Title :
Decision trees development for leak detection on gas transmission system using stationary model and machine learning from examples
Author :
Konvalinka, Ira ; Kovacevic, V. ; Bajovic, Vera ; Bojkovic, G.
Author_Institution :
Novi Sad Univ., Yugoslavia
Abstract :
One approach in solving the important problem of leak detection on gas transmission system, involving stationary simulation model and artificial intelligence techniques, is presented in the paper. This approach requires a lot of training examples, which were generated using data records from the real pipeline network and leak simulation technique proposed in the paper. Then feature (or attribute) extraction is presented with a complete set of attribute candidates. Leak classification rules were derived in the form of decision trees developed by the system for machine learning from examples. For some proposed detection strategies the accuracy of leak classification reached in DP Gas pipeline network is over 90%. Illustrative examples are included
Keywords :
engineering computing; learning systems; natural gas technology; DP Gas; data records; decision trees; feature extraction; gas transmission system; leak classification; leak simulation; learning from examples; machine learning; pipeline network; training examples;
Conference_Titel :
Intelligent Systems Engineering, 1992., First International Conference on (Conf. Publ. No. 360)
Print_ISBN :
0-85296-549-4