2011
DOI: 10.4028/www.scientific.net/amr.291-294.1212
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Analysis in Atmospheric Corrosion Behavior of Bainite Steel Exposed in Offshore Platform Based on the Artificial Neural Network

Abstract: Back propagation (BP) neural network model was established, using the corrosion data of five kinds of recently developed bainite weathering steel and the commercial weathering steel 09CuPCrNi exposed in the offshore platform in Wanning. The influences of elements P, Cu, C and Cr on the corrosion behavior of weathering steel were studied according to the model. The experimental results indicate that the corrosion depth of bainite weathering steel corroded for 1 year could decline owing to the increasing content… Show more

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Cited by 2 publications
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“…Kenny et al [14] established an ANN with linear and sigmoidal functions to predict the CRs of Al, low carbon steel, and Cu as a consequence of meteorological factors. Zhang et al [15] assessed the atmospheric corrosion performance of bainite steel in exposed offshore platforms via ANN. Lo et al [16] developed a regional forecasting model by using ANN to predict the atmospheric CR of Cu within general and coastal industrial zones in Taiwan.…”
Section: Introductionmentioning
confidence: 99%
“…Kenny et al [14] established an ANN with linear and sigmoidal functions to predict the CRs of Al, low carbon steel, and Cu as a consequence of meteorological factors. Zhang et al [15] assessed the atmospheric corrosion performance of bainite steel in exposed offshore platforms via ANN. Lo et al [16] developed a regional forecasting model by using ANN to predict the atmospheric CR of Cu within general and coastal industrial zones in Taiwan.…”
Section: Introductionmentioning
confidence: 99%