Defect and Cluster Characterization: A Python-Based Plugin for Wellbore Intergrity Analysis

Author:

Nuhn Zachary1,Leong Chad1,Kolomytsev Leonid1,Le Calvez Joel1,Valstar Dirk1

Affiliation:

1. Schlumberger

Abstract

Abstract Over time, corrosion in a pipe causes metal loss which reduces the amount of stress a pipe can be exposed to before failure. A radial thickness measurement of the corroded pipe allows for a quantitative analysis of the pipe's strength by identifying areas of significant material loss. The effects of metal loss defects on a pipe compound when the defects are close enough to interact. Thus, the identification and characterization of interacting defects as a defect cluster is required when calculating the remaining pipe strength. A Python-based Techlog* wellbore software platform plugin was developed to provide an analytical workflow to detect and characterize the impact of metal loss defects and defect clusters on remaining pipe strength for downhole wellbore integrity applications. The developed plugin is a fully customizable workflow which can be adapted to any well integrity scenario and pipeline regulatory body standards such as ASME B31G, subsequently meeting clients' reporting requirements. The innovative workflow has additional potential to be ported to completely new applications utilizing various alternative downhole measurements.

Publisher

ASME International

Subject

Mechanical Engineering,Mechanics of Materials,Safety, Risk, Reliability and Quality

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