Textual data transformations using natural language processing for risk assessment

Author:

Kamil Mohammad Zaid1ORCID,Taleb‐Berrouane Mohammed1,Khan Faisal12ORCID,Amyotte Paul3,Ahmed Salim1

Affiliation:

1. Centre for Risk, Integrity and Safety Engineering (C‐RISE), Faculty of Engineering & Applied Science, Memorial University, St John's Newfoundland Canada

2. Mary Kay O'Connor Process Safety Center, Artie McFerrin Department of Chemical Engineering, Texas A&M University, College Station Texas USA

3. Department of Process Engineering and Applied Science, Dalhousie University Halifax Nova Scotia Canada

Abstract

AbstractUnderlying information about failure, including observations made in free text, can be a good source for understanding, analyzing, and extracting meaningful information for determining causation. The unstructured nature of natural language expression demands advanced methodology to identify its underlying features. There is no available solution to utilize unstructured data for risk assessment purposes. Due to the scarcity of relevant data, textual data can be a vital learning source for developing a risk assessment methodology. This work addresses the knowledge gap in extracting relevant features from textual data to develop cause–effect scenarios with minimal manual interpretation. This study applies natural language processing and text‐mining techniques to extract features from past accident reports. The extracted features are transformed into parametric form with the help of fuzzy set theory and utilized in Bayesian networks as prior probabilities for risk assessment. An application of the proposed methodology is shown in microbiologically influenced corrosion‐related incident reports available from the Pipeline and Hazardous Material Safety Administration database. In addition, the trained named entity recognition (NER) model is verified on eight incidents, showing a promising preliminary result for identifying all relevant features from textual data and demonstrating the robustness and applicability of the NER method. The proposed methodology can be used in domain‐specific risk assessment to analyze, predict, and prevent future mishaps, ameliorating overall process safety.

Publisher

Wiley

Subject

Physiology (medical),Safety, Risk, Reliability and Quality

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