首页> 外文学位 >UAV Swarm Cooperative Control Based on a Genetic-Fuzzy Approach.
【24h】

UAV Swarm Cooperative Control Based on a Genetic-Fuzzy Approach.

机译:基于遗传-模糊方法的无人机群协同控制

获取原文
获取原文并翻译 | 示例

摘要

The ever-increasing applications of UAV's have shown the great capabilities of these technologies. However, for many cases where one UAV is a powerful tool, an autonomous swarm all working cooperatively to the same goal presents amazing potential. Environment that are dangerous for humans, are either too small or too large for safe or reasonable exploration, and even those tasks that are simply boring or unpleasant are excellent areas for UAV swarm applications. In order to work cooperatively, the swarm must allocate tasks and have adequate path planning capability.;This paper presents a methodology for two-dimensional target allocation and path planning of a UAV swarm using a hybridization of control techniques. Genetic algorithms, fuzzy logic, and to an extent, dynamic programming are utilized in this research to develop a code known as "UNCLE SCROOGE" (UNburdening through CLustering Effectively and Self-CROssover GEnetic algorithm). While initially examining the Traveling Salesman Problem, where an agent must visit each waypoint in a set once and then return home in the most efficient path, the work's end goal was a variant on this problem that more closely resembled the issues a UAV swarm would encounter.;As an extension to Dr. Obenmeyer's "Polygon-Visiting Dubins Traveling Salesman Problem", the Multi-Depot Polygon-Visiting Dubins Multiple Traveling Salesman Problem consists of a set number of visibility areas, or polygons that a number of UAV's, based in different or similar depot must visit. While this case is constant altitude and constant velocity, minimum turning radii are considered through the use of Dubins curves. UNCLE SCROOGE was found to be adaptable to the PVDTSP, where it competed well against the methods proposed by Obenmeyer. Due to limited benchmarking ability, as these are newly formed problems, Obenmeyer's work served as the only basis for comparison for the PVDTSP. UNCLE SCROOGE brought a 9.8% increase in accuracy, and a run-time reduction of more than a factor of ten for a 20 polygonal case with strict turning requirements. This increase in performance came with a 99% certainty of receiving the best found solution over the course of 100 runs. With only a 1% chance for error in this particular case, the hybridized method has been shown to be quite powerful.;While no comparison is currently possible for MDPVDMTSP solutions, UNCLE SCROOGE was found to develop promising results. On average, it takes the code 25.62 seconds to approximately solve a 200 polygon, 4 depot, 5 UAV's per depot problem. This polygon count was increased even up to 2,500, with a solution taking 9.8 hours. It has been shown that UNCLE SCROOGE performs well in solving the MDPVDMTSP and has acceptable scalability.
机译:无人机的不断增长的应用表明了这些技术的强大功能。然而,在许多情况下,一架无人机是一种强大的工具,一个可以共同实现同一目标的自主集群具有巨大的潜力。对于人类而言危险的环境,对于安全或合理的探索而言,其环境可能过小或过大,即使是那些简单无聊或令人不愉快的任务,也是无人机群应用的绝佳领域。为了协同工作,群必须分配任务并具有足够的路径规划能力。;本文提出了一种使用混合控制技术对无人机群进行二维目标分配和路径规划的方法。这项研究利用遗传算法,模糊逻辑以及一定程度上的动态编程来开发称为“ UNCLE SCROOGE”(通过有效聚类和自交叉遗传算法的负担)的代码。最初检查旅行商问题时,代理商必须一次访问一个集合中的每个路点,然后以最有效的方式返回家中,但工作的最终目标是该问题的一种变体,与无人机群会遇到的问题更相似。;作为Obenmeyer博士的“访问杜宾斯的多边形旅行商问题”的扩展,多仓库访问杜宾斯的多重旅行商问题由一组可见性区域或多个无人飞行器的多边形组成,基于必须访问其他或类似的仓库。尽管这种情况是恒定的高度和恒定的速度,但通过使用Dubins曲线可以考虑最小转弯半径。发现UNCLE SCROOGE适用于PVDTSP,它与Obenmeyer提出的方法竞争很好。由于基准测试能力有限,因为它们是新出现的问题,所以Obenmeyer的工作成为PVDTSP进行比较的唯一基础。对于具有严格车削要求的20个多边形表壳,UNCLE SCROOGE的准确性提高了9.8%,运行时间减少了十倍之多。性能的提高伴随着在100次运行过程中有99%的确定性会获得最佳解决方案。在这种特殊情况下,只有1%的错误机会,这种混合方法非常有效。虽然当前无法对MDPVDMTSP解决方案进行比较,但发现UNCLE SCROOGE可以产生令人鼓舞的结果。平均而言,大约需要花费25.62秒的代码才能解决200个多边形,4个仓库,每个仓库5个UAV的问题。该多边形数甚至增加到2,500,而解决方案需要9.8小时。已经证明,UNCLE SCROOGE在解决MDPVDMTSP方面表现良好,并且具有可接受的可伸缩性。

著录项

  • 作者

    Ernest, Nicholas D.;

  • 作者单位

    University of Cincinnati.;

  • 授予单位 University of Cincinnati.;
  • 学科 Engineering Aerospace.
  • 学位 M.S.
  • 年度 2012
  • 页码 70 p.
  • 总页数 70
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号