结合小脑和情感学习模型的手臂肌肉骨骼控制方案

Fengjie Wang, Fang Han, Ying Yu, Qinghua Zhu
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摘要

大脑和小脑在运动控制中起着至关重要的作用,是人类和动物进行各种快速、精确运动的关键。情绪在大脑皮层产生,并激活杏仁核,从而促进信息在大脑各区域的存储。本文将小脑学习模型、情绪学习模型和脊髓计算模块结合起来,完成了手臂肌肉骨骼系统的控制,并通过脊髓模块的优化计算解决了肌肉骨骼系统控制的冗余问题。因此,手臂肌肉骨骼系统可以顺利完成末端轨迹执行任务。研究表明,与小脑运动控制方案相比,所提出的方案具有学习收敛快、简化小脑突触适应、抗干扰能力强等优点。同时还验证了所提出的控制方案对随机噪声具有良好的鲁棒性。所提出的手臂肌肉骨骼控制方案运行有效,为仿生肌肉骨骼系统的应用提供了理论参考。
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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An arm musculoskeletal control scheme incorporating cerebellar and emotional learning models

The cerebrum and cerebellum play a crucial role in motion control and are crucial to perform a variety of fast, precise movements for humans and animals. Emotions are generated in the cerebral cortex, and activate the amygdala, which promotes the storage of information in various regions of the cerebrum. In this paper, cerebellar learning model, emotional learning model, and spinal cord calculation module are incorporated to complete the control of an arm musculoskeletal system, and the redundancy problem of the musculoskeletal system control is solved through the optimized calculation in the spinal cord module. The arm musculoskeletal system can thus complete the end trajectory execution task successfully. It is shown that compared with the cerebellar motion control scheme, the proposed scheme has the advantages of fast learning convergence, simplified synaptic adaptation of cerebellum and strong anti-disturbance ability. It is also verified that the proposed control scheme exhibits good robustness to random noise. The proposed arm musculoskeletal control scheme operates effectively and provides a theoretical reference for the application of biomimetic musculoskeletal system.

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