首页> 外文OA文献 >A nature inspired guidance system for unmanned autonomous vehicles employed in a search role
【2h】

A nature inspired guidance system for unmanned autonomous vehicles employed in a search role

机译:一种自然灵感的导航系统,用于搜索角色中使用的无人驾驶自动驾驶车辆

摘要

Since the very earliest days of the human race, people have been studying animal behaviours. In those early times, being able to predict animal behaviour gave hunters the advantages required for success. Then, as societies began to develop this gave way, to an extent, to agriculture and early studies, much of it trial and error, enabled farmers to successfully breed and raise livestock to feed an ever growing population. Following the advent of scientific endeavour, more rigorous academic research has taken human understanding of the natural world to much greater depth. In recent years, some of this understanding has been applied to the field of computing, creating the more specialised field of natural computing. In this arena, a considerable amount of research has been undertaken to exploit the analogy between, say, searching a given problem space for an optimal solution and the natural process of foraging for food. Such analogies have led to useful solutions in areas such as numerical optimisation and communication network management, prominent examples being ant colony systems and particle swarm optimisation; however, these solutions often rely on well-defined fitness landscapes that may not always be available. One practical application of natural computing may be to create behaviours for the control of autonomous vehicles that would utilise the findings of ethological research, identifying the natural world behaviours that have evolved over millennia to surmount many of the problems that autonomous vehicles find difficu for example, long range underwater navigation or obstacle avoidance in fast moving environments. This thesis provides an exploratory investigation into the use of natural search strategies for improving the performance of autonomous vehicles operating in a search role. It begins with a survey of related work, including recent developments in autonomous vehicles and a ground breaking study of behaviours observed within the natural world that highlights general cooperative group behaviours, search strategies and communication methods that might be useful within a wider computing context beyond optimisation, where the information may be sparse but new paradigms could be developed that capitalise on research into biological systems that have developed over millennia within the natural world. Following this, using a 2-dimensional model, novel research is reported that explores whether autonomous vehicle search can be enhanced by applying natural search behaviours for a variety of search targets. Having identified useful search behaviours for detecting targets, it then considers scenarios where detection is lost and whether natural strategies for re-detection can improve overall systemic performance in search applications. Analysis of empirical results indicate that search strategies exploiting behaviours found in nature can improve performance over random search and commonly applied systematic searches, such as grids and spirals, across a variety of relative target speeds, from static targets to twice the speed of the searching vehicles, and against various target movement types such as deterministic movement, random walks and other nature inspired movement. It was found that strategies were most successful under similar target-vehicle relationships as were identified in nature. Experiments with target occlusion also reveal that natural reacquisition strategies could improve the probability oftarget redetection.
机译:从人类最早的日子开始,人们就一直在研究动物的行为。在早期,能够预测动物行为为猎人提供了成功所需的优势。然后,随着社会的开始发展,这种发展在一定程度上被农业和早期研究所取代,其中许多都是反复试验,使农民能够成功繁殖和饲养牲畜,以养活不断增长的人口。随着科学工作的到来,更严格的学术研究使人类对自然世界的理解更加深入。近年来,这种理解中的一些已经应用于计算领域,从而创建了更加专业的自然计算领域。在这个领域,已经进行了大量的研究来利用类比,例如,在给定的问题空间中寻找最佳解决方案与食物觅食的自然过程之间的类比。这种类比在诸如数值优化和通信网络管理等领域产生了有用的解决方案,其中突出的例子是蚁群系统和粒子群优化。但是,这些解决方案通常依赖于定义良好的健身环境,而这些健身环境可能并不总是可用。自然计算的一种实际应用可能是创建用于控制自动驾驶汽车的行为,这些行为将利用人类学研究的结果,识别经过几千年发展而来的自然世界行为,以克服许多自动驾驶汽车难以解决的问题;例如,远程水下导航或快速移动环境中的避障。本论文对自然搜索策略的使​​用进行了探索性研究,以改善以搜索角色运行的自动驾驶汽车的性能。首先是对相关工作的调查,包括自动驾驶汽车的最新发展以及对自然世界中观察到的行为的突破性研究,该研究着重介绍了一般的协作小组行为,搜索策略和交流方法,这些方法可能在优化之外的更广泛的计算环境中有用。 ,其中的信息可能很少,但可以开发新的范例,以利用对自然世界中几千年来发展起来的生物系统的研究。在此之后,据报道使用二维模型进行了新颖的研究,该研究探索了是否可以通过对各种搜索目标应用自然搜索行为来增强自动车辆搜索。在确定了用于检测目标的有用搜索行为之后,它接着考虑了丢失检测的情况以及重新检测的自然策略是否可以提高搜索应用程序的整体系统性能。对实证结果的分析表明,利用自然界中存在的行为的搜索策略可以提高性能,优于随机搜索和常用的系统搜索(例如网格和螺旋形),其搜索范围从静态目标到搜索车辆两倍的各种相对目标速度,并针对各种目标运动类型,例如确定性运动,随机行走和其他自然启发性运动。人们发现,在自然界中确定的类似目标-车辆关系下,策略是最成功的。目标遮挡的实验还表明,自然重获策略可以提高目标重新发现的可能性。

著录项

  • 作者

    Banks Alec;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

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