Neural Net Identification of Flow Regime using Band Spectra of Flow Generated Sound

Author:

van der Spek Alex1,Thomas Alix2

Affiliation:

1. Shell International E&P

2. Edinburgh University

Abstract

Abstract Multiphase production log interpretation requires that the flow regime along hole in the wellbore is known. Flow regime is the cased-hole analogue of lithology. Knowledge of the flow regime will help to interpret tool signals, will help to evaluate the flow rate on a per phase basis, and will reduce post processing load by at least a factor of 10. Flow regime can be classified correctly by a neural net in up to 87% of all cases using 1/3 octave band spectra of flow generated sound. A neural net trained on commercially available tool data (noise cut's) appears to be too sensitive to the wellbore inclination. Hence, application of automated neural net interpretation of noise logs requires a new generation of noise logging tools. P. 93

Publisher

SPE

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