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Fusion Algorithm Based on Improved A^(*)and DWA for USV Path Planning
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作者 Changyi Li Lei Yao Chao Mi 《哈尔滨工程大学学报(英文版)》 2025年第1期224-237,共14页
The traditional A^(*)algorithm exhibits a low efficiency in the path planning of unmanned surface vehicles(USVs).In addition,the path planned presents numerous redundant inflection waypoints,and the security is low,wh... The traditional A^(*)algorithm exhibits a low efficiency in the path planning of unmanned surface vehicles(USVs).In addition,the path planned presents numerous redundant inflection waypoints,and the security is low,which is not conducive to the control of USV and also affects navigation safety.In this paper,these problems were addressed through the following improvements.First,the path search angle and security were comprehensively considered,and a security expansion strategy of nodes based on the 5×5 neighborhood was proposed.The A^(*)algorithm search neighborhood was expanded from 3×3 to 5×5,and safe nodes were screened out for extension via the node security expansion strategy.This algorithm can also optimize path search angles while improving path security.Second,the distance from the current node to the target node was introduced into the heuristic function.The efficiency of the A^(*)algorithm was improved,and the path was smoothed using the Floyd algorithm.For the dynamic adjustment of the weight to improve the efficiency of DWA,the distance from the USV to the target point was introduced into the evaluation function of the dynamic-window approach(DWA)algorithm.Finally,combined with the local target point selection strategy,the optimized DWA algorithm was performed for local path planning.The experimental results show the smooth and safe path planned by the fusion algorithm,which can successfully avoid dynamic obstacles and is effective and feasible in path planning for USVs. 展开更多
关键词 Improved A^(*)algorithm optimized DWA algorithm Unmanned surface vehicles Path planning Fusion algorithm
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Research on AGV task path planning based on improved A^(*) algorithm 被引量:16
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作者 Xianwei WANG Jiajia LU +2 位作者 Fuyang KE Xun WANG Wei WANG 《Virtual Reality & Intelligent Hardware》 2023年第3期249-265,共17页
Background Automatic guided vehicles(AGVs)have developed rapidly in recent years and have been used in several fields,including intelligent transportation,cargo assembly,military testing,and others.A key issue in thes... Background Automatic guided vehicles(AGVs)have developed rapidly in recent years and have been used in several fields,including intelligent transportation,cargo assembly,military testing,and others.A key issue in these applications is path planning.Global path planning results based on known environmental information are used as the ideal path for AGVs combined with local path planning to achieve safe and rapid arrival at the destination.Using the global planning method,the ideal path should meet the requirements of as few turns as possible,a short planning time,and continuous path curvature.Methods We propose a global path-planning method based on an improved A^(*)algorithm.The robustness of the algorithm was verified by simulation experiments in typical multiobstacle and indoor scenarios.To improve the efficiency of the path-finding time,we increase the heuristic information weight of the target location and avoid invalid cost calculations of the obstacle areas in the dynamic programming process.Subsequently,the optimality of the number of turns in the path is ensured based on the turning node backtracking optimization method.Because the final global path needs to satisfy the AGV kinematic constraints and curvature continuity condition,we adopt a curve smoothing scheme and select the optimal result that meets the constraints.Conclusions Simulation results show that the improved algorithm proposed in this study outperforms the traditional method and can help AGVs improve the efficiency of task execution by planning a path with low complexity and smoothness.Additionally,this scheme provides a new solution for global path planning of unmanned vehicles. 展开更多
关键词 Autonomous guided vehicle(AGV) Map modeling Global path planning Improved A^(*)algorithm Path optimization Bezier curves
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直线优化A^*算法在最短路径问题中的改进与实现 被引量:7
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作者 王海梅 周献中 《工程图学学报》 CSCD 北大核心 2009年第6期121-126,共6页
最短路径算法的效率是汽车实时导航、动态路径规划等应用领域普遍关注和迫切需要解决的问题。在深入分析经典Dijkstra最短路径算法的基础上,从数据结构和搜索策略两方面对算法进行了改进,采用存储桶排序方式,提出了带启发因子的直线优... 最短路径算法的效率是汽车实时导航、动态路径规划等应用领域普遍关注和迫切需要解决的问题。在深入分析经典Dijkstra最短路径算法的基础上,从数据结构和搜索策略两方面对算法进行了改进,采用存储桶排序方式,提出了带启发因子的直线优化A*算法。实验结果表明改进的算法具有较高的稳定性和效率。 展开更多
关键词 计算机应用 最短路径 直线优化A*算法 存储桶排序
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基于蚁群算法的最短路径问题的研究和应用 被引量:39
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作者 黄贵玲 高西全 +1 位作者 靳松杰 谈飞洋 《计算机工程与应用》 CSCD 北大核心 2007年第13期233-235,共3页
求解交通路网中两点间的最短路径是智能交通系统中一个重要的功能,为了更为准确快速地找到最优解,论文尝试采用带有方向引导信息的蚁群算法来实现该功能。实验结果表明,该方法能较为准确地找到交通路网中两点间最短路径的最优解,搜索效... 求解交通路网中两点间的最短路径是智能交通系统中一个重要的功能,为了更为准确快速地找到最优解,论文尝试采用带有方向引导信息的蚁群算法来实现该功能。实验结果表明,该方法能较为准确地找到交通路网中两点间最短路径的最优解,搜索效率高、搜索最优解的能力强,对于智能交通系统中最短路径搜索的功能实现问题有一定的参考价值和实际意义。 展开更多
关键词 最短路径 蚁群算法 直线优化
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