System Identification Methodology of a Gas Turbine Based on Artificial Recurrent Neural Networks

Author:

Aquize Rubén1,Cajahuaringa Armando1,Machuca José1,Mauricio David2,Mauricio Villanueva Juan M.3ORCID

Affiliation:

1. Universidad Nacional de Ingeniería, Rimac 150101, Peru

2. Universidad Nacional Mayor de San Marcos, Lima 15081, Peru

3. Universidade Federal da Paraíba Campus I, Joao Pessoa, Paraíba 58051-900, PB, Brazil

Abstract

The application of identification techniques using artificial intelligence to the gas turbine (GT), whose nonlinear dynamic behavior is difficult to describe through differential equations and the laws of physics, has begun to gain importance for a little more than a decade. NARX (Nonlinear autoregressive network with exogenous inputs) is one of the models used to identify GT because it provides good results. However, existing studies need to show a systematic method to generate robust NARX models that can identify a GT with satisfactory accuracy. In this sense, a systematic method is proposed to design NARX models for identifying a GT, which consists of nine precise steps that go from identifying GT variables to obtaining the optimized NARX model. To validate the method, it was applied to a case study of a 215 MW SIEMENS TG, model SGT6-5000F, using a set of 2305 real-time series data records, obtaining a NARX model with an MSE of 1.945 × 10−5, RMSE of 0.4411% and a MAPE of 0.0643.

Funder

Universidad Nacional de Ingeniería, Lima-Perú

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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