【24h】

AUTONOMOUS SYSTEM DESIGN AND CONTROLS DESIGN FOR OPERATIONS IN HIGH RISK ENVIRONMENTS

机译:高风险环境中的自主系统设计和控制设计

获取原文

摘要

Autonomous systems operating in dangerous and hard-to-reach environments such as defense systems deployed into enemy territory, petroleum installations running in remote arctic and off-shore environments, or space exploration systems operating on Mars and further out in the solar system often are designed with a wide operating envelope and deployed with control systems that are designed to both protect the system and complete mission objectives, but only when the on-the-ground environment matches the expected and designed for environment. This can lead to overly conservative operating strategies such as preventing a rover on Mars from exploring a scientifically rich area due to potential hazards outside of the original operating envelope and can lead to unanticipated failures such- as the loss of underwater autonomous vehicles operating in Earth's oceans. This paper presents an iterative method that links computer simulation of operations in unknown and dangerous environments with conceptual design of systems and development of control system algorithms. The Global to Local Path Finding Design and Operation Exploration (GLPFDOE) method starts by generating a general mission plan from low resolution environmental information taken from remote sensing data (e.g.: satellites, plane fly-overs, telescope observations, etc.) and then develops a detailed path plan from simulated higher-resolution data collected "in situ " during simulator runs. GLPFDOE attempts to maximize system survivability and scientific or other mission objective yield through iterating on control system algorithms and system design within an in-house-developed physics-based autonomous vehicle and terrain simulator. GLPFDOE is best suited for autonomous systems that cannot have easy human intervention during operations such as in the case of robotic exploration reaching deeper into space where communications delays become unacceptably large and the quality of a priori knowledge of the environment becomes lower fidelity. Additionally, in unknown extraterrestrial environments, a variety of unexpected hazards will be encountered that must to be avoided and areas of scientific interest will be found that must be explored. Existing exploratory platforms such as the Mars Exploratory Rovers (MERs) Curiosity and Opportunity either operate in environments that are sufficiently removed from immediate danger or take actions slowly enough that the signal delay between the system and Earth-based operators is not too great to allow for human intervention in hazardous scenarios. Using the GLPFDOE methodology, an autonomous exploratory system can be developed that may have a higher likelihood of survivability, can accomplish more scientific mission objectives thus increasing scientific yield, and can decrease risk of mission-ending system damage. A case study is presented in which an autonomous Mars Exploration Rover (MER) is generated and then refined in a simulator using the GLPFDOE method. Development of the GLPFDOE methodology allows for the execution of more complex missions by autonomous systems in remote and inaccessible environments.
机译:通常设计用于在危险和难以到达的环境中运行的自治系统,例如部署在敌方领土上的防御系统,在偏远的北极和近海环境中运行的石油设施,在火星上运行并在太阳系中更远处的太空探索系统。仅在地面环境符合预期且针对环境而设计时,它才具有广泛的运行范围,并部署了旨在保护系统和完成任务目标的控制系统。这可能会导致过于保守的操作策略,例如阻止火星漫游车由于原始操作范围之外的潜在危险而无法探索科学丰富的区域,并可能导致无法预料的故障,例如丢失在地球海洋中操作的水下自动驾驶汽车。本文提出了一种迭代方法,该方法将未知和危险环境中的计算机操作仿真与系统的概念设计和控制系统算法的开发联系在一起。全球到本地路径查找设计和操作探索(GLPFDOE)方法首先从遥感数据(例如:卫星,飞机飞越,望远镜观测等)获取的低分辨率环境信息中生成总体任务计划,然后进行开发在模拟器运行过程中“从原位”收集的模拟高分辨率数据的详细路径计划。 GLPFDOE试图通过在内部开发的基于物理学的自动驾驶汽车和地形模拟器中迭代控制系统算法和系统设计,来最大化系统的生存能力以及科学或其他任务目标的收益。 GLPFDOE最适合于在操作过程中无法轻易进行人工干预的自治系统,例如在机器人探索更深入太空的情况下,通信延迟变得无法接受,并且先验环境的质量降低了保真度。此外,在未知的地球外环境中,将遇到各种必须避免的意外危害,并将发现必须探索的科学领域。现有的探索性平台(如火星探索者漫游车(MERs)的好奇心和机遇)要么在足以远离即时危险的环境中运行,要么采取足够缓慢的行动,以至于系统与地面操作员之间的信号延迟不会太大而无法承受在危险情况下的人为干预。使用GLPFDOE方法,可以开发一种自主的探索性系统,该系统可能具有更高的生存能力,可以实现更多的科学任务目标,从而提高科学产量,并可以降低任务结束系统损坏的风险。提出了一个案例研究,其中生成了自主火星探测漫游车(MER),然后使用GLPFDOE方法在模拟器中对其进行了完善。 GLPFDOE方法论的发展允许自治系统在远程和不可访问的环境中执行更复杂的任务。

著录项

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