EXTRACTING KNOWLEDGE FROM CARBON DIOXIDE CORROSION INHIBITION WITH ARTIFICIAL NEURAL NETWORKS

Authors

  • Gary Raymond Weckman Ohio University
  • William Young Ohio University
  • Sandra Hernández BP America Inc
  • Maimuna Rangwala Ohio University
  • Vishal Ghai Ohio University

DOI:

https://doi.org/10.23055/ijietap.2010.17.1.75

Keywords:

Artificial neural networks, knowledge extraction, variable relationships, optimization

Abstract

The artificial neural network (ANN) has a proven reputation of accurately modeling the interacting relationships in a complex non-linear system. However, an ANN model is often considered a “black-box” in the sense that its estimates appear incomprehensible. This limitation is alleviated by using knowledge extraction techniques and algorithms. Better understanding of these relationships is significantly important to the oil industry, where the factors that affect corrosion are not well understood. To provide insight, this paper presents a number of different techniques to extract knowledge from an ANN trained with a CO2 corrosion dataset. These techniques include Network Interpretation Diagrams, Garson’s Algorithm, Sensitivity Analysis, Family of Curves and Surfaces, and TREPAN-Plus. From a knowledge-based perspective, these methods can provide the oil industry with the ability to determine the role of input variables in predicting corrosion inhibition. The limitations and advantages of each of these techniques are also discussed.

Author Biographies

Gary Raymond Weckman, Ohio University

Industrial and Systems Engineering, Associate professor and Graduate Chair

William Young, Ohio University

Industrial and Systems Engineering, PhD Student

Sandra Hernández, BP America Inc

Ph.D, a senior corrosion engineer with BP America Inc. located in Houston, TX

Maimuna Rangwala, Ohio University

Industrial and Systems Engineering, Graduated MS Student

Vishal Ghai, Ohio University

Industrial and Systems Engineering, Graduated MS Student, currently at Clarify CRM Development, Cingular Wireless

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Published

2010-03-01

How to Cite

Weckman, G. R., Young, W., Hernández, S., Rangwala, M., & Ghai, V. (2010). EXTRACTING KNOWLEDGE FROM CARBON DIOXIDE CORROSION INHIBITION WITH ARTIFICIAL NEURAL NETWORKS. International Journal of Industrial Engineering: Theory, Applications and Practice, 17(1). https://doi.org/10.23055/ijietap.2010.17.1.75

Issue

Section

Data Sciences and Computational Intelligence