Achieving Reliability from Data at Cerrejón Coal

Canadian Institute of Mining, Metallurgy and Petroleum
Gerardo Vargas
Organization:
Canadian Institute of Mining, Metallurgy and Petroleum
Pages:
13
File Size:
235 KB
Publication Date:
May 1, 2011

Abstract

Without an adequate data sample there can be no Reliability Analysis (RA). Without analysis there can be no systematic, verifiable improvement in reliability or in operational economy. A sample is a collection of life cycles. A beginning and ending event define a failure mode life cycle. Well known obstacles impede the reliability engineer in his role to analyze maintenance data. The main problem lies in the difficulty to obtain analyzable data samples. Although modern Computerized Maintenance Management Systems (CMMSs) should provide the needed information they rarely deliver samples of adequate quality. Cerrejon, an integrated mining operation in Colombia, South America solved the information management problem by applying a "Living Reliability Centered Maintenance (LRCM)" process to its fleets of Trucks, Graders, Dozers, Loaders, and Shovels. This paper describes a method wherein completed work orders capture reliability analysis enabling information. The 'right' maintenance observations reference significant failure modes. Work orders link to records in a continuously growing Reliability Centered Maintenance (RCM) structured knowledge base. Grouped and filtered knowledge-to-work order links, being instances of failure modes, provide the samples required by reliability analysis software tools and methods. LRCM software and related procedures facilitate the growth of knowledge, manage the work order-to-RCM relationship, and generate samples for subsequent reliability analysis.
Citation

APA: Gerardo Vargas  (2011)  Achieving Reliability from Data at Cerrejón Coal

MLA: Gerardo Vargas Achieving Reliability from Data at Cerrejón Coal. Canadian Institute of Mining, Metallurgy and Petroleum, 2011.

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