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An Intelligent Gain-based Ant Colony Optimisation Method for Path Planning of Unmanned Ground Vehicles

机译:无人机地面车辆路径规划的基于智能增益的蚁群优化方法

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摘要

In many of the military applications, path planning is one of the crucial decision-making strategies in an unmanned autonomous system. Many intelligent approaches to pathfinding and generation have been derived in the past decade. Energy reduction (cost and time) during pathfinding is a herculean task. Optimal path planning not only means the shortest path but also finding one in the minimised cost and time. In this paper, an intelligent gain based ant colony optimisation and gain based green-ant (GG-Ant) have been proposed with an efficient path and least computation time than the recent state-of-the-art intelligent techniques. Simulation has been done under different conditions and results outperform the existing ant colony optimisation (ACO) and green-ant techniques with respect to the computation time and path length.
机译:在许多军事申请中,路径规划是无人自治系统中的重要决策策略之一。过去十年来,已经得出了许多聪明的探测方法和生成。 Pathfinding期间的能量减少(成本和时间)是一项静脉化任务。最佳路径规划不仅意味着最短路径,而且还意味着以最小化的成本和时间找到一个。在本文中,已经提出了一种基于智能增益的蚁群优化和增益基于Green-Ant(GG-Ant),其具有比最近最近的最新智能技术的计算时间。在不同的条件下进行了模拟,结果优于存在关于计算时间和路径长度的现有蚁群优化(ACO)和绿色蚂蚁技术。

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