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Corrosion Control Approach Using Data Mining


Affiliations
1 Department of Strategic Information, Institute of Human Virology, Nigeria
2 Federal University of Technology, Yola, Nigeria
 

In this work we have developed a decision support system that can determine corrosion and project the time for corrosion growth maintenance using probabilistic modelling approach. Historical data of the atmospheric industrial environment conditions for five years on three metals-zinc, iron and steel with known thicknesses were used. The environmental conditions included precipitation, wind speed, sulphur dioxide, relative humidity and temperature. For the five-year period, the percentiles of corrosion in the environment were determined to be from 63.1% to 69%. The corrosion rates of Zinc, iron and steel were 0.92μm/year,0.9μm/year and 0.51μm/year respectively. At the end of the first year the expected time to initiate corrosion growth maintenance actions for zinc, iron and steel were 9 years, 10 years and 14 years in that order. The probable contributions of each of the environmental factors to the corrosiveness of the environment were determined.

Keywords

Data Mining, Corrosion, Corrosion Control, Decision Support System, Probabilistic Modelling, Environmental Factors.
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  • Corrosion Control Approach Using Data Mining

Abstract Views: 243  |  PDF Views: 107

Authors

Stephen Dapiap
Department of Strategic Information, Institute of Human Virology, Nigeria
Gregory Wajiga
Federal University of Technology, Yola, Nigeria
Michael Egwurube
Federal University of Technology, Yola, Nigeria
Musa Kadzai
Federal University of Technology, Yola, Nigeria
Nathaniel Oye
Federal University of Technology, Yola, Nigeria
ThankGod Anazodo
Department of Strategic Information, Institute of Human Virology, Nigeria

Abstract


In this work we have developed a decision support system that can determine corrosion and project the time for corrosion growth maintenance using probabilistic modelling approach. Historical data of the atmospheric industrial environment conditions for five years on three metals-zinc, iron and steel with known thicknesses were used. The environmental conditions included precipitation, wind speed, sulphur dioxide, relative humidity and temperature. For the five-year period, the percentiles of corrosion in the environment were determined to be from 63.1% to 69%. The corrosion rates of Zinc, iron and steel were 0.92μm/year,0.9μm/year and 0.51μm/year respectively. At the end of the first year the expected time to initiate corrosion growth maintenance actions for zinc, iron and steel were 9 years, 10 years and 14 years in that order. The probable contributions of each of the environmental factors to the corrosiveness of the environment were determined.

Keywords


Data Mining, Corrosion, Corrosion Control, Decision Support System, Probabilistic Modelling, Environmental Factors.