Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH 44106.
Department of Biomedical Engineering, Case Western Reserve University, Advanced Platform Technology Center, U.S. Department of Veterans Affairs, Cleveland, OH 44106.
J Biomech Eng. 2022 Sep 1;144(9). doi: 10.1115/1.4053913.
The trunk movements of an individual paralyzed by spinal cord injury (SCI) can be restored by functional neuromuscular stimulation (FNS), which applies low-level current to the motor nerves to activate the paralyzed muscles to generate useful torques, to actuate the trunk. FNS can be modulated to vary the biotorques to drive the trunk to follow a user-defined reference motion and maintain it at a desired postural set-point. However, a stabilizing modulation policy (i.e., control law) is difficult to derive as the biomechanics of the spine and pelvis are complex and the neuromuscular dynamics are highly nonlinear, nonautonomous, and input redundant. Therefore, a control method that can stabilize it with FNS without knowing the accurate skeletal and neuromuscular dynamics is desired. To achieve this goal, we propose a control framework consisting of a robust control module that generates stabilizing torques while an artificial neural network-based mapping mechanism with an anatomy-based updating law ensures that the muscle-generated torques converge to the stabilizing values. For the robust control module, two sliding-mode robust controllers (i.e., a high compensation controller and an adaptive controller), were investigated. System stability of the proposed control method was rigorously analyzed based on the assumption that the skeletal dynamics can be approximated by Euler-Lagrange equations with bounded disturbances, which enables the generalization of the control framework. We present experiments in a simulation environment where an anatomically realistic three-dimensional musculoskeletal model of the human trunk moved in the anterior- posterior and medial-lateral directions while perturbations were applied. The satisfactory simulation results suggest the potential of this control technique for trunk tracking tasks in a typical clinical environment.
个体因脊髓损伤(SCI)而瘫痪时,可通过功能性神经肌肉刺激(FNS)来恢复躯干运动,该方法通过向运动神经施加低水平电流来激活瘫痪肌肉,以产生有用的扭矩,从而驱动躯干。FNS 可以进行调制以改变双扭矩,以驱动躯干跟随用户定义的参考运动并将其维持在期望的姿势设定点。然而,由于脊柱和骨盆的生物力学复杂,神经肌肉动力学高度非线性、非自治和输入冗余,因此很难推导出稳定的调制策略(即控制律)。因此,需要一种无需了解精确骨骼和神经肌肉动力学即可通过 FNS 稳定它的控制方法。为了实现这一目标,我们提出了一个控制框架,该框架由一个鲁棒控制模块组成,该模块生成稳定的扭矩,而基于人工神经网络的映射机制具有基于解剖结构的更新律,可确保肌肉产生的扭矩收敛到稳定值。对于鲁棒控制模块,研究了两种滑模鲁棒控制器(即高补偿控制器和自适应控制器)。基于骨骼动力学可以用具有有界干扰的 Euler-Lagrange 方程近似的假设,严格分析了所提出控制方法的系统稳定性,这使得控制框架具有通用性。我们在模拟环境中进行了实验,其中人体躯干的解剖学逼真的三维肌肉骨骼模型在前后和内外方向上移动,同时施加了扰动。令人满意的模拟结果表明,该控制技术具有在典型临床环境中进行躯干跟踪任务的潜力。