规则优化信息素更新方式; 最后, 将模型参数作为粒子群优化算法的粒子位置信息进行优化, 求解参数的最优组合值. 仿真结果表明: 采用蚁群元胞优化模型进行疏散路径规划时, 不仅加快了搜索速度, 而且增大了解空间, 提高了搜索能力, 可以有效避免陷入局部最优解.

     

    With the improvement of people's living standards, large-scaled public activities have increased considerably, and the emergency probability has increased greatly. When an emergency occurs, the emergency evacuation can effectively reduce casualties and economic losses. Therefore, how to quickly evacuate crowd is a current research hotspot in this field. The path planning of emergency evacuation is one of the effective ways to implement the crowd evacuation. Aiming at the problem of path planning for emergency evacuation and taking the grid map as the background, the ant colony cellular optimization (ACCO) algorithm is proposed as the path planning algorithm based on the cellular automata theory and ant colony algorithm. Firstly, in order to solve the problem of inconsistent time steps in the quadrilateral grid map, the grid map based on hexagonal cell is established and the ACCO algorithm is developed based on the hexagonal grid map. And the method of solving grid coordinate is given. Then, in order to improve the convergence speed and search ability of the ACCO algorithm, the static field is used to optimize the heuristic function, and the segment update rule is used to optimize the pheromone update method. Finally, the parameters of ACCO algorithm are optimized through the particle swarm optimization (PSO) algorithm. The method of designing the fitness evaluation function is proposed, and the optimal combination of parameters of the ACCO algorithm is implemented according to the fitness function. In order to verify the scientificity and effectiveness of the algorithm proposed in this research and also to systematically verify the optimization strategy, in this research the exhibition hall on the B-deck of a large cruise ship is used as the engineering background, and the traditional algorithm and the ACCO algorithm are adopted to perform the simulations. The simulation results show that compared with the traditional quadrilateral grid, the hexagonal grid proposed in this research unifies the simulation time step and can be used as the division method of the simulation environment. At the same time, the ACCO algorithm can effectively perform the evacuation path planning, and the optimization strategy proposed in this research not only acceletates the search speed, but also increases the solution space and improves the search ability, which can effectively avoid falling into the local optimal solution.

     

    目录

    /

    返回文章
    返回
    Baidu
    map