This decommissioned ERA site remains active temporarily to support our final migration steps to https://ualberta.scholaris.ca, ERA's new home. All new collections and items, including Spring 2025 theses, are at that site. For assistance, please contact erahelp@ualberta.ca.
Search
Skip to Search Results-
Development of a Model using Machine Learning Intended to be Embedded in a Wearable Device to Detect Muscle Fatigue based on sEMG Data Associated with a Sustained Single 80% Maximum Voluntary Contraction
DownloadFall 2021
Background: Muscle fatigue is the progressive reduction in a muscle's ability to contract and exert force when performing a sustained task. Muscle fatigue may prevent the task from being complete and increase the risk of injury. Eventually, the performance of individuals during athletic...
-
2019
Chowdhury, S.A., Hindle, Abram, Kazman, R., Shuto, T., Matsui, K., Kamei, Y.
Energy consumption is a concern in the data-center and at the edge, on mobile devices such as smartphones. Software that consumes too much energy threatens the utility of the end-user's mobile device. Energy consumption is fundamentally a systemic kind of performance and hence it should be...