A Demonstration of Artificial Neural-Networks-Based Data Mining for Gas-Turbine-Driven Compressor Stations

Author:

Botros K. K.1,Kibrya G.2,Glover A.2

Affiliation:

1. Nova Research and Technology Corporation, Calgary, Alberta, Canada

2. TransCanada Pipelines, Ltd., Calgary, Alberta, Canada

Abstract

This paper presents a successful demonstration of application of neural networks to perform various data mining functions on an RB211 gas-turbine-driven compressor station. Radial basis function networks were optimized and were capable of performing the following functions: (a) backup of critical parameters, (b) detection of sensor faults, (c) prediction of complete engine operating health with few variables, and (d) estimation of parameters that cannot be measured. A Kohonen SOM technique has also been applied to recognize the correctness and validity of any data once the network is trained on a good set of data. This was achieved by examining the activation levels of the winning unit on the output layer of the network. Additionally, it would also be possible to determine the suspicious, faulty or corrupted parameter(s) in the cases which are not recognized by the network by simply examining the activation levels of the input neurons.

Publisher

ASME International

Subject

Mechanical Engineering,Energy Engineering and Power Technology,Aerospace Engineering,Fuel Technology,Nuclear Energy and Engineering

Reference13 articles.

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3. DePold, H. R., and Gass, F. D., 1988, “The Application of Expert Systems and Neural Networks to Gas Turbine Prognostics and Diagnostics,” ASME Turbo-Expo, Stockholm, Sweden, June 2–5.

4. MacIntyre, J., Tait, J., Kendal, S., Smith, P., Harris, T., and Brason, A., 1994, “Neural Networks Applications in Condition Monitoring,” Applications of Artificial Intelligence in Engineering, Proceedings of the 9th International Conference, Pennsylvania, July 19–21, pp. 37–48.

5. Kim, D. S., Shin, S. S., and Carison, D. K., 1991, “Machinery Diagnostics for Rotating Machinery Using Backpropagation Neural Network,” Proceedings of the 3rd International Machinery Monitoring and Diagnostics Conference, Las Vegas, NV, Dec. 9–12, pp. 309–320.

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