Yeung Dennis, Farina Dario, Vujaklija Ivan
Department of Electrical Engineering and Automation, Aalto University, 02150 Espoo, Finland.
Department of Bioengineering, Imperial College London, London SW7 2AZ, UK.
Sensors (Basel). 2019 May 13;19(9):2203. doi: 10.3390/s19092203.
Conventional myoelectric controllers provide a mapping between electromyographic signals and prosthetic functions. However, due to a number of instabilities continuously challenging this process, an initial mapping may require an extended calibration phase with long periods of user-training in order to ensure satisfactory performance. Recently, studies on co-adaptation have highlighted the benefits of concurrent user learning and machine adaptation where systems can cope with deficiencies in the initial model by learning from newly acquired data. However, the success remains highly dependent on careful weighting of these new data. In this study, we proposed a function driven directional forgetting approach to the recursive least-squares algorithm as opposed to the classic exponential forgetting scheme. By only discounting past information in the same direction of the new data, local corrections to the mapping would induce less distortion to other regions. To validate the approach, subjects performed a set of real-time myoelectric tasks over a range of forgetting factors. Results show that directional forgetting with a forgetting factor of 0.995 outperformed exponential forgetting as well as unassisted user learning. Moreover, myoelectric control remained stable after adaptation with directional forgetting over a range of forgetting factors. These results indicate that a directional approach to discounting past training data can improve performance and alleviate sensitivities to parameter selection in recursive adaptation algorithms.
传统的肌电控制器可实现肌电信号与假肢功能之间的映射。然而,由于诸多不稳定性持续对这一过程构成挑战,初始映射可能需要一个延长的校准阶段以及长时间的用户训练,以确保令人满意的性能。最近,关于协同适应的研究突出了用户学习与机器适应并行的好处,即系统可以通过从新获取的数据中学习来应对初始模型中的缺陷。然而,成功与否仍高度依赖于对这些新数据的谨慎加权。在本研究中,我们针对递归最小二乘算法提出了一种函数驱动的方向遗忘方法,以替代经典的指数遗忘方案。通过仅在新数据的相同方向上对过去的信息进行折扣,对映射的局部校正将对其他区域产生较小的失真。为验证该方法,受试者在一系列遗忘因子下执行了一组实时肌电任务。结果表明,遗忘因子为0.995的方向遗忘优于指数遗忘以及无辅助的用户学习。此外,在一系列遗忘因子下采用方向遗忘进行适应后,肌电控制仍保持稳定。这些结果表明,一种对过去训练数据进行折扣的方向方法可以提高性能,并减轻递归适应算法中对参数选择的敏感性。