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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Muscle-joint models incorporating activation dynamics, moment-angle, and moment-velocity properties
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Muscle-joint models incorporating activation dynamics, moment-angle, and moment-velocity properties

机译:肌肉关节模型,结合了激活动力学,力矩角和力矩速度特性

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摘要

Muscle input/output models incorporating activation dynamics, moment-angle, and moment-velocity factors are commonly used to predict the moment produced by muscle during nonisometric contractions: the three factors are generally assumed to be independent. The authors examined the ability of models with independent factors, as well as models with coupled factors, to fit input/output data measured during simultaneous modulation of the fraction of muscle stimulated (recruitment) and joint angle inputs. The models were evaluated in stimulated cat soleus muscles producing ankle extension moment, with regard to their potential applications in neuroprostheses with either fixed parameters or parameter adaptation. Both uncoupled and coupled models predicted the output moment well for random angle perturbation sizes ranging from 10/spl deg/ to 30/spl deg/. For the uncoupled model, the best parameter values depended on the range of perturbations and the mean angle. Introducing coupling between activation and velocity in the model reduced this parameter sensitivity; one set of model parameter values fit the data for all perturbation sizes and also fit the data under isometric or constant stimulation conditions. Thus, the coupled model would be the most appropriate for applications requiring fixed parameter values. In contrast, with continuous parameter adaptation, errors due to changing test conditions decreased more quickly for the uncoupled model, suggesting that it would perform well in adaptive control of neuroprostheses.
机译:肌肉输入/输出模型结合了激活动力学,力矩角度和力矩速度因子,通常用于预测非等距收缩过程中肌肉产生的力矩:通常假定这三个因素是独立的。作者检查了具有独立因素的模型以及具有耦合因素的模型的能力,以拟合在同时调节肌肉刺激(征募)分数和关节角度输入的过程中测得的输入/输出数据。评估模型在产生脚踝伸展力矩的受刺激的猫比目鱼肌中的应用,以探讨其在具有固定参数或参数适应性的神经修复物中的潜在应用。对于从10 / spl deg /到30 / spl deg /的随机角度扰动大小,未耦合和耦合模型都很好地预测了输出力矩。对于非耦合模型,最佳参数值取决于扰动范围和平均角度。在模型中引入激活与速度之间的耦合会降低此参数的敏感性;一组模型参数值适合所有摄动大小的数据,也适合在等距或恒定刺激条件下的数据。因此,耦合模型将最适合需要固定参数值的应用。相反,对于连续的参数自适应,对于非耦合模型,由于测试条​​件变化而导致的误差降低得更快,这表明它在神经假体的自适应控制中将表现良好。

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