Adaptive Controllers and Digital Twin for Self-Adaptive Robotic Manipulators

Farid Edrisi, Diego Perez-Palacin, M. Caporuscio, Samuele Giussani
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引用次数: 0

Abstract

Robots are increasingly adopted in a wide range of unstructured and uncertain environments, where they are expected to keep quality properties such as efficiency, accuracy, and safety. To this end, robots need to be smart and continuously update their situation awareness. Self-adaptive systems pave the way for accomplishing this aim by enabling a robot to understand its surroundings and adapt to various scenarios in a systematic manner. However, some situations, e.g., adjusting adaptation rules, refining run-time models, narrowing a vast adaptation domain, and taking future scenarios into consideration, etc. may require the self-adaptive system to include additional specialized components. In this regard, this work proposes a novel approach combining the MAPE-K, adaptive controllers, and a Digital Twin of the robot to enable the managing system to be aware of new scenarios appearing at run-time and operate safely, accurately, and efficiently. A state-of-the-art robot model is employed to evaluate the suitability of the approach.
自适应机械臂的自适应控制器和数字孪生
机器人越来越多地应用于各种非结构化和不确定的环境中,在这些环境中,它们被期望保持效率、准确性和安全性等质量特性。为此,机器人需要变得聪明,并不断更新其态势感知。自适应系统通过使机器人能够理解其周围环境并以系统的方式适应各种场景,为实现这一目标铺平了道路。然而,在某些情况下,例如,调整适应规则、精炼运行时模型、缩小巨大的适应域以及考虑未来的场景等,可能需要自适应系统包含额外的专门组件。在这方面,本工作提出了一种结合MAPE-K、自适应控制器和机器人数字孪生的新方法,使管理系统能够意识到运行时出现的新场景,并安全、准确和高效地运行。采用最先进的机器人模型来评估该方法的适用性。
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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