车辆路径规划的完全现场覆盖使用遗传算法

Alexander Ryerson, Qin Zhang
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引用次数: 46

摘要

在农业经营中,农民面临的一个基本问题是经营农场的成本。如果农民使用的设备能变得更有效率,农业成本就会降低。提高农业设备效率的一种方法是为设备开发自动化或自主功能。自主设备的基本任务之一是规划设备的运行路径。本文报道了一种自动化农业装备路径规划方法的可行性研究。选择遗传算法来规划路径,其主要目标是创建最优路径,引导设备完全覆盖场地,同时避开所有已知障碍物。设计了两个示例字段来评估该概念在简单问题上的可行性。虽然仿真结果验证了这种概念路径规划方法的可行性,但它们也表明,在将该算法实际应用于实际现场应用的农业设备之前,还需要进一步开发。关键词:自动化设备,遗传算法,越野车辆,路径规划
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle path planning for complete field coverage using genetic algorithms
In farming operations, one of the fundamental issues facing farmer is the cost of running the farm. If the equipment the farmer is using can be made more efficient, the cost of farming will be reduced. One way of making agricultural equipment more efficient is to develop automated or autonomous functions for the equipment. One of the fundamental tasks for autonomous equipment is to plan the path for the equipment to travel. This paper reports the research on the feasibility of creating an automated method of path planning for autonomous agricultural equipment. Genetic algorithms were chosen to plan the paths with a primary goal of creating an optimal path guiding the equipment to completely cover a field while avoiding all known obstacles. Two example fields were designed for evaluating the feasibility of this concept on simple problems. While simulation results verified the feasibility of this conceptual path planning method, they also indicated that further development would be required before the algorithm could actually be implemented on agricultural equipment for real-world field applications. Keywords: Automonous equipment, genetic algorithms, off-road vehicle, path planning
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