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Safety evaluation of leak in a storage tank using fault tree analysis and risk matrix analysis

Safety evaluation of leak in a storage tank using fault tree analysis and risk matrix analysis
Safety evaluation of leak in a storage tank using fault tree analysis and risk matrix analysis
The work presented in this paper used a quantitative analysis of relevant risks through the development of fault tree analysis and risk analysis methods to aid real time risk prediction and safety evaluation of leak in a storage tank. Criticality of risk elements and their attributes can be used with real time data to predict potential failures likely to occur. As an example, a risk matrix was used to rank risk of events that could lead to a leak in a storage tank and to make decisions on risks to be allowed based on past statistical data. An intelligent system that recognizes increasing level(s) and draws awareness to the possibility of additional increase before unsafe levels are attained was used to analyse and make critical decisions. After a visual depiction of relationships between hazards and controls had been actualized, dynamic risk modelling was used to quantify the effect controls can potentially have on hazards by applying historical and real-time data into a probabilistic model. The output of a dynamic risk model is near real-time quantitative predictions of risk likelihood. Results from the risk matrix analysis method mixed with RTD and FTA were analyzed, evaluated, and compared.
Decision making, Fault tree analysis, Risk analysis, Risk prediction, Storage tank
0950-4230
Hassan, Mohamed G
ce323212-f178-4d72-85cf-23cd30605cd8
Hassan, Mohamed G
ce323212-f178-4d72-85cf-23cd30605cd8

Hassan, Mohamed G (2021) Safety evaluation of leak in a storage tank using fault tree analysis and risk matrix analysis. Journal of Loss Prevention in the Process Industries, 73, [104597]. (doi:10.1016/j.jlp.2021.104597).

Record type: Article

Abstract

The work presented in this paper used a quantitative analysis of relevant risks through the development of fault tree analysis and risk analysis methods to aid real time risk prediction and safety evaluation of leak in a storage tank. Criticality of risk elements and their attributes can be used with real time data to predict potential failures likely to occur. As an example, a risk matrix was used to rank risk of events that could lead to a leak in a storage tank and to make decisions on risks to be allowed based on past statistical data. An intelligent system that recognizes increasing level(s) and draws awareness to the possibility of additional increase before unsafe levels are attained was used to analyse and make critical decisions. After a visual depiction of relationships between hazards and controls had been actualized, dynamic risk modelling was used to quantify the effect controls can potentially have on hazards by applying historical and real-time data into a probabilistic model. The output of a dynamic risk model is near real-time quantitative predictions of risk likelihood. Results from the risk matrix analysis method mixed with RTD and FTA were analyzed, evaluated, and compared.

Text
Revised Manuscript (text Unmarked) -Journal of loss and prevention - Safety Evaluation of Leak in a Storage Tank using Fault Tree Analysis and Risk Matrix Analysis - Accepted Manuscript
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More information

Published date: 1 November 2021
Additional Information: Publisher Copyright: © 2021 Elsevier Ltd Copyright: Copyright 2021 Elsevier B.V., All rights reserved.
Keywords: Decision making, Fault tree analysis, Risk analysis, Risk prediction, Storage tank

Identifiers

Local EPrints ID: 450878
URI: http://eprints.soton.ac.uk/id/eprint/450878
ISSN: 0950-4230
PURE UUID: a3adfc5a-03b3-4469-b2bb-96b38266600f
ORCID for Mohamed G Hassan: ORCID iD orcid.org/0000-0003-3729-4543

Catalogue record

Date deposited: 17 Aug 2021 16:32
Last modified: 17 Mar 2024 06:46

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