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How task analysis can be used to derive and organize the knowledge for the control of autonomous vehicles

机译:如何使用任务分析来推导和组织用于自动驾驶车辆控制的知识

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The real-time control system (RGS) methodology has evolved over a number of years as a technique to capture task knowledge and organize it in a framework conducive to implementation in computer control systems. The fundamental premise of this methodology is that the present state of the task activities sets the context that identifies the requirements for all the support processing. In particular, the task context at any time determines what is to be sensed in the world, what world model states are to be evaluated, which situations are to be analyzed, what plans should be invoked, and which behavior generation knowledge is to be accessed. This results in a methodology that concentrates first and foremost on the task definition. It starts with the definition of the task knowledge in the form of a decision tree that clearly represents the branching of tasks into layers of simpler and simpler subtask sequences. This task decomposition framework is then used to guide the search for and to emplace all of the additional knowledge. This paper explores this process in some detail, showing how this knowledge is represented in a task context-sensitive relationship that supports the very complex real-time processing the computer control systems will have to do.
机译:实时控制系统(RGS)方法作为一种捕获任务知识并在有利于在计算机控制系统中实现的框架中进行组织的技术,已经发展了许多年。该方法的基本前提是任务活动的当前状态设置了上下文,该上下文标识了所有支持处理的需求。特别是,任务上下文随时确定在世界上要感知的内容,要评估的世界模型状态,要分析的情况,应调用的计划以及要访问的行为生成知识。 。这导致了一种方法,该方法首先集中于任务定义。它从以决策树的形式定义任务知识开始,该决策树清楚地表示了将任务分支为越来越简单的子任务序列的层。然后,使用此任务分解框架来指导搜索并放置所有其他知识。本文更详细地探讨了此过程,展示了如何以任务上下文相关的关系表示此知识,该关系支持计算机控制系统必须执行的非常复杂的实时处理。

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