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Nonlinear Model Predictive Control of Joint Ankle by Electrical Stimulation For Drop Foot Correction

机译:滴脚校正电刺激关节踝关节踝关节的非线性模型预测控制

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In this paper we investigate the use of optimal control techniques to improve Functional Electrical Stimulation (FES) for drop foot correction on hemiplegic patients. A model of the foot and the tibialis anterior muscle, the contraction of which is controlled by electrical stimulation has been established and is used in the optimal control problem. The novelty in this work is the use of the ankle accelerations and shank orientations (so-called external states) in the model, which have been measured on hemiplegic patients in a previous experiment using Inertial Measurement Units (IMUs). The optimal control problem minimizes the square of muscle excitations which serves the overall goal of reducing energy consumption in the muscle. In a first step, an offline optimal control problem is solved for test purposes and shows the efficiency of the FES optimal control for drop foot correction. In a second step, a Nonlinear Model Predictive Control (NMPC) problem - or online optimal control problem, is solved in a simulated environment. While the ulitmate goal is to use NMPC on the real system, i.e. directly on the patient, this test in simulation was meant to show the feasibility of NMPC for online drop foot correction. In the optimization problem, a set of fixed constraints of foot orientation was applied. Then, an original adaptive constraint taking into account the current ankle height, was introduced and tested. Comparisons between results under fixed and adaptive constraints highlight the advantage of the adaptive constraints in terms of energy consumption, where its quadratic sum of controls, obtained by NMPC, was three times lower than with the fixed constraint. This feasibility study was a first step in application of NMPC on real hemiplegic patients for online FES-based drop foot correction. The adaptive constraints method presents a new and efficient approach in terms of muscular energy consumption minimization.
机译:在本文中,我们研究了使用最佳控制技术来改善偏瘫患者滴脚校正的功能电刺激(FES)。脚和胫骨前肌的模型,由电刺激控制的收缩并用于最佳控制问题。在这项工作的新颖之处在于使用模型脚踝加速度和柄的方向(所谓的外部状态),并已在偏瘫患者测量使用惯性测量单元(IMU)先前的实验。最佳控制问题最小化了肌肉激励的平方,这是降低肌肉中能量消耗的总体目标。在第一步中,为测试目的解决了离线最佳控制问题,并显示了FES最佳控制对滴脚校正的效率。在第二步中,在模拟环境中解决了非线性模型预测控制(NMPC)问题 - 或在线最佳控制问题。虽然彩金目标是在真实系统上使用NMPC,即,直接在患者身上,仿真中的该测试旨在显示NMPC在线滴脚校正的可行性。在优化问题中,应用了一组固定的脚取向约束。然后,引入并测试了考虑当前脚踝高度的原始自适应约束。下固定和自适应限制的结果之间的比较突出的能量消耗,在那里它的二次的控制,由NMPC获得的和,比与固定约束低三倍的术语的自适应限制的优点。这种可行性研究是应用NMPC在真正的偏瘫患者对在线FES的跌落脚校正的第一步。自适应约束方法在肌肉能耗最小化方面具有新的和有效的方法。

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