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首页> 外文期刊>IEEE Transactions on Neural Networks >Oscillatory neural networks for robotic yo-yo control
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Oscillatory neural networks for robotic yo-yo control

机译:用于机器人悠悠球控制的振荡神经网络

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摘要

Different networks of coupled oscillators were developed for open-loop control of periodic motion. However, some tasks, like yo-yo playing, are open-loop unstable and require proper phase locking to stabilize. Given the phase-locking property of coupled oscillators, we investigate their application to closed-loop control of open-loop unstable systems, concentrating on the challenging task of yo-yo control. In particular, we focus on pulse-coupling, where the yo-yo sends a feedback upon reaching the bottom of the string and the onset of the oscillatory cycle is used to trigger the movement. Four networks involving either a stand-alone or a circuit level oscillator with either excitatory or inhibitory couplings are considered. Working curve analysis indicates that three of the networks cannot stabilize the yo-yo. The fourth network, which is based on a circuit-level oscillator, is analyzed using the return map and the region of stability is determined and verified by simulations. The resulting pulse-coupled oscillatory control provides a model-free control strategy that operates with an easy-to-measure low-rate feedback.
机译:开发了不同的耦合振荡器网络,用于周期性运动的开环控制。但是,某些任务(例如悠悠球演奏)是开环不稳定的,需要适当的锁相才能稳定。鉴于耦合振荡器的锁相特性,我们将研究其在开环不稳定系统的闭环控制中的应用,重点是悠悠球控制的挑战性任务。特别地,我们专注于脉冲耦合,在这种情况下,溜溜球到达弦的底部时会发送反馈,而振荡周期的开始会触发运动。考虑了四个网络,它们涉及具有激励或抑制耦合的独立或电路级振荡器。工作曲线分析表明,其中三个网络无法稳定溜溜球。使用回路图分析基于电路级振荡器的第四网络,并通过仿真确定并验证稳定性区域。由此产生的脉冲耦合振荡控制提供了一种无模型的控制策略,该策略以易于测量的低速率反馈运行。

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