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首页> 外文期刊>Mathematical Problems in Engineering >Task-Oriented Parameter Tuning Based on Priority Condition for Biologically Inspired Robot Application
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Task-Oriented Parameter Tuning Based on Priority Condition for Biologically Inspired Robot Application

机译:基于优先条件的面向任务的生物启发机器人应用参数整定

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摘要

This work gives a biologically inspired control scheme for controlling a robotic system. Novel adaptive behaviors are observed from humans or animals even in unexpected disturbances or environment changes. This is why they have neural oscillator networks in the spinal cord to yield rhythmic-motor primitives robustly under a changing task. Hence, this work focuses on rhythmic arm movements that can be accomplished in terms of employing a control approach based on an artificial neural oscillator model. The main challenge is to determine various parameters for applying a neural feedback to robotic systems with performing a desired behavior and self-maintaining the entrainment effect. Hence, this work proposes a task-oriented parameter tuning algorithm based on the simulated annealing (SA). This work also illustrates how to technically implement the proposed control scheme exploiting a virtual force and neural feedback. With parameters tuned, it is verified in simulations that a 3-DOF planar robotic arm traces a given trajectory precisely, adapting to uneven external disturbances.
机译:这项工作给出了一种用于控制机器人系统的具有生物启发性的控制方案。即使在意料之外的干扰或环境变化中,也可以从人或动物身上观察到新颖的适应行为。这就是为什么他们在脊髓中具有神经振荡器网络以在不断变化的任务下稳健地产生节奏运动原语的原因。因此,这项工作集中在有节奏的手臂运动上,这可以通过采用基于人工神经振荡器模型的控制方法来完成。主要挑战是确定各种参数,以将神经反馈应用于机器人系统,以实现所需的行为并自我保持夹带效果。因此,这项工作提出了一种基于模拟退火(SA)的面向任务的参数调整算法。这项工作还说明了如何利用虚拟力和神经反馈在技术上实施所提出的控制方案。通过调整参数,可以在仿真中验证3自由度平面机械臂可以精确地跟踪给定的轨迹,从而适应不均匀的外部干扰。

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  • 来源
    《Mathematical Problems in Engineering》 |2015年第13期|506491.1-506491.14|共14页
  • 作者单位

    Kwangwoon Univ, Sch Robot, Seoul 139701, South Korea.;

    Kwangwoon Univ, Sch Robot, Seoul 139701, South Korea.;

    Kwangwoon Univ, Sch Robot, Seoul 139701, South Korea.;

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