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Integrating Reactive Behavior and Planning: Optimizing Execution Time Through Predictive Preparation of State Machine Tasks

机译:整合反应式行为与计划:通过预测性准备状态机任务来优化执行时间

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Tasks that change the physical state of a robot take a considerable amount of time to execute. However, many robot applications spend the execution time waiting, although the following tasks might require time to prepare. This paper proposes to amend tasks with a description of their expected outcomes, which allows planning successive tasks based on this information. The suggested approach allows sequential and parallel composition of tasks, as well as reactive behavior modeled as state machines. The paper describes the means of modeling and executing these tasks, details different possibilities of planning in state machine tasks, and evaluates the benefits achievable using the approach.
机译:更改机器人物理状态的任务需要花费大量时间才能执行。但是,尽管以下任务可能需要一些时间来准备,但许多机器人应用程序仍在等待执行时间。本文提出了对任务的预期成果的描述,以对这些任务进行描述,从而可以根据这些信息来计划后续任务。建议的方法允许任务的顺序和并行组合,以及建模为状态机的反应行为。本文介绍了建模和执行这些任务的方法,详细介绍了在状态机任务中进行计划的各种可能性,并评估了使用该方法可获得的收益。

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