Digital system information model: future-proofing asset information in LNG plants

Rework during construction is often required due to errors and omissions contained in the engineering documentation that is produced. If errors and omissions go undetected then they may become embedded within the ‘as-built’ documents that are provided to an asset owner at practical completion. In the specific case of instrumentation and control systems errors and omissions are often found in ‘as-builts’. This adversely impacts productivity and safety during the operations and maintenance process, as information is not readily available. In the case of Liquified Natural Gas (LNG) plants, for example, shutdown periods may have to be extended, which can jeopardise the production and supply of gas and therefore place a strain on the energy markets. The research presented in this paper aims to address this issue by proposing a novel digital systems information model, which can be used to improve the robustness of an LNG operator’s asset information management system. The creation of a digital model provides a platform for future-proofing LNG assets and minimising the duration of shutdown periods. The research provides the LNG sector with an innovative solution for digitising their ICS so that assets can efficiently and effectively be maintained and operated.

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