Thursday 15 August 2013

update: Review of Artificial Neural Networks (ANN) applied to corrosion monitoring


S Mabbutt, P Picton, P Shaw and S Black (2012) Review of Artificial Neural Networks (ANN) applied to corrosion monitoring J. Phys.: Conf. Ser. 364 012114 doi:10.1088/1742-6596/364/1/012114 

To read the paper go to: http://iopscience.iop.org/1742-6596/364/1/012114/pdf/1742-6596_364_1_012114.pdf



Abstract:The assessment of corrosion within an engineering system often forms an important aspect of condition monitoring but it is a parameter that is inherently difficult to measure and predict. The electrochemical nature of the corrosion process allows precise measurements to be made. Advances in instruments, techniques and software have resulted in devices that can gather data and perform various analysis routines that provide parameters to identify corrosion type and corrosion rate. Although corrosion rates are important they are only useful where general or uniform corrosion dominates. However, pitting, inter-granular corrosion and environmentally assisted cracking (stress corrosion) are examples of corrosion mechanisms that can be dangerous and virtually invisible to the naked eye. Electrochemical noise (EN) monitoring is a very useful technique for detecting these types of corrosion and it is the only non-invasive electrochemical corrosion monitoring technique commonly available. Modern instrumentation is extremely sensitive to changes in the system and new experimental configurations for gathering EN data have been proven. In this paper the identification of localised corrosion by different data analysis routines has been reviewed. In particular the application of Artificial Neural Network (ANN) analysis to corrosion data is of key interest. In most instances data needs to be used with conventional theory to obtain meaningful information and relies on expert interpretation. Recently work has been carried out using artificial neural networks to investigate various types of corrosion data in attempts to predict corrosion behaviour with some success. This work aims to extend this earlier work to identify reliable electrochemical indicators of localised corrosion onset and propagation stages.
Neural network example

To read the paper go to: http://iopscience.iop.org/1742-6596/364/1/012114/pdf/1742-6596_364_1_012114.pdf


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