Neural net versus classical models for the detection and localization of leaks in pipelines |
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Authors: | D. Matko G. Geiger T. Werner |
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Affiliation: | 1. Faculty of Electrical Engineering , University of Ljubljana , Tr?a?ka 25, 1000, Ljubljana, Slovenia drago.matko@fe.uni-lj.si;3. Faculty of Electrical Engineering , University of Ljubljana , Tr?a?ka 25, 1000, Ljubljana, Slovenia;4. Faculty of Electrical Engineering , University of Applied Sciences Gelsenkirchen , Gelsenkirchen, Germany |
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Abstract: | ![]() Four models of a pipeline are compared in the paper: a nonlinear distributed-parameter model, a linear distributed-parameter model, a simplified lumped-parameter model and an extended neural-net-based model. The transcendental transfer function of the linearized model is obtained by a Laplace transformation and corresponding initial and boundary conditions. The lumped-parameter model is obtained by a Taylor series extension of the transencdental transfer function. Based on the experience of linear models the structure of the neural net model, as an addendum to the nonlinear distributed-parameter model, is obtained. All four models are tested on a real pipeline data with an artificially generated leak. |
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Keywords: | Environmental and safety systems Fault and uncertainty modelling in dynamical systems Process supervision Neural nets |
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