Criticality mapping of a system in the mining industry using Bayesian network
More, Sagar, Tuladhar, Rabin, Das, Sourav, and Milne, William (2025) Criticality mapping of a system in the mining industry using Bayesian network. Maintenance, Reliability and Condition Monitoring, 5 (2). pp. 109-128.
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Abstract
Effective evaluation of equipment criticality is a key concern in Engineering Asset Management, particularly in operationally intensive industries such as mining. While the concept of criticality is often subjective, it can be assessed more objectively using quantifiable indicators such as cost, downtime, and failure rate. This paper presents a data-driven approach to assess equipment-level criticality by analysing the impact of individual equipment downtimes on overall system performance. Focusing on a case study from a gold mining operation in Australia, the study demonstrates how equipment-level performance can be used to prioritise maintenance efforts and support more informed decision-making. One of the key contributions of this work lies in its integration of statistical modelling and probabilistic analysis to identify critical equipment within a system. Unlike conventional methods that often overlook uncertainty or assume uniform equipment influence, this approach quantifies the impact of individual equipment failures on system-level outcomes. The analysis treats subsystems independently, acknowledging the absence of interdependency data while still capturing meaningful insights about their relative importance. By leveraging a combination of platforms – Excel for data preprocessing, R for simulation, and Netica for network-based evaluation – the study offers a replicable and scalable methodology for criticality assessment. Sensitivity analysis within the Bayesian Network model further enhances the framework by highlighting components with the highest influence on system reliability. The outcome is a transparent, objective, and practically applicable tool for maintenance prioritisation, offering significant value in data-intensive and reliability-critical environments like mining. This paper contributes to the growing body of research focused on integrating operational data with advanced modelling techniques to improve asset performance management.
| Item ID: | 90215 |
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| Item Type: | Article (Research - C1) |
| ISSN: | 2669-2961 |
| Copyright Information: | Copyright © 2025 Sagar More, et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. |
| Date Deposited: | 21 May 2026 00:09 |
| FoR Codes: | 40 ENGINEERING > 4099 Other engineering > 409999 Other engineering not elsewhere classified @ 100% |
| SEO Codes: | 17 ENERGY > 1706 Mining and extraction of energy resources > 170699 Mining and extraction of energy resources not elsewhere classified @ 100% |
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