2023
DOI: 10.3390/s23041756
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Revealing the Mutual Information between Body-Worn Sensors and Metabolic Cost in Running

Abstract: Running power is a popular measure to gauge objective intensity. It has recently been shown, though, that foot-worn sensors alone cannot reflect variations in the exerted energy that stems from changes in the running economy. In order to support long-term improvement in running, these changes need to be taken into account. We propose leveraging the presence of two additional sensors worn by the most ambitious recreational runners for improved measurement: a watch and a heart rate chest strap. Using these accel… Show more

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“…Baumgartner et al approached bottleneck identification from the standpoint of machine continuous processing, using the longest average active time of equipment as an indicator for bottleneck identification. Furthermore, a mobile bottleneck identification method was proposed based on this study [10] . Alesiani et al proposed a dynamic bottleneck identification method focusing on work-in-progress, using the number of work-in-progress as the object of study [11] .…”
Section: Introductionmentioning
confidence: 99%
“…Baumgartner et al approached bottleneck identification from the standpoint of machine continuous processing, using the longest average active time of equipment as an indicator for bottleneck identification. Furthermore, a mobile bottleneck identification method was proposed based on this study [10] . Alesiani et al proposed a dynamic bottleneck identification method focusing on work-in-progress, using the number of work-in-progress as the object of study [11] .…”
Section: Introductionmentioning
confidence: 99%