Department of Electrical and Computer Engineering, Johns Hopkins University, Baltimore, MD, USA.
J Neural Eng. 2012 Apr;9(2):026003. doi: 10.1088/1741-2560/9/2/026003. Epub 2012 Feb 13.
The biological central pattern generator (CPG) integrates open and closed loop control to produce over-ground walking. The goal of this study was to develop a physiologically based algorithm capable of mimicking the biological system to control multiple joints in the lower extremities for producing over-ground walking. The algorithm used state-based models of the step cycle each of which produced different stimulation patterns. Two configurations were implemented to restore over-ground walking in five adult anaesthetized cats using intramuscular stimulation (IMS) of the main hip, knee and ankle flexor and extensor muscles in the hind limbs. An open loop controller relied only on intrinsic timing while a hybrid-CPG controller added sensory feedback from force plates (representing limb loading), and accelerometers and gyroscopes (representing limb position). Stimulation applied to hind limb muscles caused extension or flexion in the hips, knees and ankles. A total of 113 walking trials were obtained across all experiments. Of these, 74 were successful in which the cats traversed 75% of the 3.5 m over-ground walkway. In these trials, the average peak step length decreased from 24.9 ± 8.4 to 21.8 ± 7.5 (normalized units) and the median number of steps per trial increased from 7 (Q1 = 6, Q3 = 9) to 9 (8, 11) with the hybrid-CPG controller. Moreover, within these trials, the hybrid-CPG controller produced more successful steps (step length ≤ 20 cm; ground reaction force ≥ 12.5% body weight) than the open loop controller: 372 of 544 steps (68%) versus 65 of 134 steps (49%), respectively. This supports our previous preliminary findings, and affirms that physiologically based hybrid-CPG approaches produce more successful stepping than open loop controllers. The algorithm provides the foundation for a neural prosthetic controller and a framework to implement more detailed control of locomotion in the future.
生物中央模式生成器(CPG)集成开环和闭环控制以产生地面行走。本研究的目的是开发一种基于生理学的算法,能够模拟生物系统来控制下肢的多个关节以产生地面行走。该算法使用步周期的基于状态的模型,每个模型产生不同的刺激模式。为了使用后肢主要髋关节、膝关节和踝关节屈肌和伸肌的肌内刺激(IMS)在 5 只麻醉猫中恢复地面行走,实现了两种配置。开环控制器仅依赖于固有定时,而混合 CPG 控制器则增加了来自力板(代表肢体负载)、加速度计和陀螺仪(代表肢体位置)的感觉反馈。施加到后肢肌肉的刺激会导致髋关节、膝关节和踝关节伸展或弯曲。在所有实验中总共获得了 113 次行走试验。在这些试验中,有 74 次成功,猫走过了 3.5 米地面行走通道的 75%。在这些试验中,平均峰值步长从 24.9 ± 8.4 减少到 21.8 ± 7.5(归一化单位),每试验的中位数步数从 7(Q1 = 6,Q3 = 9)增加到 9(8,11),混合 CPG 控制器。此外,在这些试验中,混合 CPG 控制器产生的成功步(步长≤20cm;地面反作用力≥12.5%体重)比开环控制器多:分别为 372 步(68%)和 65 步(49%)。这支持了我们之前的初步发现,并证实基于生理学的混合 CPG 方法产生的行走比开环控制器更成功。该算法为神经假体控制器提供了基础,并为将来更详细地控制运动提供了框架。