| Literature DB >> 30126112 |
Roozbeh Atri1, J Sebastian Marquez2, Connie Leung3, Masudur R Siddiquee4, Douglas P Murphy5, Ashraf S Gorgey6, William T Lovegreen7, Ding-Yu Fei8, Ou Bai9.
Abstract
The advent of powered prosthetic ankles provided more balance and optimal energy expenditure to lower amputee gait. However, these types of systems require an extensive setup where the parameters of the ankle, such as the amount of positive power and the stiffness of the ankle, need to be setup. Currently, calibrations are performed by experts, who base the inputs on subjective observations and experience. In this study, a novel evidence-based tuning method was presented using multi-channel electromyogram data from the residual limb, and a model for muscle activity was built. Tuning using this model requires an exhaustive search over all the possible combinations of parameters, leading to computationally inefficient system. Various data-driven optimization methods were investigated and a modified Nelder⁻Mead algorithm using a Latin Hypercube Sampling method was introduced to tune the powered prosthetic. The results of the modified Nelder⁻Mead optimization were compared to the Exhaustive search, Genetic Algorithm, and conventional Nelder⁻Mead method, and the results showed the feasibility of using the presented method, to objectively calibrate the parameters in a time-efficient way using biological evidence.Entities:
Keywords: Latin Hypercube Sampling; Nelder–Mead; data-driven optimization; electromyography; parameter tuning; powered prosthetic ankle
Mesh:
Year: 2018 PMID: 30126112 PMCID: PMC6111278 DOI: 10.3390/s18082705
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Data collection setup using a body weight supported treadmill system to prevent fall. (a) Amputee subject on the treadmill with a protective harness on (b) electrode placement on Tibialis Anterior (TA) and Gastrocnemius Lateralis (GL) muscles on the intact limb.
Figure 210 channels of EMG from lower limb of BK1 while operating PPA with zero percent power and zero percent stiffness for five steps. The pitch signals depicted on top was used to detect each step and it was used to partition EMG signals to each step. Two steps detected from the pitch signals are highlighted.
Figure 3Flowchart of the proposed optimization in the study. E1 and E2 represent the smallest modelled muscle activity after they have been sorted and ε represents the user defined stopping criteria.
Figure 4Grids of the modeled muscular activity using 10-channel electromyogram (EMG) sensor for various combinations of the stiffness and power parameters for three bent-knee and three trasfemoral amputee subjects.
Results of the electromyogram (EMG)-based smart search to tune powered prosthetic ankle (PPA). CPO—certified prosthetists and orthotists; LHS—Latin Hypercube Sampling.
| Subject | CPO Tuning | Target 1 | Genetic Algorithm | Nelder–Mead | Nelder–Mead with LHS | |||
|---|---|---|---|---|---|---|---|---|
| Iterations | Result | Iterations | Result | Iterations | Result | |||
| BK1 | 990 ± 180 | 35 ± 9 | 49 ± 9 | |||||
| BK2 | 900 ± 105 | 28 ± 13 | 45 ± 8 | |||||
| TT1 | 870 ± 165 | 21 ± 8 | 57 ± 15 | |||||
| BK3 | 945 ± 150 | 10 ± 4 | 24 ± 13 | |||||
| TT2 | 870 ± 60 | 11 ± 8 | 13 ± 8 | |||||
| TT3 | 930 ± 150 | 9 ± 4 | 12 ± 2 | |||||
1 P and S represent the power and stiffness parameters for PPA, respectively. BK stands for bent-knee and TT stands for transtibial.
Figure 5Error for smart search using the genetic algorithm (GA) method in various population sizes. The GA method was investigated using various initial population sizes to identify the smallest population size needed to converge to the global minima faster. The results are evaluated using an error measure, which is the distance of the result of the optimization from the target value.
Figure 6Error for smart search using Nelder–Mead (NM) and Latin Hypercube Sampling (LHS) methods in various vertices and random samples. (a) The distance from the target value for various simplexes. (b) The distance for the NM optimization using LHS with a various number of intervals to limit the search.