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Exact(10)
Mean power during knee extension and knee flexion exercises was found to be a reliable and sensitive parameter able to discriminate between different physical activity level groups.
In a further study, Carr et al. [6] reported that performance responses were repeatable for mean power during a 2000-m rowing TT performance displaying a typical error (TE) of 2.1%.
For statistical analyses, the individual mean power within the 1-min baseline interval immediately preceding stimulation and sham-stimulation onset was subtracted from the mean power during stimulation-free intervals.
Training amount and performance were computed from total work and mean power during each training session.
Consequently, the same load should be optimal for both peak power and mean power during a 30-second Wingate test.
An endurance cycling test was performed with a constant power, which in each individual was set to that requiring 65% of VO2 max; that is, the mean power during this test was markedly lower in patients than in HC.
Similar(50)
mean power generated during exercise.
Instantaneous power can vary a large extent from the mean power even during steady conditions.
The mean power outputs during each set of sprint were recorded by a computer (Edge E420, Lenovo, Beijing, China) every 0.1 s using specially designed software (Konami, Tokyo, Japan).
A close look at one frequency bin of the noise spectrum reveals the following properties: 1. Instantaneous power can vary a large extent from the mean power even during steady conditions.
where ( {mu}_{{Pr mathrm{x}}_i}left {gamma}_fright) ) is the mean received power from the transmitter i at the calibration point γ f. ( {mu}_{{Pr mathrm{x}}_i}left {gamma}_{mathrm{curr}}right) ) is the mean power measured during the acquisition time in the localization phase at the current position γ curr (to be estimated).
Related(17)
average power during
mean capacity during
mean loss during
mean error during
mean activity during
mean force during
mean duration during
mean temperature during
mean voltage during
mean lactate during
mean feat during
mean value during
mean velocity during
mean sanitation during
mean glucose during
mean center during
mean amplitude during
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