In this study, a new diagnosis method which can predict the working states of a pipe or its element in realtime is proposed by using an artificial neural network. The displacement data of an inspection element of a piping system are obtained by the use of PIV (particle image velocimetry), and are used for teaching a neural network. The measurement system consists of a camera, a light source and a host computer in which the artificial neural network is installed. In order to validate the constructed monitoring system, performance test was attempted for two kinds of mobile phone of which vibration modes are known. Three values of acceleration (minimum, maximum, mean) were tested for teaching the neural network. It was verified that mean values were appropriate to be used for monitoring data. The constructed diagnosis system could monitor the operation condition of a gas pipe.
CITATION STYLE
Jeon, M. G., Cho, G. R., Lee, K. K., & Doh, D. H. (2015). A monitoring system based on an artificial neural network for real-time diagnosis on operating status of piping system. Transactions of the Korean Society of Mechanical Engineers, B, 39(2), 199–206. https://doi.org/10.3795/KSME-B.2015.39.2.199
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