An approach to fault diagnosis of chemical processes via neural networks

. Y. Fan, J, M. Nikolaou, and R. E. White. 1993. “An approach to fault diagnosis of chemical processes via neural networks”. AIChE Journal 39 (1): 82-88.

Abstract

This article presents an approach to fault diagnosis of chemical processes at steadystate operation by using artificial neural networks. The conventional back‐propagation network is enhanced by adding a number of functional units to the input layer. This technique considerably extends a network s capability for representing complex nonlinear relations and makes it possible to simultaneously diagnose multiple faults and their corresponding levels in a chemical process. A simulation study of a heptane‐to‐toluene process at steady‐state operation shows successful results for the proposed approach. Copyright © 1993 American Institute of Chemical Engineers
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