使用进化机器人技术实时执行自动化计划

Thomas Thompson, J. Levine
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引用次数: 6

摘要

应用神经网络生成鲁棒代理控制器现在是一种经验丰富的实践,只需要时间来隔离领域和执行的细节。然而,由于代理无法以抽象的方式进行推理,我们经常被限制在局部问题上。虽然有适合抽象推理和搜索的方法,但在实时情况下使用脱机过程时经常会出现问题。在本文中,我们探讨了创建一个结合这些方法的去中心化架构的可行性。本文中的方法探索利用经典的自动化规划器,该规划器通过使用Prolog规则库与神经网络执行器库接口。我们探讨了在有或没有额外的敌对实体以及世界上增加的不确定性的情况下解决各种目标的有效性。最终的结果是提供一个目标驱动的代理,它可以适应各种情况并做出相应的反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Realtime execution of automated plans using evolutionary robotics
Applying neural networks to generate robust agent controllers is now a seasoned practice, with time needed only to isolate particulars of domain and execution. However we are often constrained to local problems due to an agents inability to reason in an abstract manner. While there are suitable approaches for abstract reasoning and search, there is often the issues that arise in using offline processes in real-time situations. In this paper we explore the feasibility of creating a decentralised architecture that combines these approaches. The approach in this paper explores utilising a classical automated planner that interfaces with a library of neural network actuators through the use of a Prolog rule base. We explore the validity of solving a variety of goals with and without additional hostile entities as well as added uncertainty in the the world. The end results providing a goal-driven agent that adapts to situations and reacts accordingly.
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