首页> 外文会议>Annual Meeting of the Human Factors and Ergonomics Society(HFES 2007); 20071001-05; Baltimore,MA(US) >Application of an Entropy-Assisted Optimization Model in Prediction of Agonist and Antagonist Muscle Forces
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Application of an Entropy-Assisted Optimization Model in Prediction of Agonist and Antagonist Muscle Forces

机译:熵辅助优化模型在激动剂和拮抗剂肌力预测中的应用

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Many existing optimization based biomechanical models fail to predict antagonist muscle activity. Some optimization models predict such a cocontraction, but either lack a compelling physiological basis or are computationally formidable. The current study takes advantage of the flexible definition of entropy as a scientific measure, and utilizes it in the objective function of an optimization formulation to construct a new optimization model for predicting agonist and antagonist muscle forces. In this model, the objective function of a nonlinear program consists of a weighted sum of two components: a linear or nonlinear term favoring agonist muscle exertions (reciprocal inhibition), and the entropy term enforcing cocontraction. The concept of the current optimization model is based on recent findings in neurophysiology that there exist two separate central nervous systems for generation of two motor patterns: agonist contraction and agonist-antagonist cocontraction.
机译:许多现有的基于优化的生物力学模型无法预测拮抗肌的活动。一些优化模型可以预测这种共收缩,但是要么缺乏令人信服的生理基础,要么在计算上非常强大。当前的研究利用熵的灵活定义作为科学手段,并将其用于优化公式的目标函数中,以构建用于预测激动剂和拮抗肌力的新优化模型。在该模型中,非线性程序的目标函数由两个部分的加权和组成:一个线性或非线性项,它有助于激动剂的肌肉运动(相互抑制),以及一个熵项,它使协同收缩。当前优化模型的概念基于神经生理学的最新发现,即存在两个独立的中枢神经系统,用于产生两种运动模式:激动剂收缩和激动剂-拮抗剂共收缩。

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