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1.
Sci Robot ; 8(83): eadg3705, 2023 10 25.
Artigo em Inglês | MEDLINE | ID: mdl-37851817

RESUMO

One challenge to achieving widespread success of augmentative exoskeletons is accurately adjusting the controller to provide cooperative assistance with their wearer. Often, the controller parameters are "tuned" to optimize a physiological or biomechanical objective. However, these approaches are resource intensive, while typically only enabling optimization of a single objective. In reality, the exoskeleton user experience is likely derived from many factors, including comfort, fatigue, and stability, among others. This work introduces an approach to conveniently tune the four parameters of an exoskeleton controller to maximize user preference. Our overarching strategy is to leverage the wearer to internally balance the experiential factors of wearing the system. We used an evolutionary algorithm to recommend potential parameters, which were ranked by a neural network that was pretrained with previously collected user preference data. The controller parameters that had the highest preference ranking were provided to the exoskeleton, and the wearer responded with real-time feedback as a forced-choice comparison. Our approach was able to converge on controller parameters preferred by the wearer with an accuracy of 88% on average when compared with randomly generated parameters. User-preferred settings stabilized in 43 ± 7 queries. This work demonstrates that user preference can be leveraged to tune a partial-assist ankle exoskeleton in real time using a simple, intuitive interface, highlighting the potential for translating lower-limb wearable technologies into our daily lives.


Assuntos
Exoesqueleto Energizado , Robótica , Tornozelo/fisiologia , Fenômenos Biomecânicos , Articulação do Tornozelo/fisiologia
2.
Sci Robot ; 5(47)2020 Oct 21.
Artigo em Inglês | MEDLINE | ID: mdl-33087483

RESUMO

Deep reinforcement learning enables quadruped robots to traverse challenging natural environments using only proprioception.

3.
PLoS One ; 12(7): e0179637, 2017.
Artigo em Inglês | MEDLINE | ID: mdl-28700719

RESUMO

Here we show that novel, energy-recycling stairs reduce the amount of work required for humans to both ascend and descend stairs. Our low-power, interactive, and modular steps can be placed on existing staircases, storing energy during stair descent and returning that energy to the user during stair ascent. Energy is recycled through event-triggered latching and unlatching of passive springs without the use of powered actuators. When ascending the energy-recycling stairs, naive users generated 17.4 ± 6.9% less positive work with their leading legs compared to conventional stairs, with the knee joint positive work reduced by 37.7 ± 10.5%. Users also generated 21.9 ± 17.8% less negative work with their trailing legs during stair descent, with ankle joint negative work reduced by 26.0 ± 15.9%. Our low-power energy-recycling stairs have the potential to assist people with mobility impairments during stair negotiation on existing staircases.


Assuntos
Tecnologia Assistiva , Subida de Escada/fisiologia , Adulto , Fenômenos Biomecânicos , Feminino , Humanos , Articulação do Joelho/fisiologia , Masculino
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