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J Chin Soc Corr Pro  2001, Vol. 21 Issue (6): 352-356     DOI:
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STUDY ON RELATIVITY BETWEEN CORROSION IMAGESAND DATA OF METALLIC SAMPLES IN SEAWATER
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天津大学材料学院
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Abstract  Scanner is used to acquire corrosion images of carb on steel and low-alloy steel in seawater and in order to show the corrosion moda lity clearly the images are pre-processed by the average value filter and non-li near fuzzy enhancement methods. The gray relational analysis and canonical corre lation analysis are used to analyze the relations between grey data and corrosio n data of metallic samples. The results show that there is higher gray rel ational grade. The canonical correlation coefficient between grey data and uniform corrosion lo st-weight is 0.99 while the coefficient between grey data and localized corrosio n depth is 0.98. Using artificial neural network theory, the model between the g rey distribution of metallic samples and localized corrosion depth has been deve loped. According to this model, there are only 3.89 percent absolute error betwe en the predicted result and the real value and the error will decrease if normal samples increase. With a high correlative coefficient, 0.98, the linear relatio n al model between the grey distribution of metallic samples and uniform corrosion lost-weight has been studied, too.
Key words:  carbon steel      low-alloy steel      gray relational analysi s      canonical correlation analysis      artificial neu     
Received:  13 October 2000     
ZTFLH:  TG171  
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. STUDY ON RELATIVITY BETWEEN CORROSION IMAGESAND DATA OF METALLIC SAMPLES IN SEAWATER. J Chin Soc Corr Pro, 2001, 21(6): 352-356 .

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https://www.jcscp.org/EN/     OR     https://www.jcscp.org/EN/Y2001/V21/I6/352

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