Buongiorno Domenico, Barsotti Michele, Barone Francesco, Bevilacqua Vitoantonio, Frisoli Antonio
Department of Electrical and Information Engineering, Polytechnic University of Bari, Bari, Italy.
Percro Laboratory, Tecip Institute, Scuola Superiore Sant'Anna, Pisa, Italy.
Front Neurorobot. 2018 Nov 13;12:74. doi: 10.3389/fnbot.2018.00074. eCollection 2018.
The growing interest of the industry production in wearable robots for assistance and rehabilitation purposes opens the challenge for developing intuitive and natural control strategies. Myoelectric control, or myo-control, which consists in decoding the human motor intent from muscular activity and its mapping into control outputs, represents a natural way to establish an intimate human-machine connection. In this field, model based myo-control schemes (e.g., EMG-driven neuromusculoskeletal models, NMS) represent a valid solution for estimating the moments of the human joints. However, a model optimization is needed to adjust the model's parameters to a specific subject and most of the optimization approaches presented in literature consider complex NMS models that are unsuitable for being used in a control paradigm since they suffer from long-lasting setup and optimization phases. In this work we present a minimal NMS model for predicting the elbow and shoulder torques and we compare two optimization approaches: a linear optimization method (LO) and a non-linear method based on a genetic algorithm (GA). The LO optimizes only one parameter per muscle, whereas the GA-based approach performs a deep customization of the muscle model, adjusting 12 parameters per muscle. EMG and force data have been collected from 7 healthy subjects performing a set of exercises with an arm exoskeleton. Although both optimization methods substantially improved the performance of the raw model, the findings of the study suggest that the LO might be beneficial with respect to GA as the latter is much more computationally heavy and leads to minimal improvements with respect to the former. From the comparison between the two considered joints, it emerged also that the more accurate the NMS model is, the more effective a complex optimization procedure could be. Overall, the two optimized NMS models were able to predict the shoulder and elbow moments with a low error, thus demonstrating the potentiality for being used in an admittance-based myo-control scheme. Thanks to the low computational cost and to the short setup phase required for wearing and calibrating the system, obtained results are promising for being introduced in industrial or rehabilitation real time scenarios.
工业生产对用于辅助和康复目的的可穿戴机器人的兴趣日益浓厚,这为开发直观自然的控制策略带来了挑战。肌电控制,即肌控,是从肌肉活动中解码人类运动意图并将其映射为控制输出,它是建立紧密人机连接的自然方式。在该领域,基于模型的肌控方案(如肌电驱动的神经肌肉骨骼模型,即NMS)是估计人体关节力矩的有效解决方案。然而,需要进行模型优化以将模型参数调整到特定个体,并且文献中提出的大多数优化方法考虑的是复杂的NMS模型,这些模型不适合用于控制范式,因为它们存在长时间的设置和优化阶段。在这项工作中,我们提出了一个用于预测肘部和肩部扭矩的最小NMS模型,并比较了两种优化方法:线性优化方法(LO)和基于遗传算法(GA)的非线性方法。LO仅优化每条肌肉的一个参数,而基于GA的方法对肌肉模型进行深度定制,每条肌肉调整12个参数。已从7名健康受试者使用手臂外骨骼进行一组练习时收集了肌电和力数据。尽管两种优化方法都显著提高了原始模型的性能,但研究结果表明,LO可能比GA更具优势,因为GA的计算量更大,相对于前者带来的改进极小。从所考虑的两个关节之间的比较还可以看出,NMS模型越精确,复杂的优化过程可能就越有效。总体而言,两个优化后的NMS模型能够以低误差预测肩部和肘部力矩,从而证明了其在基于导纳的肌控方案中使用的潜力。由于计算成本低以及佩戴和校准系统所需的设置阶段短,所获得的结果有望引入工业或康复实时场景。