Noise‐robust gas path fault detection and isolation for a power generation gas turbine based on deep residual compensation extreme learning machine
Ali Nekoonam,
Morteza Montazeri‐Gh
Abstract:One of the major challenges facing fault diagnosis tools is their exposure to noise. The presence of noise may cause false alarms or the inability to detect a progressive fault in the early stages of its occurrence. Continuing previous efforts to address such a problem, in this paper, a noise‐robust diagnosis system for an industrial gas turbine is presented. The proposed structure employs a set of deep residual compensation extreme learning machines (DRCELMs). In this model, an optimal number of compensating … Show more
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