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Comparative Wear Evaluation of Pure Zn, Zn-Mg and Zn-Mg-Y Alloys Using Mass Loss Measurements and Optical Profilometry. [PDF]

open access: yesMaterials (Basel)
Severin TL   +10 more
europepmc   +1 more source
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FRET imaging

Nature Biotechnology, 2003
Förster (or Fluorescence) Resonance Energy Transfer (FRET) is unique in generating fluorescence signals sensitive to molecular conformation, association, and separation in the 1-10 nm range. We introduce a revised photophysical framework for the phenomenon and provide a systematic catalog of FRET techniques adapted to imaging systems, including new ...
Jares-Erijman, E., Jovin, T.
openaire   +3 more sources

Fanciful FRET

Science's STKE, 2006
The validity of experiments based on Förster resonance energy transfer (FRET), an imaging technique widely used to measure protein-protein interactions in living cells, critically depends on the accurate and precise measurement of FRET efficiency. The use of FRET standards to determine FRET efficiency, and a consideration of such factors as how the ...
Steven S, Vogel   +2 more
openaire   +2 more sources

Fretting fatigue and fretting wear

Tribology International, 1989
Abstract In this paper fretting wear and fretting fatigue is reviewed on the basis of work carried out by the present authors and by other investigators. The effects of amplitude, time, materials, contact temperature, frequency, stress and environment are discussed.
Y. Berthier, L. Vincent, M. Godet
exaly   +2 more sources

Fretting Corrosion and Fretting Fatigue

1982
Two metals and alloys, in intimate contact, but with a small amount of relative motion between them, will often show excessive weight losses. If the relative motion between the parts is caused by applied stresses the parts may also suffer from premature fatigue failures.
openaire   +1 more source

[FRET].

Tanpakushitsu kakusan koso. Protein, nucleic acid, enzyme, 2005
  +5 more sources

Machine learning predicts fretting and fatigue key mechanical properties

International Journal of Mechanical Sciences, 2022
Alix de Pannemaecker
exaly  

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