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首页> 外文期刊>Research journal of applied science, engineering and technology >Robot Path Planning Based on Simulated Annealing and Artificial Neural Networks
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Robot Path Planning Based on Simulated Annealing and Artificial Neural Networks

机译:基于模拟退火和人工神经网络的机器人路径规划

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摘要

As for the limitations of algorithms in global path planning of mobile robot at present, this study applies the improved simulated annealing algorithm artificial neural networks to path planning of mobile robot in order to better the weaknesses of great scale of iteration computation and slow convergence, since the best-reserved simulated annealing algorithm was introduced and it was effectively combined with other algorithms, this improved algorithm has accelerated the convergence and shortened the computing time in the path planning and the global optimal solution can be quickly obtained. Because the simulated annealing algorithm was updated and the obstacle collision penalty function represented by neural networks and the path length are treated as the energy function, not only does the planning of path meet the standards of shortest path, but also avoids collisions with obstacles. Experimental results of simulation show this improved algorithm can effectively improve the calculation speed of path planning and ensure the quality of path planning.
机译:针对目前算法在移动机器人全局路径规划中的局​​限性,本研究将改进的模拟退火算法人工神经网络应用于移动机器人的路径规划,以解决迭代计算规模大,收敛速度慢的缺点。引入了最优保留的模拟退火算法,并将其与其他算法有效地结合在一起,改进后的算法加快了收敛速度,缩短了路径规划中的计算时间,可以快速获得全局最优解。由于更新了模拟退火算法,将神经网络表示的障碍物碰撞罚函数和路径长度视为能量函数,因此路径规划不仅满足最短路径的标准,而且避免了与障碍物的碰撞。仿真实验结果表明,该改进算法可以有效提高路径规划的计算速度,保证路径规划的质量。

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