Controlling the Learning Dynamics of Interacting Self-Adapting Systems

N. Rosemann, W. Brockmann, Christian Lintze
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引用次数: 2

Abstract

Complex technical systems like robots or cars are composed of many embedded subsystems to control partial dynamical effects of the whole system. In order to ease engineering and to cope with changing environmental or system properties, these subsystems need to be self-adapting. But for this to be feasible, they cannot observe the theoretically required state space of the whole system. Instead, they need to work with a reduced set of input variables. This leads to a lack of information which may induce unintended, dynamic interactions between the self-adaptation processes. Within this paper, a method is proposed in order to control the self-adaptation processes and to fight these interactions in a goal directed way. The approach is investigated on a real robotic arm.
交互自适应系统的学习动力学控制
机器人或汽车等复杂的技术系统由许多嵌入式子系统组成,以控制整个系统的部分动力学效应。为了简化工程并应对不断变化的环境或系统属性,这些子系统需要自适应。但要使其可行,他们无法观测到整个系统理论上所要求的状态空间。相反,它们需要处理一组简化的输入变量。这导致信息的缺乏,这可能会导致自我适应过程之间意想不到的动态相互作用。本文提出了一种控制自适应过程的方法,并以目标导向的方式对抗这些相互作用。在实际机械臂上对该方法进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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