4.3 Article

The Influence of Iron, Manganese, and Zirconium on the Corrosion of Magnesium: An Artificial Neural Network Approach

Journal

CORROSION
Volume 71, Issue 2, Pages 199-208

Publisher

NATL ASSOC CORROSION ENG
DOI: 10.5006/1467

Keywords

corrosion; iron; magnesium; manganese; neural network; zirconium

Funding

  1. Australian Governments Co-operative Research Centres Scheme

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A total of 71 custom alloys were prepared and tested in order to produce a statistically relevant spread of compositions containing a range of iron (Fe), manganese (Mn), and zirconium (Zr) additions to magnesium (Mg). Alloys were produced using Mg-Fe/Zr/Mn master alloys and were tested using potentio-dynamic polarization and mass loss (immersion) testing to ascertain the relative rates of corrosion. The rationale was to empirically explore the concept of threshold or tolerance limits, namely any variation in tolerance limits depending on the relative Fe, Mn, and Zr content, with direct relevance to aluminum (Al) free Mg-alloys. Data was analyzed using an artificial neural network (ANN) model. It was shown that Mn has a moderating effect on Fe with regard to the acceleration of the corrosion rate, even in the simple Mg-Fe-Mn system and in the absence of Al.

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