Prediction a of Tribocorrosion Wear Rate (RESEARCH NOTE)

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Abstract:

Basic properties of the suggested phenomenological model of tribocorrosion wear are considered. Using a friction pair austenitic stainless steel-ceramic in acid electrolytes as an example, a good agreement between predicted data and experimental evidence was obtained.

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Journal title

volume 11  issue 2

pages  109- 114

publication date 1998-05-01

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