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  5. An observation-based model for corrosion of concrete sewers under aggressive conditions

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Article
English
2014

An observation-based model for corrosion of concrete sewers under aggressive conditions

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English
2014
Cement and Concrete Research
Vol 61-62
DOI: 10.1016/j.cemconres.2014.03.013

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Robert Melchers
Robert Melchers

The University Of Newcastle

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T. Wells
Robert Melchers

Abstract

Development of rational mathematical models for prediction of the likely present and future internal corrosion of reinforced concrete sewers requires understanding of the important physico-chemical processes, preferably based on field evidence. Samples of new and 70year old pre-corroded concretes were exposed for up to 31months in an aggressive sewer environment at 26°C, 98% relative humidity and 79ppm H2S concentration (averages). During the initial months of exposure the pH of the new concrete surfaces reduced rapidly however little corrosion loss was observed during this period. Subsequently pH reduced further, mass loss commenced and new concrete losses reached around 24mm after 2years. During the same period the old concrete corroded at an approximately constant rate. The presence of the corrosion product layer had negligible influence on corrosion losses. A bilinear corrosion loss model is proposed for practical applications.

How to cite this publication

T. Wells, Robert Melchers (2014). An observation-based model for corrosion of concrete sewers under aggressive conditions. Cement and Concrete Research, 61-62, pp. 1-10, DOI: 10.1016/j.cemconres.2014.03.013.

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Publication Details

Type

Article

Year

2014

Authors

2

Datasets

0

Total Files

0

Language

English

Journal

Cement and Concrete Research

DOI

10.1016/j.cemconres.2014.03.013

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