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COMBINING GENETIC ALGORITHMS AND EXTENDED KALMAN FILTER TO ESTIMATE ANKLE'S MUSCLE-TENDON PARAMETERS

机译:结合遗传算法和扩展卡尔曼滤波器来估算踝关节肌肉肌腱参数

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This work proposes a set of simulation and experimental measurements to estimate muscle biomechanical parameter during human quiet standing. Understanding the mechanisms involved in postural stability is indispensable to improve the knowledge of how humans can regain balance against possible disturbances. Postural stability requires the ability to compensate the movement of the body's center of gravity caused by external or internal perturbations. This paper describes the implementation of a hybrid parameter-estimation approach to infer the features of the human neuro-mechanical system during quiet standing and the recovery from a fall. The estimation techniques combines a genetic algorithm with the State-Augmented Extended Kalman Filter. These two algorithms running sequentially are utilized to estimate the musculo-skeletal parameters. This paper shows results of the approach when representing human standing as either a second-order or third order mechanical model. Experimental validation on a human subject is also presented.
机译:这项工作提出了一系列模拟和实验测量来估计人类安静站立期间的肌肉生物力学参数。了解姿势稳定所涉及的机制是不可或缺的,以提高人类如何恢复平衡的可能性。姿势稳定性需要能够补偿由外部或内部扰动引起的身体重心的运动。本文介绍了一种混合参数估计方法来推断人类神经机械系统的特征在安静的状态下,从秋季恢复。估计技术将遗传算法与状态增强的扩展卡尔曼滤波器组合。这两种算法顺序地利用来估计肌肉骨架参数。本文示出了当代表人站的方法作为二阶或三阶机械模型时的方法。还提出了对人类主题的实验验证。

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