| Literature DB >> 32075669 |
Gregory S Sawicki1,2,3, Owen N Beck4,5, Inseung Kang4, Aaron J Young6,7.
Abstract
Since the early 2000s, researchers have been trying to develop lower-limb exoskeletons that augment human mobility by reducing the metabolic cost of walking and running versus without a device. In 2013, researchers finally broke this 'metabolic cost barrier'. We analyzed the literature through December 2019, and identified 23 studies that demonstrate exoskeleton designs that improved human walking and running economy beyond capable without a device. Here, we reviewed these studies and highlighted key innovations and techniques that enabled these devices to surpass the metabolic cost barrier and steadily improve user walking and running economy from 2013 to nearly 2020. These studies include, physiologically-informed targeting of lower-limb joints; use of off-board actuators to rapidly prototype exoskeleton controllers; mechatronic designs of both active and passive systems; and a renewed focus on human-exoskeleton interface design. Lastly, we highlight emerging trends that we anticipate will further augment wearable-device performance and pose the next grand challenges facing exoskeleton technology for augmenting human mobility.Entities:
Keywords: Assistive devices; Augmentation; Economy; Energetic; Metabolic cost; Run; Walk; Wearable robotics
Year: 2020 PMID: 32075669 PMCID: PMC7029455 DOI: 10.1186/s12984-020-00663-9
Source DB: PubMed Journal: J Neuroeng Rehabil ISSN: 1743-0003 Impact factor: 4.262
Fig. 1Milestones illustrating the advancement of exoskeleton technology. Tethered (blue) and autonomous (red) exoskeletons assisting at the ankle (circle), knee (triangle), and hip (square) joint to improve healthy, natural walking (left) and running (right) economy versus using no device are shown
Fig. 2The year that each exoskeleton study was published versus the change in net metabolic cost versus walking or running without using the respective device. Red indicates autonomous and blue indicates a tethered exoskeletons. Different symbols indicate the leg joint(s) that each device directly targets. Asterisk indicates special case and cross indicates a passive exoskeleton
Detailed device specifications for exoskeletons that improved healthy, natural walking, and/or running economy versus using no device
| Number | LeadAuthor | Year | Metabolic Reduction (%) | Sample Size | Target Joint(s) | Auto /Tethered | Active /Passive | Walk /Run | Speed (m/s) | Mode | Device Mass (kg) | Note |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | G Sawicki | 2009 | 14 | 9 | Ankle | Tethered | Active | Walk | 1.25 | Level Ground | 2.36 | Long Step Lengths |
| 2 | P Malcolm | 2013 | 6 | 8 | Ankle | Tethered | Active | Walk | 1.38 | Level Ground | 1.52 | |
| 3 | L Mooney | 2014a | 8 | 7 | Ankle | Autonomous | Active | Walk | 1.5 | Level Ground | 4 | Load Carry (23 kg) |
| 4 | L Mooney | 2014b | 10 | 7 | Ankle | Autonomous | Active | Walk | 1.4 | Level Ground | 3.6 | |
| 5 | S Collins | 2015 | 7.2 | 9 | Ankle | Autonomous | Passive | Walk | 1.25 | Level Ground | 0.91 | |
| 6 | L Mooney | 2016 | 11 | 6 | Ankle | Autonomous | Active | Walk | 1.4 | Level Ground | 3.6 | |
| 7 | K Seo | 2016 | 13.2 | 5 | Hip | Autonomous | Active | Walk | 1.17 | Level Ground | 2.8 | |
| 8 | G Lee | 2017 | 5.4 | 8 | Hip | Tethered | Active | Run | 2.5 | Level Ground | 0.81 | |
| 9 | S Galle | 2017 | 12 | 10 | Ankle | Tethered | Active | Walk | 1.25 | Level Ground | 1.78 | |
| 10 | Y Lee | 2017 | 13.2 | 5 | Hip | Autonomous | Active | Walk | 1.14 | Level Ground | 2.6 | |
| 11 | K Seo | 2017 | 15.5 | 5 | Hip | Autonomous | Active | Walk | 1.17 | Inclined Slope | 2.4 | 5% grade |
| 12 | H Lee | 2017 | 7 | 30 | Hip | Autonomous | Active | Walk | 1.1 | Level Ground | 2.8 | Elderly |
| 13 | R Nasiri | 2018 | 8 | 10 | Hip | Autonomous | Passive | Run | 2.5 | Level Ground | 1.8 | |
| 14 | S Lee | 2018 | 14.9 | 7 | Hip, Ankle | Autonomous | Active | Walk | 1.5 | Level Ground | 9.3 | Load Carry (6.8 kg) |
| 15 | Y Ding | 2018 | 17.4 | 8 | Hip | Tethered | Active | Walk | 1.25 | Level Ground | 1.37 | |
| 16 | J Kim | 2018 | 3.9 | 8 | Hip | Autonomous | Active | Run | 2.5 | Level Ground | 4.7 | Hybrid System |
| 17 | D Kim | 2018 | 10.16 | 15 | Hip | Autonomous | Active | Walk | N/A | Stair Ascent | 2.8 | Elderly/128 Steps |
| 18 | F Panizzolo | 2019 | 3.3 | 9 | Hip | Autonomous | Passive | Walk | 1.1 | Level Ground | 0.65 | Elderly |
| 19 | M MacLean | 2019 | 4.2 | 4 | Knee | Autonomous | Active | Walk | 0.5 | Inclined Slope | 8.4 | Load Carry (18.1 kg) / 15 deg incline |
| 20 | C Simpson | 2019 | 6.4 | 12 | Hip | Autonomous | Passive | Run | 2.67 | Level Ground | N/A | Ankle Attachment |
| 21 | J Kim | 2019 | 9.3 | 9 | Hip | Autonomous | Active | Walk | 1.5 | Level Ground | 5 | Hybrid System |
| 22 | J Kim | 2019 | 4 | 9 | Hip | Autonomous | Active | Run | 2.5 | Level Ground | 5 | Hybrid System |
| 23 | B Lim | 2019 | 19.8 | 6 | Hip | Autonomous | Active | Walk | 1.11 | Level Ground | 2.1 | |
| 24 | C Khazoom | 2019 | 5.6 | 8 | Ankle | Tethered | Active | Walk | 1.4 | Level Ground | 6.2 |